Li Jiaxin, Ye Jiayin, Luo Yiyun, Xu Tianyang, Jia Zhenyi
Shanghai Jiao Tong University, Shanghai, China.
Shanghai Sixth People's Hospital, Shanghai, China.
Abdom Radiol (NY). 2025 Mar 17. doi: 10.1007/s00261-025-04864-5.
Acute appendicitis represents a prevalent condition within the spectrum of acute abdominal pathologies, exhibiting a diverse clinical presentation. Computed tomography (CT) imaging has emerged as a prospective diagnostic modality for the identification and differentiation of appendicitis. This review aims to synthesize current applications, progress, and challenges in integrating machine learning (ML) with CT for diagnosing acute appendicitis while exploring prospects. ML-driven advancements include automated detection, differential diagnosis, and severity stratification. For instance, deep learning models such as AppendiXNet achieved an AUC of 0.81 for appendicitis detection, while 3D convolutional neural networks (CNNs) demonstrated superior performance, with AUCs up to 0.95 and an accuracy of 91.5%. ML algorithms effectively differentiate appendicitis from similar conditions like diverticulitis, achieving AUCs between 0.951 and 0.972. They demonstrate remarkable proficiency in distinguishing between complex and straightforward cases through the innovative use of radiomics and hybrid models, achieving AUCs ranging from 0.80 to 0.96. Even with these advancements, challenges remain, such as the "black-box" nature of artificial intelligence, its integration into clinical workflows, and the significant resources required. Future directions emphasize interpretable models, multimodal data fusion, and cost-effective decision-support systems. By addressing these barriers, ML holds promise for refining diagnostic precision, optimizing treatment pathways, and reducing healthcare costs.
急性阑尾炎是急性腹部疾病谱中的一种常见病症,临床表现多样。计算机断层扫描(CT)成像已成为识别和鉴别阑尾炎的一种前瞻性诊断方法。本综述旨在综合机器学习(ML)与CT相结合用于诊断急性阑尾炎的当前应用、进展和挑战,并探索其前景。ML驱动的进展包括自动检测、鉴别诊断和严重程度分层。例如,像AppendiXNet这样的深度学习模型在阑尾炎检测方面的AUC为0.81,而3D卷积神经网络(CNN)表现出卓越性能,AUC高达0.95,准确率为91.5%。ML算法能有效区分阑尾炎与憩室炎等相似病症,AUC在0.951至0.972之间。通过创新性地使用放射组学和混合模型,它们在区分复杂和简单病例方面表现出色,AUC范围为0.80至0.96。即便有这些进展,挑战依然存在,如人工智能的“黑箱”性质、其融入临床工作流程以及所需的大量资源。未来方向强调可解释模型、多模态数据融合和具有成本效益的决策支持系统。通过克服这些障碍,ML有望提高诊断精度、优化治疗路径并降低医疗成本。