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在大型队列研究中,利用机器学习方法预测中年及老年人群高血糖与骨骼肌质量之间的负相关关系。

An Inverse Relation between Hyperglycemia and Skeletal Muscle Mass Predicted by Using a Machine Learning Approach in Middle-Aged and Older Adults in Large Cohorts.

作者信息

Wu Xuangao, Park Sunmin

机构信息

Department of Bio-Convergence System, Hoseo University, Asan 31499, Korea.

Obesity/Diabetes Research Center, Department of Food and Nutrition, Hoseo University, Asan 31499, Korea.

出版信息

J Clin Med. 2021 May 14;10(10):2133. doi: 10.3390/jcm10102133.

Abstract

BACKGROUND

Skeletal muscle mass (SMM) and fat mass (FM) are essentially required for health and quality of life in older adults.

OBJECTIVE

To generate the best SMM and FM prediction models using machine learning models incorporating socioeconomic, lifestyle, and biochemical parameters and the urban hospital-based Ansan/Ansung cohort, and to determine relations between SMM and FM and metabolic syndrome and its components in this cohort.

METHODS

SMM and FM data measured using an Inbody 4.0 unit in 90% of Ansan/Ansung cohort participants were used to train seven machine learning algorithms. The ten most essential predictors from 1411 variables were selected by: (1) Manually filtering out 48 variables, (2) generating best models by random grid mode in a training set, and (3) comparing the accuracy of the models in a test set. The seven trained models' accuracy was evaluated using mean-square errors (MSE), mean absolute errors (MAE), and R² values in 10% of the test set. SMM and FM of the 31,025 participants in the Ansan/Ansung cohort were predicted using the best prediction models (XGBoost for SMM and artificial neural network for FM). Metabolic syndrome and its components were compared between four groups categorized by 50 percentiles of predicted SMM and FM values in the cohort.

RESULTS

The best prediction models for SMM and FM were constructed using XGBoost (R2 = 0.82) and artificial neural network (ANN; R2 = 0.89) algorithms, respectively; both models had a low MSE. Serum platelet concentrations and GFR were identified as new biomarkers of SMM, and serum platelet and bilirubin concentrations were found to predict FM. Predicted SMM and FM values were significantly and positively correlated with grip strength ( = 0.726) and BMI ( = 0.915, < 0.05), respectively. Grip strengths in the high-SMM groups of both genders were significantly higher than in low-SMM groups ( < 0.05), and blood glucose and hemoglobin A1c in high-FM groups were higher than in low-FM groups for both genders ( < 0.05).

CONCLUSION

The models generated by XGBoost and ANN algorithms exhibited good accuracy for estimating SMM and FM, respectively. The prediction models take into account the actual clinical use since they included a small number of required features, and the features can be obtained in outpatients. SMM and FM predicted using the two models well represented the risk of low SMM and high fat in a clinical setting.

摘要

背景

骨骼肌质量(SMM)和脂肪量(FM)对老年人的健康和生活质量至关重要。

目的

利用包含社会经济、生活方式和生化参数的机器学习模型以及基于城市医院的安山/安城队列,生成最佳的SMM和FM预测模型,并确定该队列中SMM和FM与代谢综合征及其组分之间的关系。

方法

使用Inbody 4.0设备测量的安山/安城队列90%参与者的SMM和FM数据来训练七种机器学习算法。从1411个变量中选出十个最重要的预测因子,方法如下:(1)手动筛选出48个变量;(2)在训练集中通过随机网格模式生成最佳模型;(3)在测试集中比较模型的准确性。使用测试集10%中的均方误差(MSE)、平均绝对误差(MAE)和R²值评估七个训练模型的准确性。使用最佳预测模型(SMM用XGBoost,FM用人工神经网络)预测安山/安城队列31025名参与者的SMM和FM。根据队列中预测SMM和FM值的第50百分位数将其分为四组,比较代谢综合征及其组分。

结果

分别使用XGBoost(R2 = 0.82)和人工神经网络(ANN;R2 = 0.89)算法构建了最佳的SMM和FM预测模型;两个模型的MSE均较低。血清血小板浓度和肾小球滤过率被确定为SMM的新生物标志物,血清血小板和胆红素浓度可预测FM。预测的SMM和FM值分别与握力(r = 0.726)和BMI(r = 0.915,P < 0.05)显著正相关。男女高SMM组的握力均显著高于低SMM组(P < 0.05),男女高FM组的血糖和糖化血红蛋白均高于低FM组(P < 0.05)。

结论

XGBoost和ANN算法生成的模型分别对估计SMM和FM具有良好的准确性。预测模型考虑到了实际临床应用,因为它们包含少量所需特征,且这些特征可在门诊患者中获得。使用这两个模型预测的SMM和FM在临床环境中很好地反映了低SMM和高脂肪的风险。

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