2024
DOI: 10.1101/2024.01.18.24301456
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Deep Survival Analysis for Interpretable Time-Varying Prediction of Preeclampsia Risk

Braden W Eberhard,
Kathryn J Gray,
David W Bates
et al.

Abstract: Objective: Survival analysis is widely utilized in healthcare to predict the timing of disease onset. Traditional methods of survival analysis are usually based on Cox Proportional Hazards model and assume proportional risk for all subjects. However, this assumption is rarely true for most diseases, as the underlying factors have complex, non-linear, and time-varying relationships. This concern is especially relevant for pregnancy, where the risk for pregnancy-related complications, such as preeclampsia, varie… Show more

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