Abstract
Behavioral differences between men and women have been studied extensively, as have differences in brain anatomy. However, most studies have focused on differences in gray matter, while white matter has been much less studied. We conducted a comprehensive study of 77 deep white matter tracts to analyze their volumetric and microstructural variability between men and women in the full Human Connectome Project (HCP) cohort of 1065 healthy individuals aged 22–35 years. We found a significant difference in total brain volume between men and women (+ 12.6% in men), consistent with the literature. 16 tracts showed significant volumetric differences between men and women, one of which stood out due to a larger effect size: the corpus callosum genu, which was larger in women (+ 7.3% in women, p = 5.76 × 10–19). In addition, we found several differences in microstructural parameters between men and women, both using standard Diffusion Tensor Imaging (DTI) parameters and more complex microstructural parameters from the Neurite Orientation Dispersion and Density Imaging (NODDI) model, with the tracts showing the greatest differences belonging to motor (cortico-spinal tracts, cortico-cerebellar tracts) or limbic (cingulum, fornix, thalamo-temporal radiations) systems. These microstructural differences may be related to known behavioral differences between the sexes in timed motor performance, aggressiveness/impulsivity, and social cognition.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Avoid common mistakes on your manuscript.
Introduction
In recent decades, the study of brain differences between men and women has been a topic of controversy. This research stems from and continues the logical progression of cognitive and behavioral studies examining purported sex differences conducted in the latter part of the twentieth century. Following extensive debate, a global consensus has emerged suggesting that men and women function similarly across the vast majority of brain functions, with only a few specific exceptions (Hall 1978; Archer 2019; Hyde 2005; Giudice et al. 2012): men exhibit slightly faster motor responses in time-limited tasks, a greater propensity towards aggressive behavior and violence, and a higher level of sexual interest, whereas women tend to have higher social interests and abilities. The cause of these differences remains under debate, with questions lingering regarding whether they arise from distinct social expectations based on gender, variances in brain anatomy, or a combination of both factors.
Numerous studies have investigated brain anatomical differences between men and women, as summarized in three recent meta-analyses (Jahanshad and Thompson 2017; Eliot et al. 2021; Salminen et al. 2022). One of the primary distinctions is the larger intracranial volume (Ruigrok et al. 2014) and total brain volume (Kaczkurkin et al. 2019) observed in men, a phenomenon evident not only in adults but also in children and adolescents (Kaczkurkin et al. 2019), with a relative difference of 9 to 12% between men and women. This variance in total brain volume necessitates consideration when examining and comparing regional brain volumes. Many initially reported differences, such as a purportedly higher white matter/gray matter ratio in women (Chen et al. 2007; Cosgrove et al. 2007), became either insignificant or of very small effect size after adjusting for brain volume (Leonard et al. 2008; Jäncke et al. 2014; Luders et al. 2009). Extensive research has also been conducted on focal gray matter volume differences between men and women. For instance, an analysis of 200 subjects from the Human Connectome Project (HCP) cohort (Yang et al. 2020) revealed slightly greater cortical thickness in men after correcting for intracranial volume. Moreover, a morphological gray matter analysis of the entire HCP cohort (Luo et al. 2019) demonstrated high sex classification accuracy (96.77%), primarily attributable to differences in frontal areas. While many cortical and subcortical areas exhibited slight differences between men and women, these effects were predominantly small (Eliot et al. 2021 Jun; Ruigrok et al. 2014; Ritchie et al. 2018). Large meta-analyses conducted by the ENIGMA (Enhancing Neuro Imaging Genetics through Meta-Analysis) consortium (Frangou et al. 2021; Dima et al. 2021; Wierenga et al. 2022), encompassing between 16,683 and 18,605 healthy individuals depending on the study, confirmed lower cortical thickness in women in most areas after adjusting for total brain volume. Additionally, these analyses indicated greater volume in men across most subcortical areas, along with increased interindividual variability in men for both cortical and subcortical measures. In summary, gray matter differences between men and women exhibit small effect sizes and are notably less pronounced than interindividual differences.
Unfortunately, there are significantly fewer studies investigating the same question for white matter. One notable exception is the examination of differences in corpus callosum volume between both sexes. This issue emerged from postmortem dissection studies (DeLacoste-Utamsing and Holloway 1982; RichardJ 2005), which indicated a larger corpus callosum in women after adjusting for brain weight or size. Subsequent studies, particularly in larger cohorts facilitated by MRI advancements, have suggested that differences in corpus callosum volume are primarily influenced by the total brain volume (Luders et al. 2014; Pietrasik et al. 2020). Nevertheless, when comparing men and women with identical intracranial volume, the corpus callosum was still found to be larger in women (Ardekani et al. 2013; Shiino et al. 2017).). Ultimately, sex was estimated to account for approximately 1% of the variance in corpus callosum volume (Potvin et al. 2016). Regarding diffusion MRI metrics, such as the simplest ones derived from the diffusion tensor imaging (DTI) model (Basser et al. 1994) like fractional anisotropy (FA) or other metrics derived from more complex models, results generally lack consensus. Depending on the study, FA has been reported to be higher overall in women (Kanaan et al. 2012; Dunst et al. 2014; Cahn et al. 2021), higher overall in men (Ritchie et al. 2018; Cox et al. 2016; Lawrence et al. 2021), or with variable results depending on specific tracts (Kanaan et al. 2012, 2014) or areas (Hsu et al. 2008; Inano et al. 2011; Chou et al. 2011). The ENIGMA consortium also examined white matter (Kochunov et al. 2015) and concluded in its meta-analysis that FA is slightly higher in women overall (relative difference: + 2%). However, comparing studies is challenging due to methodological differences: some have examined FA and other diffusion metrics globally, across the entire white matter; others have investigated these parameters regionally (e.g., frontal white matter); and still others, particularly the more recent ones, have analyzed these parameters along reconstructed white matter tracts. Moreover, cohorts vary in terms of age and size, with age being a critical factor in such studies as white matter microstructural parameters tend to develop differently in men and women during childhood/adolescence (Lawrence et al. 2023), adulthood (Toschi et al. 2020), and aging (Lawrence et al. 2021). Cohort size is also pivotal in this context, as highlighted in a dedicated meta-analysis (Ruigrok et al. 2014): the influence of sex on white matter is minor, and there is no clear dichotomy between men and women in white matter tracts, but rather an overlap between the two groups. Hence, large cohorts are mandatory to robustly detect these differences, potentially explaining why studies with smaller cohorts have reached differing conclusions.
