样本量测定
机器学习
人工智能
逻辑回归
计算机科学
预测建模
样品(材料)
度量(数据仓库)
航程(航空)
统计
人工神经网络
数据挖掘
随机森林
回归
采样(信号处理)
回归分析
弹性网正则化
预测区间
计量经济学
统计模型
比例(比率)
钥匙(锁)
标准差
相关性
支持向量机
逻辑模型树
作者
Doranne Thomassen,Toby Hackmann,Jelle J. Goeman,Ewout W. Steyerberg,Saskia le Cessie
标识
DOI:10.1016/j.landig.2025.100911
摘要
Individual prediction uncertainty is a key aspect of clinical prediction model performance; however, standard performance metrics do not capture it. Consequently, a model might offer sufficient certainty for some patients but not for others, raising concerns about fairness. To address this limitation, the effective sample size has been proposed as a measure of sampling uncertainty. We developed a computational method to estimate effective sample sizes for a wide range of prediction models, including machine learning approaches. In this Viewpoint, we illustrated the approach using a clinical dataset (N=23 034) across five model types: logistic regression, elastic net, XGBoost, neural network, and random forest. During simulations, our approach generated accurate estimates of effective sample sizes for logistic regression and elastic net models, with minor deviations noted for the other three models. Although model performance metrics were similar across models, substantial differences in effective sample sizes and risk predictions were observed among patients in the clinical dataset. In conclusion, prediction uncertainty at the individual prediction level can be substantial even when models are developed using large samples. Effective sample size is thus a promising measure to communicate the uncertainty of predicted risk to individual users of machine learning-based prediction models.
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