针对可解释交互式脾脏 AAST 分级图形用户界面原型的 ASER AI/ML 专家小组形成性用户研究。

IF 1.7 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Emergency Radiology Pub Date : 2024-04-01 Epub Date: 2024-02-02 DOI:10.1007/s10140-024-02202-8
Nathan Sarkar, Mitsuo Kumagai, Samantha Meyr, Sriya Pothapragada, Mathias Unberath, Guang Li, Sagheer Rauf Ahmed, Elana Beth Smith, Melissa Ann Davis, Garvit Devmohan Khatri, Anjali Agrawal, Zachary Scott Delproposto, Haomin Chen, Catalina Gómez Caballero, David Dreizin
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引用次数: 0

摘要

目的:AAST 器官损伤量表已被广泛用于评估脾脏损伤的严重程度,但评分者之间的一致性不高。本研究评估了用于支持 AAST 评级的交互式可解释人工智能/机器学习(AI/ML)诊断辅助工具原型 SpleenPro 对放射科医师停留时间、一致性、临床实用性和用户接受度的影响:两名创伤放射学特设专家小组成员对 76 例钝性脾损伤入院 CT 检查独立进行了定时 AAST 分级,首先在没有 AI/ML 辅助的情况下进行,经过 2 个月的冲洗期和随机化后,在有 AI/ML 辅助的情况下进行。为了评估用户的接受程度,我们向四位独立的专家小组成员展示了三种版本的脾脏Pro用户界面,每种版本都有四个实例,可解释性越来越强。他们进行了由李克特量表和自由回答组成的结构化访谈,具体问题涉及诊断效用(DU);心理支持(MS);努力、工作量和挫败感(EWF);信任和可靠性(TR);以及未来使用的可能性(LFU):结果:SpleenPro 大大缩短了两位评定者的判读时间。在人工智能/ML 的协助下,加权科恩卡帕从 0.53 提高到 0.70。在用户接受度访谈中,可解释性的提高与 MS、EWF、TR 和 LFU 的 Likert 分数的提高有关。专家小组成员指出,需要将早期通知和分级功能、PACS 集成和报告自动生成结合起来,以改善 DU:结论:SpleenPro 有助于提高 AAST 分级的客观性并增加心理支持。形成性用户研究确定了可推广的概念,包括需要联合检测和分级管道以及与临床工作流程集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An ASER AI/ML expert panel formative user research study for an interpretable interactive splenic AAST grading graphical user interface prototype.

Purpose: The AAST Organ Injury Scale is widely adopted for splenic injury severity but suffers from only moderate inter-rater agreement. This work assesses SpleenPro, a prototype interactive explainable artificial intelligence/machine learning (AI/ML) diagnostic aid to support AAST grading, for effects on radiologist dwell time, agreement, clinical utility, and user acceptance.

Methods: Two trauma radiology ad hoc expert panelists independently performed timed AAST grading on 76 admission CT studies with blunt splenic injury, first without AI/ML assistance, and after a 2-month washout period and randomization, with AI/ML assistance. To evaluate user acceptance, three versions of the SpleenPro user interface with increasing explainability were presented to four independent expert panelists with four example cases each. A structured interview consisting of Likert scales and free responses was conducted, with specific questions regarding dimensions of diagnostic utility (DU); mental support (MS); effort, workload, and frustration (EWF); trust and reliability (TR); and likelihood of future use (LFU).

Results: SpleenPro significantly decreased interpretation times for both raters. Weighted Cohen's kappa increased from 0.53 to 0.70 with AI/ML assistance. During user acceptance interviews, increasing explainability was associated with improvement in Likert scores for MS, EWF, TR, and LFU. Expert panelists indicated the need for a combined early notification and grading functionality, PACS integration, and report autopopulation to improve DU.

Conclusions: SpleenPro was useful for improving objectivity of AAST grading and increasing mental support. Formative user research identified generalizable concepts including the need for a combined detection and grading pipeline and integration with the clinical workflow.

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来源期刊
Emergency Radiology
Emergency Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
4.50%
发文量
98
期刊介绍: To advance and improve the radiologic aspects of emergency careTo establish Emergency Radiology as an area of special interest in the field of diagnostic imagingTo improve methods of education in Emergency RadiologyTo provide, through formal meetings, a mechanism for presentation of scientific papers on various aspects of Emergency Radiology and continuing educationTo promote research in Emergency Radiology by clinical and basic science investigators, including residents and other traineesTo act as the resource body on Emergency Radiology for those interested in emergency patient care Members of the American Society of Emergency Radiology (ASER) receive the Emergency Radiology journal as a benefit of membership!
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