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Implementation of Machine Learning Software on the Radiology Worklist Decreases Scan View Delay for the Detection of Intracranial Hemorrhage on CT

机译:在放射学工作清单上的机器学习软件的实施降低了在CT上检测颅内出血的扫描视图延迟

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摘要

Background and Purpose: Prompt identification of acute intracranial hemorrhage on CT is important. The goal of this study was to assess the impact of artificial intelligence software for prioritizing positive cases. Materials and Methods: Cases analyzed by Aidoc (Tel Aviv, Israel) software for triaging acute intracranial hemorrhage cases on non-contrast head CT were retrospectively reviewed. The scan view delay time was calculated as the difference between the time the study was completed on PACS and the time the study was first opened by a radiologist. The scan view delay was stratified by scan location, including emergency, inpatient, and outpatient. The scan view delay times for cases flagged as positive by the software were compared to those that were not flagged. Results: A total of 8723 scans were assessed by the software, including 6894 cases that were not flagged and 1829 cases that were flagged as positive. Although there was no statistically significant difference in the scan view time for emergency cases, there was a significantly lower scan view time for positive outpatient and inpatient cases flagged by the software versus negative cases, with a reduction of 604 min on average, 90% in the scan view delay (p-value < 0.0001) for outpatients, and a reduction of 38 min on average, and 10% in the scan view delay (p-value <= 0.01) for inpatients. Conclusion: The use of artificial intelligence triage software for acute intracranial hemorrhage on head CT scans is associated with a significantly shorter scan view delay for cases flagged as positive than cases not flagged among outpatients and inpatients at an academic medical center.
机译:背景和目的:迅速鉴定CT上急性颅内出血是重要的。本研究的目标是评估人工智能软件优先考虑积极案件的影响。材料和方法:回顾性地审查了对非对比度头CT进行急性颅内出血案件进行的AIDOC(Tel Aviv,以色列)软件进行分析的病例。扫描视图延迟时间计算为在PACS上完成的时间差异,并且研究首次由放射科医师打开的时间。扫描视图延迟由扫描位置分层,包括紧急情况,住院病,门诊。将软件标记为正数的案例的扫描视图延迟时间与未标记的案例进行了比较。结果:软件共评估8723次扫描,其中包括6894例未标记,1829例被标记为正。虽然紧急情况下没有统计学意义的差异差异,但是对于由软件与负面情况标记的积极门诊和住院病例的扫描视图显着降低,平均值为604分钟,90%门诊观察者的扫描视图延迟(P值<0.0001),平均减少38分钟,扫描视图延迟(P值<= 0.01)为30%,适用于住院患者。结论:对头CT扫描对急性颅内出血的人工智能分类软件的应用与显着较短的扫描视图延迟与在学术医疗中心的门诊和住院患者中未标记的情况下标记为阳性。

著录项

  • 期刊名称 Brain Sciences
  • 作者

    Daniel Ginat;

  • 作者单位
  • 年(卷),期 2021(11),7
  • 年度 2021
  • 页码 832
  • 总页数 6
  • 原文格式 PDF
  • 正文语种
  • 中图分类 神经科学;
  • 关键词

    机译:头;CT;出血;人工智能;报告;扫描视图延迟;

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