CHRONIC FATIGUE SYNDROME AND ITS RELATION WITH ABSENTEEISM: ELASTIC-NET AND STEPWISE APPLIED TO BIOCHEMICAL AND ANTHROPOMETRIC CLINICAL MEASUREMENTS

Anderson Cristiano Neisse, F. L. Oliveira, A. Oliveira, F. Cruz, Raimundo Marques do Nascimento Neto
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引用次数: 1

Abstract

▪ ABSTRACT: Characterized by persistent fatigue, pain, cognitive impairment and sleep difficulties, Chronic Fatigue Syndrome (CFS) has been common in clinical practice. Studies indicate multiple factors contributing to CFS development: poor sleep, dehydration, psychological stress, hormonal dysfunction, nutrient deficiencies, among others. In risk work conditions, like the shift work of mines, CFS significantly increases the chance of fatal accidents. Work environments of mines suggest the presence of factors that increase the risk of developing CFS. Considering the severity/implications of CFS’s symptoms on the social and professional lives as well as on the economy, efforts are targeting its characterization and prevention. This study aims to assess the risk of CFS by studying cross-sectional data on absenteeism of 621 shift workers, measuring 8 anthropometric and 11 biochemical variables as well as age and gender, amounting 21 variables. After imputation, logistic regression was fitted by Stepwise selection, Lasso and Elastic-Net regularization. Results suggest that the models do not discriminate very well due to noise inherent to the dependent variable. However, all models agree on the effects of Sodium and Total Cholesterol on the risk of absenteeism. The Stepwise model also indicates LDL and Triglycerides as significant factors, both Lasso and Elastic-Net show effects for LDL instead. The Elastic-Net model suggests an effect of Potassium, though inconclusive according to the literature.
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慢性疲劳综合征及其与缺勤的关系:弹性网法和逐步应用于生化和人体测量临床测量
摘要:慢性疲劳综合征(CFS)以持续疲劳、疼痛、认知障碍和睡眠困难为特征,在临床实践中十分常见。研究表明,导致慢性疲劳综合症的因素有很多:睡眠不足、脱水、心理压力、激素功能障碍、营养缺乏等等。在危险的工作条件下,如矿井的轮班工作,慢性疲劳综合症显著增加了致命事故的发生机会。矿井的工作环境表明存在增加患慢性疲劳综合症风险的因素。考虑到慢性疲劳综合症症状对社会和职业生活以及经济的严重程度/影响,我们正在努力确定其特征和预防。本研究旨在通过研究621名轮班工人缺勤的横断面数据,测量8个人体测量变量和11个生化变量以及年龄和性别,共计21个变量,来评估CFS的风险。通过逐步选择、Lasso和Elastic-Net正则化对logistic回归进行拟合。结果表明,由于因变量固有的噪声,模型不能很好地区分。然而,所有的模型都同意钠和总胆固醇对旷工风险的影响。逐步模型也表明LDL和甘油三酯是重要因素,Lasso和Elastic-Net都显示LDL有影响。Elastic-Net模型提出了钾的影响,尽管根据文献尚无定论。
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来源期刊
Revista Brasileira de Biometria
Revista Brasileira de Biometria Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
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53 weeks
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