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首页> 外文期刊>Scientific reports. >Assessing cardiovascular risks from a mid-thigh CT image: a tree-based machine learning approach using radiodensitometric distributions
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Assessing cardiovascular risks from a mid-thigh CT image: a tree-based machine learning approach using radiodensitometric distributions

机译:评估中线CT图像中的心血管风险:一种基于树的机器学习方法,使用射阳部测定分布

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The nonlinear trimodal regression analysis (NTRA) method based on radiodensitometric CT distributions was recently developed and assessed for the quantification of lower extremity function and nutritional parameters in aging subjects. However, the use of the NTRA method for building predictive models of cardiovascular health was not explored; in this regard, the present study reports the use of NTRA parameters for classifying elderly subjects with coronary heart disease (CHD), cardiovascular disease (CVD), and chronic heart failure (CHF) using multivariate logistic regression and three tree-based machine learning (ML) algorithms. Results from each model were assembled as a typology of four classification metrics: total classification score, classification by tissue type, tissue-based feature importance, and classification by age. The predictive utility of this method was modelled using CHF incidence data. ML models employing the random forests algorithm yielded the highest classification performance for all analyses, and overall classification scores for all three conditions were excellent: CHD (AUCROC: 0.936); CVD (AUCROC: 0.914); CHF (AUCROC: 0.994). Longitudinal assessment for modelling the prediction of CHF incidence was likewise robust (AUCROC: 0.993). The present work introduces a substantial step forward in the construction of non-invasive, standardizable tools for associating adipose, loose connective, and lean tissue changes with cardiovascular health outcomes in elderly individuals.
机译:最近基于辐射腺度计量CT分布的非线性三峰回归分析(NTRA)方法,并评估了老化对象中下肢函数和营养参数的定量。然而,没有探索使用NTRA方法,用于建立心血管健康的预测模型;在这方面,本研究报告使用NTRA参数对冠心病(CHD),心血管疾病(CVD)和慢性心力衰竭(CHF)使用多元逻辑回归和三种基于树的机器学习( ml)算法。每个模型的结果被组装为四种分类度量的类型:总分类评分,组织类型分类,基于组织的特征重要性,以及按年龄的分类。使用CHF发病数据进行建模该方法的预测效用。采用随机森林算法的ML模型为所有分析产生了最高的分类性能,所有三种条件的整体分类评分优异:CHD(Aucroc:0.936); CVD(Aucroc:0.914); CHF(AUCROC:0.994)。纵向评估模拟CHF发病率的预测同样是鲁棒(Aucroc:0.993)。本作本作在构建非侵入性,可标记工具的构建方面介绍了一个重要的一步,用于将脂肪,松散的结缔组织和瘦组织变化与老年人的心血管健康结果相关联。

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