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Application of penalized linear regression methods to the selection of environmental enteropathy biomarkers

机译:惩罚线性回归方法在环境肠病生物标志物选择中的应用

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BackgroundEnvironmental Enteropathy (EE) is a subclinical condition caused by constant fecal-oral contamination and resulting in blunting of intestinal villi and intestinal inflammation. Of primary interest in the clinical research is to evaluate the association between non-invasive EE biomarkers and malnutrition in a cohort of Bangladeshi children. The challenges are that the number of biomarkers/covariates is relatively large, and some of them are highly correlated. MethodsMany variable selection methods are available in the literature, but which are most appropriate for EE biomarker selection remains unclear. In this study, different variable selection approaches were applied and the performance of these methods was assessed numerically through simulation studies, assuming the correlations among covariates were similar to those in the Bangladesh cohort. The suggested methods from simulations were applied to the Bangladesh cohort to select the most relevant biomarkers for the growth response, and bootstrapping methods were used to evaluate the consistency of selection results. ResultsThrough simulation studies, SCAD (Smoothly Clipped Absolute Deviation), Adaptive LASSO (Least Absolute Shrinkage and Selection Operator) and MCP (Minimax Concave Penalty) are the suggested variable selection methods, compared to traditional stepwise regression method. In the Bangladesh data, predictors such as mother weight, height-for-age z-score (HAZ) at week 18, and inflammation markers (Myeloperoxidase (MPO) at week 12 and soluable CD14 at week 18) are informative biomarkers associated with children’s growth. ConclusionsPenalized linear regression methods are plausible alternatives to traditional variable selection methods, and the suggested methods are applicable to other biomedical studies. The selected early-stage biomarkers offer a potential explanation for the burden of malnutrition problems in low-income countries, allow early identification of infants at risk, and suggest pathways for intervention. Trial registrationThis study was retrospectively registered with ClinicalTrials.gov, number NCT01375647 , on June 3, 2011.
机译:背景技术环境性肠病(EE)是由不断的粪便污染引起的亚临床疾病,导致肠道绒毛变钝和肠道炎症。在临床研究中最主要的兴趣是评估孟加拉儿童队列中非侵入性EE生物标志物与营养不良之间的关联。挑战在于生物标志物/协变量的数量相对较大,并且其中一些具有高度相关性。方法文献中有许多变量选择方法,但是最适合EE生物标志物选择的方法尚不清楚。在这项研究中,应用了不同的变量选择方法,并通过模拟研究对这些方法的性能进行了数值评估,假设协变量之间的相关性与孟加拉国队列中的相似。来自模拟的建议方法应用于孟加拉国队列,以选择最相关的生物标记物进行生长反应,并采用自举法评估选择结果的一致性。结果通过仿真研究,与传统的逐步回归方法相比,建议的变量选择方法是SCAD(平滑剪切绝对偏差),自适应LASSO(最小绝对收缩和选择算子)和MCP(最小最大凹面惩罚)。在孟加拉国的数据中,母亲体重,第18周的年龄z得分(HAZ)和炎症标志物(第12周的髓过氧化物酶(MPO)和第18周的可溶性CD14)等预测因子是与儿童肥胖相关的信息性生物标志物。增长。结论线性化线性回归方法是传统变量选择方法的合理替代方法,建议的方法可用于其他生物医学研究。所选的早期生物标志物可为低收入国家营养不良问题的负担提供潜在的解释,可及早发现处于危险中的婴儿,并提供干预途径。试验注册本研究已于2011年6月3日在ClinicalTrials.gov上进行了追溯注册,注册号为NCT01375647。

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