The application of deep learning in abdominal trauma diagnosis by CT imaging

IF 6 1区 医学 Q1 EMERGENCY MEDICINE World Journal of Emergency Surgery Pub Date : 2024-05-06 DOI:10.1186/s13017-024-00546-7
Xinru Shen, Yixin Zhou, Xueyu Shi, Shiyun Zhang, Shengwen Ding, Liangliang Ni, Xiaobing Dou, Lin Chen
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Abstract

Abdominal computed tomography (CT) scan is a crucial imaging modality for creating cross-sectional images of the abdominal area, particularly in cases of abdominal trauma, which is commonly encountered in traumatic injuries. However, interpreting CT images is a challenge, especially in emergency. Therefore, we developed a novel deep learning algorithm-based detection method for the initial screening of abdominal internal organ injuries. We utilized a dataset provided by the Kaggle competition, comprising 3,147 patients, of which 855 were diagnosed with abdominal trauma, accounting for 27.16% of the total patient population. Following image data pre-processing, we employed a 2D semantic segmentation model to segment the images and constructed a 2.5D classification model to assess the probability of injury for each organ. Subsequently, we evaluated the algorithm’s performance using 5k-fold cross-validation. With particularly noteworthy performance in detecting renal injury on abdominal CT scans, we achieved an acceptable accuracy of 0.932 (with a positive predictive value (PPV) of 0.888, negative predictive value (NPV) of 0.943, sensitivity of 0.887, and specificity of 0.944). Furthermore, the accuracy for liver injury detection was 0.873 (with PPV of 0.789, NPV of 0.895, sensitivity of 0.789, and specificity of 0.895), while for spleen injury, it was 0.771 (with PPV of 0.630, NPV of 0.814, sensitivity of 0.626, and specificity of 0.816). The deep learning model demonstrated the capability to identify multiple organ injuries simultaneously on CT scans and holds potential for application in preliminary screening and adjunctive diagnosis of trauma cases beyond abdominal injuries.
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深度学习在 CT 成像腹部创伤诊断中的应用
腹部计算机断层扫描(CT)是绘制腹部横截面图像的重要成像方式,尤其是在腹部创伤的情况下,这在外伤中很常见。然而,解读 CT 图像是一项挑战,尤其是在紧急情况下。因此,我们开发了一种基于深度学习算法的新型检测方法,用于初步筛查腹部内脏损伤。我们利用了 Kaggle 竞赛提供的数据集,该数据集由 3,147 名患者组成,其中 855 人被诊断为腹部创伤,占患者总数的 27.16%。在对图像数据进行预处理后,我们采用二维语义分割模型对图像进行分割,并构建了一个二维半分类模型来评估每个器官的损伤概率。随后,我们使用 5k 倍交叉验证评估了算法的性能。在腹部 CT 扫描的肾脏损伤检测方面,我们的准确率达到了 0.932(阳性预测值为 0.888,阴性预测值为 0.943,灵敏度为 0.887,特异性为 0.944),表现尤为突出。此外,肝损伤检测的准确度为 0.873(PPV 为 0.789,NPV 为 0.895,灵敏度为 0.789,特异度为 0.895),而脾损伤检测的准确度为 0.771(PPV 为 0.630,NPV 为 0.814,灵敏度为 0.626,特异度为 0.816)。深度学习模型展示了在 CT 扫描中同时识别多个器官损伤的能力,有望应用于腹部损伤以外的创伤病例的初步筛查和辅助诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
World Journal of Emergency Surgery
World Journal of Emergency Surgery EMERGENCY MEDICINE-SURGERY
CiteScore
14.50
自引率
5.00%
发文量
60
审稿时长
10 weeks
期刊介绍: The World Journal of Emergency Surgery is an open access, peer-reviewed journal covering all facets of clinical and basic research in traumatic and non-traumatic emergency surgery and related fields. Topics include emergency surgery, acute care surgery, trauma surgery, intensive care, trauma management, and resuscitation, among others.
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