Towards integration of artificial intelligence into medical devices as a real-time recommender system for personalised healthcare: State-of-the-art and future prospects

Talha Iqbal , Mehedi Masud , Bilal Amin , Conor Feely , Mary Faherty , Tim Jones , Michelle Tierney , Atif Shahzad , Patricia Vazquez
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Abstract

In the era of big data, artificial intelligence (AI) algorithms have the potential to revolutionize healthcare by improving patient outcomes and reducing healthcare costs. AI algorithms have frequently been used in health care for predictive modelling, image analysis and drug discovery. Moreover, as a recommender system, these algorithms have shown promising impacts on personalized healthcare provision. A recommender system learns the behaviour of the user and predicts their current preferences (recommends) based on their previous preferences. Implementing AI as a recommender system improves this prediction accuracy and solves cold start and data sparsity problems. However, most of the methods and algorithms are tested in a simulated setting which cannot recapitulate the influencing factors of the real world. This review article systematically reviews prevailing methodologies in recommender systems and discusses the AI algorithms as recommender systems specifically in the field of healthcare. It also provides discussion around the most cutting-edge academic and practical contributions present in the literature, identifies performance evaluation matrices, challenges in the implementation of AI as a recommender system, and acceptance of AI-based recommender systems by clinicians. The findings of this article direct researchers and professionals to comprehend currently developed recommender systems and the future of medical devices integrated with real-time recommender systems for personalized healthcare.

将人工智能融入医疗设备,作为个性化医疗保健的实时推荐系统:现状与前景
在大数据时代,人工智能(AI)算法有可能改善患者的治疗效果并降低医疗成本,从而彻底改变医疗保健行业。人工智能算法经常被用于医疗保健领域的预测建模、图像分析和药物发现。此外,作为一种推荐系统,这些算法在提供个性化医疗服务方面也显示出了良好的影响。推荐系统会学习用户的行为,并根据他们以前的偏好预测他们当前的偏好(推荐)。将人工智能应用于推荐系统可提高预测的准确性,并解决冷启动和数据稀缺的问题。然而,大多数方法和算法都是在模拟环境中测试的,无法再现真实世界的影响因素。这篇综述文章系统地回顾了推荐系统中的主流方法,并讨论了医疗保健领域中作为推荐系统的人工智能算法。文章还围绕文献中最前沿的学术和实践贡献进行了讨论,确定了性能评估矩阵、人工智能作为推荐系统实施过程中的挑战以及临床医生对基于人工智能的推荐系统的接受程度。本文的研究结果将引导研究人员和专业人士理解当前开发的推荐系统,以及与实时推荐系统集成的医疗设备的未来,从而实现个性化医疗保健。
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
Health sciences review (Oxford, England)
Health sciences review (Oxford, England) Medicine and Dentistry (General)
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