Stults Cheryl D, Deng Sien, Martinez Meghan C, Wilcox Joseph, Szwerinski Nina, Chen Kevin H, Driscoll Stephanie, Washburn Joanna, Jones Veena G
Sutter Health, Palo Alto, California.
JAMA Netw Open. 2025 May 1;8(5):e258614. doi: 10.1001/jamanetworkopen.2025.8614.
The increase of electronic health record (EHR) work negatively impacts clinician well-being. One potential solution is incorporating an ambient artificial intelligence (AI) documentation platform.
To understand clinician experience before and after implementing ambient AI.
DESIGN, SETTING, AND PARTICIPANTS: This quality improvement study was a pilot evaluation with before and after survey and EHR metrics conducted at a large health care organization in Northern and Central California. Clinicians were purposively sampled to be representative of region and specialty. Ambient AI was implemented in April 2024 with EHR data from 3 months before and after implementation. Data were analyzed from May to September 2024.
Ambient AI access.
Metrics of time were examined in notes per appointment, off-hour EHR activities (5:30 pm to 7:00 am on weekdays and nonscheduled weekends and holidays), documentation note length, progress note length, NASA Task Load Index (NASA-TLX) score, mini-Z burnout question, and overall experience. It was hypothesized that time in notes per appointment would decrease and clinical well-being would improve. Logistic regression and linear mixed-effect models were used.
Among 100 clinicians (53 male [53.0%]; mean [SD] age, 48.9 [11.0] years), 58 clinicians (58.0%) were in primary care and 92 clinicians had EHR metrics. Among 57 clinicians who completed both preimplementation and postimplementation surveys, there was a decrease in burnout from 24 clinicians (42.1%) to 20 clinicians (35.1%), although this was not a significant difference (P = .12). Mean (SD) NASA-TLX scores all decreased after using ambient AI: mental demand of note writing (12.2 [4.0] to 6.3 [3.7]), hurried or rushed pace (13.2 [4.0] to 6.4 [4.2]), and effort to accomplish note writing (12.5 [4.1] to 7.4 [4.3]) (all P < .001). Mean (SD) time in notes per appointment significantly decreased from 6.2 (4.0) to 5.3 (3.5) minutes (P < .001), with a bigger decrease for female vs male clinicians (8.1 [3.9] to 6.7 [3.6] minutes vs 4.7 [3.5] to 4.2 [3.1] minutes; P = .001). More primary care clinicians (33 of 38 clinicians [85.8%]) reported that ambient AI improved overall satisfaction at work compared with clinicians in medical (4 of 11 clinicians [36.4%]) and surgical (4 of 8 clinicians [50.0%]) subspecialties (P < .001). After adjusting for participant characteristics, model results suggested that mean scores for NASA-TLX decreased for mental demand (-6.12 [95% CI, -7.52 to -4.72]), hurried or rushed pace (-6.96 [95% CI, -8.42 to -5.50]), and effort to accomplish note writing (-5.57 [95% CI, -6.93 to -4.21]), while mean time in note taking decreased by less than 1 minute per appointment (0.91 minutes [95% CI, -1.20 to -0.62 minutes]) (all P < .001).
This study found that ambient AI was associated with improved overall experience and time in notes for clinicians but with varying outcomes by sex and specialty. Future research should investigate outcomes after widescale expansion of this rapidly evolving technology.
电子健康记录(EHR)工作的增加对临床医生的幸福感产生负面影响。一种潜在的解决方案是引入环境人工智能(AI)文档平台。
了解实施环境AI前后临床医生的体验。
设计、设置和参与者:这项质量改进研究是一项试点评估,在加利福尼亚州北部和中部的一家大型医疗保健机构进行了前后调查和EHR指标评估。临床医生经过有目的的抽样,以代表该地区和专业。环境AI于2024年4月实施,使用了实施前后3个月的EHR数据。数据于2024年5月至9月进行分析。
环境AI访问权限。
检查每次预约记录中的时间指标、非工作时间的EHR活动(工作日下午5:30至上午7:00以及非计划的周末和节假日)、记录长度、病程记录长度、NASA任务负荷指数(NASA-TLX)评分、迷你-Z倦怠问题以及总体体验。假设每次预约记录中的时间会减少,临床医生的幸福感会提高。使用了逻辑回归和线性混合效应模型。
在100名临床医生中(53名男性[53.0%];平均[标准差]年龄为48.9[11.0]岁),58名临床医生(58.0%)从事初级保健工作,92名临床医生有EHR指标。在57名完成实施前和实施后调查的临床医生中,倦怠率从24名临床医生(42.1%)降至20名临床医生(35.1%),尽管这一差异不显著(P = 0.12)。使用环境AI后,平均(标准差)NASA-TLX评分均有所下降:记录书写的心理需求(12.2[4.0]降至6.3[3.7])、匆忙或急促的节奏(13.2[4.0]降至6.4[4.2])以及完成记录书写的努力程度(12.5[4.1]降至7.4[4.3])(所有P < 0.001)。每次预约记录中的平均(标准差)时间从6.2(4.0)分钟显著降至5.3(3.5)分钟(P < 0.001),女性临床医生的下降幅度大于男性临床医生(8.1[3.9]至6.7[3.6]分钟对4.7[3.5]至4.2[3.1]分钟;P = 0.001)。与医学(11名临床医生中的4名[36.4%])和外科(8名临床医生中的4名[50.0%])亚专业的临床医生相比,更多初级保健临床医生(38名临床医生中的33名[85.8%])报告环境AI提高了工作总体满意度(P < 0.001)。在调整参与者特征后,模型结果表明,NASA-TLX的平均评分在心理需求方面下降了(-6.12[95%置信区间,-7.52至-4.72])、匆忙或急促的节奏方面下降了(-6.96[95%置信区间,-8.42至-5.50])以及完成记录书写的努力程度方面下降了(-5.57[95%置信区间,-6.93至-4.21]),而每次预约记录的平均时间减少了不到1分钟(0.91分钟[95%置信区间,-1.20至-0.62分钟])(所有P < 0.001)。
本研究发现,环境AI与临床医生的总体体验改善和记录时间减少相关,但不同性别和专业的结果有所不同。未来的研究应调查这种快速发展的技术大规模扩展后的结果。