Therefore, it is of great importance to further investigate the structural differences in brain connectivity between men and women from a large homogeneous cohort. In this study, we systematically compared all deep white matter tracts between the sexes in a large cohort of healthy young adults: the Human Connectome Project (HCP) cohort, which comprises 1065 individuals aged 22 to 35 years old. After conducting whole-brain tractography and atlas-based extraction of deep white matter tracts in all subjects, we conducted a volumetric analysis of each tract normalized to the subject's total brain volume. Additionally, we analyzed microstructural parameters derived from Diffusion Tensor Imaging (DTI), Q-ball Imaging (QBI), and Neurite Orientation Dispersion and Density Imaging (NODDI) models. This approach allowed us to provide a comprehensive overview of both morphological and microstructural differences in deep white matter tracts between the sexes in young healthy individuals.
Methods
Database
We used the brain MRI dataset from the Human Connectome Project (Q1-Q4 release, 2015) acquired by Washington University in Saint Louis and the University of Minnesota (Essen et al. 2013). This database includes 1065 healthy individuals aged 22 to 35 years old, 490 men and 575 women with a similar age distribution, all of whom underwent an anatomical T1-weighted (T1w) scan and series of diffusion MRI (dMRI) scans on a Connectome Skyra 3 T MRI scanner. The T1w acquisition was performed using a 3D MPRAGE sequence, with a 0.7 mm isotropic spatial resolution and TR/TE = 2400/2.14 ms. The dMRI acquisitions were performed with a 2D monopolar pulsed gradient spin-echo (PGSE) single-shot multi-band EPI sequence with a multi-band factor of 3, a 1.25 mm isotropic spatial resolution, TR/TE = 5520/ 89.50 ms, and a multiple-shell sampling of the q-space based on 3 b-values of 1000, 2000, and 3000 s/mm2 along 90 uniformly distributed diffusion directions per shell, plus 6 non-diffusion-weighted b = 0 s/mm2 reference images. The dataset was already pre-processed and corrected for eddy current and susceptibility artifacts and the dMRI scans of each subject were already aligned to the corresponding T1w scan.
Individual analysis pipeline
For all subjects, brain parcellation and volumetric segmentation were performed from the anatomical T1-weighted MRI, using the Freesurfer image analysis suite, documented and freely available for download online (http://surfer.nmr.mgh.harvard.edu/).
To process the dMRI data, we designed an analysis pipeline based on the Ginkgo toolbox developed by the CEA/NeuroSpin team and freely available online at https://framagit.org/cpoupon/gkg, which performed four sequential steps for each subject. A global overview of this diffusion analysis pipeline is provided in the Supplementary Material (Fig. S1).
-
1.
dMRI processing by computing the Diffusion Tensor Imaging (DTI) model (Basser et al. 1994) and the Orientation Distribution Functions (ODF) for each voxel of the brain using the analytical Q-ball model (Descoteaux et al. 2007) within constant solid angle (Aganj et al. 2010). These models also provided several quantitative diffusion metrics, such as mean, axial, and radial diffusivities, as well as generalized fractional anisotropy, which was used to regularize fiber trajectories (Perrin et al. 2005). The ODF maps were computed using all 3 shells, and the quantitative DTI metrics were computed using only the b = 1000 s/mm2 shell. We also computed the Neurite Orientation Dispersion and Density Imaging (NODDI) model (Zhang et al. 2012) from all 3 shells, which allows the estimation of additional microstructural parameters.
-
2.
Computation of a whole-brain tractogram from the ODF map using a regularized probabilistic algorithm (Perrin et al. 2005) (parameters: 8 seeds per voxel over a predefined propagation domain computed from the T1w image, aperture angle of 30°, fiber length range of 1.25—300 mm, forward and backward integration step of 0.3 mm, Gibb’s sampler temperature of 1). The fiber length range allowed us to discard some artifactuals streamlines (too short streamlines or infinite loops).
-
3.
Registration of the deep white matter atlas into native space, using the subject’s anatomical T1-weighted acquisition and the MNI (Montreal Neurological Institute) ICBM 2009c nonlinear asymmetric template as a reference template. Registration was performed using the Advanced Normalization Tools (ANTs) toolbox, with a diffeomorphic transformation based on the Symmetric Normalization (SyN) approach (Avants et al. 2008, 2011), which computes both the subject-to-MNI and the MNI-to-subject transform. The MNI-to-subject transform is then used to register the deep white matter atlas, located in the MNI space, to the subject space.
-
4.
Automatic bundle segmentation from each tractogram based on a predefined deep white matter atlas (Herlin et al. 2023; Chauvel et al. 2023), using a maximum pairwise distance threshold algorithm between streamlines from the tractogram and labeled white matter bundles from the atlas. This atlas contains 77 tracts (see Table 1): 15 association tracts for each hemisphere, 19 projection tracts for each hemisphere, 8 interhemispheric tracts, and 1 intracerebellar tract. Additional information on the atlas construction is also provided in Supplementary Material, along with an overview of this atlas (supplementary Figs. 1 and 2). Automatic bundle segmentation is performed in the subject space from the the subject's tractogram, after transformation of the deep white matter atlas (expressed in the MNI space) into the subject's space using the inverse diffeomorphic transformation calculated between the T1-weighted MRI and the MNI template. The fiber labeling algorithm iterates over streamlines and computes the minimum pairwise distance between each streamline and the centroid of each white matter tract in the atlas. For a streamline to be assigned to a tract, its distance must be below a predetermined threshold. If a streamline is below the distance threshold of two (or more) different tracts, it is assigned to the one it is the closest to. A streamline can only be assigned to a single tract, thereby eliminating any potential redundancy in adjacent tracts.
Statistical analysis
Total brain volume (TBV) and white matter volume (WMV) were established from the Freesurfer brain mask. Each white matter tract volume was measured in the subject space by computing the density mask of each bundle and measuring the volume of this mask with a minimum threshold of 5 fibers/voxel. All white matter tract volumes were then normalized to the respective subject’s TBV and expressed as a percentage of the TBV. In addition, all white matter tract volumes were also normalized to the subject’s white matter volume.
The following microstructural parameters were computed for each voxel of the brain, creating a 3D quantitative map for each parameter: fractional anisotropy FA, mean diffusivity MD, axial diffusivity and radial diffusivity (from the DTI model, using only the b = 1000 s/mm2 shell for the computation of these quantitative parameters); generalized fractional anisotropy GFA (from the Q-ball model); neurite density index NDI, isotropic water volume fraction IWVF, and orientation dispersion index ODI (from the NODDI model). For each white matter tract and each quantitative map, we computed the mean of the values (after testing for normality using Shapiro–Wilk test) obtained by trilinear interpolation of the quantitative map at all fiber points, resampled to 0.1 mm.
