机器学习辅助诊断增强了人类对月骨周围脱位的检测。

IF 1.8 Q2 ORTHOPEDICS HAND Pub Date : 2025-01-15 DOI:10.1177/15589447241308603
Anna Luan, Lisa von Rabenau, Arman T Serebrakian, Christopher S Crowe, Bao H Do, Kyle R Eberlin, James Chang, Brian C Pridgen
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引用次数: 0

摘要

背景:月骨周围/月骨损伤经常被误诊。我们假设利用机器学习算法可以提高人类对月骨周围/月骨脱位的检测。方法:来自急诊医学、手外科和放射学的参与者被要求评估30张侧位腕关节x线片是否存在月骨周围/月骨脱位,有无使用机器学习算法,该算法用于标记月骨。使用和不使用机器学习工具评估人类的表现,使用敏感性、特异性、准确性和F1评分。结果:共招募了137名参与者,其中55名来自急诊医学,33名来自放射学,49名来自手外科。39名参与者是主治医生或研究员,98名是住院医生。使用机器学习工具将特异性从88%提高到94%,准确性从89%提高到93%,F1评分从0.89提高到0.92。当按培训水平分层时,主治医生和研究员的特异性从93%提高到97%。对于住院医生来说,使用机器学习工具将准确率从86%提高到91%,特异性从86%提高到93%。在该工具的帮助下,外科和放射科住院医生的表现得到了改善,达到了与主治医生相似的准确性,他们的辅助诊断性能达到了与全自动人工智能工具相似的水平。结论:机器学习工具的使用提高了月骨周围脱位放射学检测的准确性,并提高了所有训练水平的特异性。这可能有助于减少月骨周围脱位的误诊,特别是当专科评估延迟时。
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Machine Learning-Aided Diagnosis Enhances Human Detection of Perilunate Dislocations.

Background: Perilunate/lunate injuries are frequently misdiagnosed. We hypothesize that utilization of a machine learning algorithm can improve human detection of perilunate/lunate dislocations.

Methods: Participants from emergency medicine, hand surgery, and radiology were asked to evaluate 30 lateral wrist radiographs for the presence of a perilunate/lunate dislocation with and without the use of a machine learning algorithm, which was used to label the lunate. Human performance with and without the machine learning tool was evaluated using sensitivity, specificity, accuracy, and F1 score.

Results: A total of 137 participants were recruited, with 55 respondents from emergency medicine, 33 from radiology, and 49 from hand surgery. Thirty-nine participants were attending physicians or fellows, and 98 were residents. Use of the machine learning tool improved specificity from 88% to 94%, accuracy from 89% to 93%, and F1 score from 0.89 to 0.92. When stratified by training level, attending physicians and fellows had an improvement in specificity from 93% to 97%. For residents, use of the machine learning tool resulted in improved accuracy from 86% to 91% and specificity from 86% to 93%. The performance of surgery and radiology residents improved when assisted by the tool to achieve similar accuracy to attendings, and their assisted diagnostic performance reaches levels similar to that of the fully automated artificial intelligence tool.

Conclusions: Use of a machine learning tool improves resident accuracy for radiographic detection of perilunate dislocations, and improves specificity for all training levels. This may help to decrease misdiagnosis of perilunate dislocations, particularly when subspecialist evaluation is delayed.

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来源期刊
HAND
HAND Medicine-Surgery
CiteScore
3.30
自引率
0.00%
发文量
209
期刊介绍: HAND is the official journal of the American Association for Hand Surgery and is a peer-reviewed journal featuring articles written by clinicians worldwide presenting current research and clinical work in the field of hand surgery. It features articles related to all aspects of hand and upper extremity surgery and the post operative care and rehabilitation of the hand.
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