临床人群计算机断层扫描的身体成分分析:深度学习的作用。

IF 2 4区 医学 Q3 GENETICS & HEREDITY Lifestyle Genomics Pub Date : 2020-01-01 Epub Date: 2019-12-10 DOI:10.1159/000503996
Michael T Paris
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引用次数: 20

摘要

背景:身体成分越来越被认为是癌症、肝硬化和危重患者健康结局的重要预后因素。计算机断层扫描(CT)扫描,作为常规护理的一部分,提供了一个极好的机会来精确测量骨骼肌和脂肪组织的数量和质量。然而,CT扫描的人工分析是昂贵和耗时的,限制了基于CT的身体成分测量的广泛采用。摘要:深度学习在生物医学图像分析方面取得了巨大的成功。最近的一些出版物已经证明,与人类测量骨骼肌、内脏脂肪和腰椎区域皮下脂肪组织相比,深度神经网络具有出色的准确性,这表明使用深度神经网络可以成功地自动分析身体成分。关键词:CT体成分分析精度高、速度快(
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Body Composition Analysis of Computed Tomography Scans in Clinical Populations: The Role of Deep Learning.

Background: Body composition is increasingly being recognized as an important prognostic factor for health outcomes across cancer, liver cirrhosis, and critically ill patients. Computed tomography (CT) scans, when taken as part of routine care, provide an excellent opportunity to precisely measure the quantity and quality of skeletal muscle and adipose tissue. However, manual analysis of CT scans is costly and time-intensive, limiting the widespread adoption of CT-based measurements of body composition.

Summary: Advances in deep learning have demonstrated excellent success in biomedical image analysis. Several recent publications have demonstrated excellent accuracy in comparison to human raters for the measurement of skeletal muscle, visceral adipose, and subcutaneous adipose tissue from the lumbar vertebrae region, indicating that analysis of body composition may be successfully automated using deep neural networks. Key Messages: The high accuracy and drastically improved speed of CT body composition analysis (<1 s/scan for neural networks vs. 15 min/scan for human analysis) suggest that neural networks may aid researchers and clinicians in better understanding the role of body composition in clinical populations by enabling cost-effective, large-scale research studies. As the role of body composition in clinical settings and the field of automated analysis advance, it will be critical to examine how clinicians interact with these systems and to evaluate whether these technologies are beneficial in improving treatment and health outcomes for patients.

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来源期刊
Lifestyle Genomics
Lifestyle Genomics Agricultural and Biological Sciences-Food Science
CiteScore
4.00
自引率
7.70%
发文量
11
审稿时长
28 weeks
期刊介绍: Lifestyle Genomics aims to provide a forum for highlighting new advances in the broad area of lifestyle-gene interactions and their influence on health and disease. The journal welcomes novel contributions that investigate how genetics may influence a person’s response to lifestyle factors, such as diet and nutrition, natural health products, physical activity, and sleep, amongst others. Additionally, contributions examining how lifestyle factors influence the expression/abundance of genes, proteins and metabolites in cell and animal models as well as in humans are also of interest. The journal will publish high-quality original research papers, brief research communications, reviews outlining timely advances in the field, and brief research methods pertaining to lifestyle genomics. It will also include a unique section under the heading “Market Place” presenting articles of companies active in the area of lifestyle genomics. Research articles will undergo rigorous scientific as well as statistical/bioinformatic review to ensure excellence.
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