Assessing K-Nearest Neighbours Algorithm for Simple, Interpretable Time-to-Event Survival Predictions Over a Range of Simulated Datasets

P. Kroupa, Caroline Morton, K. L. Calvez, Matt Williams
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Abstract

Survival prediction is a key task in medicine. Existing models are based on statistical techniques, such as the Cox models and there is limited work on the application of machine learning. In this paper we demonstrate that the K-Nearest Neighbour algorithm can be used for survival prediction. We show that its performance is as good as that of standard techniques, and that it provides a clear interpretation of the results. We show that pre-processing methods improve performance, and evaluate the performance across 20 different datasets with differing properties to show that the model performs well under various conditions. For low event rate datasets we show that KNN can outperform the Cox model.
在一系列模拟数据集上评估简单的、可解释的时间到事件生存预测的k近邻算法
生存预测是医学中的一项关键任务。现有的模型是基于统计技术,如Cox模型,机器学习的应用工作有限。在本文中,我们证明了k近邻算法可以用于生存预测。我们证明它的性能与标准技术一样好,并且它提供了对结果的清晰解释。我们证明了预处理方法提高了性能,并在20个不同属性的不同数据集上评估了性能,以表明该模型在各种条件下都表现良好。对于低事件率数据集,我们表明KNN可以优于Cox模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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