Author:
Lisboa Paulo J. G.,Jayabalan Manoj,Ortega-Martorell Sandra,Olier Ivan,Medved Dennis,Nilsson Johan
Abstract
AbstractThe most limiting factor in heart transplantation is the lack of donor organs. With enhanced prediction of outcome, it may be possible to increase the life-years from the organs that become available. Applications of machine learning to tabular data, typical of clinical decision support, pose the practical question of interpretation, which has technical and potential ethical implications. In particular, there is an issue of principle about the predictability of complex data and whether this is inherent in the data or strongly dependent on the choice of machine learning model, leading to the so-called accuracy-interpretability trade-off. We model 1-year mortality in heart transplantation data with a self-explaining neural network, which is benchmarked against a deep learning model on the same development data, in an external validation study with two data sets: (1) UNOS transplants in 2017–2018 (n = 4750) for which the self-explaining and deep learning models are comparable in their AUROC 0.628 [0.602,0.654] cf. 0.635 [0.609,0.662] and (2) Scandinavian transplants during 1997–2018 (n = 2293), showing good calibration with AUROCs of 0.626 [0.588,0.665] and 0.634 [0.570, 0.698], respectively, with and without missing data (n = 982). This shows that for tabular data, predictive models can be transparent and capture important nonlinearities, retaining full predictive performance.
Funder
Vetenskapsrådet
VINNOVA
Hjärt-Lungfonden
Anna-Lisa and Sven Eric Lundgrens Foundation
Region Skane research funds
Skane University Hospital
Government grant for clinical research
Familjen Hjelms Stiftelse för medicinsk forskning
Lund University
Publisher
Springer Science and Business Media LLC
Cited by
9 articles.
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