Abstract
To evaluate the influence of heart rate on coronary calcium scores (CCS) using a dynamic phantom on four high-end computed tomography (CT) systems from different manufacturers. Artificial coronary arteries were moved in an anthropomorphic chest phantom at linear velocities, corresponding to < 60, 60–75 and > 75 beats per minute (bpm). Data was acquired with routinely used clinical protocols for CCS on four high-end CT systems (CT1–CT4). CCS, quantified as Agatston and mass scores were compared to reference scores at < 60 bpm. Influence of heart rate was assessed for each system with the cardiac motion susceptibility (CMS) Index. At increased heart rates (> 75 bpm), Agatston scores of the low mass calcification were similar to the reference score, while Agatston scores of the medium and high mass calcification increased significantly up to 50% for all CT systems. Threefold CMS increases at > 75 bpm in comparison with < 60 bpm were shown. For medium and high mass calcifications, significant differences in CMS between CT systems were found. Heart rate substantially influences CCS for high-end CT systems of four major manufacturers, but CT systems differ in motion susceptibility. Follow-up CCS CT scans should be acquired on the same CT system and protocol, and preferably with comparable heart rates.
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Introduction
Despite advances in treatment, atherosclerotic cardiovascular disease remains the main cause of mortality worldwide [1]. For the determination of the prognosis of future cardiovascular disease, risk categories based on the amount of coronary calcium are increasingly used [2]. Coronary calcium can be quantified with computed tomography (CT) as coronary calcium scores (CCS), including Agatston scores, mass scores and volume scores [3]. Correct and reproducible CCS are essential considering their use in the guidelines [1, 4]. If risk-based treatment decision is uncertain after quantitative risk assessment, the 2013 guidelines recommend repeated CCS measurements. Also, CCS progression in repeated CCS measurements has recently been associated with heart failure [5].
Several studies have demonstrated the dependence of CCS on motion [6,7,8,9]. Motion artifacts can result in incorrect Agatston scores, which may thereby lead to incorrect risk classification. Depending on heart rate and anatomical location, coronary arteries move at velocities of 10–30 mm/s during the acquisition phase, whereas coronary arteries are often erroneously assumed to be stationary during CT acquisition [10,11,12].
Previously published studies on the influence of heart rate on CCS have only focused on CT systems from a single manufacturer [9, 13, 14]. Recently, substantial differences in CCS between new generation CT systems were demonstrated. Willemink et al. found differences in Agatston scores between CT systems of up to 43.9% for static calcifications [15]. However, the effect of heart rate on CCS for different state-of-the-art CT systems remains unknown. The aim of the current study was therefore to determine the influence of heart rate on CCS for the high-end CT systems from four major manufacturers at routinely used clinical protocols with a dynamic phantom.
Materials and methods
Phantom
A computer-controlled lever (QRM-Sim2D, QRM, Möhrendorf, Germany) moved an artificial coronary artery in a water container in the center of an anthropomorphic chest phantom (QRM-Chest, QRM, Möhrendorf, Germany) (Fig. 1). The chest phantom consisted of artificial lungs, a spine insert and a shell of tissue equivalent material. An extension ring (QRM-Extension Ring, QRM, Möhrendorf, Germany), made of fat equivalent material, was used to increase the size of the phantom to 400 × 300 mm, in order to mimic an average sized patient. The artificial artery was moved at constant linear velocities of 0, 10, 20 and 30 mm/s in the horizontal plane, perpendicular to the scan direction. Artificial calcified coronary arteries were used, which contained cylindrical calcifications of calcium hydroxyapatite (HA) (Fig. 2). The dimensions of the calcifications were 5.0 ± 0.1 mm in diameter and 10.0 ± 0.1 mm in length. Three calcification densities were used: 196 ± 3, 408 ± 2 and 800 ± 2 mg HA/cm3. These densities were categorized as low (38.5 ± 1.7 mg), medium (80.1 ± 3.3 mg) and high (157.1 ± 6.5 mg), corresponding to mild, moderate and severe calcified coronary plaque burden, respectively.
