Greco Federico, Salgado Rodrigo, Van Hecke Wim, Del Buono Romualdo, Parizel Paul M, Mallio Carlo Augusto
U.O.C. Diagnostica per Immagini Territoriale Aziendale, Cittadella della Salute Azienda Sanitaria Locale di Lecce, Lecce, Italy.
Department of Radiology, Antwerp University Hospital (UZA), Edegem, Belgium.
Quant Imaging Med Surg. 2022 Mar;12(3):2075-2089. doi: 10.21037/qims-21-945.
The present review summarizes the available evidence on artificial intelligence (AI) algorithms aimed to the segmentation of epicardial and pericardial adipose tissues on computed tomography (CT) images. Body composition imaging is a novel concept based on quantitative analysis of body tissues. Manual segmentation of medical images allows to obtain quantitative and qualitative data on several tissues including epicardial and pericardial fat. However, since manual segmentation requires a considerable amount of time, the analysis of adipose tissue compartments based on AI has been proposed as an automatic, reliable, accurate and fast tool. The literature research was performed on March 2021 using MEDLINE PubMed Central and "adipose tissue artificial intelligence", "adipose tissue deep learning" or "adipose tissue machine learning" as keywords for articles search. Relevant articles concerning epicardial adipose tissue, pericardial adipose tissue and AI were selected. The evaluation of adipose tissue compartments can provide additional information on the pathogenesis and prognosis of several diseases, including cardiovascular. AI can assist physicians to obtain important information, possibly improving the patient's quality of life and identifying patients at risk of developing variable disorders.
本综述总结了关于旨在对计算机断层扫描(CT)图像上的心外膜和心包脂肪组织进行分割的人工智能(AI)算法的现有证据。身体成分成像基于对身体组织的定量分析,是一个新颖的概念。医学图像的手动分割能够获取包括心外膜和心包脂肪在内的多种组织的定量和定性数据。然而,由于手动分割需要大量时间,基于人工智能对脂肪组织区域进行分析已被提议作为一种自动、可靠、准确且快速的工具。2021年3月,利用MEDLINE PubMed Central数据库,以“脂肪组织人工智能”、“脂肪组织深度学习”或“脂肪组织机器学习”作为文章搜索关键词进行了文献研究。选取了有关心外膜脂肪组织、心包脂肪组织和人工智能的相关文章。对脂肪组织区域的评估可为包括心血管疾病在内的多种疾病的发病机制和预后提供额外信息。人工智能可以帮助医生获取重要信息,可能改善患者的生活质量,并识别有发生各种疾病风险的患者。