复杂性科学对人工智能/机器学习改善初级保健潜力的预测。

IF 2.4 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Richard A Young, Carmel M Martin, Joachim P Sturmberg, Sally Hall, Andrew Bazemore, Ioannis A Kakadiaris, Steven Lin
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引用次数: 0

摘要

对于人工智能(AI)和机器学习(ML)的前景,初级保健医生可能既兴奋又担忧。复杂性科学可以帮助我们了解哪些人工智能/ML 应用最有可能在未来影响初级保健。人工智能/ML 已成功地通过数字图像诊断出一些疾病,帮助完成行政任务,如通过将语音转换为文本在电子病历中书写备注,以及整理医疗系统中来自多个来源的信息。人工智能/移动医疗在为癌症等复杂的单一疾病患者推荐治疗方法,或改善诊断、患者共同决策,以及治疗患有多种并发症和面临社会决定性挑战的患者方面的成功案例较少。人工智能/移动医疗扩大了健康公平方面的差距,而人工智能/移动医疗对初级保健医患关系的影响几乎一无所知。澳大利亚维多利亚州的一项干预措施显示,人工智能/移动医疗工具仅被用作复杂医疗决策的辅助工具。将这些研究结果置于复杂适应系统框架中,当人工智能/移动医疗工具的任务范围有限、数据简洁且多为线性和确定性数据,并能很好地融入现有工作流程时,人工智能/移动医疗工具就有可能发挥作用。人工智能/ML 很少能改善综合护理,尤其是在初级医疗机构,因为那里的数据存在大量错误和不一致。基层医疗机构应密切参与人工智能/移动终端的开发,并在实施前对其工具进行仔细测试;与电子健康记录不同的是,不能仅仅假设人工智能/移动终端工具将改善基层医疗机构的工作生活、质量、安全性以及以人为本的临床决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
What Complexity Science Predicts About the Potential of Artificial Intelligence/Machine Learning to Improve Primary Care.

Primary care physicians are likely both excited and apprehensive at the prospects for artificial intelligence (AI) and machine learning (ML). Complexity science may provide insight into which AI/ML applications will most likely affect primary care in the future. AI/ML has successfully diagnosed some diseases from digital images, helped with administrative tasks such as writing notes in the electronic record by converting voice to text, and organized information from multiple sources within a health care system. AI/ML has less successfully recommended treatments for patients with complicated single diseases such as cancer; or improved diagnosing, patient shared decision making, and treating patients with multiple comorbidities and social determinant challenges. AI/ML has magnified disparities in health equity, and almost nothing is known of the effect of AI/ML on primary care physician-patient relationships. An intervention in Victoria, Australia showed promise where an AI/ML tool was used only as an adjunct to complex medical decision making. Putting these findings in a complex adaptive system framework, AI/ML tools will likely work when its tasks are limited in scope, have clean data that are mostly linear and deterministic, and fit well into existing workflows. AI/ML has rarely improved comprehensive care, especially in primary care settings, where data have a significant number of errors and inconsistencies. Primary care should be intimately involved in AI/ML development, and its tools carefully tested before implementation; and unlike electronic health records, not just assumed that AI/ML tools will improve primary care work life, quality, safety, and person-centered clinical decision making.

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来源期刊
CiteScore
4.90
自引率
6.90%
发文量
168
审稿时长
4-8 weeks
期刊介绍: Published since 1988, the Journal of the American Board of Family Medicine ( JABFM ) is the official peer-reviewed journal of the American Board of Family Medicine (ABFM). Believing that the public and scientific communities are best served by open access to information, JABFM makes its articles available free of charge and without registration at www.jabfm.org. JABFM is indexed by Medline, Index Medicus, and other services.
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