| Literature DB >> 30718635 |
Kathleen Gilbert1, Wenjia Bai2, Charlene Mauger3, Pau Medrano-Gracia3, Avan Suinesiaputra3, Aaron M Lee4,5, Mihir M Sanghvi4,5, Nay Aung4,5, Stefan K Piechnik6, Stefan Neubauer6, Steffen E Petersen4,5, Daniel Rueckert2, Alistair A Young7,8.
Abstract
Left ventricular (LV) mass and volume are important indicators of clinical and pre-clinical disease processes. However, much of the shape information present in modern imaging examinations is currently ignored. Morphometric atlases enable precise quantification of shape and function, but there has been no objective comparison of different atlases in the same cohort. We compared two independent LV atlases using MRI scans of 4547 UK Biobank participants: (i) a volume atlas derived by automatic non-rigid registration of image volumes to a common template, and (ii) a surface atlas derived from manually drawn epicardial and endocardial surface contours. The strength of associations between atlas principal components and cardiovascular risk factors (smoking, diabetes, high blood pressure, high cholesterol and angina) were quantified with logistic regression models and five-fold cross validation, using area under the ROC curve (AUC) and Akaike Information Criterion (AIC) metrics. Both atlases exhibited similar principal components, showed similar relationships with risk factors, and had stronger associations (higher AUC and lower AIC) than a reference model based on LV mass and volume, for all risk factors (DeLong p < 0.05). Morphometric variations associated with each risk factor could be quantified and visualized and were similar between atlases. UK Biobank LV shape atlases are robust to construction method and show stronger relationships with cardiovascular risk factors than mass and volume.Entities:
Mesh:
Year: 2019 PMID: 30718635 PMCID: PMC6362245 DOI: 10.1038/s41598-018-37916-6
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Participant characteristics for those cases in both atlases (n = 4547).
| Age (years) | 62 ± 8 |
| Sex (male) | 2153 (47%) |
| Height (cm) | 170 ± 9 |
| Weight (kg) | 76 ± 15 |
| Body surface area (m2) | 1.85 ± 0.21 |
| Systolic blood pressure (mmHg) | 139 ± 19 |
| Diastolic blood pressure (mmHg) | 79 ± 11 |
| Heart Rate (bpm) | 68 ± 11 |
| High blood pressure | 1183 (26%) |
| Smoking (never) | 2688 (59%) |
| Smoking (previous) | 1552 (34%) |
| Smoking (current) | 296 (7%) |
| Diabetes | 235 (5%) |
| Angina | 104 (2%) |
| Asthma | 493 (11%) |
| High Cholesterol | 1183 (26%) |
Values are given as mean ± standard deviation for continuous variables, and count (%) for categorical variables.
Figure 1Surface atlas construction. Left to right: Images to average shape model.
Figure 2Volume atlas construction. Left to right: Images to shape model.
Figure 3Principal component analysis results for the surface atlas. (a) ED first three principal components; (b) ES first three principal components; (c) ED % variance explained for the first 20 modes; (d) ES % variance explained for the first 20 modes. The viewpoint is from the septum with the inferior wall on the left.
Figure 4Principal component analysis results for the volume atlas. (a) ED first three principal components; (b) ES first three principal components; (c) ED % variance explained for the first 20 modes; (d) ES % variance explained for the first 20 modes. The viewpoint is from the septum with the inferior wall on the left.
Five-fold cross-validated logistic regression analysis results for binomial categorical factors and LV shape (first 20 principal component modes from ED and ES).
| Volume Atlas | Surface Atlas | MassVol | |
|---|---|---|---|
| High blood pressure | 0.77*** (2157) | 0.76*** (2143) | 0.68 (2382) |
| Smoking | 0.68* (1174) | 0.68* (1156) | 0.62 (1213) |
| Diabetes | 0.80*** (857) | 0.79*** (869) | 0.70 (1001) |
| High cholesterol | 0.73** (1124) | 0.73** (1126) | 0.65 (1224) |
| Angina | 0.77* (551) | 0.76* (528) | 0.67 (607) |
MassVol model includes LV mass, EDV and ESV as independent variables. Each cell has AUC (AIC). *P < 0.05, **P < 0.01, ***P < 0.001, DeLong’s test for differences in AUC from MassVol AUC.
Figure 5Cumulative area under the curve with increasing numbers of modes included and density of morphometric risk factor scores. Scores for the reference (healthy) cohort are shown in blue and those for risk factor positive cases are shown in orange.
Figure 6Morphometric risk factor shapes. The 9th and 95th percentile of the logistic regression models rendered at ED and ES. The average shapes were drawn with differences shown in the color scale yellow (outward surface movement) to blue (inward surface movement). View point is from the anterior, with septum on the left. Displacements are in mm.