Statistical analyses for group comparisons were performed using Student’s t-test after testing for normality using Shapiro–Wilk test and for homogeneity of variance using Levene’s test. Correction for multiple comparisons was performed using the Bonferroni correction: starting from p = 0.05, after correction for 772 comparisons, the significance threshold was p = 0.000064767 (6.4767.10–5).
The effect size was estimated using Cohen's d test. The following ranges were used for its interpretation: |d|< 0.2: negligible effect size; 0.2 <|d|< 0.5: small effect size, 0.5 <|d|< 0.8: medium effect size; |d|> 0.8: large effect size.
To examine the relationship between sex, normalized corpus callosum tract volume and total brain volume, we conducted a linear regression between normalized corpus callosum volume and total brain volume in men and women, as described by (Leonard et al. 2008), using least squares method. Further analyses of the interaction of normalized tract volume, total brain volume, and sex were performed using analysis of covariance (ANCOVA) with the Ordinary Least Squares (OLS) model.
Results
Volumetric comparisons
Total brain volume was significantly different between men and women (Fig. 1), with a mean ± standard deviation of 1128 ± 90 cm3 in women and 1290 ± 102 cm3 in men, i.e. a mean relative difference of 12.6% between men and women (p = 1.3 × 10–127). The effect size was large (d = 1.7).
White matter volume was also significantly different between men and women (Fig. 1), with a mean ± standard deviation of 409 ± 42 cm3 in women and 476 ± 49 cm3 in men, i.e. a mean relative difference of 13.6% between men and women (p = 4.0 × 10–97). The effect size was large (d = 1.4).
16 of the 77 white matter tracts showed a significant difference between men and women in their volume normalized to the total brain brain volume. These results are summarized in Table 2 and Fig. 2, where only the 16 statistically different tracts are shown. The relative difference and Cohen’s d are negative when the volume is greater in women and positive when it is greater in men. Among these significantly different tracts, only one had a Cohen’s d effect size greater than 0.5, i.e., a medium effect size: the corpus callosum genu bundle, which had a greater relative volume in women (7.3%); all the other 15 tracts had a small effect size with a Cohen’s d between 0.2 and 0.5.
We then performed the same analysis after normalizing the individual tract volumes to the individual white matter volume, instead of the individual total brain volume. This yielded similar results: 18 of the 77 white matter tracts also showed a significant difference in white matter-normalized volume between men and women. These results are summarized in Table 3 and Fig. 3, where only the 18 statistically different tracts are shown. As with the tract volumes normalized to total brain volume, only one had a Cohen’s d effect size greater than 0.5, i.e., a medium effect size: the corpus callosum genu bundle, which had a greater relative volume in women (8.5%).
To further examine the relationship between the normalized volume of the most statistically significant tracts (the corpus callosum genu), total brain volume, and sex, and to rule out the possibility that this difference between the sexes was simply a function of total brain volume, we performed a linear regression of the normalized volume of these tracts as a function of the total brain volume. The results are shown in Fig. 4, which shows different slopes between men and women. We then performed an ANCOVA analysis with the normalized volume of the corpus callosum genu as the dependent variable, total brain volume as the continuous variable, and sex as the categorical variable. This revealed a statistically significant interaction between normalized volume of the corpus callosum genu and sex, even when the total brain volume was taken into account (F-statistic = 32.47, p-value = 4.41 × 10–20).
Microstructural comparisons
We performed comparisons between men and women for the various microstructural parameters computed from the DTI, QBI and NODDI models for all tracts. The complete results of these comparisons are shown in Supplementary Table 1.
For fractional anisotropy (FA) estimated from the DTI model, 41 of the 77 tracts were statistically different between men and women (40 showed higher FA in women and 1 showed higher FA in men). Among these, 12 had an effect size greater than 0.5 (all had higher FA in women), and 2 of them had an effect size greater than 0.8: the left fornix, and the left middle cortico-cerebellar tract. The statistical results for these 12 tracts (with a statistically significant difference and a Cohen’s greater than 0.5) are summarized in Fig. 5.
Generalized fractional anisotropy (GFA) calculated from the Q-ball model yielded similar results, with slightly higher p-values and smaller effect sizes. Thus, 32 tracts were significantly different between men and women, 7 of which had an effect size greater than 0.5 (6 had higher GFA in women and 1 in men), and none greater than 0.8. The results of these 7 tracts are summarized in Fig. 6.
For mean diffusivity (MD), 34 tracts were significantly different between men and women. 13 had an effect size greater than 0.5 (and none was greater than 0.8), all greater in men. The results of these 13 tracts are shown in Fig. 7.
For both axial and radial diffusivities, the results were similar to those obtained for MD values.
For axial diffusivity, 28 tracts were statistically significantly different between men and women. Among these, 6 had an effect size greater than 0.5, and none had an effect size greater than 0.8; all were greater in men. The results of these 6 tracts are shown in Fig. 8.
For radial diffusivity, 34 tracts were statistically significantly different between men and women. Among these, 8 had an effect size greater than 0.5, and none had an effect size greater than 0.8. The results of these 8 tracts are shown in Fig. 9.
The NODDI model allowed us to estimate 3 additional microstructural parameters: the neurite density index, the isotropic water volume fraction, and the orientation dispersion index.
For the neurite density index (NDI), 21 tracts were statistically different between men and women. Of these, 6 had an effect size greater than 0.5 (the left dorsal cingulum, the left and right lenticulo-temporal radiations, the left dorso-ventral cingulum, the left cingulo-caudate radiations and the right cingulo-caudate radiations). None had an effect size greater than 0.8. All 6 tracts showed a higher intracellular water fraction in men. The results of these 6 tracts are shown in Fig. 10.
The isotropic water volume fraction showed statistically significant differences between men and women for almost all tracts (76/77). 57 had an effect size greater than 0.5, and 35 of these were greater than 0.8. For all tracts, the isotropic water volume fraction was higher in men. The results are shown in Supplementary Fig. 3.
For the orientation dispersion index (ODI), 46 tracts showed a statistically significant difference between men and women. 22 of these had an effect size greater than 0.5, and 3 of these had an effect size greater than 0.8: the left fornix, and the left and right thalamo-temporal radiations, all of which were higher in men. The results of these 22 tracts are shown in Fig. 11.
Discussion
This study provides a detailed and unprecedented overview of white matter tract differences between the sexes in a homogeneous cohort of young healthy adults. While, as expected, there exists a large overlap between men and women across most parameters, including those with the most significant differences, we have identified several robust disparities in white matter tracts between males and females, both in terms of volume and microstructure, some of which exhibit a substantial effect size.
