Dogan Kamil, Selcuk Turab
Radiology Department, Faculty of Medicine, Kahramanmaras Sutcu Imam University, Kahramanmaras 46050, Turkey.
Department of Electrical and Electronics Engineering, Kahramanmaras Sutcu Imam University, Kahramanmaras 46050, Turkey.
J Clin Med. 2024 Aug 22;13(16):4949. doi: 10.3390/jcm13164949.
Acute appendicitis (AA) is a major cause of acute abdominal pain requiring surgical intervention. Approximately 20% of AA cases are diagnosed neither early nor accurately, leading to an increased risk of appendiceal perforation and postoperative sequelae. AA can be identified with good accuracy using computed tomography (CT). However, some studies have found that a false-negative AA diagnosis made using CT can cause surgical therapy to be delayed. Deep learning experiments are aimed at minimizing false-negative diagnoses. However, the success rates reported in these studies are far from 100%. In addition, the methods used to divide patients into groups do not adequately reflect situations in which accurate radiological diagnosis is difficult. Therefore, in this study, we propose a novel deep-learning approach for the automatic diagnosis of AA using CT based on establishing a new strategy for classification according to the difficulties encountered in radiological diagnosis. A total of 266 patients with a pathological diagnosis of AA who underwent appendectomy were divided into two groups based on CT images and radiology reports. A deep learning analysis was performed on the CT images and clinical and laboratory parameters that contributed to the diagnosis of both the patient and age- and sex-adjusted control groups. The deep learning diagnosis success rate was 96% for the group with advanced radiological findings and 83.3% for the group with radiologically suspicious findings that could be considered normal. Using deep learning, successful results can be achieved in cases in which the appendix diameter has not increased significantly and there is no significant edema effect.
急性阑尾炎(AA)是需要手术干预的急性腹痛的主要原因。约20%的AA病例既未得到早期诊断也未得到准确诊断,导致阑尾穿孔和术后并发症的风险增加。使用计算机断层扫描(CT)可以较为准确地识别AA。然而,一些研究发现,CT做出的AA假阴性诊断可能会导致手术治疗延迟。深度学习实验旨在尽量减少假阴性诊断。然而,这些研究报告的成功率远未达到100%。此外,用于将患者分组的方法不能充分反映难以进行准确放射学诊断的情况。因此,在本研究中,我们基于根据放射学诊断中遇到的困难建立一种新的分类策略,提出了一种使用CT自动诊断AA的新型深度学习方法。共有266例经病理诊断为AA并接受阑尾切除术的患者,根据CT图像和放射学报告分为两组。对CT图像以及有助于患者和年龄及性别调整后的对照组诊断的临床和实验室参数进行了深度学习分析。对于具有高级放射学表现的组,深度学习诊断成功率为96%,对于放射学上可疑但可视为正常的组,成功率为83.3%。使用深度学习,在阑尾直径没有显著增加且没有明显水肿效应的情况下可以取得成功结果。