Abstract
Alzheimer’s disease (AD) is the most common form of dementia and is characterised by the triad of amyloid plaques, tau pathology and neurodegeneration. Except for a strong association with the susceptibility gene, specifically the apolipoprotein E (APOE) ε4 allele, the pathogenesis of the most common age-related sporadic form of AD is largely unknown. However, several genetic and environmental risk factors have been proposed. A potential problem is that most population-based studies on AD risk-profiling have not used biomarkers reflecting amyloid and tau pathology to classify patients and controls. Given the complex pathophysiology of late-onset AD and the difficulties in correctly diagnosing AD on purely clinical grounds, this introduces a risk of misclassification of both control subjects and clinically diagnosed AD cases. Importantly, in recent years, there has been a very successful development of blood biomarkers for AD pathophysiologies, including brain amyloidosis (amyloid β ratio), tau pathology (phosphorylated tau) and neurodegeneration (neurofilament light). Numerous studies have shown these biomarkers to correlate with amyloid and tau pathology load evaluated by PET and with MRI measures of neurodegeneration, and to predict future cognitive decline. The employment of blood biomarkers in epidemiological studies may foster an understanding of which and how specifically lifestyle risk factors are linked to AD, and repeated blood sampling in intervention trials may provide evidence as to whether controlling lifestyle factors may affect specific AD pathophysiologies.
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7.1 Introduction
Alzheimer’s disease (AD) is the most common neurodegenerative disease and a major cause of capability impairment in the elderly. The first detectable pathology, which occurs decades before clinical symptom onset, is the accumulation of extracellular amyloid plaques in the brain, which have as their core the 42-amino-acid-long amyloid β (Aβ) protein. Biomarker studies suggest that Aβ accumulation is followed by increased phosphorylation and secretion of tau, a microtubule-associated axonal protein that is highly expressed in cortical neurons. Dysfunctional tau metabolism leads to AD-type neurodegeneration, with the development of dystrophic neurites and intraneuronal neurofibrillary tangles that are composed of hyperphosphorylated and truncated tau proteins. Neurodegeneration translates into the AD clinical syndrome, with neurodegeneration being spatially and temporally associated with the pattern of cognitive deficits that worsen as the disease progresses. Exactly what initiates the amyloidogenic cascade is not known and may well be multifactorial, but the major risk factors are increasing age and the ε4 allele of the apolipoprotein E (APOE) gene, which is associated with a major increase in AD risk.
7.1.1 The Molecular Neuropathology of AD
The key microscopic neuropathological features of AD include neuronal and synaptic degeneration, accompanied by different forms of protein aggregates called plaques, neurofibrillary tangles and neuropil threads, Hirano bodies, and granulovacuolar degeneration (Perry, 1986; Terry & Davies, 1980; Tomlinson et al., 1968, 1970). Plaques and tangles are found in the hippocampus and cortex, as well as in subcortical grey matter nuclei, such as the nucleus basalis of Meynert and locus coeruleus (Mann et al., 1985; Tomlinson, 1989), while Hirano bodies and granulovacuolar degeneration are largely restricted to the hippocampus. Plaques and tangles are found with increasing frequency with ageing, including in cognitively unimpaired individuals, and become very common at higher ages (Mann et al., 1984, 1985; Tomlinson, 1989; Dayan, 1970; Mann et al., 1984; Price et al., 2009).
Plaques are primarily composed of aggregated β-amyloid (Aβ), and are rounded extracellular lesions (Masters et al., 1985; Glenner & Wong, 1984) (Fig. 7.1). The majority of Aβ found in plaques ends at position 42 (Aβ42), which is a form of Aβ that is most prone to aggregation, in contrast to Aβ40, which is the most abundant variant. Plaques exist as diffuse plaques that are regarded as being the earliest form, and neuritic plaques, which consist of a central core of amyloid fibres surrounded by dystrophic neurites filled with fibrillary tau protein, and reactive astrocytes and microglia (Thal et al., 2002). Tangles are located in the neuronal cytoplasm, while neuropil threads are extended structures in the neuropil (Fig. 7.1); both are primarily formed of hyperphosphorylated tau protein (Grundke-Iqbal et al., 1986).
