School of Economics and Management, Southeast University, Nanjing 211189, China.
School of Economics and Management, Southeast University, Nanjing 211189, China; Business School, Sichuan University, Chengdu 610064, China.
Artif Intell Med. 2024 Oct;156:102950. doi: 10.1016/j.artmed.2024.102950. Epub 2024 Aug 14.
Artificial intelligence is constantly revolutionizing biomedical research and healthcare management. Disease comorbidity is a major threat to the quality of life for susceptible groups, especially middle-aged and elderly patients. The presence of multiple chronic diseases makes precision diagnosis challenging to realize and imposes a heavy burden on the healthcare system and economy. Given an enormous amount of accumulated health data, machine learning techniques show their capability in handling this puzzle. The present study conducts a review to uncover current research efforts in applying these methods to understanding comorbidity mechanisms and making clinical predictions considering these complex patterns. A descriptive metadata analysis of 791 unique publications aims to capture the overall research progression between January 2012 and June 2023. To delve into comorbidity-focused research, 61 of these scientific papers are systematically assessed. Four predictive analytics of tasks are detected: disease comorbidity data extraction, clustering, network, and risk prediction. It is observed that some machine learning-driven applications address inherent data deficiencies in healthcare datasets and provide a model interpretation that identifies significant risk factors of comorbidity development. Based on insights, both technical and practical, gained from relevant literature, this study intends to guide future interests in comorbidity research and draw conclusions about chronic disease prevention and diagnosis with managerial implications.
人工智能正在不断革新生物医学研究和医疗保健管理。疾病共病是对易感人群(尤其是中老年患者)生活质量的重大威胁。多种慢性疾病的存在使得精准诊断难以实现,并给医疗保健系统和经济带来沉重负担。考虑到积累了大量的健康数据,机器学习技术在处理这一难题方面显示出了它们的能力。本研究进行了综述,以揭示当前应用这些方法来理解共病机制并根据这些复杂模式进行临床预测的研究进展。对 791 篇独特出版物的描述性元数据分析旨在捕捉 2012 年 1 月至 2023 年 6 月期间的整体研究进展。为了深入研究共病问题,对其中的 61 篇科学论文进行了系统评估。发现了四种预测分析任务:疾病共病数据提取、聚类、网络和风险预测。可以观察到,一些基于机器学习的应用解决了医疗保健数据集固有的数据不足问题,并提供了模型解释,确定了共病发展的重要风险因素。基于从相关文献中获得的技术和实践方面的见解,本研究旨在指导未来对共病研究的兴趣,并就慢性病预防和诊断得出管理方面的结论。