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Bayesian Network-Based Diagnostic Support Tool with Limited Point-of-Care Ultrasound for Work-Related Elbow Injuries

机译:基于贝叶斯网络的诊断支持工具,具有有限床旁超声治疗与工作相关的肘部损伤

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摘要

The upper extremity is commonly injured at the workplace, frequently involving the elbow. Currently, there are not many diagnostic support tools for elbow injuries. Developing a clinical decision support tool would allow for narrowing differential diagnoses and guide management steps in a timely and cost-effective manner. In a descriptive retrospective cohort study, 85 non-contrast elbow MRIs were obtained from a large Workers Compensation insurer database. MRIs were either (a) greater than 2 weeks after first clinic visit, or (b) more than 6 weeks after injury, but (c) not more than 3 months after injury. A Bayesian network-based diagnostic support tool was developed from the elbow MRI results after removing variables that were not sufficiently representative. The common extensor tendon (CET), the most injured structure in this data set in 36 of 85 cases, served as the parent node. The second most injured structure was the distal biceps tendon with injuries present in 19 of 85 cases. By evaluating the most commonly injured structures, most of other injuries were able to be ruled out with limited point-of-care ultrasound examination of the elbow and the prediction model was used to guide clinicians into one of the following management steps: no follow up, conservative management, or surgical referral with advanced imaging (MRI). Finally, a targeted ultrasound algorithm was developed to reduce the point-of-care ultrasound (POCUS) learning curve for less experienced examiners.
机译:上肢在工作场所通常受伤,经常累及肘部。目前,肘部损伤的诊断支持工具并不多。开发临床决策支持工具将允许缩小鉴别诊断范围,并及时且具有成本效益地指导管理步骤。在一项描述性回顾性队列研究中,从大型工伤赔偿保险公司数据库中获得了 85 例非增强肘部 MRI。MRI 要么 (a) 大于首次门诊就诊后 2 周,要么 (b) 受伤后超过 6 周,但 (c) 不超过受伤后 3 个月。在去除了不具有足够代表性的变量后,根据肘部 MRI 结果开发了一种基于贝叶斯网络的诊断支持工具。在85例病例中的36例中,该数据集中损伤最严重的伸肌腱(CET)作为母节点。第二大损伤结构是肱二头肌远端肌腱,85例中有19例受伤。通过评估最常见的损伤结构,大多数其他损伤都可以通过对肘部进行有限的床旁超声检查来排除,并且预测模型用于指导临床医生采取以下管理步骤之一:无随访、保守治疗或手术转诊与先进成像 (MRI)。最后,开发了一种有针对性的超声算法,以减少经验不足的检查员的床旁超声 (POCUS) 学习曲线。

著录项

  • 作者单位

    University of South Florida.;

  • 授予单位 University of South Florida.;
  • 学科 Medicine.;Medical imaging.;Health sciences.
  • 学位
  • 年度 2022
  • 页码 50
  • 总页数 50
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Medicine.; Medical imaging.; Health sciences.;

    机译:医学。;医学影像。;健康科学。;
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