Artificial Intelligence and Radiologist Burnout.

IF 10.5 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL JAMA Network Open Pub Date : 2024-11-04 DOI:10.1001/jamanetworkopen.2024.48714
Hui Liu, Ning Ding, Xinying Li, Yunli Chen, Hao Sun, Yuanyuan Huang, Chen Liu, Pengpeng Ye, Zhengyu Jin, Heling Bao, Huadan Xue
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Abstract

Importance: Understanding the association of artificial intelligence (AI) with physician burnout is crucial for fostering a collaborative interactive environment between physicians and AI.

Objective: To estimate the association between AI use in radiology and radiologist burnout.

Design, setting, and participants: This cross-sectional study conducted a questionnaire survey between May and October 2023, using the national quality control system of radiology in China. Participants included radiologists from 1143 hospitals. Radiologists reporting regular or consistent AI use were categorized as the AI group. Statistical analysis was performed from October 2023 to May 2024.

Exposure: AI use in radiology practice.

Main outcomes and measures: Burnout was defined by emotional exhaustion (EE) or depersonalization according to the Maslach Burnout Inventory. Workload was assessed based on working hours, number of image interpretations, hospital level, device type, and role in the workflow. AI acceptance was determined via latent class analysis considering AI-related knowledge, attitude, confidence, and intention. Propensity score-based mixed-effect generalized linear logistic regression was used to estimate the associations between AI use and burnout and its components. Interactions of AI use, workload, and AI acceptance were assessed on additive and multiplicative scales.

Results: Among 6726 radiologists included in this study, 2376 (35.3%) were female and 4350 (64.7%) were male; the median (IQR) age was 41 (34-48) years; 3017 were in the AI group (1134 [37.6%] female; median [IQR] age, 40 [33-47] years) and 3709 in the non-AI group (1242 [33.5%] female; median [IQR] age, 42 [34-49] years). The weighted prevalence of burnout was significantly higher in the AI group compared with the non-AI group (40.9% vs 38.6%; P < .001). After adjusting for covariates, AI use was significantly associated with increased odds of burnout (odds ratio [OR], 1.20; 95% CI, 1.10-1.30), primarily driven by its association with EE (OR, 1.21; 95% CI, 1.10-1.34). A dose-response association was observed between the frequency of AI use and burnout (P for trend < .001). The associations were more pronounced among radiologists with high workload and lower AI acceptance. A significant negative interaction was noted between high AI acceptance and AI use.

Conclusions and relevance: In this cross-sectional study of radiologist burnout, frequent AI use was associated with an increased risk of radiologist burnout, particularly among those with high workload or lower AI acceptance. Further longitudinal studies are needed to provide more evidence.

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人工智能与放射科医生的职业倦怠。
重要性:了解人工智能(AI)与医生职业倦怠之间的关系对于促进医生与人工智能之间的合作互动环境至关重要:估计人工智能在放射学中的应用与放射科医生职业倦怠之间的关联:这项横断面研究在 2023 年 5 月至 10 月期间,利用中国国家放射学质量控制系统进行了一次问卷调查。参与者包括来自 1143 家医院的放射科医生。报告定期或持续使用人工智能的放射科医生被归为人工智能组。统计分析时间为2023年10月至2024年5月:主要结果和测量指标:根据马斯拉赫职业倦怠量表,职业倦怠的定义是情绪衰竭(EE)或人格解体。工作量根据工作时间、图像解释数量、医院级别、设备类型和在工作流程中的角色进行评估。人工智能接受度是通过潜类分析确定的,其中考虑了人工智能相关知识、态度、信心和意向。基于倾向得分的混合效应广义线性逻辑回归用于估计人工智能的使用与职业倦怠及其组成部分之间的关联。通过加法和乘法量表评估了人工智能使用、工作量和人工智能接受度之间的相互作用:在参与研究的 6726 名放射科医生中,女性 2376 人(35.3%),男性 4350 人(64.7%);年龄中位数(IQR)为 41(34-48)岁;人工智能组 3017 人(女性 1134 人[37.6%];年龄中位数[IQR]为 40 [33-47] 岁),非人工智能组 3709 人(女性 1242 人[33.5%];年龄中位数[IQR]为 42 [34-49] 岁)。与非人工智能组相比,人工智能组的加权倦怠感发生率明显更高(40.9% vs 38.6%;P 结论及意义:在这项关于放射科医师职业倦怠的横断面研究中,频繁使用人工智能与放射科医师职业倦怠风险增加有关,尤其是在那些工作量大或人工智能接受度低的放射科医师中。需要进一步的纵向研究来提供更多证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JAMA Network Open
JAMA Network Open Medicine-General Medicine
CiteScore
16.00
自引率
2.90%
发文量
2126
审稿时长
16 weeks
期刊介绍: JAMA Network Open, a member of the esteemed JAMA Network, stands as an international, peer-reviewed, open-access general medical journal.The publication is dedicated to disseminating research across various health disciplines and countries, encompassing clinical care, innovation in health care, health policy, and global health. JAMA Network Open caters to clinicians, investigators, and policymakers, providing a platform for valuable insights and advancements in the medical field. As part of the JAMA Network, a consortium of peer-reviewed general medical and specialty publications, JAMA Network Open contributes to the collective knowledge and understanding within the medical community.
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