Development and validation of deep learning models for bowel obstruction on plain abdominal radiograph.

IF 1.4 4区 医学 Q4 MEDICINE, RESEARCH & EXPERIMENTAL
Yao Li, Shiqi Zhu, Yu Wang, Bowei Mao, Jielu Zhou, Jinzhou Zhu, Chenqi Gu
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引用次数: 0

Abstract

Objective: Artificial intelligence (AI) could help medical practitioners in analyzing radiological images to determine the presence and site of bowel obstruction. This retrospective diagnostic study proposed a series of deep learning (DL) models for diagnosing bowel obstruction on abdominal radiograph.

Methods: A total of 2082 upright plain abdominal radiographs were retrospectively collected from four hospitals. The images were labeled as normal, small bowel obstruction and large bowel obstruction by three senior radiologists based on comprehensive examinations and interventions within 48 hours after admission. Gradient-weighted class activation mapping was used to visualize the inferential explanation.

Results: In the validation set, the Xception-backboned model achieved the highest accuracy (0.863), surpassing the VGG16 (0.847) and ResNet models (0.836). In the test set, the Xception model (accuracy: 0.807) outperformed other models and a junior radiologist (0.780) but not a senior radiologist (0.840). In the AI-aided diagnostic framework, the junior and senior radiologists made their judgements while aware of the Xception model predictions. Their accuracy significantly improved to 0.887 and 0.913, respectively.

Conclusions: We developed and validated DL-based computer vision models for diagnosing bowel obstruction on plain abdominal radiograph. DL-based computer-aided diagnostic systems could reduce medical practitioners' workloads and improve diagnostic accuracy.

开发和验证腹部平片肠梗阻深度学习模型。
目的:人工智能(AI)可帮助医疗从业人员分析放射影像,以确定肠梗阻的存在和部位。这项回顾性诊断研究提出了一系列深度学习(DL)模型,用于诊断腹部X光片上的肠梗阻:方法:回顾性收集了四家医院共 2082 张直立腹部平片。由三位资深放射科医生根据入院后 48 小时内的综合检查和干预措施将图像标记为正常、小肠梗阻和大肠梗阻。梯度加权类激活图谱用于可视化推理解释:结果:在验证集中,Xception-backboned 模型的准确率最高(0.863),超过了 VGG16 模型(0.847)和 ResNet 模型(0.836)。在测试集中,Xception 模型(准确率:0.807)的表现优于其他模型和初级放射科医生(0.780),但不优于高级放射科医生(0.840)。在人工智能辅助诊断框架中,初级和高级放射科医生在作出判断时都了解 Xception 模型的预测。他们的准确率分别大幅提高到 0.887 和 0.913:我们开发并验证了基于 DL 的计算机视觉模型,用于诊断腹部平片上的肠梗阻。基于 DL 的计算机辅助诊断系统可减轻医生的工作量并提高诊断准确性。
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来源期刊
CiteScore
3.20
自引率
0.00%
发文量
555
审稿时长
1 months
期刊介绍: _Journal of International Medical Research_ is a leading international journal for rapid publication of original medical, pre-clinical and clinical research, reviews, preliminary and pilot studies on a page charge basis. As a service to authors, every article accepted by peer review will be given a full technical edit to make papers as accessible and readable to the international medical community as rapidly as possible. Once the technical edit queries have been answered to the satisfaction of the journal, the paper will be published and made available freely to everyone under a creative commons licence. Symposium proceedings, summaries of presentations or collections of medical, pre-clinical or clinical data on a specific topic are welcome for publication as supplements. Print ISSN: 0300-0605
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