Hurault Guillem, Delorieux Valentin, Kim Young-Min, Ahn Kangmo, Williams Hywel C, Tanaka Reiko J
Department of Bioengineering, Imperial College London, London, UK.
Department of Pediatrics, Samsung Medical Center, Sungkyunkwan University School of Medicine, Seoul, South Korea.
Clin Transl Allergy. 2021 Apr;11(2):e12019. doi: 10.1002/clt2.12019.
Atopic dermatitis (AD) is a chronic inflammatory skin disease that affects 20% of children worldwide. Environmental factors including weather and air pollutants have been shown to be associated with AD symptoms. However, the time-dependent nature of such a relationship has not been adequately investigated. This paper aims to assess whether real-time data on weather and air pollutants can make short-term prediction of AD severity scores.
Using longitudinal data from a published panel study of 177 paediatric patients followed up daily for 17 months, we developed a statistical machine learning model to predict daily AD severity scores for individual study participants. Exposures consisted of daily meteorological variables and concentrations of air pollutants, and outcomes were daily recordings of scores for six AD signs. We developed a mixed-effect autoregressive ordinal logistic regression model, validated it in a forward-chaining setting and evaluated the effects of the environmental factors on the predictive performance.
Our model successfully made daily prediction of the AD severity scores, and the predictive performance was not improved by the addition of measured environmental factors. Potential short-term influence of environmental exposures on daily AD severity scores was outweighed by the underlying persistence of preceding scores.
Our data does not offer enough evidence to support a claim that weather or air pollutants can make short-term prediction of AD signs. Inferences about the magnitude of the effect of environmental factors on AD severity scores require consideration of their time-dependent dynamic nature.
特应性皮炎(AD)是一种慢性炎症性皮肤病,全球20%的儿童受其影响。包括天气和空气污染物在内的环境因素已被证明与AD症状有关。然而,这种关系的时间依赖性尚未得到充分研究。本文旨在评估天气和空气污染物的实时数据是否能对AD严重程度评分进行短期预测。
利用一项已发表的对177名儿科患者进行为期17个月每日随访的小组研究中的纵向数据,我们开发了一种统计机器学习模型,以预测个体研究参与者的每日AD严重程度评分。暴露因素包括每日气象变量和空气污染物浓度,结果是六个AD体征评分的每日记录。我们开发了一个混合效应自回归有序逻辑回归模型,在前向链设置中对其进行验证,并评估环境因素对预测性能的影响。
我们的模型成功地对AD严重程度评分进行了每日预测,并且添加测量的环境因素并没有提高预测性能。环境暴露对每日AD严重程度评分的潜在短期影响被先前评分的潜在持续性所抵消。
我们的数据没有提供足够的证据来支持天气或空气污染物能够对AD体征进行短期预测这一说法。关于环境因素对AD严重程度评分影响程度的推断需要考虑其时间依赖性动态性质。