Dreizin David, Cheng Chi-Tung, Liao Chien-Hung, Jindal Ankush, Colak Errol
University of Maryland Trauma Radiology AI Laboratory (TRAIL), University of Maryland School of Medicine, Baltimore, USA.
Department of Diagnostic Radiology and Nuclear Medicine, R Adams Cowley Shock Trauma Center, University of Maryland School of Medicine, Baltimore, USA.
Abdom Radiol (NY). 2025 Mar 21. doi: 10.1007/s00261-025-04816-z.
Abdominopelvic trauma is a major cause of morbidity and mortality, typically resulting from high-energy mechanisms such as motor vehicle collisions and penetrating injuries. Admission abdominopelvic trauma CT, performed either selectively or as part of a whole-body CT protocol, has become the workhorse screening and surgical planning modality due to improvements in speed and image quality. Radiography remains an essential element of the secondary trauma survey, and Focused Assessment with Sonography for Trauma (FAST) scanning has added value for quick assessment of non-compressible hemorrhage in hemodynamically unstable patients. Complex and severe polytrauma cases often delay radiology report turnaround times, which can potentially impede urgent clinical decision-making. Artificial intelligence (AI) computer-aided detection and diagnosis (CAD) offers promising solutions for enhanced diagnostic efficiency and accuracy in abdominopelvic trauma imaging. Although commercial AI tools for abdominopelvic trauma are currently available for only a few use cases, the literature reveals robust research and development (R&D) of prototype tools. Multiscale convolutional neural networks (CNNs) and transformer-based models are capable of detecting and quantifying solid organ injuries, fractures, and hemorrhage with a high degree of precision. Further, generalist foundation models such as multimodal vision-language models (VLMs) can be adapted and fine-tuned using imaging, clinical, and text data for a range of tasks, including detection, quantitative visualization, prognostication, and report auto-generation. Despite their promise, for most use cases in abdominopelvic trauma, AI CAD tools remain in the pilot stages of technology readiness, with persistent challenges related to data availability; the need for open-access PACS compatible software pipelines for pre-clinical shadow-testing; lack of well-designed multi-institutional validation studies; and regulatory hurdles. This narrative review provides a snapshot of the current state of AI in abdominopelvic trauma, examining existing commercial tools; research and development throughout the technology readiness pipeline; and future directions in this domain.
腹盆腔创伤是发病和死亡的主要原因,通常由机动车碰撞和穿透伤等高能量机制导致。选择性进行的或作为全身CT检查方案一部分的入院腹盆腔创伤CT,由于速度和图像质量的提高,已成为主要的筛查和手术规划方式。X线摄影仍然是二次创伤检查的重要组成部分,而创伤重点超声评估(FAST)扫描对于快速评估血流动力学不稳定患者的不可压缩性出血具有附加价值。复杂和严重的多发伤病例常常会延迟放射学报告的周转时间,这可能会阻碍紧急临床决策。人工智能(AI)计算机辅助检测和诊断(CAD)为提高腹盆腔创伤成像的诊断效率和准确性提供了有前景的解决方案。尽管目前仅在少数用例中才有用于腹盆腔创伤的商业AI工具,但文献显示了原型工具的强劲研发(R&D)。多尺度卷积神经网络(CNN)和基于Transformer的模型能够高精度地检测和量化实体器官损伤、骨折和出血。此外,多模态视觉语言模型(VLM)等通用基础模型可以使用成像、临床和文本数据进行适配和微调,以用于一系列任务,包括检测、定量可视化、预后预测和报告自动生成。尽管它们前景广阔,但对于腹盆腔创伤的大多数用例而言,AI CAD工具仍处于技术就绪的试点阶段,存在与数据可用性相关的持续挑战;需要用于临床前阴影测试的开放式访问PACS兼容软件管道;缺乏设计良好的多机构验证研究;以及监管障碍。本叙述性综述提供了腹盆腔创伤中AI的当前状态概述,审视了现有的商业工具;整个技术就绪管道中的研发情况;以及该领域的未来方向。