In elderly patients with AD, the number of plaques and tangles varies considerably and overlaps with the number found in cognitively unimpaired elderly people (Mann et al., 1984, 1985; Hansen et al., 1988). A common explanation for this overlap is that elderly patients with AD-type dementia have other pathologies in addition to plaques and tangles, including α-synuclein and TDP-43 deposits, as well as cerebrovascular disease and other pathologies (James et al., 2016; Kovacs et al., 2013). Other frequent points of discussion are whether certain individuals may be more or less susceptible to AD-type pathological changes, whether lifestyle affects the risk or phenotypic expression of the pathologies and whether lifestyle changes could influence the risk of developing dementia from AD. Positive results for multimodal lifestyle interventions have been reported (Ngandu et al., 2015), but an outstanding question is whether such interventions have a direct impact on the neuropathology of AD (a recent biomarker-based study suggests that they do not (Steen Jensen et al., 2016)), or whether they confer protection via ancillary mechanisms such as improved cerebral blood flow, myelination, increased synaptic density or improved immune function. In any case, studies with long-term clinical follow-up suggest that >90% of plaque-positive individuals eventually develop dementia (Buchhave et al., 2012; Rowe et al., 2013), indicating that biomarkers for plaque pathology can be used to identify AD in the preclinical stage of the disease, and thus may have value as tools to enrich the search for asymptomatic AD in intervention studies.
7.2 Clinical Neurochemistry and Fluid Biomarkers
The development of cerebrospinal fluid (CSF) and blood (plasma and serum) biomarkers is a lead project for the Clinical Neurochemistry Laboratory. Such biomarkers for the different types of pathophysiology found in the brains of elderly people have several applications, both in research and in the clinic. Firstly, biomarkers have value in the clinical diagnosis, especially in the early stages of the disease, when symptoms are vague and uncharacteristic. Secondly, biomarkers are key in clinical research to deepen our understanding of the pathogenesis of the disease, for example the time course of different pathologies, how they contribute to the symptoms, how lifestyle and other risk factors may influence the risk of pathological changes, how pathologies may cause subtle changes in behaviour that are not classifiable by traditional clinical criteria and time trends in pathology prevalence, incidence and phenotypic expression (Blennow et al., 2010).
For research on AD and age-related cognitive decline, several highly validated and specific biomarkers are available. Imaging biomarkers include both amyloid and tau positron emission tomography (PET), which give a measure of the density of aggregated amyloid and tau deposits in the brain, and magnetic resonance imaging (MRI), which gives a measure of total and regional brain volume, and thereby degree of neuronal loss. The CSF biomarkers total tau (T-tau), phosphorylated tau (P-tau) and the 42-amino-acid isoform of β-amyloid (Aβ42) reflect the intensity of neuronal and axonal degeneration, the phosphorylation state of tau and tangle formation, and the aggregation and deposition of the Aβ42 peptide into plaques (Blennow & Hampel, 2003). These core AD CSF biomarkers are reviewed below.
7.2.1 The Core CSF Biomarkers for AD
Using enzyme-linked immunosorbent assay (ELISA) methods for T-tau that measure all tau isoforms irrespective of phosphorylation state (Blennow et al., 1995), tau phosphorylated at threonine 181 (P-tau181) (Vanmechelen et al., 2000), and β-amyloid 1-42 (Aβ42) (Andreasen et al. 1999a, b), a very large number of publications have consistently shown that most patients with a clinical diagnosis of AD show the typical ‘AD biomarker profile’, consisting of increased T-tau and P-tau, together with decreased Aβ42 (Olsson et al., 2016). In line with this, studies in which the diagnosis has been confirmed at autopsy have shown even better diagnostic performance in identifying AD dementia (Koopman et al., 2009; Shaw et al., 2009).
