Shantou University Medical College, Shantou, China.
Department of Ultrasound, The First Affiliated Hospital of Shenzhen University, Shenzhen Second People's Hospital, Shenzhen, China.
J Appl Clin Med Phys. 2022 Jul;23(7):e13695. doi: 10.1002/acm2.13695. Epub 2022 Jun 20.
The detection of abdominal free fluid or hemoperitoneum can provide critical information for clinical diagnosis and treatment, particularly in emergencies. This study investigates the use of deep learning (DL) for identifying peritoneal free fluid in ultrasonography (US) images of the abdominal cavity, which can help inexperienced physicians or non-professional people in diagnosis. It focuses specifically on first-response scenarios involving focused assessment with sonography for trauma (FAST) technique.
A total of 2985 US images were collected from ascites patients treated from 1 January 2016 to 31 December 2017 at the Shenzhen Second People's Hospital. The data were categorized as Ascites-1, Ascites-2, or Ascites-3, based on the surrounding anatomy. A uniform standard for regions of interest (ROIs) and the lack of obstruction from acoustic shadow was used to classify positive samples. These images were then divided into training (90%) and test (10%) datasets to evaluate the performance of a U-net model, utilizing an encoder-decoder architecture and contracting and expansive paths, developed as part of the study.
Test results produced sensitivity and specificity values of 94.38% and 68.13%, respectively, in the diagnosis of Ascites-1 US images, with an average Dice coefficient of 0.65 (standard deviation [SD] = 0.21). Similarly, the sensitivity and specificity for Ascites-2 were 97.12% and 86.33%, respectively, with an average Dice coefficient of 0.79 (SD = 0.14). The accuracy and area under the curve (AUC) were 81.25% and 0.76 for Ascites-1 and 91.73% and 0.91 for Ascites-2.
The results produced by the U-net demonstrate the viability of DL for automated ascites diagnosis. This suggests the proposed technique could be highly valuable for improving FAST-based preliminary diagnoses, particularly in emergency scenarios.
检测腹部游离液或血腹可提供关键的临床诊断和治疗信息,特别是在紧急情况下。本研究探讨了深度学习(DL)在识别腹腔超声(US)图像中腹膜游离液中的应用,这有助于经验不足的医生或非专业人员进行诊断。本研究特别关注涉及创伤超声重点评估(FAST)技术的第一反应场景。
本研究共收集了 2016 年 1 月 1 日至 2017 年 12 月 31 日期间在深圳市第二人民医院接受治疗的腹水患者的 2985 张 US 图像。根据周围解剖结构,将数据分为腹水-1、腹水-2 或腹水-3。使用感兴趣区域(ROI)的统一标准和无声影阻塞来对阳性样本进行分类。然后将这些图像分为训练(90%)和测试(10%)数据集,以评估作为研究一部分开发的 U-net 模型的性能,该模型采用编码器-解码器架构和收缩与扩展路径。
在诊断腹水-1 US 图像时,测试结果产生了 94.38%的敏感性和 68.13%的特异性,平均 Dice 系数为 0.65(标准差[SD]=0.21)。同样,腹水-2 的敏感性和特异性分别为 97.12%和 86.33%,平均 Dice 系数为 0.79(SD=0.14)。腹水-1 的准确率和曲线下面积(AUC)分别为 81.25%和 0.76,腹水-2 分别为 91.73%和 0.91。
U-net 的结果表明,DL 可用于自动腹水诊断。这表明,该技术对于改进基于 FAST 的初步诊断,特别是在紧急情况下,可能具有很高的价值。