Integrating Machine Learning in Clinical Decision Support Systems

Tanay Subramanian
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Abstract

This review article examines the role of machine learning (ML) in enhancing Clinical Decision Support Systems (CDSSs) within the modern healthcare landscape. Focusing on the integration of various ML algorithms, such as regression, random forest, and neural networks, the review aims to showcase their potential in advancing patient care. A rapid review methodology was utilized, involving a survey of recent articles from PubMed and Google Scholar on ML applications in healthcare. Key findings include the demonstration of ML's predictive power in patient outcomes, its ability to augment clinician knowledge, and the effectiveness of ensemble algorithmic approaches. The review highlights specific applications of diverse ML models, including moment kernel machines in predicting surgical outcomes, k-means clustering in simplifying disease phenotypes, and extreme gradient boosting in estimating injury risk. Emphasizing the potential of ML to tackle current healthcare challenges, the article highlights the critical role of ML in evolving CDSSs for improved clinical decision-making and patient care. This comprehensive review also addresses the challenges and limitations of integrating ML into healthcare systems, advocating for a collaborative approach to refine these systems for safety, efficacy, and equity.
将机器学习融入临床决策支持系统
这篇综述文章探讨了机器学习(ML)在加强现代医疗保健领域临床决策支持系统(CDSS)方面的作用。文章重点关注回归、随机森林和神经网络等各种 ML 算法的整合,旨在展示它们在促进患者护理方面的潜力。我们采用了快速综述方法,包括对 PubMed 和谷歌学术中有关医疗保健领域应用 ML 的最新文章进行调查。主要研究结果包括证明了 ML 对患者预后的预测能力、增强临床医生知识的能力以及集合算法方法的有效性。综述重点介绍了各种 ML 模型的具体应用,包括矩核机在预测手术结果中的应用、k-均值聚类在简化疾病表型中的应用,以及极梯度提升在估计伤害风险中的应用。文章强调了 ML 在应对当前医疗保健挑战方面的潜力,强调了 ML 在发展 CDSS 以改善临床决策和患者护理方面的关键作用。这篇全面的综述还探讨了将 ML 整合到医疗保健系统中的挑战和局限性,提倡采用合作的方法来完善这些系统,以提高安全性、有效性和公平性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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