Given that clinical diagnosis is most difficult in the earlier stages of the disease, it is important that AD biomarkers also have high diagnostic accuracy in the mild cognitive impairment (MCI) stage of the disease. MCI is a heterogeneous syndrome that can have many causes; only around 50% of MCI patients will progress to AD dementia. A first study evaluating whether the combination of high tau and low Aβ42 in CSF can predict which MCI patients will progress to AD dementia showed that these core AD CSF biomarkers are already positive at this early clinical stage (Andreasen et al., 1999a, b). Furthermore, the CSF biomarkers had similar concentrations in a new CSF sample taken when patients had reached the dementia stage (Andreasen et al., 1999a, b), suggesting that these CSF biomarkers have already plateaued during the MCI stage, and will not change further during the transition stage.
In 2006, the first study with an extended clinical follow-up, which is needed to ascertain which MCI will not progress to AD dementia, showed that, while cognitively stable MCI cases had normal biomarkers, 95% of MCI patients who progressed to AD dementia had the typical AD CSF biomarker (Hansson et al., 2006). This very high capacity of the core AD CSF biomarkers to identify progressive MCI patients (whom we today call prodromal AD) has been verified by a number of large multicentre studies in Europe (Visser et al., 2009) and the USA (Shaw et al., 2009), and in the Swedish Brain Power study (Mattsson et al., 2009).
7.2.2 CSF Biomarkers in Preclinical AD
An important question for the application of CSF biomarkers in population-based studies is whether they can detect AD pathophysiology in the subset of cognitively unimpaired elderly who have clinically silent pathology. Indeed, in 2003 a first study showed that cognitively unimpaired 85-year-olds who at clinical follow-up had developed AD dementia already had decreased CSF Aβ42 levels in this preclinical stage, while both CSF T-tau and P-tau were normal (Skoog et al., 2003). This finding suggests that a CSF test can identify brain amyloid deposition, the central type of AD pathology, preclinically, a finding that was also confirmed in subsequent population-based cohorts of cognitively unimpaired elderly of less advanced age (70–78 years), and even earlier; in a sample taken up to eight years before the appearance of symptoms (Gustafson et al., 2007). Furthermore, these findings support the hypothesis that amyloid deposition (low CSF Aβ42) is present before either neurodegeneration (high T-tau) or tau pathology (high P-tau) is evident. This will facilitate projects examining risk factors for Aβ and tau pathology (and not just their clinical expression) using a molecular epidemiology approach, as discussed in detail below.
7.2.3 New Biomarkers to Monitor Synaptic Dysfunction
Synaptic dysfunction or degeneration is another key feature of AD pathophysiology (Davidsson & Blennow, 1990). Synaptic degeneration correlates more closely with the severity of cognitive disturbances than amyloid plaque load (Terry et al., 1991; DeKosky & Scheff, 1990). Recent studies suggest that early amyloid aggregates, including soluble Aβ oligomers (Shankar et al., 2007) and intracellular Aβ accumulations (Zou et al., 2015), may be the driver behind the synaptic dysfunction with dendritic spine loss in AD.
Combining the core CSF biomarkers for AD with reliable biomarkers to monitor synaptic and dendritic function in longitudinal clinical and epidemiological studies may give clues about AD pathogenesis, specifically the temporal evolution of the different forms of AD pathophysiology, as well as their interrelations, risk factors and relative contributions to cognitive symptoms.
One candidate biomarker for synaptic dysfunction is neurogranin, a dendritic protein expressed in the cortex and hippocampus, which is specifically located in dendritic spines (Represa et al., 1990; Guadano-Ferraz et al., 2005). Neurogranin is involved in synaptic plasticity and the induction of long-term potentiation (LTP) in the hippocampus (Fedorov et al., 1995; Chen et al., 1997), and thus of interest in disorders involving memory dysfunction. In the normal brain, neurogranin expression is highest in the association cortex, while lower neurogranin levels are seen in the cortex and hippocampus of the AD brain (Davidsson & Blennow 1990; Reddy et al., 2005), probably as a consequence of synaptic loss.
