Division of Public Health Sciences, Washington University School of Medicine, St. Louis, Missouri, USA.
Department of Statistics and Actuarial Science, University of Waterloo, Waterloo, Ontario, Canada.
Stat Med. 2022 Aug 30;41(19):3661-3678. doi: 10.1002/sim.9441. Epub 2022 May 20.
With the increasing importance of predictive modeling in health research comes the need for methods to rigorously assess predictive accuracy. We consider the problem of evaluating the accuracy of predictive models for nominal outcomes when outcome data are coarsened at random. We first consider the problem in the context of a multinomial response modeled by polytomous logistic regression. Attention is then directed to the motivating setting in which class membership corresponds to the state occupied in a multistate disease process at a time horizon of interest. Here, class (state) membership may be unknown at the time horizon since disease processes are under intermittent observation. We propose a novel extension to the polytomous discrimination index to address this and evaluate the predictive accuracy of an intensity-based model in the context of a study involving patients with arthritis from a registry at the University of Toronto Centre for Prognosis Studies in Rheumatic Diseases.
随着预测建模在健康研究中的重要性不断增加,需要有方法来严格评估预测准确性。我们考虑了当结局数据随机变粗时,对名义结局预测模型准确性进行评估的问题。我们首先在多分类响应模型中,通过多项逻辑回归模型来考虑这个问题。然后,我们将注意力转向激发设置,其中类成员对应于在感兴趣的时间范围内多状态疾病过程中占据的状态。在这里,由于疾病过程是间歇性观察的,所以在时间范围内可能无法知道类(状态)成员的情况。我们提出了一种新的多项式判别指数扩展方法来解决这个问题,并在多伦多大学关节炎预后研究中心的注册研究中,评估基于强度的模型的预测准确性。