Chen Jun, Lu Chao, Huang Haifeng, Zhu Dongwei, Yang Qing, Liu Junwei, Huang Yan, Deng Aijun, Han Xiaoxu
Baidu Inc., BeijingChina.
The Affiliated Hospital of Weifang Medical University, Shandong, China.
Health Data Sci. 2021 Jul 22;2021:9819851. doi: 10.34133/2021/9819851. eCollection 2021.
. The last decade has witnessed the advances of cognitive computing technologies that learn at scale and reason with purpose in medicine studies. From the diagnosis of diseases till the generation of treatment plans, cognitive computing encompasses both data-driven and knowledge-driven machine intelligence to assist health care roles in clinical decision-making. This review provides a comprehensive perspective from both research and industrial efforts on cognitive computing-based CDSS over the last decade.. (1) A holistic review of both research papers and industrial practice about cognitive computing-based CDSS is conducted to identify the necessity and the characteristics as well as the general framework of constructing the system. (2) Several of the typical applications of cognitive computing-based CDSS as well as the existing systems in real medical practice are introduced in detail under the general framework. (3) The limitations of the current cognitive computing-based CDSS is discussed that sheds light on the future work in this direction.. Different from medical content providers, cognitive computing-based CDSS provides probabilistic clinical decision support by automatically learning and inferencing from medical big data. The characteristics of managing multimodal data and computerizing medical knowledge distinguish cognitive computing-based CDSS from other categories. Given the current status of primary health care like high diagnostic error rate and shortage of medical resources, it is time to introduce cognitive computing-based CDSS to the medical community which is supposed to be more open-minded and embrace the convenience and low cost but high efficiency brought by cognitive computing-based CDSS.
在过去十年中,认知计算技术取得了长足发展,其能够在医学研究中大规模学习并进行有目的的推理。从疾病诊断到治疗方案生成,认知计算涵盖了数据驱动和知识驱动的机器智能,以协助医疗人员进行临床决策。本文综述从研究和产业两个方面,全面回顾了过去十年基于认知计算的临床决策支持系统(CDSS)。(1)对基于认知计算的CDSS的研究论文和产业实践进行全面综述,以确定构建该系统的必要性、特点以及总体框架。(2)在总体框架下,详细介绍了基于认知计算的CDSS的几个典型应用以及实际医疗实践中的现有系统。(3)讨论了当前基于认知计算的CDSS的局限性,为该方向的未来工作指明了方向。与医学内容提供商不同,基于认知计算的CDSS通过自动从医学大数据中学习和推理,提供概率性临床决策支持。管理多模态数据和将医学知识计算机化的特点,使基于认知计算的CDSS有别于其他类别。鉴于当前初级卫生保健的现状,如诊断错误率高和医疗资源短缺,现在是时候将基于认知计算的CDSS引入医学领域了,医学领域应该更加开放,接受基于认知计算的CDSS带来的便利、低成本和高效率。