Notably, the tracts displaying the most pronounced differences are those associated with the motor system (such as cortico-spinal tracts and cerebellar tracts) and tracts of the limbic system (including the fornix, cingulum, and tracts connecting the temporal cortex to the basal ganglia, particularly the thalamo-temporal radiations). These findings may be linked to the well-established behavioral distinctions between men and women (Archer 2019) observed in time-limited motor tasks, levels of aggressiveness, and prosocial behavior.
Volumetric differences
Total brain volume and white matter volume
We found a significantly higher total brain volume in men, with a relative difference of + 12.6% compared to women. This is a well known and studied fact. Our results are consistent with the meta-analysis by Ruigrok et al. (Ruigrok et al. 2014) who found a relative difference of 12% between men and women and with a more recent study (Ritchie et al. 2018), including included 5216 participants from the UK Biobank, that found a relative difference in total brain volume of + 9.6% in men.
Concerning white matter volume, we also found a greater volume in men (+ 13.6%), which is consistent with the 12.9% relative difference in the meta-analysis by Ruigrok et al. (Ruigrok et al. 2014) and the 12.0% relative difference in the study by Ritchie et al. (Ritchie et al. 2018) in the UK Biobank cohort.
White matter tract volume
In contrast to global volumetric comparisons, fewer volumetric analyses of white matter tracts have been published in the past. Most white matter analyses have examined regional volumes or focused on a single tract. Since the 1980s, the corpus callosum has been one of the most extensively studied white matter structures. Most studies focusing on it have approximated its volume by measuring its area in a midsagittal section (DeLacoste-Utamsing and Holloway 1982; RichardJ 2005; Ardekani et al. 2013). However, this approach has several limitations, prompting the use of alternative methods to estimate the corpus callosum volume. These methods include voxel-based morphometry (Shiino et al. 2017) or surface-based mesh modeling (Luders et al. 2014), each with its own set of advantages and drawbacks. Another approach, as demonstrated by Pietrasik et al. (Pietrasik et al. 2020) in their study on the volumetric and microstructural aging of the corpus callosum, involves conducting tractography first and then measuring the volume of the entire bundle traversing the corpus callosum (or its subparts). This method offers the advantage of assessing the entire tract rather than just the voxels of the callosal midsagittal area, providing more comprehensive information about the extent of the tract and its hemispheric connections. However, it requires more elaborated dMRI scans to acquire high-resolution diffusion MRI, and is computationally more demanding to reconstruct the corpus callosum more reliably.
In this study, we employed a methodology similar to the latter approach to measure the volume of all major white matter tracts. Therefore, our tract labeled "corpus callosum genu" refers to the entire tract passing through the corpus callosum genu and connecting the left and right frontal cortices.
Because the gray matter/white matter volume ratio also differs between the sexes (Leonard et al. 2008; Jäncke et al. 2014; Luders et al. 2014), we performed normalization to both total brain volume and white matter volume. Although the results were close, the tracts that ended up being significant were not strictly similar using the two normalization methods. In particular, slightly more tracts were statistically significant after normalization to white matter volume (18 tracts versus 16 after normalization to total brain volume). Notably, other sections of the corpus callosum, not just the genu, were significant with this second normalization, but not with the first. However, since normalization to white matter volume seems to increase the differences between the groups, differences that are significant with this method but not after normalization to total brain volume should be interpreted with caution.
While early studies on this topic initially reported a larger corpus callosum volume in women relative to their brain size (DeLacoste-Utamsing and Holloway 1982; RichardJ 2005), subsequent research suggests that much of this difference is attributable to total brain volume (Eliot et al. 2021; Luders et al. 2014). However, this does not contradict the hypothesis that a small proportion of the differences observed in corpus callosum volume may indeed be influenced by sex, as indicated by recent studies where sex explained some variance in its volume (Pietrasik et al. 2020; Potvin et al. 2016). This is further supported by investigations involving men and women matched for identical intracranial volume, which demonstrated slightly greater corpus callosum volume in women (Ardekani et al. 2013; Shiino et al. 2017). In our study, the corpus callosum genu exhibited the most significant difference between men and women in its normalized volume, whether normalized to total brain volume or white matter volume, with strong statistical significance and a medium effect size, indicating greater normalized volume in women. This finding aligns with the aforementioned studies, as well as a connectomic study (Ingalhalikar et al. 2014) which identified greater inter-hemispheric connectivity in women and greater intra-hemispheric connectivity in men. However, subsequent research (Hänggi et al. 2014; Martínez et al. 2017) has tempered these findings, attributing much of the difference in intra- and inter-hemispheric connectivity to brain size rather than gender.
To further explore the association between normalized corpus callosum volume and total brain volume, a linear regression analysis in both sexes was conducted, similar to the approach taken by Leonard et al. (12), and differing slopes between men and women were noticed. An ANCOVA confirmed this association, revealing a strong statistically significant interaction (p = 3.49.10–65) between sex and normalized corpus callosum volume after adjusting for total brain volume. Ultimately, while brain volume undoubtedly serves as the primary determinant of normalized corpus callosum volume, we can confidently conclude that sex also exerts an independent effect on it.
One hypothesis to explain these differences is that the greater intra-hemispheric connectivity observed in men promotes fast goal-directed actions, potentially contributing to faster reaction time and higher sensorimotor speed (Gur et al. 2012), as well as the stronger lateralization in men. Conversely, the corpus callosum facilitates interhemispheric communication and enhances bilateral integration of information processed by each hemisphere. This is critical for many high-order cognitive processes that rarely rely on unilateral areas, and may contribute to better performance in certain high-order cognitive functions in women, particularly in areas such as social cognition.
In addition to the corpus callosum genu, 15 other white matter tracts showed a significant difference in normalized volume, but their effect size was smaller than that of the corpus callosum genu, and a greater overlap was found between the two groups. Specifically, we observed that men tended to have larger tracts connecting the frontal areas and the basal ganglia, particularly the lenticular nuclei. These findings may be relevant to certain behavioral differences observed between the sexes, such as higher impulsivity and aggressiveness in men. Contrary to the corpus callosum, the lack of literature on this topic makes it difficult to compare with other results, as only some rare studies, mostly focusing on a single tract (such as the fornix (Cahn et al. 2021) or the anterior commissure (Choi et al. 2011)), included a volumetric analysis. Consequently, reproducibility of these findings would be necessary to confirm their significance.
Microstructural analysis
In our study, we found a statistically significant difference in FA values (after correction for multiple comparisons) in 41 of the 77 tracts, with an overall higher FA in women (40 of these 41 tracts had higher FA in women, while only one had higher FA in men with a small effect size). This result was consistent for both FA from the traditional DTI model and GFA calculated using the HARDI diffusion solid-angle corrected Q-ball model. Microstructural studies of white matter differences according to sex are heterogeneous and not as numerous as studies of gray matter differences. The parameters measured from the DTI model are the most commonly studied, and among them the most studied is FA. However, the studies reported so far are rather contradictory:
-
Consistent with our findings, some cohort studies reported higher overall FA in women (Dunst et al. 2014; Kanaan et al. 2014). In particular, one study was performed in the same HCP cohort as ours, with a focus on the fornix (31), and reported higher total white matter FA in women (and their results regarding the fornix were comparable to ours). A recent meta-analysis (Kochunov et al. 2015) concluded that women had higher overall FA than men, with a relative difference of + 2%.
