Quer Giorgio, Topol Eric J
Scripps Research Translational Institute, La Jolla, CA, USA.
Scripps Research Translational Institute, La Jolla, CA, USA.
Lancet Digit Health. 2024 Oct;6(10):e767-e771. doi: 10.1016/S2589-7500(24)00151-1. Epub 2024 Aug 29.
Cardiovascular diseases persist as the leading cause of death globally and their early detection and prediction remain a major challenge. Artificial intelligence (AI) tools can help meet this challenge as they have considerable potential for early diagnosis and prediction of occurrence of these diseases. Deep neural networks can improve the accuracy of medical image interpretation and their outputs can provide rich information that otherwise would not be detected by cardiologists. With recent advances in transformer models, multimodal AI, and large language models, the ability to integrate electronic health record data with images, genomics, biosensors, and other data has the potential to improve diagnosis and partition patients who are at high risk for primary preventive strategies. Although much emphasis has been placed on AI supporting clinicians, AI can also serve patients and provide immediate help with diagnosis, such as that of arrhythmia, and is being studied for automated self-imaging. Potential risks, such as loss of data privacy or potential diagnostic errors, should be addressed before use in clinical practice. This Series paper explores opportunities and limitations of AI models for cardiovascular medicine, and aims to identify specific barriers to and solutions in the application of AI models, facilitating their integration into health-care systems.
心血管疾病仍然是全球主要死因,其早期检测和预测仍是一项重大挑战。人工智能(AI)工具能够助力应对这一挑战,因为它们在这些疾病的早期诊断和发病预测方面具有巨大潜力。深度神经网络可以提高医学图像解读的准确性,其输出能够提供丰富信息,而这些信息心脏病专家可能无法察觉。随着Transformer模型、多模态AI和大语言模型的最新进展,将电子健康记录数据与图像、基因组学、生物传感器及其他数据整合的能力,有潜力改善诊断并区分出适合采取一级预防策略的高危患者。尽管人们十分强调AI对临床医生的支持,但AI也能服务患者,并在诊断方面提供即时帮助,比如心律失常的诊断,目前正在研究其用于自动自我成像。在临床实践应用之前,应解决潜在风险,如数据隐私丢失或潜在诊断错误。本系列文章探讨了AI模型在心血管医学中的机遇与局限,旨在识别AI模型应用中的具体障碍及解决方案,促进其融入医疗保健系统。