Kleijnen Systematic Reviews, York, United Kingdom (R.F.W., M.W.).
Julius Center for Health Sciences and Primary Care and Cochrane Netherlands, University Medical Center Utrecht, Utrecht University, Utrecht, the Netherlands (K.G.M., J.B.R.).
Ann Intern Med. 2019 Jan 1;170(1):51-58. doi: 10.7326/M18-1376.
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.
临床预测模型结合了多个预测因素,用于估计特定疾病(诊断模型)或未来特定事件(预后模型)的发生风险。PROBAST(预测模型风险偏倚评估工具)是一种用于评估诊断和预后预测模型研究的偏倚(ROB)和适用性的工具,由一个指导小组开发,该小组考虑了现有的 ROB 工具和报告指南。该工具通过涉及 38 名专家的 Delphi 程序得到信息,并通过试点进行了改进。PROBAST 分为以下 4 个领域:参与者、预测因素、结果和分析。这些领域共有 20 个信号问题,有助于对 ROB 进行结构化判断,ROB 定义为当研究设计、实施或分析中的缺陷导致对模型预测性能的系统扭曲估计时发生。PROBAST 能够针对开发、验证或更新用于个体化预测的预测模型的研究,进行有针对性和透明的 ROB 和适用性评估。尽管 PROBAST 是为系统评价设计的,但它也可以更一般地用于对预测模型研究进行批判性评价。潜在用户包括支持决策的组织、对循证医学感兴趣或参与指南制定的研究人员和临床医生、期刊编辑和稿件评论员。