-
Conversely, three studies (17,32,33) conducted on large numbers of subjects (3513, 5216 and 15,628 subjects) from the UKBiobank cohort found an overall higher FA in men in most white matter regions. However, these differences were greatly reduced or eliminated after adjustment for TBV (17), and only few remained significant after this adjustment: higher FA in women in the left inferior longitudinal fasciculus (d = 0.14) and posterior thalamic radiation (d = 0.12); and higher FA in men in the right arcuate fasciculus (d = 0.26), bilateral corticospinal tract (right: d = 0.22, left: d = 0.15), and bilateral superior thalamic radiation (right: d = 0.16, left: d = 0.15).
-
Other studies have reported mixed results, with FA values being higher in either men or women depending on the examined tracts (Kanaan et al. 2012, 2014) or voxels across the brain (Hsu et al. 2008; Inano et al. 2011; Chou et al. 2011). In children and adolescents, a recent study performed on 6797 children aged 9–10 years (Lawrence et al. 2023) found regional variations when comparing FA between boys and girls (with some regions demonstrating higher FA in girls and others in boys), and overall higher MD, axial and radial diffusivity in boys, which is consistent with our results in young adults.
The disparities among these results may stem from differences in methodology. Unlike many older studies that measured and compared these parameters in broad brain regions (e.g., assessing the mean fractional anisotropy (FA) of the white matter in the frontal lobe), we computed the mean of these parameters along specific white matter tracts. Our approach focuses on these individual white matter tracts and their associated functions, rather than employing a global regional measure with less specific significance. Additionally, measuring the mean values of these microstructural features along the tract, as we did, is not influenced by tract length or total brain volume (TBV), factors that are crucial for such analyses and were not consistently accounted for in previous studies.
The parameters measured using the DTI model (FA, MD, axial and radial diffusivity) are relevant and have been associated with many important white matter changes during aging (Bennett and Madden 2014) or neuropsychiatric diseases (Pievani et al. 2014). However, DTI has many limitations, and other alternative models have been developed to overcome them. Among them, the NODDI model separately models restricted, hindered, and free water diffusion, which refer to intraneurite, extracellular, and isotropic (free) water components, respectively (Zhang et al. 2012). It thus provides good estimates of some microstructural aspects of the neurites that DTI cannot assess, by measuring neurite density (from the intracellular volume fraction), neurite complexity and fanning (from the orientation density index), or the isotropic water fraction (which, in the brain, is particularly important to consider for areas close to the ventricles or the convexity of the brain, where cerebrospinal fluid, a prototypical isotropic water, may be responsible for partial volume effects in voxels). To our knowledge, the only studies using this model to compare white matter microstructure between males and females were those performed using the UKBiobank cohort (Ritchie et al. 2018; Cox et al. 2016; Lawrence et al. 2021), which reported higher ODI in women for most tracts. Lawrence et al. (39) used another model, the Restriction Spectrum Imaging (RSI) model, to examine white matter microstructure in young healthy subjects (9–10 years) and reported greater NDI in girls.
In our study, among the tracts showing statistically significant differences between men and women using these advanced microstructural parameters, 4 had a large effect size: the left cortico-spinal tract (d = 0.83), the left fornix (d = 0.98), and the left (d = 1.0) and right (d = 0.97) thalamo-temporal radiations. The right cortico-spinal tract and the right fornix were also significantly different between men and women with a slightly smaller effect size, just above the threshold of 0.8 for a large effect size: their Cohen's d was 0.75 and 0.71, respectively. These tracts were among those with the largest differences in all microstructural parameters, as well as other tracts from the motor (cortico-cerebellar tracts) or limbic (cingulum) systems. These microstructural differences in such tracts that are key components of the motor task-based network (cortico-spinal and cortico-cerebellar tracts, as well as tracts connecting the frontal and central cortices to the basal ganglia) and the social cognition network (Wang et al. 2018) (cingulum, fornix, and thalamo-temporal radiations) are particularly interesting because they relate to some of the functions that differ most between men and women (2): time-constrained motor tasks and social interests and skills. The fact that the differences between men and women in these tracts can be found in nearly all diffusion parameters suggests that the underlying differences in white matter structure extend to multiple aspects of microstructure. This highlights the importance of considering microstructure when studying sex differences in the brain, as they can provide deeper insights in the underlying neural mechanisms specific to women and men.
Limitations of the study
The main limitation of our study is the lack of histological data in the HCP cohort, which prevents a direct comparison between the fiber tracts visualized by Klinger’s dissection (Klinger 1935) or more recent dissection techniques (Zemmoura et al. 2014), and those reconstructed by dMRI tractography. On the other hand, although dissection studies provide detailed anatomical information, they are typically performed in a limited number of subjects, and would likely lack the statistical power to reach significance given the small differences between the two groups. The agreement between our volumetric analysis and published histological data (DeLacoste-Utamsing and Holloway 1982) supports the validity of our method.
The methodology of tractography and fiber tract labeling also has some limitations. In particular, the choice of white matter atlas and the degree of tract subdivision may have some implications when performing tract-based measurements. For example, in the present studies, we analyzed and performed measurements on the inferior longitudinal fasciculus (ILF) as a whole, whereas other studies (Latini et al. 2017) have divided this tract into three components: the fusiform, the lingual, and the dorsolateral-occipital ILF. Performing measurements of microstructural parameters on these subdivisions rather than on the entire tract may yield different results because it is possible that, for a given microstructural parameter, only one subdivision of the tract differs between men and women, potentially underestimating the sex effect in some tracts investigated as a whole. However, this increases our confidence in the differences we actually identified, because such a hypothesis would lead to an underestimation, not an overestimation, of the difference between the groups.
