Reverse Survival Model (RSM): A Pipeline for Explaining Predictions of Deep Survival Models

The aim of survival analysis in healthcare is to estimate the probability of occurrence of an event, such as a patient's death in an intensive care unit (ICU). Recent developments in deep neural networks (DNNs) for survival analysis show the superiority of these models in comparison with other...

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Hauptverfasser: Rezaei, Mohammad R, Fard, Reza Saadati, Pourjafari, Ebrahim, Ziaei, Navid, Sameizadeh, Amir, Shafiee, Mohammad, Alavinia, Mohammad, Abolghasemian, Mansour, Sajadi, Nick
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creator Rezaei, Mohammad R
Fard, Reza Saadati
Pourjafari, Ebrahim
Ziaei, Navid
Sameizadeh, Amir
Shafiee, Mohammad
Alavinia, Mohammad
Abolghasemian, Mansour
Sajadi, Nick
description The aim of survival analysis in healthcare is to estimate the probability of occurrence of an event, such as a patient's death in an intensive care unit (ICU). Recent developments in deep neural networks (DNNs) for survival analysis show the superiority of these models in comparison with other well-known models in survival analysis applications. Ensuring the reliability and explainability of deep survival models deployed in healthcare is a necessity. Since DNN models often behave like a black box, their predictions might not be easily trusted by clinicians, especially when predictions are contrary to a physician's opinion. A deep survival model that explains and justifies its decision-making process could potentially gain the trust of clinicians. In this research, we propose the reverse survival model (RSM) framework that provides detailed insights into the decision-making process of survival models. For each patient of interest, RSM can extract similar patients from a dataset and rank them based on the most relevant features that deep survival models rely on for their predictions.
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Statistics - Machine Learning
title Reverse Survival Model (RSM): A Pipeline for Explaining Predictions of Deep Survival Models
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