Johns Hopkins University, 600N. Wolfe Street, Pathology 627, Baltimore 21287, MD, USA.
Institute of Environmental Medicine, Karolinska Institutet, Stockholm, Sweden; Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, Sweden.
Mult Scler Relat Disord. 2018 Aug;24:135-141. doi: 10.1016/j.msard.2018.06.009. Epub 2018 Jun 23.
Multiple sclerosis (MS) incidence has increased recently, particularly in women, suggesting a possible role of one or more environmental exposures in MS risk. The study objective was to determine if animal, dietary, recreational, or occupational exposures are associated with MS risk.
Least absolute shrinkage and selection operator (LASSO) regression was used to identify a subset of exposures with potential relevance to disease in a large population-based (Kaiser Permanente Northern California [KPNC]) case-control study. Variables with non-zero coefficients were analyzed in matched conditional logistic regression analyses, adjusted for established environmental risk factors and socioeconomic status (if relevant in univariate screening),± genetic risk factors, in the KPNC cohort and, for purposes of replication, separately in the Swedish Epidemiological Investigation of MS cohort. These variables were also assessed in models stratified by HLA-DRB1*15:01 status since interactions between risk factors and that haplotype have been described.
There was a suggestive association of pesticide exposure with having MS among men, but only in those who were positive for HLA-DRB1*15:01 (OR pooled = 3.11, 95% CI 0.87, 11.16, p = 0.08).
While this finding requires confirmation, it is interesting given the association between pesticide exposure and other neurological diseases. The study also demonstrates the application of LASSO to identify environmental exposures with reduced multiple statistical testing penalty. Machine learning approaches may be useful for future investigations of concomitant MS risk or prognostic factors.
多发性硬化症 (MS) 的发病率最近有所增加,尤其是在女性中,这表明环境暴露因素可能在 MS 风险中发挥作用。本研究的目的是确定动物、饮食、娱乐或职业暴露是否与 MS 风险相关。
最小绝对收缩和选择算子 (LASSO) 回归用于在一个基于人群的大型病例对照研究(凯撒永久医疗集团北加州分部 [KPNC])中确定与疾病有潜在相关性的暴露因素子集。对具有非零系数的变量进行匹配条件逻辑回归分析,调整了既定的环境风险因素和社会经济地位(如果在单变量筛选中相关)、±遗传风险因素,在 KPNC 队列中,并为了复制目的,在瑞典多发性硬化症流行病学研究队列中分别进行。还根据 HLA-DRB1*15:01 状态对这些变量进行了分层评估,因为已经描述了风险因素与该单倍型之间的相互作用。
在 HLA-DRB1*15:01 阳性的男性中,农药暴露与 MS 之间存在关联,但只是在提示水平(合并 OR=3.11,95%CI 0.87, 11.16,p=0.08)。
虽然这一发现需要进一步证实,但鉴于农药暴露与其他神经疾病之间的关联,这一结果很有趣。该研究还证明了 LASSO 可用于识别环境暴露因素,同时减少了多重统计检验的惩罚。机器学习方法可能对未来同时研究 MS 风险或预后因素有用。