Machine learning cardiac-MRI features predict mortality in newly diagnosed pulmonary arterial hypertension
European Heart Journal - Digital Health

Abstract
Pulmonary arterial hypertension (PAH) is a rare but serious disease associated with high mortality if left untreated. This study aims to assess the prognostic cardiac magnetic resonance (CMR) features in PAH using machine learning.
Seven hundred and twenty-three consecutive treatment-naive PAH patients were identified from the ASPIRE registry; 516 were included in the training, and 207 in the validation cohort. A multilinear principal component analysis (MPCA)-based machine learning approach was used to extract mortality and survival features throughout the cardiac cycle. The features were overlaid on the original imaging using thresholding and clustering of high- and low-risk of mortality prediction values. The 1-year mortality rate in the validation cohort was 10%. Univariable Cox regression analysis of the combined short-axis and four-chamber MPCA-based predictions was statistically significant (hazard ratios: 2.1, 95% CI: 1.3, 3.4,
The MPCA-based machine learning is an explainable time-resolved approach that allows visualization of prognostic cardiac features throughout the cardiac cycle at the population level, making this approach transparent and clinically interpretable. In addition, the added prognostic value over the REVEAL risk score and CMR volumetric measurements allows for a more accurate prediction of 1-year mortality risk in PAH.
Contributors

Johanna Uthoff
Author

Shuo Zhou
Author

Pankaj Garg
Author

Krit Dwivedi
Author

Faisal Alandejani
Author

Rebecca Gosling
Author

Samer Alabed
Author
University of Sheffield Sheffield , United Kingdom of Great Britain & Northern Ireland

Lawrence Schobs
Author

Martin Brook
Author

Yousef Shahin
Author

Dave Capener
Author

Christopher S Johns
Author

Jim M Wild
Author

Alexander M K Rothman
Author

Rob J van der Geest
Author

Robin Condliffe
Author

David G Kiely
Author

Haiping Lu
Author

Andrew J Swift
Author
