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Machine learning evaluation of LV outflow obstruction in hypertrophic cardiomyopathy using three-chamber cardiovascular magnetic resonance
被引:0
|作者:
Manisha Sahota
Sepas Ryan Saraskani
Hao Xu
Liandong Li
Abdul Wahab Majeed
Uxio Hermida
Stefan Neubauer
Milind Desai
William Weintraub
Patrice Desvigne-Nickens
Jeanette Schulz-Menger
Raymond Y. Kwong
Christopher M. Kramer
Alistair A. Young
Pablo Lamata
机构:
[1] King’s College London,Department of Biomedical Engineering
[2] University of Oxford,Division of Cardiovascular Medicine, Radcliffe Department of Medicine
[3] Cardiovascular Institute,ECRC and Department of Cardiology, HELIOS Klinik Berlin
[4] Cleveland Clinic,Buch, Clinic for Cardiology and Nephrology
[5] MedStar Heart and Vascular Institute,Cardiovascular Division, Department of Medicine and Department of Radiology
[6] National Heart,Cardiovascular Division
[7] Lung,undefined
[8] and Blood Institute,undefined
[9] DZHK Partnersite Berlin,undefined
[10] Charité Medical University Berlin,undefined
[11] Brigham and Women’s Hospital,undefined
[12] University of Virginia Health,undefined
来源:
关键词:
Hypertrophic cardiomyopathy;
Atlas shape analysis;
LV outflow tract obstruction;
D O I:
暂无
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学科分类号:
摘要:
Left ventricular outflow tract obstruction (LVOTO) is common in hypertrophic cardiomyopathy (HCM), but relationships between anatomical metrics and obstruction are poorly understood. We aimed to develop machine learning methods to evaluate LVOTO in HCM patients and quantify relationships between anatomical metrics and obstruction. This retrospective analysis of 1905 participants of the HCM Registry quantified 11 anatomical metrics derived from 14 landmarks automatically detected on the three-chamber long axis cine CMR images. Linear and logistic regression was used to quantify strengths of relationships with the presence of LVOTO (defined by resting Doppler pressure drop of > 30 mmHg), using the area under the receiver operating characteristic (AUC). Intraclass correlation coefficients between the network predictions and three independent observers showed similar agreement to that between observers. The distance from anterior mitral valve leaflet tip to basal septum (AML-BS) was most highly correlated with Doppler pressure drop (R2 = 0.19, p < 10–5). Multivariate stepwise regression found the best predictive model included AML-BS, AML length to aortic valve diameter ratio, AML length to LV width ratio, and midventricular septal thickness metrics (AUC 0.84). Excluding AML-BS, metrics grouped according to septal hypertrophy, LV geometry, and AML anatomy each had similar associations with LVOTO (AUC 0.71, 0.71, 0.68 respectively, p = ns), significantly less than their combination (AUC 0.77, p < 0.05 for each). Anatomical metrics derived from a standard three-chamber CMR cine acquisition can be used to highlight risk of LVOTO, and suggest further investigation if necessary. A combination of geometric factors is required to provide the best risk prediction.
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页码:2695 / 2705
页数:10
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