样本量测定
校准
统计
统计的
样品(材料)
结果(博弈论)
计算机科学
人口
事件(粒子物理)
交叉验证
置信区间
预测建模
航程(航空)
覆盖概率
差异(会计)
计量经济学
数学
工程类
化学
物理
数理经济学
会计
色谱法
量子力学
业务
航空航天工程
人口学
社会学
作者
Richard D. Riley,Thomas P. A. Debray,Gary S. Collins,Lucinda Archer,Joie Ensor,Maarten van Smeden,Kym I E Snell
摘要
In prediction model research, external validation is needed to examine an existing model's performance using data independent to that for model development. Current external validation studies often suffer from small sample sizes and consequently imprecise predictive performance estimates. To address this, we propose how to determine the minimum sample size needed for a new external validation study of a prediction model for a binary outcome. Our calculations aim to precisely estimate calibration (Observed/Expected and calibration slope), discrimination (C‐statistic), and clinical utility (net benefit). For each measure, we propose closed‐form and iterative solutions for calculating the minimum sample size required. These require specifying: (i) target SEs (confidence interval widths) for each estimate of interest, (ii) the anticipated outcome event proportion in the validation population, (iii) the prediction model's anticipated (mis)calibration and variance of linear predictor values in the validation population, and (iv) potential risk thresholds for clinical decision‐making. The calculations can also be used to inform whether the sample size of an existing (already collected) dataset is adequate for external validation. We illustrate our proposal for external validation of a prediction model for mechanical heart valve failure with an expected outcome event proportion of 0.018. Calculations suggest at least 9835 participants (177 events) are required to precisely estimate the calibration and discrimination measures, with this number driven by the calibration slope criterion, which we anticipate will often be the case. Also, 6443 participants (116 events) are required to precisely estimate net benefit at a risk threshold of 8%. Software code is provided.
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