当整体大于部分之和:为什么机器学习和传统统计在预测未来健康结果方面是互补的。

IF 3.9 2区 医学 Q1 UROLOGY & NEPHROLOGY
Clinical Kidney Journal Pub Date : 2025-02-20 eCollection Date: 2025-04-01 DOI:10.1093/ckj/sfaf059
Roemer J Janse, Ameen Abu-Hanna, Iacopo Vagliano, Vianda S Stel, Kitty J Jager, Giovanni Tripepi, Carmine Zoccali, Friedo W Dekker, Merel van Diepen
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引用次数: 0

摘要

人工智能的繁荣目前正在进行中,主要是由于大型语言模型,导致人们对人工智能以及随后的机器学习(ML)产生了浓厚的兴趣。机器学习经常应用的一个领域,预测建模,也一直是传统统计学的焦点。因此,多项研究旨在证明这两种科学学科中的一种优于另一种。然而,我们认为机器学习和传统统计学不应该是竞争领域。相反,这两个领域是相互交织和互补的。为了说明这一点,我们讨论了预测建模的一些要点,详细说明了使用传统统计学技术的预测建模,并使用常见的ML技术(如支持向量机、随机森林和人工神经网络)解释了预测建模。然后,我们展示了传统统计学和ML实际上在许多方面是相似的,包括在模型开发和验证中使用的基本统计概念和方法。最后,我们认为传统统计学和机器学习可以而且应该被视为一个单一的集成领域。这种集成可以进一步改进这两个学科的预测建模(例如,关于公平性和报告标准),并将支持最终目标:为患者和医疗保健提供者开发性能最佳的预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When the whole is greater than the sum of its parts: why machine learning and conventional statistics are complementary for predicting future health outcomes.

An artificial intelligence boom is currently ongoing, mainly due to large language models, leading to significant interest in artificial intelligence and subsequently also in machine learning (ML). One area where ML is often applied, prediction modelling, has also long been a focus of conventional statistics. As a result, multiple studies have aimed to prove superiority of one of the two scientific disciplines over the other. However, we argue that ML and conventional statistics should not be competing fields. Instead, both fields are intertwined and complementary to each other. To illustrate this, we discuss some essentials of prediction modelling, elaborate on prediction modelling using techniques from conventional statistics, and explain prediction modelling using common ML techniques such as support vector machines, random forests, and artificial neural networks. We then showcase that conventional statistics and ML are in fact similar in many aspects, including underlying statistical concepts and methods used in model development and validation. Finally, we argue that conventional statistics and ML can and should be seen as a single integrated field. This integration can further improve prediction modelling for both disciplines (e.g. regarding fairness and reporting standards) and will support the ultimate goal: developing the best performing prediction models for the patient and healthcare provider.

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来源期刊
Clinical Kidney Journal
Clinical Kidney Journal Medicine-Transplantation
CiteScore
6.70
自引率
10.90%
发文量
242
审稿时长
8 weeks
期刊介绍: About the Journal Clinical Kidney Journal: Clinical and Translational Nephrology (ckj), an official journal of the ERA-EDTA (European Renal Association-European Dialysis and Transplant Association), is a fully open access, online only journal publishing bimonthly. The journal is an essential educational and training resource integrating clinical, translational and educational research into clinical practice. ckj aims to contribute to a translational research culture among nephrologists and kidney pathologists that helps close the gap between basic researchers and practicing clinicians and promote sorely needed innovation in the Nephrology field. All research articles in this journal have undergone peer review.
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