个体生存分布的变分学习。

Zidi Xiu, Chenyang Tao, Ricardo Henao
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引用次数: 10

摘要

丰富的现代健康数据为使用机器学习技术建立更好的统计模型以改进临床决策提供了许多机会。预测时间到事件的分布,也称为生存分析,在许多临床应用中发挥着关键作用。我们介绍了一种变分时间到事件预测模型,称为变分生存推理(VSI),该模型建立在分布学习技术和深度神经网络的最新进展之上。VSI通过(i)放宽经典模型中的限制性建模假设,以及(ii)有效地处理截尾观测,即观测窗口外发生的事件,来解决非参数分布估计的挑战,所有这些都在变分框架内。为了验证我们方法的有效性,在合成和真实世界的数据集上进行了一组广泛的实验,显示出相对于竞争解决方案的性能有所提高。
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Variational Learning of Individual Survival Distributions.

The abundance of modern health data provides many opportunities for the use of machine learning techniques to build better statistical models to improve clinical decision making. Predicting time-to-event distributions, also known as survival analysis, plays a key role in many clinical applications. We introduce a variational time-to-event prediction model, named Variational Survival Inference (VSI), which builds upon recent advances in distribution learning techniques and deep neural networks. VSI addresses the challenges of non-parametric distribution estimation by (i) relaxing the restrictive modeling assumptions made in classical models, and (ii) efficiently handling the censored observations, i.e., events that occur outside the observation window, all within the variational framework. To validate the effectiveness of our approach, an extensive set of experiments on both synthetic and real-world datasets is carried out, showing improved performance relative to competing solutions.

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