Alyami Ali S
Department of Diagnostic Radiography Technology, College of Applied Medical Sciences, Jazan University, Jazan 45142, Saudi Arabia.
Diagnostics (Basel). 2023 May 4;13(9):1623. doi: 10.3390/diagnostics13091623.
Inflammatory bowel disease (IBD) is a global health concern that has been on the rise in recent years. In addition, imaging is the established method of care for detecting, diagnosing, planning treatment, and monitoring the progression of IBD. While conventional imaging techniques are limited in their ability to provide comprehensive information, cross-sectional imaging plays a crucial role in the clinical management of IBD. However, accurately characterizing, detecting, and monitoring fibrosis in Crohn's disease remains a challenging task for clinicians. Recent advances in artificial intelligence technology, machine learning, computational power, and radiomic emergence have enabled the automated evaluation of medical images to generate prognostic biomarkers and quantitative diagnostics. Radiomics analysis can be achieved via deep learning algorithms or by extracting handcrafted radiomics features. As radiomic features capture pathophysiological and biological data, these quantitative radiomic features have been shown to offer accurate and rapid non-invasive tools for IBD diagnostics, treatment response monitoring, and prognosis. For these reasons, the present review aims to provide a comprehensive review of the emerging radiomics methods in intestinal fibrosis research that are highlighted and discussed in terms of challenges and advantages.
炎症性肠病(IBD)是一个全球性的健康问题,近年来其发病率一直在上升。此外,影像学是检测、诊断、规划治疗以及监测IBD进展的既定医疗方法。虽然传统成像技术在提供全面信息方面能力有限,但横断面成像在IBD的临床管理中起着至关重要的作用。然而,准确表征、检测和监测克罗恩病中的纤维化对临床医生来说仍然是一项具有挑战性的任务。人工智能技术、机器学习、计算能力和放射组学的最新进展使得对医学图像进行自动评估以生成预后生物标志物和定量诊断成为可能。放射组学分析可以通过深度学习算法或提取手工制作的放射组学特征来实现。由于放射组学特征能够捕捉病理生理和生物学数据,这些定量放射组学特征已被证明可为IBD诊断、治疗反应监测和预后提供准确且快速的非侵入性工具。基于这些原因,本综述旨在全面回顾肠道纤维化研究中新兴的放射组学方法,并从挑战和优势方面进行重点介绍和讨论。