Cardiometabolic risk factor clustering in persons with spinal cord injury: A principal component analysis approach.

IF 1.8 4区 医学 Q3 CLINICAL NEUROLOGY
Journal of Spinal Cord Medicine Pub Date : 2024-09-01 Epub Date: 2023-09-11 DOI:10.1080/10790268.2023.2215998
Shawn K Gilhooley, William A Bauman, Michael F La Fountaine, Gregory T Cross, Steven C Kirshblum, Ann M Spungen, Christopher M Cirnigliaro
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Abstract

Context/objective: To identify cardiometabolic (CM) measurements that cluster to confer increased cardiovascular disease (CVD) risk using principal component analysis (PCA) in a cohort of chronic spinal cord injury (SCI) and healthy non-SCI individuals.

Approach: A cross-sectional study was performed in ninety-eight non-ambulatory men with chronic SCI and fifty-one healthy non-SCI individuals (ambulatory comparison group). Fasting blood samples were obtained for the following CM biomarkers: lipid, lipoprotein particle, fasting glucose and insulin concentrations, leptin, adiponectin, and markers of inflammation. Total and central adiposity [total body fat (TBF) percent and visceral adipose tissue (VAT) percent, respectively] were obtained by dual x-ray absorptiometry (DXA). A PCA was used to identify the CM outcome measurements that cluster to confer CVD risk in SCI and non-SCI cohorts.

Results: Using PCA, six factor-components (FC) were extracted, explaining 77% and 82% of the total variance in the SCI and non-SCI cohorts, respectively. In both groups, FC-1 was primarily composed of lipoprotein particle concentration variables. TBF and VAT were included in FC-2 in the SCI group, but not the non-SCI group. In the SCI cohort, logistic regression analysis results revealed that for every unit increase in the FC-1 standardized score generated from the statistical software during the PCA, there is a 216% increased risk of MetS (P = 0.001), a 209% increased risk of a 10-yr. FRS ≥ 10% (P = 0.001), and a 92% increase in the risk of HOMA2-IR ≥ 2.05 (P = 0.01).

Conclusion: Application of PCA identified 6-FC models for the SCI and non-SCI groups. The clustering of variables into the respective models varied considerably between the cohorts, indicating that CM outcomes may play a differential role on their conferring CVD-risk in individuals with chronic SCI.

脊髓损伤者的心脏代谢风险因素聚类:主成分分析法
背景/目标:在一组慢性脊髓损伤(SCI)和健康的非 SCI 患者中,使用主成分分析法(PCA)确定可增加心血管疾病(CVD)风险的心血管代谢(CM)测量值:方法:我们对 98 名非卧床的慢性 SCI 男性患者和 51 名健康的非 SCI 患者(卧床对比组)进行了横断面研究。研究人员采集了空腹血样,以检测以下CM生物标志物:血脂、脂蛋白颗粒、空腹血糖和胰岛素浓度、瘦素、脂肪连通素和炎症标志物。总脂肪率和中心脂肪率[分别为身体总脂肪(TBF)百分比和内脏脂肪组织(VAT)百分比]是通过双 X 射线吸收测定法(DXA)获得的。采用 PCA 方法确定了在 SCI 和非 SCI 队列中具有心血管疾病风险的 CM 结果测量值:使用 PCA 提取出了六个因子成分(FC),分别解释了 SCI 和非 SCI 组群中 77% 和 82% 的总方差。在两组中,FC-1 主要由脂蛋白颗粒浓度变量组成。SCI 组的 FC-2 包括 TBF 和 VAT,而非 SCI 组不包括。在SCI队列中,逻辑回归分析结果显示,在PCA过程中,统计软件生成的FC-1标准化得分每增加一个单位,MetS风险增加216%(P = 0.001),10年FRS≥10%的风险增加209%(P = 0.001),HOMA2-IR≥2.05的风险增加92%(P = 0.01):结论:PCA的应用为SCI组和非SCI组确定了6-FC模型。在不同组别中,变量在各自模型中的聚类差异很大,这表明慢性 SCI 患者的 CM 结果可能对其心血管疾病风险有不同的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Spinal Cord Medicine
Journal of Spinal Cord Medicine 医学-临床神经学
CiteScore
4.20
自引率
5.90%
发文量
101
审稿时长
6-12 weeks
期刊介绍: For more than three decades, The Journal of Spinal Cord Medicine has reflected the evolution of the field of spinal cord medicine. From its inception as a newsletter for physicians striving to provide the best of care, JSCM has matured into an international journal that serves professionals from all disciplines—medicine, nursing, therapy, engineering, psychology and social work.
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