Deep learning for survival analysis: a review

被引:0
作者
Simon Wiegrebe
Philipp Kopper
Raphael Sonabend
Bernd Bischl
Andreas Bender
机构
[1] LMU Munich,Statistical Consulting Unit StaBLab, Department of Statistics
[2] LMU Munich,Department of Statistics
[3] LMU Munich,Munich Center for Machine Learning (MCML)
[4] University of Regensburg,Department of Genetic Epidemiology
[5] Imperial College London,MRC Centre for Global Infectious Disease Analysis, Jameel Institute, School of Public Health
来源
Artificial Intelligence Review | / 57卷
关键词
Survival analysis; Time-to-event analysis; Deep learning; Review;
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学科分类号
摘要
The influx of deep learning (DL) techniques into the field of survival analysis in recent years has led to substantial methodological progress; for instance, learning from unstructured or high-dimensional data such as images, text or omics data. In this work, we conduct a comprehensive systematic review of DL-based methods for time-to-event analysis, characterizing them according to both survival- and DL-related attributes. In summary, the reviewed methods often address only a small subset of tasks relevant to time-to-event data—e.g., single-risk right-censored data—and neglect to incorporate more complex settings. Our findings are summarized in an editable, open-source, interactive table: https://survival-org.github.io/DL4Survival. As this research area is advancing rapidly, we encourage community contribution in order to keep this database up to date.
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