医学
预测建模
指南
德尔菲法
结果(博弈论)
系统回顾
事件(粒子物理)
德尔菲
风险评估
管理科学
梅德林
计算机科学
风险分析(工程)
人工智能
机器学习
病理
工程类
法学
物理
数理经济学
操作系统
量子力学
计算机安全
数学
政治学
作者
Robert Wolff,Karel G.M. Moons,Richard D. Riley,Penny Whiting,Angela Wood,Gary S. Collins,Johannes B. Reitsma,Jos Kleijnen,Susan Mallett
摘要
Clinical prediction models combine multiple predictors to estimate risk for the presence of a particular condition (diagnostic models) or the occurrence of a certain event in the future (prognostic models). PROBAST (Prediction model Risk Of Bias ASsessment Tool), a tool for assessing the risk of bias (ROB) and applicability of diagnostic and prognostic prediction model studies, was developed by a steering group that considered existing ROB tools and reporting guidelines. The tool was informed by a Delphi procedure involving 38 experts and was refined through piloting. PROBAST is organized into the following 4 domains: participants, predictors, outcome, and analysis. These domains contain a total of 20 signaling questions to facilitate structured judgment of ROB, which was defined to occur when shortcomings in study design, conduct, or analysis lead to systematically distorted estimates of model predictive performance. PROBAST enables a focused and transparent approach to assessing the ROB and applicability of studies that develop, validate, or update prediction models for individualized predictions. Although PROBAST was designed for systematic reviews, it can be used more generally in critical appraisal of prediction model studies. Potential users include organizations supporting decision making, researchers and clinicians who are interested in evidence-based medicine or involved in guideline development, journal editors, and manuscript reviewers.
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