高维生存分析:方法与应用。

IF 7.4 1区 数学 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Annual Review of Statistics and Its Application Pub Date : 2023-03-01 DOI:10.1146/annurev-statistics-032921-022127
Stephen Salerno, Yi Li
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引用次数: 7

摘要

在精准医疗时代,定期收集诸如死亡时间或进展时间等事件时间结果,以及高通量协变量。这些高维数据违背了经典的生存回归模型,这些模型要么无法拟合,要么可能由于过度拟合而导致低可预测性。为了克服这一点,最近的重点放在开发特征选择和生存预测的新方法上。我们将回顾使用高维预测器处理生存结果数据的各种前沿方法,重点介绍用于生存预测的机器学习方法的最新创新。我们将涵盖这些方法背后的统计直觉和原则,并以扩展到更复杂的设置来结束,其中观察到竞争事件。我们将这些方法应用于波士顿肺癌生存队列研究,这是研究肺癌复杂机制的最大的癌症流行病学队列之一。
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High-Dimensional Survival Analysis: Methods and Applications.

In the era of precision medicine, time-to-event outcomes such as time to death or progression are routinely collected, along with high-throughput covariates. These high-dimensional data defy classical survival regression models, which are either infeasible to fit or likely to incur low predictability due to over-fitting. To overcome this, recent emphasis has been placed on developing novel approaches for feature selection and survival prognostication. We will review various cutting-edge methods that handle survival outcome data with high-dimensional predictors, highlighting recent innovations in machine learning approaches for survival prediction. We will cover the statistical intuitions and principles behind these methods and conclude with extensions to more complex settings, where competing events are observed. We exemplify these methods with applications to the Boston Lung Cancer Survival Cohort study, one of the largest cancer epidemiology cohorts investigating the complex mechanisms of lung cancer.

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来源期刊
Annual Review of Statistics and Its Application
Annual Review of Statistics and Its Application MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-STATISTICS & PROBABILITY
CiteScore
13.40
自引率
1.30%
发文量
29
期刊介绍: The Annual Review of Statistics and Its Application publishes comprehensive review articles focusing on methodological advancements in statistics and the utilization of computational tools facilitating these advancements. It is abstracted and indexed in Scopus, Science Citation Index Expanded, and Inspec.
期刊最新文献
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