A first pilot study on CSF neurogranin as a biomarker for synaptic degeneration in AD found a noticeable increase as compared with cognitively unimpaired individuals of similar age (Thorsell et al., 2010), a finding that could be confirmed in the first study measuring CSF neurogranin by ELISA (Kvartsberg et al., 2015a). High CSF neurogranin in both AD dementia and prodromal AD has subsequently been confirmed in many large studies (Hellwig et al., 2015; Kvartsberg et al., 2015b), including the Alzheimer’s Disease Neuroimaging Initiative (ADNI) multicentre study (Portelius et al., 2015). Interestingly, high CSF neurogranin correlates with future rate of neuronal loss and reductions in cortical metabolism (Portelius et al., 2015). Furthermore, increased CSF neurogranin appears to be specific to AD, since normal levels are found in many other neurodegenerative disorders, e.g., frontotemporal dementia, Lewy body dementia and progressive supranuclear palsy (Wellington et al., 2016).
7.3 The Need for Molecular Epidemiology Studies
The vast majority of population-based studies on AD risk profiling have not classified patients or controls using biomarkers reflecting specific AD pathophysiologies, i.e., amyloid and tau pathology (Yu et al., 2020), but instead have examined risk factors for age-related dementia or clinically diagnosed ‘probable AD’. Such studies are also hampered by the complex pathophysiology of late-onset AD and the difficulties in making a correct clinical diagnosis. This introduces the risk that a proportion of cognitively unimpaired individuals (classified as control subjects) have preclinical AD pathology and thus limits the ability to correctly identify the underlying type of pathology (AD or other age-related dementias). Indeed, type II diabetes has been found to be a risk factor for ‘probable AD’ (defined as an ‘amnestic dementia’) in studies without biomarkers (Lu et al., 2009), while clinical studies validating clinical associations with pathology at autopsy show that the basis for the association between diabetes and cognitive disturbances is through cerebrovascular lesions, and not amyloid plaques or tau pathology (Abner et al., 2016; Nelson et al., 2011). In agreement, population-based studies using biomarkers have found that mid-life risk factors previously claimed to be associated with dementia (or ‘probable AD’), such as obesity, smoking, diabetes, hypertension and cardiac disease were not associated with amyloid pathology, but with neurodegeneration (Vemuri et al., 2012). Similarly, GWAS studies have found an association between gene loci and clinically diagnosed ‘probable AD’, but when these loci are examined in cohorts with autopsy-verified diagnoses, many loci show no association with either amyloid plaques or tau pathology, but with cerebrovascular lesions (Beecham et al., 2014). Conversely, genetic studies using biomarkers for Aβ and tau pathologies as endophenotypes identify slightly different sets of susceptibility genes (Deming et al., 2017), and the association of AD with APOE ε4 grows stronger (Andreasson et al., 2014).
In addition, it may be of interest to link modifiable risk factors to specific pathophysiologies following the amyloid (A), tau (T) and neurodegeneration (N) classification system (Jack Jr et al., 2016), in order to understand which risk factors are directly associated with AD, and which are associated with old-age dementia in general.
7.4 Blood Tests will Facilitate the Implementation of Biomarkers in Population-Based Studies
While PET imaging and CSF biomarkers are well-validated tools to measure AD pathophysiology, they have some drawbacks that may make them more difficult to implement in epidemiological studies. PET imaging is expensive and has limited accessibility, and CSF collection by lumbar puncture may be frightening for study participants and regarded as complicated and time-consuming by many clinicians. Thus, the ability to measure proteins linked to AD pathophysiology in blood samples may facilitate the implementation of biomarkers.
Recent technical developments have provided ultrasensitive techniques, such as immuno- magnetic reduction (IMR) and single-molecule array (Simoa), that enable the measurement of brain-derived proteins in blood samples (Andreasson et al., 2016).