Image acquisition and evaluation
In order to assess the influence of heart rate on CCS in a clinical setting, routinely used clinical CT CCS protocols were used (Table 1). The protocols were equal to the manufacturer recommended protocol if available or were adapted from the factory settings based on recommendations by the specific manufacturer consultants. Four high-end CT systems from the main four CT manufacturers were used (CT1–CT4): Discovery CT 750 HD (GE Healthcare, Waukesha, WI, USA), Brilliance iCT (Philips Healthcare, Best, The Netherlands), Somatom Definition Flash (Siemens Healthcare, Forchheim, Germany) and Aquilion One (Toshiba Medical Systems, Otawara, Japan), respectively.
For each velocity the phantom was scanned five times, with a small random translation (2 mm) and rotation (2 °) between the scans by repositioning of the phantom. An electrocardiographic trigger output of the motion controller was used for electrocardiographic triggering of the CT systems to ensure that data was acquired only during linear motion of the phantom (Fig. 3). Data were reconstructed with filtered back projection (FBP) on each CT system using the kernels listed in Table 1. CCS was quantified as Agatston score and mass score using the routinely used manufacturers’ software with a default threshold for calcium scoring of 130 Hounsfield units (HU). The mass score calibration factor was calculated as described by McCollough et al. [16]. One observer performed the measurements with a semi-automatic method by selecting the calcification. For each individual calcification, median and range from the five measurements were calculated for both the Agatston score and mass score.
In order to interpret the results in terms of heart rate dependent CCS, the linear velocities of the artificial coronary arteries were converted to corresponding heart rates. Averaged over all coronary arteries at a cardiac cycle phase of 70% of the RR-interval, the average velocity of the coronary arteries during the acquisition phase is approximately 10, 20 and 30 mm/s for heart rates of < 60, 60–75 and > 75 beats per minute (bpm), respectively [11].
Statistical analysis
Wilcoxon signed rank tests were used to compare Agatston and mass scores to the reference scores at < 60 bpm, and to compare mass scores to the physical mass. A p value smaller than 0.05 was used to indicate significant differences. Motion susceptibility was assessed with the cardiac motion susceptibility (CMS) Index, as described by Groen et al. [17]. This index gives a measure of the median deviation of the calcium scores over all heart rates from the CCS at rest. The CMS Index was calculated with the following equation:
In this equation, x0 is the CCS at 0 bpm. The total number of heart rates is given by N, and the CCS at heart rate i by xi. A smaller CMS value signifies a lower motion susceptibility of CCS to cardiac motion. Kruskal Wallis tests were used to assess differences between calcium masses for each CT system and between CT systems, with a p value smaller than 0.05 indicating significant differences. All statistical analyses were performed with SPSS for Windows, version 22.0 (IBM corp., Armonk, NY, USA).
Results
CCS for the reference heart rate of < 60 bpm are listed in Tables 2 and 3. At the reference heart rate, mass scores underestimated physical mass significantly for all calcification masses and all CT systems, except for the high (p = 0.500) and medium (p = 0.221) mass calcification for CT 2 and CT4 respectively. Example CT images for the high mass calcification at > 75 bpm for all CT systems are shown in Fig. 4.
Influence of heart rate on Agatston score
The influence of increasing heart rates on Agatston scores for low, medium and high mass calcifications is shown in Table 2 and Fig. 5a. For the low mass calcification and all CT systems, Agatston scores at increasing heart rates were not significantly different from the reference Agatston score at < 60 bpm, regardless of the CT system. For the medium mass calcification at > 75 bpm, significant increases in Agatston scores were shown for all CT systems. Significant increases up to 50% were also found for the high mass calcification. The influence of heart rate on the Agatston scores was different depending on the particular CT system. For example, at increased heart rate, CT3 showed an increase in Agatston score of 22% for the high mass calcification, while differences of 45–50% were found for the other CT systems.
