Survival models are a popular tool for the analysis of time to event data with applications in medicine, engineering, economics, and many more. Advances like the Cox proportional hazard model have enabled researchers to better describe hazard rates for the occurrence of single fatal events, but are unable to accurately model competing events and transitions. Common phenomena are often better described through multiple states, for example: the progress of a disease modeled as healthy, sick and dead instead of healthy and dead, where the competing nature of death and disease has to be taken into account. Moreover, Cox models are limited by modeling assumptions, like proportionality of hazard rates and linear effects. Individual characteristics can vary significantly between observational units, like patients, resulting in idiosyncratic hazard rates and different disease trajectories. These considerations require flexible modeling assumptions. To overcome these issues, we propose the use of neural ordinary differential equations as a flexible and general method for estimating multi-state survival models by directly solving the Kolmogorov forward equations. To quantify the uncertainty in the resulting individual cause-specific hazard rates, we further introduce a variational latent variable model and show that this enables meaningful clustering with respect to multi-state outcomes as well as interpretability regarding covariate values. We show that our model exhibits state-of-the-art performance on popular survival data sets and demonstrate its efficacy in a multi-state setting
翻译:生存模型是分析医学、工程学、经济学和许多其他应用中事件数据所需时间的流行工具。Cox比例危害模型等进步使研究人员能够更好地描述发生单一致命事件的危险率,但无法准确模拟相互竞争的事件和转变。常见现象往往通过多个州得到更好的描述,例如:以健康、疾病和死亡而非健康和死亡为模型的疾病的进展,必须把死亡和疾病相互竞争的性质考虑在内。此外,Cox模型由于模型化假设而受到限制,例如危险率和线性效应的相称性。个人特征可以像病人一样,在观察单位之间有很大差异,导致独特的危险率和不同的疾病轨迹。这些考虑因素需要灵活的模型假设。为了克服这些问题,我们建议使用神经普通差异方程式,作为评估多州生存模型的一种灵活和一般的方法,直接解决科尔莫戈罗夫前方程式。要量化由此产生的个别原因危害率的不确定性,我们进一步引入一个可变性可变模型,并显示这种模型能够使我们的多州性数据能够以有意义的组合方式解释其绩效,同时展示多州性数据。