Artificial Intelligence-Powered Clinical Decision Support and Simulation Platform for Radiology Trainee Education

被引:0
作者
Chintan Shah
Karapet Davtyan
Ilya Nasrallah
R Nick Bryan
Suyash Mohan
机构
[1] Imaging Institute,Department of Radiology
[2] Cleveland Clinic,Department of Radiology
[3] University of Texas Medical Branch,undefined
[4] University of Pennsylvania,undefined
来源
Journal of Digital Imaging | 2023年 / 36卷
关键词
Artificial intelligence; Bayesian networks; Brain MRI; Education; Simulation;
D O I
暂无
中图分类号
学科分类号
摘要
Technological tools can redesign traditional approaches to radiology education, for example, with simulation cases and via computer-generated feedback. In this study, we investigated the use of an AI-powered, Bayesian inference-based clinical decision support (CDS) software to provide automated “real-time” feedback to trainees during interpretation of clinical and simulation brain MRI examinations. Radiology trainees participated in sessions in which they interpreted 3 brain MRIs: two cases from a routine clinical worklist (one without and one with CDS) and a teaching file-based simulation case with CDS. The CDS software required trainees to input imaging features and differential diagnoses, after which inferred diagnoses were displayed, and the case was reviewed with an attending neuroradiologist. An observer timed each case, including time spent on education, and trainees completed a survey rating their confidence in their findings and the educational value of the case. Ten trainees reviewed 75 brain MRI examinations during 25 reading sessions. Trainees had slightly lower confidence in their findings and diagnosis and rated the educational value slightly higher for simulation cases with CDS compared to clinical cases without CDS (p < 0.05). There were no significant differences in ratings of clinical cases with or without CDS. No differences in overall timing were found among the reading scenarios. Simulation cases with “CDS-provided feedback” may improve the educational value of interpreting imaging studies at a workstation without adding additional time. Further investigation will help drive innovation in trainee education, which may be particularly relevant in this era of increasing remote work and asynchronous attending review.
引用
收藏
页码:11 / 16
页数:5
相关论文
共 29 条
[1]  
Sabir SH(2014)Simulation-based training in radiology J. Am. Coll. Radiol. 11 512-517
[2]  
Aran S(2015)Conventional Medical Education and the History of Simulation in Radiology Acad. Radiol. 22 1252-1267
[3]  
Abujudeh H(2017)RSNA Diagnosis Live: A Novel Web-based Audience Response Tool to Promote Evidence-based Learning Radiographics 37 1111-1118
[4]  
Chetlen AL(2020)Artificial intelligence system approaching neuroradiologist-level differential diagnosis accuracy at brain MRI Radiology 295 626-637
[5]  
Awan OA(2019)Implementing Contrast Reaction Management Training for Residents Through High-Fidelity Simulation Acad. Radiol. 26 118-129
[6]  
Shaikh F(2015)Simulation-based educational curriculum for fluoroscopically guided lumbar puncture improves operator confidence and reduces patient dose Acad. Radiol. 22 668-673
[7]  
Kalbfleisch B(2015)Upper gastrointestinal fluoroscopic simulator for neonates with bilious emesis Pediatr. Radiol. 45 1413-1416
[8]  
Siegel EL(2009)Preparing first-year radiology residents and assessing their readiness for on-call responsibilities: Results over 5 years Am. J. Roentgenol. 192 539-544
[9]  
Chang P(2013)Pulmonary Embolism Teaching File: A Simple Pilot Study for Rapidly Increasing Pulmonary Embolism Recognition among New Residents Using Interactive Cross-sectional Imaging Acad. Radiol. 20 1048-1051
[10]  
Rauschecker AM(undefined)undefined undefined undefined undefined-undefined