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Predicting body mass index and isometric leg strength using soft tissue distributions from computed tomography scans

机译:使用计算机断层扫描扫描的软组织分布预测体重指数和等距腿部强度

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摘要

This paper describes the interconnections and predictive value between Body Mass Index (BMI), Isometric Leg Strength (ISO) and soft tissue distribution from mid-thigh Computed Tomography (CT) scans using Machine Learning (ML) regression and classification algorithms. A novel methodology for soft tissue patient specific CT profile called Nonlinear Trimodal Regression Analysis (NTRA) was developed using radiodensitomentric distribution from a CT scan. This method defines 11 parameters used as input features for Tree-Based ML algorithms in order to apply regression and classification on BMI and ISO. K_fold Cross-Validation with k = 10 is applied to obtain several models to choose the best one using the higher coefficient of determination (R-2) as an evaluator of the quality of regression prediction. Following this, BMI and ISO are divided into 3 and 5 classes and the same methodology is used to classify them. For this analysis, an accuracy parameter is calculated to evaluate the quality of the results. The max R-2 is 88.9 for the BMI and it is obtained using the Gradient-Boosting Algorithm. The best accuracy was 76.1 for 3 classes and 73.1 for 5 classes. The best results obtained for ISO are R-2 = 66.5 and an accuracy of 65.5 for the 3 classes classification. Furthermore, the connective tissue assumes high importance in the prediction process. In this methodological study the feasibility of a ML approach was tested with good results, in order to show a novel approach to study the correlation between physiology parameters and imaging.
机译:本文利用机器学习(ML)回归和分类算法,描述了体重指数(BMI)、等长腿部力量(ISO)和大腿中部CT扫描的软组织分布之间的相互联系和预测价值。利用CT扫描的放射性密度分布,开发了一种新的软组织患者特异性CT分析方法,称为非线性三模态回归分析(NTRA)。该方法定义了11个参数作为基于树的ML算法的输入特征,以便对BMI和ISO进行回归和分类。K=10的K_折叠交叉验证用于获得多个模型,以使用更高的确定系数(R-2)作为回归预测质量的评估者来选择最佳模型。在此基础上,BMI和ISO分为3和5类,并使用相同的方法对其进行分类。对于该分析,计算精度参数以评估结果的质量。BMI的最大R-2为88.9,使用梯度增强算法获得。3个班的准确率最高为76.1,5个班的准确率最高为73.1。ISO获得的最佳结果为R-2=66.5,三类分类的准确度为65.5。此外,结缔组织在预测过程中具有高度重要性。在这项方法学研究中,ML方法的可行性得到了良好的测试结果,以展示一种研究生理参数与成像之间相关性的新方法。

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