ARTIFICIAL INTELLIGENCE TECHNOLOGY IN ASSESSING MYOCARDIAL PERFUSION USING POSITRON EMISSION TOMOGRAPHY USING 82Rb-CHLORIDE

Yurchenko A.A., Bashirova M.V., Moshkova E.N., Znamensky I.A.
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Abstract

At the moment, one of the most common causes of morbidity and mortality is coronary heart disease, which determines the need to develop methods for its diagnosis. Among diagnostic methods, non-invasive methods occupy a special place, in particular, determination of myocardial perfusion. One of the “gold standards” for assessing cardiac muscle perfusion is positron emission tomography combined with computed tomography (PET/CT) with 82Rb-chloride. Recently, attempts have been actively made to introduce the use of artificial intelligence in a variety of areas of medical clinical practice, including the development of medical decision support systems, as well as neural networks for assessing the results of diagnostic studies. In particular, there is information about attempts to use artificial intelligence in assessing myocardial perfusion using PET/CT with 82Rb-chloride. This paper analyzes the possibilities and prospects for using artificial intelligence in assessing the results of PET/CT with 82Rb-chloride. The use of well-trained neural networks and machine learning algorithms can significantly increase the accuracy of diagnosing coronary heart disease by improving the quality of images, analyzing the data obtained, or calculating characteristics and indicators, the quantitative interpretation of which may be difficult for a doctor. Neural networks are able to take into account in the prognosis both clinical and anamnestic data and additional parameters determined from research data, which the doctor may not pay attention to, which determines the relevance and prospects for the use of artificial intelligence in relation to the interpretation of 82Rb-PET/CT results.
利用 82Rb-CHLORIDE 正电子发射断层扫描评估心肌功能的人工智能技术
目前,冠心病是最常见的发病和死亡原因之一,这就决定了需要开发诊断冠心病的方法。在诊断方法中,非侵入性方法占有特殊地位,尤其是心肌灌注测定。评估心肌灌注的 "黄金标准 "之一是使用 82Rb 氯化物的正电子发射断层扫描结合计算机断层扫描(PET/CT)。最近,人们积极尝试将人工智能引入医疗临床实践的各个领域,包括开发医疗决策支持系统和评估诊断研究结果的神经网络。特别是,有资料显示,有人尝试将人工智能用于使用 82Rb 氯化物 PET/CT 评估心肌灌注。本文分析了使用人工智能评估 82Rb 氯化物 PET/CT 结果的可能性和前景。使用训练有素的神经网络和机器学习算法可以提高图像质量、分析所获数据或计算特征和指标,从而显著提高冠心病诊断的准确性。神经网络能够在预后中考虑到临床和病理数据,以及从研究数据中确定的额外参数,而医生可能不会注意这些参数,这就决定了人工智能在解读 82Rb-PET/CT 结果方面的相关性和应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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