The possibility of a partial volume effect, especially for tracts near the ventricles, is also a limitation of the method used. The cerebro-spinal fluid compartment and the ventricle volume are larger in men than in women (Ruigrok et al. 2014). This means the partial volume effect is stronger in men, which might affect some of the microstructural parameters. The NODDI model takes this into account by modeling the isotropic water fraction, which we indeed found to be higher in men. The other two compartments (intracellular and extracellular water fraction) are thus not affected, and neither are the computed ODI and NDI. However, parameters computed using the DTI and Q-ball models are susceptible to partial volume effects. Due to their anatomical location near the lateral ventricles, the fornices and cingulum are the tracts most susceptible to this effect. We found no differences in these tracts in MD, axial and radial diffusivities. However, we found that women had higher FA and GFA values in both fornices, while men had higher GFA values in the dorsal cingulum. A greater partial volume effect in men would make anisotropy seem lower in men, leading to an overestimation of the difference found in the fornices and an underestimation of the difference found in the dorsal cingulum. A study that specifically focused on the diffusion parameters of the fornix (Cahn et al. 2021) in a subset of subjects from the HCP cohort found results that were comparable to those observed in our study. The authors acknowledged that, even at the relatively high (1.25 mm isotropic) spatial resolution of the HCP cohort, partial volume effect had indeed an influence on the results. Therefore, it is important to consider that the differences observed in FA and GFA values in the fornices may be slightly overestimated.
Another limitation is that the HCP cohort is quite homogeneous, consisting of healthy adults between 22 and 35 years old. Therefore, our results cannot be generalized to other age groups, especially to the elderly. Age-related changes in white matter microstructure may influence the observed sex differences, as has been reported in different age groups (Lawrence et al. 2021; Toschi et al. 2020), with earlier aging of white matter microstructural parameters in men than in women.
It is noteworthy that the measured differences between the sexes remained small in our study, with substantial overlap in the parameter distributions. This small effect size may explain why other studies, especially those with smaller sample sizes, may find different results. We emphasize the importance of working with large datasets to perform such analyses, as was done here and in similar studies of the UKBiobank cohort (Ritchie et al. 2018; Cox et al. 2016; Lawrence et al. 2021). In the future, meta-analyses that aggregate the results of similar studies conducted in different cohorts of subjects of different ages and origins, with the necessary correction for site effects, may help to resolve remaining inconsistencies in the field.
Finally, it is important to mention the issue of reproducibility and comparability between studies. The other studies on the same topic used different acquisition protocols and diffusion processing pipelines, and possibly measured different parameters. The present study was performed on the HCP cohort, whose diffusion protocol was refined during the first two years of the HCP project to achieve a standardized and state-of-the-art acquisition protocol for high angular resolution diffusion imaging (Sotiropoulos et al. 2013). Since then, the HCP cohort has inspired numerous "HCP-style" studies using a similar acquisition protocol, thus facilitating the comparison of their results. In addition, harmonization methods to account for inter- and intra-site variability (Pinto et al. 2020; Fortin et al. 2017) have been developed in recent years to improve the comparability of the technique. However, reproducibility on topics such as tractography algorithm (Schilling et al. 2019) or white matter tract segmentation (Rheault et al. 2020, 2022a, 2022b) is still imperfect, and the development and use of standardized diffusion preprocessing and analysis methods should be an important goal to facilitate comparability between studies (Tax et al. 2022 Apr).
Conclusion
Our study has demonstrated that while there are numerous similarities in white matter tracts and structural connectivity between men and women, there are also discernible differences related to sex. These disparities were strongly significant in certain white matter tract volumes, even after normalization to total brain volume, as well as in microstructural parameters, and demonstrated medium to high effect size. The tracts exhibiting the most differences were tracts from motor (cortico-spinal tracts, cortico-cerebellar tracts) or limbic (cingulum, fornix, thalamo-temporal radiations) systems. Future research can expand upon our findings to delve deeper into the intricate relationship between brain connectivity and the cognitive and behavioral traits that exhibit differences between men and women.
Data availability
Data were provided by the Human Connectome Project, WU-Minn Consortium (Principal Investigators: David Van Essen and Kamil Ugurbil; 1U54MH091657) funded by the 16 NIH Institutes and Centers that support the NIH Blueprint for Neuroscience Research; and by the McDonnell Center for Systems Neuroscience at Washington University. Diffusion MRI data processing was performed using the Ginkgo toolbox developed by the CEA/NeuroSpin team, freely available online at https://framagit.org/cpoupon/gkg
References
Aganj I, Lenglet C, Sapiro G, Yacoub E, Ugurbil K, Harel N (2010) Reconstruction of the orientation distribution function in single- and multiple-shell q-ball imaging within constant solid angle. Magn Reson Med 64(2):554–566
Archer J (2019) The reality and evolutionary significance of human psychological sex differences. Biol Rev Camb Philos Soc 94(4):1381–1415
Ardekani BA, Figarsky K, Sidtis JJ (2013) Sexual dimorphism in the human corpus callosum: an MRI study using the OASIS brain database. Cereb Cortex 23(10):2514–2520
Avants BB, Epstein CL, Grossman M, Gee JC (2008) Symmetric diffeomorphic image registration with cross-correlation: evaluating automated labeling of elderly and neurodegenerative brain. Med Image Anal 12(1):26–41
Avants BB, Tustison NJ, Song G, Cook PA, Klein A, Gee JC (2011) A reproducible evaluation of ANTs similarity metric performance in brain image registration. Neuroimage 54(3):2033–2044
Basser PJ, Mattiello J, LeBihan D (1994) MR diffusion tensor spectroscopy and imaging. Biophys J 66(1):259–267
