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Towards better clinical prediction models: seven steps for development and an ABCD for validation

机译:建立更好的临床预测模型:七个步骤进行开发ABCD进行验证

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摘要

Clinical prediction models provide risk estimates for the presence of disease (diagnosis) or an event in the future course of disease (prognosis) for individual patients. Although publications that present and evaluate such models are becoming more frequent, the methodology is often suboptimal. We propose that seven steps should be considered in developing prediction models: (i) consideration of the research question and initial data inspection; (ii) coding of predictors; (iii) model specification; (iv) model estimation; (v) evaluation of model performance; (vi) internal validation; and (vii) model presentation. The validity of a prediction model is ideally assessed in fully independent data, where we propose four key measures to evaluate model performance: calibration-in-the-large, or the model intercept (A); calibration slope (B); discrimination, with a concordance statistic (C); and clinical usefulness, with decision-curve analysis (D). As an application, we develop and validate prediction models for 30-day mortality in patients with an acute myocardial infarction. This illustrates the usefulness of the proposed framework to strengthen the methodological rigour and quality for prediction models in cardiovascular research.
机译:临床预测模型为个别患者提供了疾病存在(诊断)或未来病程中的事件(预后)的风险估计。尽管介绍和评估此类模型的出版物越来越频繁,但是该方法通常不是最理想的。我们建议在开发预测模型时应考虑七个步骤:(i)考虑研究问题和初始数据检查; (ii)预测变量的编码; (iii)型号规格; (iv)模型估计; (v)评估模型性能; (vi)内部验证; (vii)模型展示。理想情况下,在完全独立的数据中评估预测模型的有效性,在此我们提出了四个评估模型性能的关键措施:大范围校准或模型截距(A);校准斜率(B);歧视,并带有一致性统计数据(C);决策曲线分析(D)。作为应用,我们开发和验证了急性心肌梗死患者30天死亡率的预测模型。这说明了所提出的框架对于加强心血管研究的预测模型的方法严谨性和质量的有用性。

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