Influence of heart rate on mass score
Mass scores as a function of heart rate for the low, medium and high mass calcification are shown in Table 3. At 60–75 bpm, significantly different mass scores in comparison with the reference at < 60 bpm were only shown for CT1 with the low mass calcification. At > 75 bpm, CT1 showed significantly different mass scores for the low mass and high mass calcification. The low mass and high mass calcification also showed significantly different mass scores for CT2. For CT3, all mass scores at > 75 bpm were similar to the reference scores. CT4 showed significantly different mass scores for the low mass and high mass calcification.
In comparison with the physical mass, for all CT systems, mass scores for the low mass calcification were underestimated significantly (p < 0.05) by 19–48% averaged over all heart rates (Fig. 5b). For the medium mass calcification at 60–75 bpm, CT4 showed an accurate approximation of the physical mass (deviation 7%, p = 0.080), whereas the other CT systems showed significant underestimations (p < 0.05) up to 23%. At > 75 bpm, both CT2 and CT4 showed an accurate approximation of the physical mass (deviations 1% (p = 0.686) and 2% (p = 0.080), respectively), whereas CT1 and CT3 underestimated the physical mass by 11% (p = 0.043) and 21% (p = 0.043). For the high mass calcification, CT1 and CT3 underestimated the physical mass significantly (p < 0.05) up to 24% for 60–75 and > 75 bpm. Significant overestimations were found for CT2 and CT4 at increased heart rates. At 60–75 bpm, mass scores deviated by 5% (p = 0.043) and 20% (p = 0.043) for CT2 and CT4 respectively, while differences of 15% (p = 0.043) and 19% (p = 0.042) were found at > 75 bpm.
CMS analysis
Susceptibility of the Agatston and mass scores to motion, as expressed by CMS values, were smaller for mass scores, which indicates a smaller motion susceptibility of the mass score in comparison with the Agatston score (Fig. 6). Averaged over all calcification masses, the CMS value of CT3 was the smallest. Comparison of the CMS values of the three calcification masses per CT system showed significant differences between these values for CT1 (p = 0.009) and CT4 (p = 0.002). The motion susceptibility of the Agatston score for CT1 and CT4 therefore depends on the calcification density. For CT2 (p = 0.114) and CT3 (p = 0.054) CMS values of the three masses were not significantly different. Statistical analysis of the mass score CMS values showed similar results. Significant differences between CMS values of the different calcification masses were found for CT1 (p = 0.008) and CT4 (p = 0.005), whereas CT2 (p = 0.432) and CT3 (p = 0.050) did not show significant differences.
Differences in motion susceptibility between CT systems were significant. For the low mass calcification, susceptibility to motion as expressed in CMS values of the Agatston scores were comparable (p = 0.564) between CT systems, whereas CMS values of the mass scores showed significant differences (p = 0.009). The medium mass calcification showed significantly different (p = 0.043) Agatston score CMS values, while mass score CMS values were comparable (p = 0.687). For the high mass calcification, significant differences were shown for both the Agatston (p = 0.006) and mass score (p = 0.004) CMS values.
Discussion
This dynamic phantom study showed that for high-end CT systems of four major CT manufacturers coronary calcium scores were substantially, but not equally, influenced (up to 50%) by heart rate. Motion susceptibility depends on both calcification mass and CT system. At increased heart rates, the stability of the mass score is superior to Agatston score stability.
The most important findings in this study were as follows. First, we found that no modern CT system is capable of completely mitigating the influence of heart rate on Agatston score or calcification mass. Second, CMS Index analysis showed significant differences for both Agatston and mass scores between four high-end CT systems. Also, different heart rates were found to differentially affect calcification masses for two CT systems. Thus, for these CT systems the influence of heart rate on CCS depends on calcification density.
