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Deep Kernel Survival Analysis and Subject-Specific Survival Time Prediction Intervals

机译:深核生存分析和主题特异性生存时间预测间隔

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Kernel survival analysis methods predict subject-specific survival curves and times using information about which training subjects are most similar to a test subject. These most similar training subjects could serve as forecast evidence. How similar any two subjects are is given by the kernel function. In this paper, we present the first neural network framework that learns which kernel functions to use in kernel survival analysis. We also show how to use kernel functions to construct prediction intervals of survival time estimates that are statistically valid for individuals similar to a test subject. These prediction intervals can use any kernel function, such as ones learned using our neural kernel learning framework or using random survival forests. Our experiments show that our neural kernel survival estimators are competitive with a variety of existing survival analysis methods, and that our prediction intervals can help compare different methods’ uncertainties, even for estimators that do not use kernels. In particular, these prediction interval widths can be used as a new performance metric for survival analysis methods.
机译:内核生存分析方法使用关于哪种训练受试者与测试对象最相似的信息预测特异性生存曲线和时间。这些最相似的培训科目可以作为预测证据。内核功能给出了任何两个主题的任何两个受试者。在本文中,我们提出了第一个神经网络框架,了解在内核生存分析中使用的内核功能。我们还展示了如何使用内核函数来构造生存时间估计的预测间隔,这些时间估计对于类似于测试对象的个人统计有效。这些预测间隔可以使用任何内核函数,例如使用我们神经内核学习框架或使用随机生存林学习的内核函数。我们的实验表明,我们的神经内核生存估计器具有竞争各种现有的存活分析方法,并且我们的预测间隔可以帮助比较不同的方法的不确定性,即使对于不使用内核的估算器。特别地,这些预测间隔宽度可以用作生存分析方法的新性能度量。

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