利用机器学习识别预测骨质疏松风险的联合生物标志物

Zhenlong Zheng, Xianglan Zhang, Bong-Kyeong Oh, Ki-Yeol Kim
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引用次数: 3

摘要

骨质疏松症是一种严重的慢性骨骼疾病,影响老年人,尤其是绝经后妇女。然而,预测骨质疏松风险的分子生物标志物尚未得到很好的表征。本研究的目的是利用机器学习方法确定预测骨质疏松症风险的联合生物标志物。我们合并了三个公开可用的基因表达数据集(GSE56815、GSE13850和GSE2208),获得了6354个绝经后妇女(45个高骨密度和45个低骨密度)独特基因的表达数据。所有机器学习方法均在R语言中实现,使用GEOquery和limma软件包进行数据集下载和差异表达基因鉴定,并构建预测骨质疏松风险的nomogram。我们使用limma包检测到378个显著差异表达基因,代表了15个主要的生物学途径。基于组合生物标志物(两个或三个基因)的预测模型的性能优于基于单个基因的预测模型。两组基因中预测效果最好的是PLA2G2A和WRAP73。其中,LPN1、PFDN6、DOHH为最佳预测基因。总的来说,我们证明了使用联合与单一生物标志物预测骨质疏松症风险的优势。此外,使用联合生物标志物构建的预测图可被临床医生用于识别高风险个体,并用于设计有效的临床试验以减少骨质疏松症的发生率。
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Identification of combined biomarkers for predicting the risk of osteoporosis using machine learning
Osteoporosis is a severe chronic skeletal disorder that affects older individuals, especially postmenopausal women. However, molecular biomarkers for predicting the risk of osteoporosis are not well characterized. The aim of this study was to identify combined biomarkers for predicting the risk of osteoporosis using machine learning methods. We merged three publicly available gene expression datasets (GSE56815, GSE13850, and GSE2208) to obtain expression data for 6354 unique genes in postmenopausal women (45 with high bone mineral density and 45 with low bone mineral density). All machine learning methods were implemented in R, with the GEOquery and limma packages, for dataset download and differentially expressed gene identification, and a nomogram for predicting the risk of osteoporosis was constructed. We detected 378 significant differentially expressed genes using the limma package, representing 15 major biological pathways. The performance of the predictive models based on combined biomarkers (two or three genes) was superior to that of models based on a single gene. The best predictive gene set among two-gene sets included PLA2G2A and WRAP73. The best predictive gene set among three-gene sets included LPN1, PFDN6, and DOHH. Overall, we demonstrated the advantages of using combined versus single biomarkers for predicting the risk of osteoporosis. Further, the predictive nomogram constructed using combined biomarkers could be used by clinicians to identify high-risk individuals and in the design of efficient clinical trials to reduce the incidence of osteoporosis.
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