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影像组学方法在老年人群中开展基于图像的描述性和预后表型分析的实用性:一项小型可行性研究的结果

The Usefulness of Radiomics Methodology for Developing Descriptive and Prognostic Image-Based Phenotyping in the Aging Population: Results From a Small Feasibility Study.

作者信息

Mirón Mombiela Rebeca, Borrás Consuelo

机构信息

Herlev og Gentofte Hospital, Herlev, Denmark.

Freshage Research Group, Department of Physiology, Faculty of Medicine, Institute of Health Research-INCLIVA, University of Valencia, and CIBERFES, Valencia, Spain.

出版信息

Front Aging. 2022 Apr 28;3:853671. doi: 10.3389/fragi.2022.853671. eCollection 2022.

Abstract

Radiomics is an emerging field that translates medical images into quantitative data to enable phenotypic profiling of human disease. In this retrospective study, we asked whether it is possible to use image-based phenotyping to describe and determine prognostic factors in the aging population. A radiomic frailty cohort with 101 patients was included in the analysis (65 ± 15 years, 55 men). A total of 44 texture features were extracted from the segmented muscle area of the ultrasound images of the anterior thigh. Univariate and multivariate analyses were performed to assess the image data sets and clinical data. Our results showed that the heterogeneity of muscle was associated with an increased incidence of hearing impairment, stroke, myocardial infarction, dementia/memory loss, and falls in the following two years. Regression analysis revealed a muscle radiomic model with 87.1% correct predictive value with good sensitivity and moderate specificity ( = 0.001). It is possible to develop and identify image-based phenotypes in the elderly population. The muscle radiomic model needs to further be validated. Future studies correlated with biological data (genomics, transcriptomics, metabolomics, etc.) will give further insights into the biological basis and molecular processes of the developed radiomic model.

摘要

放射组学是一个新兴领域,它将医学图像转化为定量数据,以实现人类疾病的表型分析。在这项回顾性研究中,我们探讨了是否可以使用基于图像的表型分析来描述和确定老年人群的预后因素。分析纳入了一个由101名患者组成的放射组学衰弱队列(年龄65±15岁,男性55名)。从前大腿超声图像的分割肌肉区域中总共提取了44个纹理特征。进行单变量和多变量分析以评估图像数据集和临床数据。我们的结果表明,肌肉异质性与未来两年听力障碍、中风、心肌梗死、痴呆/记忆力减退和跌倒的发生率增加有关。回归分析显示,肌肉放射组学模型的正确预测值为87.1%,具有良好的敏感性和中等特异性(P = 0.001)。在老年人群中开发和识别基于图像的表型是可行的。肌肉放射组学模型需要进一步验证。未来与生物数据(基因组学、转录组学、代谢组学等)相关的研究将进一步深入了解所开发放射组学模型的生物学基础和分子过程。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4521/9261370/266308063767/fragi-03-853671-g001.jpg

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