Bennett IJ, Madden DJ (2014) Disconnected aging: cerebral white matter integrity and age-related differences in cognition. Neuroscience 12(276):187–205
Cahn AJ, Little G, Beaulieu C, Tétreault P (2021) Diffusion properties of the fornix assessed by deterministic tractography shows age, sex, volume, cognitive, hemispheric, and twin relationships in young adults from the human connectome project. Brain Struct Funct 226(2):381–395
Campello RJGB, Moulavi D, Sander J (2013) Density-Based Clustering Based on Hierarchical Density Estimates. In: Pei J, Tseng VS, Cao L, Motoda H, Xu G (eds) Advances in Knowledge Discovery and Data Mining. Springer Heidelberg, Berlin, pp 160–172
Chauvel M, Uszynski I, Herlin B, Popov A, Leprince Y, Mangin JF et al (2023) In vivo mapping of the deep and superficial white matter connectivity in the chimpanzee brain. Neuroimage 15(282):120362
Chen X, Sachdev PS, Wen W, Anstey KJ (2007) Sex differences in regional gray matter in healthy individuals aged 44–48 years: a voxel-based morphometric study. Neuroimage 36(3):691–699
Choi MH, Kim JH, Yeon HW, Choi JS, Park JY, Jun JH et al (2011) Effects of gender and age on anterior commissure volume. Neurosci Lett 500(2):92–94
Chou KH, Cheng Y, Chen IY, Lin CP, Chu WC (2011) Sex-linked white matter microstructure of the social and analytic brain. Neuroimage 54(1):725–733
Cosgrove KP, Mazure CM, Staley JK (2007) Evolving knowledge of sex differences in brain structure function and chemistry. Biol Psychiatry 62(8):847–855
Cox SR, Ritchie SJ, Tucker-Drob EM, Liewald DC, Hagenaars SP, Davies G et al (2016) Ageing and brain white matter structure in 3,513 UK biobank participants. Nat Commun 15(7):13629
DeLacoste-Utamsing C, Holloway RL (1982) Sexual dimorphism in the human corpus callosum. Science 216(4553):1431–1432
Descoteaux M, Angelino E, Fitzgibbons S, Deriche R (2007) Regularized, fast, and robust analytical Q-ball imaging. Magn Reson Med 58(3):497–510
Dima D, Modabbernia A, Papachristou E, Doucet GE, Agartz I, Aghajani M et al (2021) Subcortical volumes across the lifespan: data from 18,605 healthy individuals aged 3–90 years. Hum Brain Mapp 43(1):452–469
Dunst B, Benedek M, Koschutnig K, Jauk E, Neubauer AC (2014) Sex differences in the IQ-white matter microstructure relationship: A DTI study. Brain Cogn 91:71–78
Eliot L, Ahmed A, Khan H, Patel J (2021) Dump the “dimorphism”: comprehensive synthesis of human brain studies reveals few male-female differences beyond size. Neurosci Biobehav Rev 1(125):667–697
Fortin JP, Parker D, Tunç B, Watanabe T, Elliott MA, Ruparel K et al (2017) Harmonization of multi-site diffusion tensor imaging data. Neuroimage 1(161):149–170
Frangou S, Modabbernia A, Williams SCR, Papachristou E, Doucet GE, Agartz I et al (2021) Cortical thickness across the lifespan: data from 17,075 healthy individuals aged 3–90 years. Hum Brain Mapp 43(1):431–451
Giudice MD, Booth T, Irwing P (2012) The distance between mars and venus: measuring global sex differences in personality. PLoS ONE 7(1):e29265
Guevara P, Poupon C, Rivière D, Cointepas Y, Descoteaux M, Thirion B et al (2011) Robust clustering of massive tractography datasets. Neuroimage 54(3):1975–1993
Gur RC, Richard J, Calkins ME, Chiavacci R, Hansen JA, Bilker WB et al (2012) Age group and sex differences in performance on a computerized neurocognitive battery in children age 8–21. Neuropsychology 26(2):251–265
Hall JA (1978) Gender effects in decoding nonverbal cues. Psychol Bull 85(4):845–857
Hänggi J, Fövenyi L, Liem F, Meyer M, Jäncke L (2014) The hypothesis of neuronal interconnectivity as a function of brain size—a general organization principle of the human connectome. Front Hum Neurosci 11(8):915
Herlin B, Uszynski I, Chauvel M, Poupon C, Dupont S (2023) Cross-subject variability of the optic radiation anatomy in a cohort of 1065 healthy subjects. Surg Radiol Anat SRA 45(7):849–858
Hsu JL, Leemans A, Bai CH, Lee CH, Tsai YF, Chiu HC et al (2008) Gender differences and age-related white matter changes of the human brain: a diffusion tensor imaging study. Neuroimage 39(2):566–577
Hyde JS (2005) The gender similarities hypothesis. Am Psychol 60(6):581–592
Inano S, Takao H, Hayashi N, Abe O, Ohtomo K (2011) Effects of age and gender on white matter integrity. AJNR Am J Neuroradiol 32(11):2103–2109
Ingalhalikar M, Smith A, Parker D, Satterthwaite TD, Elliott MA, Ruparel K et al (2014) Sex differences in the structural connectome of the human brain. Proc Natl Acad Sci U S A 111(2):823–828
Jahanshad N, Thompson PM (2017) Multimodal neuroimaging of male and female brain structure in health and disease across the life span. J Neurosci Res 95(1–2):371–379
Jäncke L, Mérillat S, Liem F, Hänggi J (2014) Brain size, sex, and the aging brain. Hum Brain Mapp 36(1):150–169
Kaczkurkin AN, Raznahan A, Satterthwaite TD (2019) Sex differences in the developing brain: insights from multimodal neuroimaging. Neuropsychopharmacology 44(1):71–85
Kanaan RA, Allin M, Picchioni M, Barker GJ, Daly E, Shergill SS et al (2012) Gender differences in white matter microstructure. PLoS ONE 7(6):e38272
Kanaan RA, Chaddock C, Allin M, Picchioni MM, Daly E, Shergill SS et al (2014) Gender influence on white matter microstructure: a tract-based spatial statistics analysis. PLoS ONE 9(3):e91109
Klinger J. 1935 Erleichterung der makrokopischen Präparation des Gehirns durch den Gefrierprozess. Orell Füssli
Kochunov P, Jahanshad N, Marcus D, Winkler A, Sprooten E, Nichols TE et al (2015) Heritability of fractional anisotropy in human white matter: a comparison of human connectome project and ENIGMA-DTI data. Neuroimage 1(111):300–311
Latini F, Mårtensson J, Larsson EM, Fredrikson M, Åhs F, Hjortberg M et al (2017) Segmentation of the inferior longitudinal fasciculus in the human brain: a white matter dissection and diffusion tensor tractography study. Brain Res 15(1675):102–115
Lawrence KE, Nabulsi L, Santhalingam V, Abaryan Z, Villalon-Reina JE, Nir TM et al (2021) Age and sex effects on advanced white matter microstructure measures in 15,628 older adults: A UK biobank study. Brain Imaging Behav 15(6):2813–2823
Lawrence KE, Abaryan Z, Laltoo E, Hernandez LM, Gandal MJ, McCracken JT et al (2023) White matter microstructure shows sex differences in late childhood: evidence from 6797 children. Hum Brain Mapp 44(2):535–548
Leonard CM, Towler S, Welcome S, Halderman LK, Otto R, Eckert MA et al (2008) Size matters: cerebral volume influences sex differences in neuroanatomy. Cereb Cortex N Y NY 18(12):2920–2931
Luders E, Gaser C, Narr KL, Toga AW (2009) Why sex matters: brain size independent differences in gray matter distributions between men and women. J Neurosci 29(45):14265–14270
