机器学习
人工智能
逻辑回归
计算机科学
背景(考古学)
预测建模
可靠性(半导体)
质量(理念)
样品(材料)
数据质量
监督学习
回归
数据挖掘
预测能力
样本量测定
统计模型
二元分类
班级(哲学)
二进制数据
二进制数
数据建模
大数据
回归分析
统计学习
逻辑模型树
作者
Yanan Hu,Xin Zhang,Valerie Slavin,Yitayeh Belsti,Sofonyas Abebaw Tiruneh,Emily Callander,Joanne Enticott
摘要
The rapid uptake of supervised machine learning (ML) in clinical prediction modelling, particularly for binary outcomes based on tabular data, has sparked debate about its comparative advantage over traditional statistical logistic regression. Although ML has demonstrated superiority in unstructured data domains, its performance gains in structured, tabular clinical datasets remain inconsistent and context dependent. This viewpoint synthesizes recent comparative studies and simulation findings to argue that there is no universal best modelling approach. Model performance depends heavily on dataset characteristics (eg, linearity, sample size, number of candidate predictors, minority class proportion) and data quality (eg, completeness, accuracy). Consequently, we argue that efforts to improve data quality, not model complexity, are more likely to enhance the reliability and real-world utility of clinical prediction models.
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