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.

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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。
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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.
期刊最新文献
Embracing Inclusion, Diversity, Equity and Access (IDEA): Cultivating understanding internally to foster external change. First report of a new exoskeleton in incomplete spinal cord injury: FreeGait®. Improving current understanding of cognitive impairment in patients with a spinal cord injury: A UK-based clinician survey. Shelter-in-place during the COVID-19 pandemic: Impact on secondary health conditions, anxiety, loneliness, social isolation, social connectedness, and positive affect and well-being. The association between locus of control and general mental health in patients with lumbar spinal cord injury: A cross-sectional study.
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