Department of Health Informatics, College of Public Health & Health Informatics, King Saud Bin Abdul-Aziz University for Health Sciences, Riyadh, Saudi Arabia.
Stud Health Technol Inform. 2022 Jun 29;295:83-86. doi: 10.3233/SHTI220666.
This paper aims to explore physicians' adoption of Machine learning models in the healthcare process and barriers that may hinder it. A review of the literature about ML in healthcare included current and potentially beneficial clinical applications and clinicians' adoption and trust towards such applications. While some physicians are looking forward to using ML to improve their outcomes and reduce their load, we uncovered fear of unwanted outcomes and concerns about privacy of data, legal liability, and patient dissatisfaction.
本文旨在探讨医生在医疗过程中采用机器学习模型的情况,以及可能阻碍其采用的障碍。对医疗保健中的机器学习文献的回顾包括当前和潜在有益的临床应用,以及临床医生对这些应用的采用和信任。虽然一些医生期待使用机器学习来改善他们的结果并减轻他们的负担,但我们发现他们担心会出现意外结果,并且担心数据隐私、法律责任和患者不满等问题。