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Body composition patterns and breast cancer risk in Chinese women with breast diseases: A latent class analysis

机译:具有乳腺疾病的中国女性的身体成分模式和乳腺癌风险:潜在阶级分析

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Aims To identify unobserved body composition patterns among Chinese women with breast diseases using latent class analysis (LCA) and to examine the relationship between body composition patterns and breast cancer (BC) risk. Design A descriptive, cross-sectional study. Methods Female patients (N = 1816) with breast diseases were included in the study from April 2016 - March 2017. Body composition measures were done by the bioelectrical impedance analysis. The LCA models were estimated using Mplus 8.1. Results Four latent classes were identified based on water, protein, minerals and body fat mass: Class 1 - Low Muscle Mass class; Class 2 - High Body Composition class; Class 3 - High Fat class; and Class 4 - Normal Body Composition Class. Classes 2 and 3 are higher risk classes for developing BC compared with the other two classes (p < 0.05). Overall, age is positively associated with the odds of BC development (p < 0.001). However, age effect depends on the body composition patterns. Age effect on the odds of BC was statistically significant only for women who had least body fat mass (Class 1, OR = 1.110, 95% C.I.: 1.084-1.136) or had normal body composition (Class 4, OR = 1.090, 95% C.I.: 1.036-1.147). The effect of age was not statistically significant if women had higher risk body composition (e.g., in Classes 2 or 3). Conclusion Latent Class Analysis is a useful person-centred analytical approach for identification of unobserved patterns of body composition and it could be used to predict the risk of BC and develop personalized interventions for body composition studies.
机译:旨在使用潜在阶级分析(LCA)鉴定乳腺疾病的乳腺疾病的未观察到的身体成分模式,并检查身体成分模式和乳腺癌(BC)风险之间的关系。设计描述性横断面研究。方法患有乳腺疾病的女性患者(n = 1816)于2016年4月 - 2017年4月纳入了乳腺疾病。通过生物电阻抗分析完成的身体成分措施。使用Mplus 8.1估计LCA模型。结果基于水,蛋白质,矿物质和体脂肪量鉴定了四种潜在的阶级:1级 - 低肌肉质量级; 2类 - 高机身成分类; 3级 - 高脂肪级;和4类 - 正常的身体成分类。与其他两类相比,课程2和3是开发BC的较高风险等级(P <0.05)。总体而言,年龄与BC发育的几率正相关(P <0.001)。但是,年龄效应取决于身体成分模式。对BC的可能性的年龄效应是统计学意义的,只针对身体脂肪质量的女性(1,或= 1.110,95%CI:1.084-136)或具有正常的身体组成(4,或= 1.090,95% CI:1.036-1.147)。如果女性有更高的风险体组成(例如,在2或3课程),年龄的效果并不统计学意义。结论潜在阶级分析是一种用于鉴定身体成分的未观察到的身体成分模式的有用的人体分析方法,可用于预测BC的风险,并对身体成分研究进行个性化干预措施。

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