Luders E, Toga AW, Thompson PM (2014) Why size matters: differences in brain volume account for apparent sex differences in callosal anatomy. Neuroimage. https://doi.org/10.1016/j.neuroimage.2013.09.040
Luo Z, Hou C, Wang L, Hu D (2019) Gender identification of human cortical 3-D morphology using hierarchical sparsity. Front Hum Neurosci 7(13):29
Martínez K, Janssen J, Pineda-Pardo JÁ, Carmona S, Román FJ, Alemán-Gómez Y et al (2017) Individual differences in the dominance of interhemispheric connections predict cognitive ability beyond sex and brain size. Neuroimage 1(155):234–244
Perrin M, Poupon C, Cointepas Y, Rieul B, Golestani N, Pallier C et al (2005) Fiber tracking in q-ball fields using regularized particle trajectories. Inf Process Med Imaging Proc Conf 19:52–63
Pietrasik W, Cribben I, Olsen F, Huang Y, Malykhin NV (2020) Diffusion tensor imaging of the corpus callosum in healthy aging: Investigating higher order polynomial regression modelling. Neuroimage 1(213):116675
Pievani M, Filippini N, van den Heuvel MP, Cappa SF, Frisoni GB (2014) Brain connectivity in neurodegenerative diseases–from phenotype to proteinopathy. Nat Rev Neurol 10(11):620–633
Pinto MS, Paolella R, Billiet T, Van Dyck P, Guns PJ, Jeurissen B et al (2020) Harmonization of brain diffusion MRI: concepts and methods. Front Neurosci 14:396
Potvin O, Mouiha A, Dieumegarde L, Duchesne S (2016) Normative data for subcortical regional volumes over the lifetime of the adult human brain. Neuroimage 15(137):9–20
Rheault F, De Benedictis A, Daducci A, Maffei C, Tax CMW, Romascano D et al (2020) Tractostorm: The what, why, and how of tractography dissection reproducibility. Hum Brain Mapp 41(7):1859–1874
Rheault F, Bayrak RG, Wang X, Schilling KG, Greer JM, Hansen CB et al (2022a) TractEM: evaluation of protocols for deterministic tractography white matter atlas. Magn Reson Imaging 85:44–56
Rheault F, Schilling KG, Valcourt-Caron A, Théberge A, Poirier C, Grenier G et al (2022b) Tractostorm 2: Optimizing tractography dissection reproducibility with segmentation protocol dissemination. Hum Brain Mapp 43(7):2134–2147
RichardJ S (2005) Relative size versus controlling for size: interpretation of ratios in research on sexual dimorphism in the human corpus callosum. Curr Anthropol 46(2):249–273
Ritchie SJ, Cox SR, Shen X, Lombardo MV, Reus LM, Alloza C et al (2018) Sex differences in the adult human brain: evidence from 5216 UK biobank participants. Cereb Cortex N Y NY 28(8):2959–2975
Ruigrok ANV, Salimi-Khorshidi G, Lai MC, Baron-Cohen S, Lombardo MV, Tait RJ et al (2014) A meta-analysis of sex differences in human brain structure. Neurosci Biobehav Rev 39(100):34–50
Salminen LE, Tubi MA, Bright J, Thomopoulos SI, Wieand A, Thompson PM (2022) Sex is a defining feature of neuroimaging phenotypes in major brain disorders. Hum Brain Mapp 43(1):500–542
Schilling KG, Daducci A, Maier-Hein K, Poupon C, Houde JC, Nath V et al (2019) Challenges in diffusion MRI tractography - Lessons learned from international benchmark competitions. Magn Reson Imaging 57:194–209
Shiino A, Chen YW, Tanigaki K, Yamada A, Vigers P, Watanabe T et al (2017) Sex-related difference in human white matter volumes studied: Inspection of the corpus callosum and other white matter by VBM. Sci Rep 3(7):39818
Sotiropoulos SN, Jbabdi S, Xu J, Andersson JL, Moeller S, Auerbach EJ et al (2013) Advances in diffusion MRI acquisition and processing in the human connectome project. Neuroimage 15(80):125–143
Tax CMW, Bastiani M, Veraart J, Garyfallidis E, Okan IM (2022) What’s new and what’s next in diffusion MRI preprocessing. Neuroimage 1(249):118830
Toschi N, Gisbert RA, Passamonti L, Canals S, De Santis S (2020) Multishell diffusion imaging reveals sex-specific trajectories of early white matter degeneration in normal aging. Neurobiol Aging 86:191–200
Van Essen DC, Smith SM, Barch DM, Behrens TEJ, Yacoub E, Ugurbil K et al (2013) The WU-minn human connectome project: an overview. Neuroimage 15(80):62–79
Wang Y, Metoki A, Alm KH, Olson IR (2018) White matter pathways and social cognition. Neurosci Biobehav Rev. https://doi.org/10.1016/j.neubiorev.2018.04.015
Wierenga LM, Doucet GE, Dima D, Agartz I, Aghajani M, Akudjedu TN et al (2022) Greater male than female variability in regional brain structure across the lifespan. Hum Brain Mapp 43(1):470–499
Witelson SF (1989) Hand and sex differences in the human corpus callosum: a postmortem morphological study. Brain 112(3):799–835
Yang G, Bozek J, Han M, Gao JH (2020) Constructing and evaluating a cortical surface atlas and analyzing cortical sex differences in young Chinese adults. Hum Brain Mapp 41(9):2495–2513
Zemmoura I, Serres B, Andersson F, Barantin L, Tauber C, Filipiak I et al (2014) FIBRASCAN: a novel method for 3D white matter tract reconstruction in MR space from cadaveric dissection. Neuroimage 103:106–118
Zhang H, Schneider T, Wheeler-Kingshott CA, Alexander DC (2012) NODDI: practical in vivo neurite orientation dispersion and density imaging of the human brain. Neuroimage 61(4):1000–1016
Funding
Open access funding provided by Commissariat à l'Énergie Atomique et aux Énergies Alternatives. This research has received funding from the European Union’s Horizon 2020 Framework Program for Research and Innovation under the specific Grant No. 945539 (Human Brain Project SGA3).
Author information
Authors and Affiliations
Contributions
All authors reviewed and contributed to the manuscript. CP, IU and SD conceived and designed the analysis. BH performed the analysis and wrote the paper. MC contributed to diffusion tractography analysis.
Corresponding author
Ethics declarations
Conflict of interest
All author state that there exist no financial or personal interest or belief that could affect their objectivity.
Ethical approval
This study was performed in line with the principles of the Declaration of Helsinki. No approval by the Ethics Committee was required, because this study was performed on the HCP dataset, a publicly available and anonymized dataset (see https://www.humanconnectome.org/study/hcp-young-adult). All authors have accepted the HCP Open Access Data Use Terms.
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Supplementary Information
Below is the link to the electronic supplementary material.
Rights and permissions
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
About this article
Cite this article
Herlin, B., Uszynski, I., Chauvel, M. et al. Sex-related variability of white matter tracts in the whole HCP cohort. Brain Struct Funct 229, 1713–1735 (2024). https://doi.org/10.1007/s00429-024-02833-0
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00429-024-02833-0