In this manuscript we analyze a data set containing information on children with Hodgkin Lymphoma (HL) enrolled on a clinical trial. Treatments received and survival status were collected together with other covariates such as demographics and clinical measurements. Our main task is to explore the potential of machine learning (ML) algorithms in a survival analysis context in order to improve over the Cox Proportional Hazard (CoxPH) model. We discuss the weaknesses of the CoxPH model we would like to improve upon and then we introduce multiple algorithms, from well-established ones to state-of-the-art models, that solve these issues. We then compare every model according to the concordance index and the brier score. Finally, we produce a series of recommendations, based on our experience, for practitioners that would like to benefit from the recent advances in artificial intelligence.
翻译:在这份手稿中,我们分析了一套数据,其中载有关于Hodgkin Lymphoma(HL)在临床试验中注册的儿童的资料,所接受的治疗和生存状况与人口学和临床测量等其他共同变量一起收集,我们的主要任务是探索机器学习算法在生存分析中的潜力,以便改进Cox成比例危险模型。我们想改进CoxPH模式的弱点,然后我们采用多种算法,从成熟的算法到最先进的模型,解决这些问题。然后,我们根据一致指数和分数对每一个模型进行比较。最后,我们根据我们的经验,为希望受益于最近人工智能进步的从业者提出了一系列建议。