| Literature DB >> 35284252 |
Federico Greco1, Rodrigo Salgado2, Wim Van Hecke3, Romualdo Del Buono4, Paul M Parizel5, Carlo Augusto Mallio6.
Abstract
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. 2022 Quantitative Imaging in Medicine and Surgery. All rights reserved.Entities:
Keywords: Obesity; adipose tissue; artificial intelligence (AI); cardiac computed tomography (cardiac CT); metabolic syndrome (MetS)
Year: 2022 PMID: 35284252 PMCID: PMC8899943 DOI: 10.21037/qims-21-945
Source DB: PubMed Journal: Quant Imaging Med Surg ISSN: 2223-4306