For follow-up imaging a valid and precise scoring method is essential, therefore subsequent scans should be made with the same CT system and heart rates should be comparable. For low mass calcifications, voxels above the 130 HU threshold at low heart rate might fall below this threshold as a result of motion blurring. As a result of this effect, CCS will decrease for these calcifications. For medium and high mass calcifications, the number of voxels above the 130 HU threshold will increase as a result of motion blurring, thereby increasing CCS. The registered calcification size is smaller for CT systems with a higher temporal resolution, which is demonstrated in Fig. 4 for CT3 in comparison with the other CT systems. However, many other parameters, including acquisition and reconstruction parameters, also influence the registered calcification size [18]. In addition, technical advances, including dual-energy CT in combination with mono-energetic reconstructions, may influence the registered calcification quantification. With these mono-energetic reconstructions, it has been shown that blooming artefacts can be reduced [19]. Although especially for high density calcifications improved size registration is expected, the influence of these reconstructions on motion artefacts is unknown at this time. Third, the stability of the mass score is clearly superior to the stability of the Agatston score. This can be explained from the different way of calculating the mass score in comparison with the Agatston score. While the Agatston score considers the highest HU value in the lesion, the mass score can be thought of as a weighted average, which is therefore more robust to the effects of motion blurring. We found that the use of modern, state-of-the-art CT systems still results in substantial deviation from the true physical mass.
Our results are in line with a study conducted by Groen et al., who found decreased CCS for low mass calcifications and increased CCS for high mass calcifications at increased heart rates [7]. However, this study focused on only one CT system, while we used four high-end CT systems in the current study. Our findings are in agreement with the studies of Greuter et al. [6] and Groen et al. [7], who also showed the superior stability of mass scores in comparison to Agatston scores. These studies, however, were only performed on CT systems from one manufacturer. Tigges et al. used explanted coronary arteries mounted on a cardiac motion phantom to examine the influence of heart rate on CCS [8]. The explanted coronary arteries were subdivided into categories based on their respective Agatston score. The study showed a decrease in CCS with increasing heart rates, independent of calcification mass. For low mass calcifications these results correspond well to our results, whereas the high mass calcification results differ from our results. This difference in results probably originates from a difference in calcification density, because a high Agatston score can be the result of either a large calcification or a high density. The density of the calcification was not specified in the study of Tigges et al.
The current study has limitations. First, the artificial coronary arteries used in this study were translated at constant linear motion, whereas complex 3D motions are observed in-vivo. This 3D motion is patient and artery specific. Nevertheless, the scan times were relatively short as a result of fast rotation times, whereby the constant linear motion of our phantom was deemed sufficient as a model of the complex in vivo motion of coronary arteries. Second, linear velocity was converted to heart rates based on only one available study [11]. This limitation was accepted because of large variation in heart rates within the chosen heart rate groups (< 60, 60–75 and > 75 bpm). Third, slice thickness and increment were not the same for all CT systems. Previous studies demonstrated increased CCS for decreased slice thicknesses [20, 21]. However, the current study focusses on CCS from clinically used CCS protocols to evaluate the influence of heart rate within each CT system. Also, the deviating slice thickness and increment for CT1 in comparison with the other systems is in line with protocol recommendations as described previously by McCollough et al. [16]. With the clinically used CCS protocols, CCS were acquired with routine CT manufacturers’ software. However, it was demonstrated by Weininger et al. that different types of CCS scoring software resulted in similar CCS [22].
In conclusion, the current dynamic phantom study showed that heart rate substantially influences CCS for the high-end CT systems of the four major CT manufacturers. Therefore, this study suggests that heart rate should be taken into account when interpreting the clinical impact of patients’ calcium scores. Moreover, it is essential to acquire CCS scans on similar CT systems between follow-up studies, preferably at comparable heart rates. Also, mass scores were found to be more stable then Agatston scores.
Abbreviations
- BPM:
-
Beats per minute
- CCS:
-
Coronary calcium score
- CMS:
-
Cardiac Motion Index
- CT:
-
Computed tomography
- FBP:
-
Filtered back projection
- HA:
-
Hydroxyapatite
- HU:
-
Hounsfield units
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The Radiology Department of the University Medical Center Utrecht received institutional grants from Philips Healthcare. Martin Willemink received personal fees for lectures from Philips Healthcare.
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van der Werf, N.R., Willemink, M.J., Willems, T.P. et al. Influence of heart rate on coronary calcium scores: a multi-manufacturer phantom study. Int J Cardiovasc Imaging 34, 959–966 (2018). https://doi.org/10.1007/s10554-017-1293-x
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DOI: https://doi.org/10.1007/s10554-017-1293-x