审查(临床试验)
比例危险模型
截尾回归模型
生物统计学
判别式
计算机科学
回归
生存分析
人工智能
回归分析
机器学习
统计
计量经济学
数据挖掘
数学
医学
内科学
流行病学
作者
Chirag Nagpal,Steve Yadlowsky,Negar Rostamzadeh,Katherine Heller
出处
期刊:Cornell University - arXiv
日期:2021-01-01
被引量:16
标识
DOI:10.48550/arxiv.2101.06536
摘要
Survival analysis is a challenging variation of regression modeling because of the presence of censoring, where the outcome measurement is only partially known, due to, for example, loss to follow up. Such problems come up frequently in medical applications, making survival analysis a key endeavor in biostatistics and machine learning for healthcare, with Cox regression models being amongst the most commonly employed models. We describe a new approach for survival analysis regression models, based on learning mixtures of Cox regressions to model individual survival distributions. We propose an approximation to the Expectation Maximization algorithm for this model that does hard assignments to mixture groups to make optimization efficient. In each group assignment, we fit the hazard ratios within each group using deep neural networks, and the baseline hazard for each mixture component non-parametrically. We perform experiments on multiple real world datasets, and look at the mortality rates of patients across ethnicity and gender. We emphasize the importance of calibration in healthcare settings and demonstrate that our approach outperforms classical and modern survival analysis baselines, both in terms of discriminative performance and calibration, with large gains in performance on the minority demographics.
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