Department of Neurology, Yale School of Medicine, New Haven, CT, USA.
Department of Biomedical Informatics, Harvard Medical School, Boston, MA, USA.
Nat Med. 2022 Sep;28(9):1773-1784. doi: 10.1038/s41591-022-01981-2. Epub 2022 Sep 15.
The increasing availability of biomedical data from large biobanks, electronic health records, medical imaging, wearable and ambient biosensors, and the lower cost of genome and microbiome sequencing have set the stage for the development of multimodal artificial intelligence solutions that capture the complexity of human health and disease. In this Review, we outline the key applications enabled, along with the technical and analytical challenges. We explore opportunities in personalized medicine, digital clinical trials, remote monitoring and care, pandemic surveillance, digital twin technology and virtual health assistants. Further, we survey the data, modeling and privacy challenges that must be overcome to realize the full potential of multimodal artificial intelligence in health.
越来越多的生物医学数据可从大型生物库、电子健康记录、医学成像、可穿戴和环境生物传感器中获得,并且基因组和微生物组测序的成本降低,这为开发能够捕捉人类健康和疾病复杂性的多模态人工智能解决方案奠定了基础。在这篇综述中,我们概述了实现的关键应用,以及所面临的技术和分析挑战。我们探讨了个性化医疗、数字临床试验、远程监测和护理、大流行病监测、数字孪生技术和虚拟健康助手等领域的机遇。此外,我们还调查了在健康领域实现多模态人工智能的全部潜力所必须克服的数据、建模和隐私挑战。