Applications of and issues with machine learning in medicine: Bridging the gap with explainable AI.

IF 5.7 4区 生物学 Q1 BIOLOGY
Bioscience trends Pub Date : 2025-01-14 Epub Date: 2024-12-08 DOI:10.5582/bst.2024.01342
Kenji Karako, Wei Tang
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引用次数: 0

Abstract

In recent years, machine learning, and particularly deep learning, has shown remarkable potential in various fields, including medicine. Advanced techniques like convolutional neural networks and transformers have enabled high-performance predictions for complex problems, making machine learning a valuable tool in medical decision-making. From predicting postoperative complications to assessing disease risk, machine learning has been actively used to analyze patient data and assist healthcare professionals. However, the "black box" problem, wherein the internal workings of machine learning models are opaque and difficult to interpret, poses a significant challenge in medical applications. The lack of transparency may hinder trust and acceptance by clinicians and patients, making the development of explainable AI (XAI) techniques essential. XAI aims to provide both global and local explanations for machine learning models, offering insights into how predictions are made and which factors influence these outcomes. In this article, we explore various applications of machine learning in medicine, describe commonly used algorithms, and discuss explainable AI as a promising solution to enhance the interpretability of these models. By integrating explainability into machine learning, we aim to ensure its ethical and practical application in healthcare, ultimately improving patient outcomes and supporting personalized treatment strategies.

机器学习在医学中的应用和问题:用可解释的人工智能弥合差距。
近年来,机器学习,尤其是深度学习,在包括医学在内的各个领域显示出了惊人的潜力。卷积神经网络和变压器等先进技术使复杂问题的高性能预测成为可能,使机器学习成为医疗决策的宝贵工具。从预测术后并发症到评估疾病风险,机器学习已被积极用于分析患者数据并协助医疗保健专业人员。然而,“黑箱”问题,即机器学习模型的内部工作不透明且难以解释,对医疗应用构成了重大挑战。缺乏透明度可能会阻碍临床医生和患者的信任和接受,因此开发可解释的人工智能(XAI)技术至关重要。XAI旨在为机器学习模型提供全球和本地的解释,提供关于如何做出预测以及哪些因素影响这些结果的见解。在本文中,我们探讨了机器学习在医学中的各种应用,描述了常用的算法,并讨论了可解释的人工智能作为一种有前途的解决方案,以增强这些模型的可解释性。通过将可解释性整合到机器学习中,我们的目标是确保其在医疗保健中的道德和实际应用,最终改善患者的治疗效果并支持个性化的治疗策略。
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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来源期刊
CiteScore
13.60
自引率
1.80%
发文量
47
审稿时长
>12 weeks
期刊介绍: BioScience Trends (Print ISSN 1881-7815, Online ISSN 1881-7823) is an international peer-reviewed journal. BioScience Trends devotes to publishing the latest and most exciting advances in scientific research. Articles cover fields of life science such as biochemistry, molecular biology, clinical research, public health, medical care system, and social science in order to encourage cooperation and exchange among scientists and clinical researchers.
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