Evaluating Dynamic Discrimination Performance of Risk Prediction Models for Survival Outcomes.

IF 0.8 Q4 MATHEMATICAL & COMPUTATIONAL BIOLOGY Statistics in Biosciences Pub Date : 2023-07-01 Epub Date: 2023-02-02 DOI:10.1007/s12561-023-09362-0
Jing Zhang, Jing Ning, Ruosha Li
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引用次数: 0

Abstract

Risk prediction models for survival outcomes are widely applied in medical research to predict future risk for the occurrence of the event. In many clinical studies, the biomarker data are measured repeatedly over time. To facilitate timely disease prognosis and decision making, many dynamic prediction models have been developed and generate predictions on a real-time basis. As a dynamic prediction model updates an individual's risk prediction over time based on new measurements, it is often important to examine how well the model performs at different measurement times and prediction times. In this article, we propose a two-dimensional area under curve (AUC) measure for dynamic prediction models and develop associated estimation and inference procedures. The estimation procedures are discussed under two types of biomarker measurement schedules: regular visits and irregular visits. The model parameters are estimated effectively by maximizing a pseudo-partial likelihood function. We apply the proposed method to a renal transplantation study to evaluate the discrimination performance of dynamic prediction models based on longitudinal biomarkers for graft failure.

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评估生存结果风险预测模型的动态判别性能。
生存结局风险预测模型广泛应用于医学研究中,用于预测事件发生后的未来风险。在许多临床研究中,随着时间的推移,生物标志物数据被反复测量。为了促进疾病的及时预后和决策,人们开发了许多动态预测模型,并实时生成预测结果。随着时间的推移,动态预测模型会根据新的测量值更新个人的风险预测,因此检查模型在不同测量时间和预测时间的表现通常很重要。在本文中,我们提出了动态预测模型的二维曲线下面积(AUC)度量,并开发了相关的估计和推理程序。在两种生物标志物测量计划下讨论了估计程序:定期访问和不定期访问。通过拟偏似然函数的最大化,有效地估计了模型参数。我们将提出的方法应用于一项肾移植研究,以评估基于纵向生物标志物的动态预测模型对移植失败的识别性能。
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来源期刊
Statistics in Biosciences
Statistics in Biosciences MATHEMATICAL & COMPUTATIONAL BIOLOGY-
CiteScore
2.00
自引率
0.00%
发文量
28
期刊介绍: Statistics in Biosciences (SIBS) is published three times a year in print and electronic form. It aims at development and application of statistical methods and their interface with other quantitative methods, such as computational and mathematical methods, in biological and life science, health science, and biopharmaceutical and biotechnological science. SIBS publishes scientific papers and review articles in four sections, with the first two sections as the primary sections. Original Articles publish novel statistical and quantitative methods in biosciences. The Bioscience Case Studies and Practice Articles publish papers that advance statistical practice in biosciences, such as case studies, innovative applications of existing methods that further understanding of subject-matter science, evaluation of existing methods and data sources. Review Articles publish papers that review an area of statistical and quantitative methodology, software, and data sources in biosciences. Commentaries provide perspectives of research topics or policy issues that are of current quantitative interest in biosciences, reactions to an article published in the journal, and scholarly essays. Substantive science is essential in motivating and demonstrating the methodological development and use for an article to be acceptable. Articles published in SIBS share the goal of promoting evidence-based real world practice and policy making through effective and timely interaction and communication of statisticians and quantitative researchers with subject-matter scientists in biosciences.
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