Department of Radiology, Haeundae Paik Hospital, Inje University College of Medicine, Busan, South Korea.
Department of Radiology, Research Institute of Radiological Science, and Center for Clinical Imaging Data Science (CCIDS), Yonsei University College of Medicine, 50-1 Yonsei-Ro, Seodaemun-Gu, Seoul, 03722, South Korea.
Sci Rep. 2024 Feb 2;14(1):2769. doi: 10.1038/s41598-024-52614-2.
This study aimed to develop and evaluate a sarcopenia prediction model by fusing numerical features from shear-wave elastography (SWE) and gray-scale ultrasonography (GSU) examinations, using the rectus femoris muscle (RF) and categorical/numerical features related to clinical information. Both cohorts (development, 70 healthy subjects; evaluation, 81 patients) underwent ultrasonography (SWE and GSU) and computed tomography. Sarcopenia was determined using skeletal muscle index calculated from the computed tomography. Clinical and ultrasonography measurements were used to predict sarcopenia based on a linear regression model with the least absolute shrinkage and selection operator (LASSO) regularization. Furthermore, clinical and ultrasonography features were combined at the feature and score levels to improve sarcopenia prediction performance. The accuracies of LASSO were 70.57 ± 5.00-81.54 ± 4.83 (clinical) and 69.00 ± 4.52-69.73 ± 5.47 (ultrasonography). Feature-level fusion of clinical and ultrasonography (accuracy, 70.29 ± 6.63 and 83.55 ± 4.32) showed similar performance with clinical features. Score-level fusion by AdaBoost showed the best performance (accuracy, 73.43 ± 6.57-83.17 ± 5.51) in the development and evaluation cohorts, respectively. This study might suggest the potential of machine learning fusion techniques to enhance the accuracy of sarcopenia prediction models and improve clinical decision-making in patients with sarcopenia.
本研究旨在开发和评估一种肌少症预测模型,该模型通过融合剪切波弹性成像(SWE)和灰阶超声(GSU)检查的数值特征,以及与临床信息相关的分类/数值特征,利用股直肌(RF)来实现。两个队列(开发队列,70 名健康受试者;评估队列,81 名患者)均接受了超声(SWE 和 GSU)和计算机断层扫描(CT)检查。肌少症通过从 CT 计算得出的骨骼肌指数来确定。根据线性回归模型和最小绝对收缩和选择算子(LASSO)正则化,使用临床和超声测量来预测肌少症。此外,在特征和评分水平上将临床和超声特征相结合,以提高肌少症预测性能。LASSO 的准确率为 70.57±5.00-81.54±4.83(临床)和 69.00±4.52-69.73±5.47(超声)。临床和超声的特征级融合(准确率为 70.29±6.63 和 83.55±4.32)与临床特征具有相似的性能。AdaBoost 的评分级融合在开发和评估队列中分别表现出最佳性能(准确率为 73.43±6.57-83.17±5.51)。本研究可能表明机器学习融合技术有潜力提高肌少症预测模型的准确性,并改善肌少症患者的临床决策。