Machine Learning-Based Identification of Diagnostic Biomarkers for Korean Male Sarcopenia Through Integrative DNA Methylation and Methylation Risk Score: From the Korean Genomic Epidemiology Study (KoGES).

IF 3 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL Journal of Korean Medical Science Pub Date : 2024-07-08 DOI:10.3346/jkms.2024.39.e200
Seohyun Ahn, Yunho Sung, Wook Song
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Abstract

Background: Sarcopenia, characterized by a progressive decline in muscle mass, strength, and function, is primarily attributable to aging. DNA methylation, influenced by both genetic predispositions and environmental exposures, plays a significant role in sarcopenia occurrence. This study employed machine learning (ML) methods to identify differentially methylated probes (DMPs) capable of diagnosing sarcopenia in middle-aged individuals. We also investigated the relationship between muscle strength, muscle mass, age, and sarcopenia risk as reflected in methylation profiles.

Methods: Data from 509 male participants in the urban cohort of the Korean Genome Epidemiology Study_Health Examinee study were categorized into quartile groups based on the sarcopenia criteria for appendicular skeletal muscle index (ASMI) and handgrip strength (HG). To identify diagnostic biomarkers for sarcopenia, we used recursive feature elimination with cross validation (RFECV), to pinpoint DMPs significantly associated with sarcopenia. An ensemble model, leveraging majority voting, was utilized for evaluation. Furthermore, a methylation risk score (MRS) was calculated, and its correlation with muscle strength, function, and age was assessed using likelihood ratio analysis and multinomial logistic regression.

Results: Participants were classified into two groups based on quartile thresholds: sarcopenia (n = 37) with ASMI and HG in the lowest quartile, and normal ranges (n = 48) in the highest. In total, 238 DMPs were identified and eight probes were selected using RFECV. These DMPs were used to build an ensemble model with robust diagnostic capabilities for sarcopenia, as evidenced by an area under the receiver operating characteristic curve of 0.94. Based on eight probes, the MRS was calculated and then validated by analyzing age, HG, and ASMI among the control group (n = 424). Age was positively correlated with high MRS (coefficient, 1.2494; odds ratio [OR], 3.4882), whereas ASMI and HG were negatively correlated with high MRS (ASMI coefficient, -0.4275; OR, 0.6521; HG coefficient, -0.3116; OR, 0.7323).

Conclusion: Overall, this study identified key epigenetic markers of sarcopenia in Korean males and developed a ML model with high diagnostic accuracy for sarcopenia. The MRS also revealed significant correlations between these markers and age, HG, and ASMI. These findings suggest that both diagnostic models and the MRS can play an important role in managing sarcopenia in middle-aged populations.

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通过整合 DNA 甲基化和甲基化风险评分,基于机器学习识别韩国男性 "肌肉疏松症 "诊断生物标志物:韩国基因组流行病学研究》(KoGES)。
背景:肌肉疏松症的特点是肌肉质量、力量和功能逐渐下降,主要归因于衰老。DNA 甲基化受遗传倾向和环境暴露的影响,在肌肉疏松症的发生中起着重要作用。本研究采用机器学习(ML)方法来识别能够诊断中年人肌肉疏松症的差异甲基化探针(DMPs)。我们还研究了甲基化图谱所反映的肌肉力量、肌肉质量、年龄与肌肉疏松症风险之间的关系:根据肌肉疏松症标准中的骨骼肌指数(ASMI)和手握力(HG),我们将韩国基因组流行病学研究_健康体检者研究城市队列中 509 名男性参与者的数据分为四分位组。为了确定肌肉疏松症的诊断生物标志物,我们使用了交叉验证递归特征消除法(RFECV),以确定与肌肉疏松症显著相关的DMPs。在评估时,我们使用了一个利用多数投票的集合模型。此外,还计算了甲基化风险评分(MRS),并使用似然比分析和多项式逻辑回归评估了其与肌肉力量、功能和年龄的相关性:根据四分位数阈值将参与者分为两组:最低四分位数为患有 ASMI 和 HG 的肌少症(37 人),最高四分位数为正常范围(48 人)。总共确定了 238 个 DMP,并使用 RFECV 选择了 8 个探针。这些 DMPs 被用来建立一个具有强大肌少症诊断能力的集合模型,接收者操作特征曲线下面积为 0.94。根据八个探针计算出 MRS,然后通过分析对照组(n = 424)的年龄、HG 和 ASMI 进行验证。年龄与高MRS呈正相关(系数,1.2494;比值比[OR],3.4882),而ASMI和HG与高MRS呈负相关(ASMI系数,-0.4275;比值比,0.6521;HG系数,-0.3116;比值比,0.7323):总之,本研究确定了韩国男性肌肉疏松症的关键表观遗传标记,并建立了一个具有较高诊断准确性的肌肉疏松症 ML 模型。MRS 还揭示了这些标记物与年龄、HG 和 ASMI 之间的显著相关性。这些研究结果表明,诊断模型和磁共振成像可在中年人群肌肉疏松症的管理中发挥重要作用。
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来源期刊
Journal of Korean Medical Science
Journal of Korean Medical Science 医学-医学:内科
CiteScore
7.80
自引率
8.90%
发文量
320
审稿时长
3-6 weeks
期刊介绍: The Journal of Korean Medical Science (JKMS) is an international, peer-reviewed Open Access journal of medicine published weekly in English. The Journal’s publisher is the Korean Academy of Medical Sciences (KAMS), Korean Medical Association (KMA). JKMS aims to publish evidence-based, scientific research articles from various disciplines of the medical sciences. The Journal welcomes articles of general interest to medical researchers especially when they contain original information. Articles on the clinical evaluation of drugs and other therapies, epidemiologic studies of the general population, studies on pathogenic organisms and toxic materials, and the toxicities and adverse effects of therapeutics are welcome.
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