An online framework for survival analysis: reframing Cox proportional hazards model for large data sets and neural networks.

IF 1.8 3区 数学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Biostatistics Pub Date : 2023-12-15 DOI:10.1093/biostatistics/kxac039
Aliasghar Tarkhan, Noah Simon
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引用次数: 3

Abstract

In many biomedical applications, outcome is measured as a "time-to-event" (e.g., disease progression or death). To assess the connection between features of a patient and this outcome, it is common to assume a proportional hazards model and fit a proportional hazards regression (or Cox regression). To fit this model, a log-concave objective function known as the "partial likelihood" is maximized. For moderate-sized data sets, an efficient Newton-Raphson algorithm that leverages the structure of the objective function can be employed. However, in large data sets this approach has two issues: (i) The computational tricks that leverage structure can also lead to computational instability; (ii) The objective function does not naturally decouple: Thus, if the data set does not fit in memory, the model can be computationally expensive to fit. This additionally means that the objective is not directly amenable to stochastic gradient-based optimization methods. To overcome these issues, we propose a simple, new framing of proportional hazards regression: This results in an objective function that is amenable to stochastic gradient descent. We show that this simple modification allows us to efficiently fit survival models with very large data sets. This also facilitates training complex, for example, neural-network-based, models with survival data.

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生存分析的在线框架:为大型数据集和神经网络重新构建Cox比例风险模型。
在许多生物医学应用中,结果被衡量为“事件发生的时间”(例如,疾病进展或死亡)。为了评估患者特征与该结果之间的联系,通常假设比例风险模型并拟合比例风险回归(或Cox回归)。为了拟合这个模型,一个被称为“部分似然”的对数凹目标函数被最大化。对于中等大小的数据集,可以使用利用目标函数结构的有效Newton-Raphson算法。然而,在大数据集中,这种方法有两个问题:(i)利用结构的计算技巧也会导致计算不稳定性;(ii)目标函数不会自然解耦:因此,如果数据集不适合内存,则模型的拟合计算成本可能很高。这另外意味着该目标不直接适用于基于随机梯度的优化方法。为了克服这些问题,我们提出了一个简单的、新的比例风险回归框架:这导致了一个适用于随机梯度下降的目标函数。我们证明,这种简单的修改使我们能够有效地拟合具有非常大数据集的生存模型。这也有助于训练复杂的,例如,基于神经网络的,具有生存数据的模型。
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来源期刊
Biostatistics
Biostatistics 生物-数学与计算生物学
CiteScore
5.10
自引率
4.80%
发文量
45
审稿时长
6-12 weeks
期刊介绍: Among the important scientific developments of the 20th century is the explosive growth in statistical reasoning and methods for application to studies of human health. Examples include developments in likelihood methods for inference, epidemiologic statistics, clinical trials, survival analysis, and statistical genetics. Substantive problems in public health and biomedical research have fueled the development of statistical methods, which in turn have improved our ability to draw valid inferences from data. The objective of Biostatistics is to advance statistical science and its application to problems of human health and disease, with the ultimate goal of advancing the public''s health.
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