Yuriy A. Vasilev, A. Vladzymyrskyy, K. Arzamasov, David U Shikhmuradov, Andrey V Pankratov, Илья V Ulyanov, Nikolay B Nechaev
{"title":"Prospects for the use of computer vision for abdominal CT","authors":"Yuriy A. Vasilev, A. Vladzymyrskyy, K. Arzamasov, David U Shikhmuradov, Andrey V Pankratov, Илья V Ulyanov, Nikolay B Nechaev","doi":"10.17816/dd515814","DOIUrl":null,"url":null,"abstract":"Radiology has undergone several significant changes in recent years. Technologies based on computer vision are being actively introduced and allow improving and accelerating the diagnosis of many diseases, as well as reducing the burden on medical personnel. At the same time, these technologies have already proven their effectiveness in routine practice in the analysis of X-ray studies of the mammary glands and chest organs. Also recently, solutions have appeared for the search, qualitative and quantitative evaluation of such common pathologies as urolithiasis and volumetric formations in the parenchyma of the liver and kidneys with a sufficiently high accuracy. \nCurrently, there are many different architectures of deep learning networks and computer vision algorithms that allow identifying and classify the pathology of the abdominal organs. At the same time, all models can be divided into algorithms that distinguish (segment) pathology and algorithms that allow classification of the pathology of the abdominal organs. \nThis review evaluates the existing computer vision algorithms used in computed tomography of the abdominal organs, determines the main directions of their development, and provides prospects for application in medical organizations.","PeriodicalId":34831,"journal":{"name":"Digital Diagnostics","volume":"16 5","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Digital Diagnostics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.17816/dd515814","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Radiology has undergone several significant changes in recent years. Technologies based on computer vision are being actively introduced and allow improving and accelerating the diagnosis of many diseases, as well as reducing the burden on medical personnel. At the same time, these technologies have already proven their effectiveness in routine practice in the analysis of X-ray studies of the mammary glands and chest organs. Also recently, solutions have appeared for the search, qualitative and quantitative evaluation of such common pathologies as urolithiasis and volumetric formations in the parenchyma of the liver and kidneys with a sufficiently high accuracy.
Currently, there are many different architectures of deep learning networks and computer vision algorithms that allow identifying and classify the pathology of the abdominal organs. At the same time, all models can be divided into algorithms that distinguish (segment) pathology and algorithms that allow classification of the pathology of the abdominal organs.
This review evaluates the existing computer vision algorithms used in computed tomography of the abdominal organs, determines the main directions of their development, and provides prospects for application in medical organizations.
近年来,放射学经历了几次重大变革。以计算机视觉为基础的技术正在被积极引进,这些技术可以改善和加快许多疾病的诊断,并减轻医务人员的负担。同时,这些技术已在乳腺和胸部器官的 X 射线研究分析的常规实践中证明了其有效性。此外,最近还出现了用于搜索、定性和定量评估常见病症的解决方案,如尿路结石以及肝脏和肾脏实质中的体积形成,并具有足够高的准确性。目前,有许多不同架构的深度学习网络和计算机视觉算法可以对腹部器官的病理进行识别和分类。同时,所有模型可分为区分(分割)病理的算法和对腹部器官病理进行分类的算法。本综述对腹部器官计算机断层扫描中使用的现有计算机视觉算法进行了评估,确定了这些算法的主要发展方向,并展望了其在医疗机构中的应用前景。