Department of Human Genetics, Guru Nanak Dev University, Amritsar 143005, Punjab, India.
J Adv Res. 2015 Sep;6(5):739-46. doi: 10.1016/j.jare.2014.04.002. Epub 2014 Apr 19.
The current study focused to determine significant cardiovascular risk factors through principal component factor analysis (PCFA) among three generations on 1827 individuals in three generations including 911 males (378 from offspring, 439 from parental and 94 from grand-parental generations) and 916 females (261 from offspring, 515 from parental and 140 from grandparental generations). The study performed PCFA with orthogonal rotation to reduce 12 inter-correlated variables into groups of independent factors. The factors have been identified as 2 for male grandparents, 3 for male offspring, female parents and female grandparents each, 4 for male parents and 5 for female offspring. This data reduction method identified these factors that explained 72%, 84%, 79%, 69%, 70% and 73% for male and female offspring, male and female parents and male and female grandparents respectively, of the variations in original quantitative traits. The factor 1 accounting for the largest portion of variations was strongly loaded with factors related to obesity (body mass index (BMI), waist circumference (WC), waist to hip ratio (WHR), and thickness of skinfolds) among all generations with both sexes, which has been known to be an independent predictor for cardiovascular morbidity and mortality. The second largest components, factor 2 and factor 3 for almost all generations reflected traits of blood pressure phenotypes loaded, however, in male offspring generation it was observed that factor 2 was loaded with blood pressure phenotypes as well as obesity. This study not only confirmed but also extended prior work by developing a cumulative risk scale from factor scores. Till today, such a cumulative and extensive scale has not been used in any Indian studies with individuals of three generations. These findings and study highlight the importance of global approach for assessing the risk and need for studies that elucidate how these different cardiovascular risk factors interact with each other over the time to create clinical disease. The findings also added depth to the negligible amount of literature of factor analysis of cardiovascular risk in any Indian ethnic population.
本研究旨在通过主成分因子分析(PCFA)确定三代 1827 个人中的重要心血管危险因素,其中包括 911 名男性(378 名来自后代,439 名来自父母,94 名来自祖父母)和 916 名女性(261 名来自后代,515 名来自父母,140 名来自祖父母)。研究采用正交旋转进行 PCFA,将 12 个相互关联的变量减少为独立因子组。这些因子被确定为男性祖父母的 2 个,男性后代、女性父母和女性祖父母的 3 个,男性父母的 4 个和女性后代的 5 个。这种数据减少方法确定了这些因子,它们分别解释了原始定量特征的 72%、84%、79%、69%、70%和 73%,用于男性和女性后代、男性和女性父母以及男性和女性祖父母。占变异最大部分的因子 1 在所有世代的男性和女性中都强烈地与肥胖相关因素(体重指数(BMI)、腰围(WC)、腰臀比(WHR)和皮肤褶皱厚度)相关,这些因素被认为是心血管发病率和死亡率的独立预测因子。几乎所有世代的第二大成分,因子 2 和因子 3,反映了血压表型的特征,然而,在男性后代世代中,观察到因子 2 不仅与血压表型相关,还与肥胖相关。这项研究不仅证实了,还扩展了先前的工作,从因子得分中开发出一个累积风险量表。到目前为止,在具有三代人的任何印度研究中,都没有使用过这样的累积和广泛的量表。这些发现和研究强调了采用全球方法评估风险的重要性,以及需要阐明这些不同的心血管危险因素如何随着时间的推移相互作用,从而导致临床疾病。这些发现还增加了印度任何种族人群心血管风险因子分析的文献数量。