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引导式报告评估:使用专用软件解决方案对乳腺磁共振成像中自动生成的放射学报告的质量和阅读时间进行评估。

Evaluation of guided reporting: quality and reading time of automatically generated radiology report in breast magnetic resonance imaging using a dedicated software solution.

作者信息

Maurer Martin H, Lorenz Daniel, Otterbach Maximilian Clemens, Toker Igor, Huppertz Alexander

机构信息

Universitätsinstitut für Diagnostische und Interventionelle Radiologie, Klinikum Oldenburg AöR, Department of Diagnostic and Interventional Radiology, Oldenburg, Germany.

Neo Q Quality in Imaging GmbH, Berlin, Germany.

出版信息

Diagn Interv Radiol. 2025 Jan 1;31(1):19-28. doi: 10.4274/dir.2024.242702. Epub 2024 Sep 2.

Abstract

PURPOSE

Unstructured, free-text dictation (FT), the current standard in breast magnetic resonance imaging (MRI) reporting, is considered time-consuming and prone to error. The purpose of this study is to assess the usability and performance of a novel, software-based guided reporting (GR) strategy in breast MRI.

METHODS

Eighty examinations previously evaluated for a clinical indication (e.g., mass and focus/non-mass enhancement) with FT were reevaluated by three specialized radiologists using GR. Each radiologist had a different number of cases (R1, n = 24; R2, n = 20; R3, n = 36). Usability was assessed by subjective feedback, and quality was assessed by comparing the completeness of automatically generated GR reports with that of their FT counterparts. Errors in GR were categorized and analyzed for debugging with a final software version. Combined reading and reporting times and learning curves were analyzed.

RESULTS

Usability was rated high by all readers. No non-sense, omission/commission, or translational errors were detected with the GR method. Spelling and grammar errors were observed in 3/80 patient reports (3.8%) with GR (exclusively in the discussion section) and in 36/80 patient reports (45%) with FT. Between FT and GR, 41 patient reports revealed no content differences, 33 revealed minor differences, and 6 revealed major differences that resulted in changes in treatment. The errors in all patient reports with major content differences were categorized as content omission errors caused by improper software operation (n = 2) or by missing content in software v. 0.8 displayable with v. 1.7 (n = 4). The mean combined reading and reporting time was 576 s (standard deviation: 327 s; min: 155 s; max: 1,517 s). The mean times for each reader were 485, 557, and 754 s, and the respective learning curves evaluated by regression models revealed statistically significant slopes ( = 0.002; = 0.0002; < 0.0001). Overall times were shorter compared with external references that used FT. The mean combined reading and reporting time of MRI examinations using FT was 1,043 s and decreased by 44.8% with GR.

CONCLUSION

GR allows for complete reporting with minimized error rates and reduced combined reading and reporting times. The streamlining of the process (evidenced by lower reading times) for the readers in this study proves that GR can be learned quickly. Reducing reporting errors leads to fewer therapeutic faults and lawsuits against radiologists. It is known that delays in radiology reporting hinder early treatment and lead to poorer patient outcomes.

CLINICAL SIGNIFICANCE

While the number of scans and images per examination is continuously rising, staff shortages create a bottleneck in radiology departments. The IT-based GR method can be a major boon, improving radiologist efficiency, report quality, and the quality of simultaneously generated data.

摘要

目的

非结构化的自由文本听写(FT)是目前乳腺磁共振成像(MRI)报告的标准方式,被认为耗时且容易出错。本研究的目的是评估一种基于软件的新型引导式报告(GR)策略在乳腺MRI中的可用性和性能。

方法

三名专业放射科医生使用GR对之前通过FT评估过临床指征(如肿块和局灶性/非肿块强化)的80例检查进行重新评估。每位放射科医生评估的病例数量不同(R1,n = 24;R2,n = 20;R3,n = 36)。通过主观反馈评估可用性,并通过比较自动生成的GR报告与其FT对应报告的完整性来评估质量。对GR中的错误进行分类和分析,以便对最终软件版本进行调试。分析了综合阅读和报告时间以及学习曲线。

结果

所有读者对可用性的评价都很高。GR方法未检测到无意义、遗漏/错误或翻译错误。在GR的3/80份患者报告(3.8%)中(仅在讨论部分)以及FT的36/80份患者报告(45%)中观察到拼写和语法错误。在FT和GR之间,41份患者报告显示无内容差异,33份显示微小差异,6份显示导致治疗改变的重大差异。所有存在重大内容差异的患者报告中的错误被归类为软件操作不当导致的内容遗漏错误(n = 2)或软件v. 0.8中可显示但v. 1.7中缺失的内容导致的错误(n = 4)。平均综合阅读和报告时间为576秒(标准差:327秒;最小值:155秒;最大值:1517秒)。每位读者的平均时间分别为485、557和754秒,通过回归模型评估的各自学习曲线显示出具有统计学意义的斜率( = 0.002; = 0.0002; < 0.0001)。与使用FT的外部参考相比,总体时间更短。使用FT的MRI检查的平均综合阅读和报告时间为1043秒,使用GR则减少了44.8%。

结论

GR能够实现完整报告,错误率降至最低,综合阅读和报告时间减少。本研究中读者流程的简化(以较短的阅读时间为证)证明GR可以快速掌握。减少报告错误可减少治疗失误以及针对放射科医生的诉讼。众所周知,放射学报告延迟会阻碍早期治疗并导致患者预后较差。

临床意义

虽然每次检查的扫描和图像数量不断增加,但人员短缺在放射科造成了瓶颈。基于信息技术的GR方法可能是一项重大福利,可提高放射科医生的效率、报告质量以及同时生成的数据质量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/63d9/11701694/c5ad1527fde5/DiagnIntervRadiol-31-19-figure-1.jpg

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