Artificial intelligence technologies in the activities of primary healthcare in Moscow

E. V. Blokhina, A. S. Bezymyannyy
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Abstract

BACKGROUND: In recent years, the healthcare sector has emerged as a key area where artificial intelligence technologies are gaining strategic importance. In particular, the implementation of these technologies in primary healthcare has demonstrated particular relevance and importance [1–3]. AIM: The aim of the study is to characterize the stages of implementation of artificial intelligence technologies in the activities of urban polyclinics in Moscow. MATERIALS AND METHODS: Analytical, statistical, socio-hygienic, and experimental methods were used. RESULTS: The primary objective of integrating artificial intelligence into the operations of city polyclinics was to enhance the efficacy of medical data processing, mitigate the likelihood of professional missteps, and optimize the coordination of interactions between different medical professionals. The initial challenge of processing a vast quantity of information was met by the implementation of artificial intelligence in the analysis of electronic medical records. This approach resulted in the development of integrated and secure systems that facilitate the accessibility of patient data to physicians and medical staff for the purpose of quality of care analysis. In addressing the second task of using artificial intelligence technologies to provide consulting services to physicians in making a diagnosis, the work was carried out in several stages. In 2020, the top three medical decision support systems were implemented, which assist therapists in making preliminary diagnoses based on the International Classification of Diseases 10th revision (ICD-10). Since 2023, the Diagnostic Assistant system, which analyzes data from a patient’s electronic medical record and offers a second opinion on a confirmed diagnosis, has been actively used. Currently, this system includes 95 codes of ICD-10 and similar diagnoses, with plans to expand its functionality to 268 diagnoses. As a consequence of the training and implementation of the expansion, the system will be capable of covering approximately 85% of the most frequently established confirmed diagnoses. A considerable number of expert physicians were involved in the establishment and evaluation of the systems, with over 10,000 cases being handled. In December 2023, a pilot project was conducted at the City Polyclinic No. 64 (Moscow) with the involvement of almost 100 doctors of this medical institution to identify the possibility of improving the reliability of the model. According to its results, it was found that the diagnoses made by the doctor and the artificial intelligence system coincide by 89%. Despite the impressive achievements of technology, it is important to emphasize that the use of artificial intelligence is not intended to replace the doctor, but rather serves as a second opinion in the work of a specialist. CONCLUSIONS: The integration of artificial intelligence into the operations of Moscow’s polyclinics not only reduces the time required to search and process a substantial volume of information, but also helps to avoid professional errors. Furthermore, it enhances the efficiency of primary health care in Moscow as a whole.
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莫斯科初级保健活动中的人工智能技术
背景:近年来,医疗保健领域已成为人工智能技术越来越具有战略重要性的关键领域。特别是,在初级医疗保健领域实施这些技术已显示出特别的相关性和重要性[1-3]。目的:本研究旨在描述莫斯科城市综合诊所活动中人工智能技术的实施阶段。材料与方法:采用了分析、统计、社会卫生学和实验方法。结果:将人工智能融入城市综合诊所运营的主要目的是提高医疗数据处理的效率,降低专业失误的可能性,优化不同医疗专业人员之间的互动协调。人工智能在电子病历分析中的应用应对了处理海量信息的初步挑战。通过这种方法,开发出了综合安全系统,方便医生和医务人员获取病人数据,进行医疗质量分析。第二项任务是利用人工智能技术为医生提供诊断咨询服务,这项工作分几个阶段进行。2020 年,实施了三大医疗决策支持系统,协助治疗师根据《国际疾病分类》第 10 次修订版(ICD-10)做出初步诊断。自 2023 年起,"诊断助手 "系统开始积极使用,该系统可分析患者电子病历中的数据,并就确诊提供第二意见。目前,该系统包括 95 个 ICD-10 和类似诊断代码,并计划将其功能扩展至 268 个诊断。经过培训和实施扩展后,该系统将能够涵盖约 85% 最常见的确诊诊断。大量专家医生参与了系统的建立和评估,处理了 10 000 多个病例。2023 年 12 月,在第 64 市综合诊所(莫斯科)开展了一个试点项目,该医疗机构的近 100 名医生参与其中,以确定提高该模型可靠性的可能性。结果发现,医生和人工智能系统的诊断结果吻合度高达 89%。尽管技术取得了令人瞩目的成就,但必须强调的是,人工智能的使用并不是为了取代医生,而是作为专家工作中的第二意见。结论:将人工智能融入莫斯科综合医院的运作不仅可以减少搜索和处理大量信息所需的时间,还有助于避免专业错误。此外,它还提高了整个莫斯科初级卫生保健的效率。
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
44
审稿时长
5 weeks
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