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Application of deep learning-based computer-aided detection system: detecting pneumothorax on chest radiograph after biopsy

机译:深度学习计算机辅助检测系统的应用:体检后胸部射线照片检测胸腔内的应用

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摘要

Objectives To retrospectively evaluate the diagnostic performance of a convolutional neural network (CNN) model in detecting pneumothorax on chest radiographs obtained after percutaneous transthoracic needle biopsy (PTNB) for pulmonary lesions. Methods A CNN system for computer-aided diagnosis on chest radiographs was developed using the full 26-layer You Only Look Once model. A total of 1596 chest radiographs with pneumothorax were used for training. To validate the clinical feasibility of this model, follow-up chest radiographs obtained after PTNB for 1333 pulmonary lesions in 1319 patients in 2016 were prepared as an independent test set. Two experienced radiologists determined the presence of pneumothorax by consensus. The diagnostic performance of the CNN model was assessed using the jackknife free-response receiver operating characteristic method. Results The incidence of pneumothorax was 17.9% (247/1379) on 3-h follow-up chest radiographs and 23.3% (309/1329) on 1-day follow-up chest radiographs. Twenty-three (1.7% of all PTNBs) cases required drainage catheter insertion. Our approach had a sensitivity, a specificity, and an area under the curve (AUC), respectively, of 61.1% (151/247), 93.0% (1053/1132), and 0.898 for 3-h follow-up chest radiographs and 63.4% (196/309), 93.5% (954/1020), and 0.905 for 1-day follow-up chest radiographs. The overall accuracy was 87.3% (1204/1379) for 3-h follow-up radiographs and 86.5% (1150/1329) for 1-day follow-up radiographs. The CNN model found all 23 cases of pneumothorax requiring drainage. Conclusions Our CNN model had good performance for detection of pneumothorax on chest radiographs after PTNB, especially for those requiring further procedures. It can be used as a screening tool prior to radiologist interpretation.
机译:回顾性地评估卷积神经网络(CNN)模型检测胸腔活组织检查(PTNB)肺病变后胸部射线照片诊断性能的诊断性能。方法使用完整的26层开发了对胸部射线照相的计算机辅助诊断CNN系统,您只需看一次型号。共有1596个胸部X型射线照片用于训练。为了验证该模型的临床可行性,2016年1319例患者PTNB获得的后续胸部X型射线照片被制备为独立的测试集。两位经验丰富的放射科医生通过共识确定了气胸的存在。使用千刀自由响应接收机操作特性方法评估CNN模型的诊断性能。结果3-H后续胸部X型X型X型X型X型X X X X.33.3%(309/1329),肺炎的发病率为17.9%(247/1379)和23.3%(309/1329)。二十三种(占所有PTNBS的1.7%)案件需要排水导管插入。我们的方法分别具有61.1%(151/247),93.0%(1053/1132),93.0%(1053/1132)和0.898的曲线(AUC)下的敏感性,特异性和一个区域,以及用于3-H后续胸部射线照片的0.898 63.4%(196/309),93.5%(954/1020)和0.905次为期后续胸部X型射线照片。总体准确性为87.3%(1204/1379),适用于3-H后续射线照相和86.5%(1150/1329),为期一天的后续跟踪射线照片。 CNN模型发现所有23例肺气胸需要排水。结论我们的CNN模型对PTNB后胸部射线照相中的胸腔内具有良好的性能,特别是对于需要进一步程序的人。在放射科学诠释之前,它可以用作筛选工具。

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  • 来源
    《European radiology》 |2019年第10期|共8页
  • 作者单位

    Univ Ulsan Asan Med Ctr Coll Med Dept Radiol 88 Olymp Ro 43 Gil Seoul 138736 South Korea;

    Univ Ulsan Asan Med Ctr Coll Med Dept Radiol 88 Olymp Ro 43 Gil Seoul 138736 South Korea;

    Univ Ulsan Asan Med Ctr Coll Med Dept Convergence Med 88 Olymp Ro 43 Gil Seoul 05505 South;

    Univ Ulsan Asan Med Ctr Coll Med Dept Radiol 88 Olymp Ro 43 Gil Seoul 138736 South Korea;

    Univ Ulsan Asan Med Ctr Coll Med Dept Convergence Med 88 Olymp Ro 43 Gil Seoul 05505 South;

    Univ Ulsan Asan Med Ctr Coll Med Dept Radiol 88 Olymp Ro 43 Gil Seoul 138736 South Korea;

    Univ Ulsan Asan Med Ctr Coll Med Dept Radiol 88 Olymp Ro 43 Gil Seoul 138736 South Korea;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 放射医学;
  • 关键词

    Machine learning; Radiography; Lung; Biopsy; Pneumothorax;

    机译:机器学习;射线照相;肺;活组织检查;气胸;

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