Artificial intelligence in healthcare—the road to precision medicine

Tran Quoc Bao Tran, Clea du Toit, S. Padmanabhan
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引用次数: 5

Abstract

Precision medicine aims to integrate an individual’s unique features from clinical phenotypes and biological information obtained from imaging to laboratory tests and health records, to arrive at a tailored diagnostic or therapeutic solution. The premise that precision medicine will reduce disease-related health and financial burden is theoretically sound, but its realisation in clinical practice is still nascent. In contrast to conventional medicine, developing precision medicine solutions is highly data-intensive and to accelerate this effort there are initiatives to collect vast amounts of clinical and biomedical data. Over the last decade, artificial intelligence (AI), which includes machine learning (ML), has demonstrated unparalleled success in pattern recognition from big data in a range of domains from shopping recommendation to image classification. It is not surprising that ML is being considered as the critical technology that can transform big data from biobanks and electronic health records (EHRs) into clinically applicable precision medicine tools at the bedside. Distillation of high-dimensional data across clinical, biological, patient-generated and environmental domains using ML and translating garnered insights into clinical practice requires not only extant algorithms but also additional development of newer methods and tools. In this review, we provide a broad overview of the prospects and potential for AI in precision medicine and discuss some of the challenges and evolving solutions that are revolutionising healthcare.
医疗保健领域的人工智能——精准医疗之路
精准医学旨在整合个人的独特特征,从临床表型和从成像到实验室测试和健康记录获得的生物信息,以获得量身定制的诊断或治疗解决方案。精准医疗将减轻与疾病相关的健康和经济负担的前提在理论上是合理的,但其在临床实践中的实现仍处于萌芽阶段。与传统医学相比,开发精准医学解决方案是高度数据密集型的,为了加快这项工作,有人主动收集了大量的临床和生物医学数据。在过去的十年里,包括机器学习(ML)在内的人工智能(AI)在从购物推荐到图像分类的一系列领域,在大数据模式识别方面取得了无与伦比的成功。毫不奇怪,ML被认为是一项关键技术,可以将生物库和电子健康记录(EHR)中的大数据转化为床边临床应用的精确医疗工具。使用ML在临床、生物学、患者生成和环境领域提取高维数据,并将获得的见解转化为临床实践,不仅需要现有的算法,还需要额外开发新的方法和工具。在这篇综述中,我们对人工智能在精准医疗中的前景和潜力进行了广泛的概述,并讨论了正在彻底改变医疗保健的一些挑战和不断发展的解决方案。
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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CiteScore
1.20
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