7.4.1 Brain Amyloidosis – Plasma Aβ42/40 Ratio
Plasma levels of amyloid β, specifically the Aβ42/40 ratio, are reduced in Alzheimer’s disease (AD) and show high concordance with brain amyloidosis as assessed by PET. The explanation is likely to be that the 42-amino-acid-long variant of amyloid β (Aβ42), which is hydrophobic and prone to aggregate (Jarrett et al., 1993), is deposited in amyloid plaques, with a smaller amount being secreted to the CSF (Olsson et al., 2016) and blood. Using the ultrasensitive Simoa technology to measure Aβ42 in plasma (Zetterberg et al., 2011), a statistically significant correlation was found between Aβ42 (and the Aβ42/40 ratio) in plasma and CSF, as well as with amyloid load measured by PET technology (Janelidze et al., 2016). Plasma Aβ42 and Aβ40 can also be measured using fully automated instruments (Palmqvist et al., 2019), and mass spectrometry techniques (Schindler et al., 2019), showing high concordance with amyloid PET measures.
7.4.2 Tau Pathology – Phosphorylated Tau
Tau phosphorylated at position 181 (P-tau181) can be measured in plasma using MSD technology; a first paper showed a marked increase in AD and a clear association with tau PET (Mielke et al., 2018), a finding that was validated in two large clinical cohorts (Janelidze et al., 2020; Thijssen et al., 2020). Importantly, plasma P-tau181 was normal in other tau-pathologies, including frontotemporal dementia, progressive supranuclear palsy and corticobasal degeneration (Thijssen et al., 2020). Another paper presented a method for measuring plasma P-tau181 using the Simoa technique, and showed a marked increase in AD, a clear association with tau pathology measured by PET, but also that plasma P-tau was already increased in individuals with brain amyloidosis, but still a negative tau PET scan (Karikari et al., 2020). Other tau variants, specifically P-tau217, are also measurable in blood samples, with very promising results (Palmqvist et al., 2020). Taken together, these studies indicate that plasma P-tau is a reliable biomarker for tau pathology, which is easily accessible.
7.4.3 Neurodegeneration – Neurofilament Light Protein
Total tau (T-tau) and neurofilament light (NFL) reflect neuronal injury and are measurable in blood. Both these biomarkers show promise as a biomarker for acute neuronal injury (e.g., acute traumatic or hypoxic brain injury), with rapid and dramatic increases that also predict clinical outcome (Moseby-Knappe et al., 2019). However, T-tau in blood only shows a marginal increase in AD, but still correlates with atrophy measured by MRI and reduced cortical metabolism assessed by FDG-PET (Mattsson et al., 2016).
Another neuronal protein, neurofilament light (NFL), can also be measured in blood samples using the Simoa technique (Kuhle et al., 2016). Similar to tau protein, plasma NFL concentrations are increased in both AD dementia and MCI cases (Mattsson et al., 2017). Interestingly, higher plasma NFL concentrations were associated with amyloid deposition (as evaluated by amyloid PET), and predicted progression of cognitive decline and brain atrophy (Mattsson et al., 2017). However, a robust increase in blood NFL levels is found in several neurodegenerative disorders, not only in AD, indicating that it is a non-disease-specific biomarker for axonal degeneration (Lewczuk et al., 2018). Importantly, plasma NFL is already increasing in the preclinical phase of AD (Weston et al., 2017; Preische et al., 2019). These findings support the idea that plasma NFL can be used in the epidemiology setting as a neurodegeneration marker.
In summary, we have witnessed a rapid and successful development of blood biomarkers for specific pathologies in AD, including brain amyloidosis (Aβ42/40 ratio), tau pathology (P-tau), and neurodegeneration (NFL). The implementation of blood biomarkers in epidemiological studies may foster the understanding of lifestyle risk factors for AD, and repeated blood sampling may prove useful to assess the benefits of lifestyle interventions.
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Blennow, K., Zetterberg, H. (2022). The Neurochemistry of Alzheimer’s Disease: One of the Most Common Causes of Reduced Capability in the Adult Population. In: Falk Erhag, H., Lagerlöf Nilsson, U., Rydberg Sterner, T., Skoog, I. (eds) A Multidisciplinary Approach to Capability in Age and Ageing. International Perspectives on Aging, vol 31. Springer, Cham. https://doi.org/10.1007/978-3-030-78063-0_7
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