Machine Learning in Allergic Contact Dermatitis: Identifying (Dis)similarities between Polysensitized and Monosensitized Patients

Aikaterini Kyritsi, Anna Tagka, Alexander Stratigos, Vangelis D. Karalis
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引用次数: 0

Abstract

Background: Allergic contact dermatitis (ACD) is a delayed hypersensitivity reaction occurring in sensitized individuals due to exposure to allergens. Polysensitization, defined as positive reactions to multiple unrelated haptens, increases the risk of ACD development and affects patients’ quality of life. The aim of this study is to apply machine learning in order to analyze the association between ACD, polysensitization, individual susceptibility, and patients’ characteristics. Methods: Patch test results and demographics from 400 ACD patients (Study protocol Nr. 3765/2022), categorized as polysensitized or monosensitized, were analyzed. Classic statistical analysis and multiple correspondence analysis (MCA) were utilized to explore relationships among variables. Results: The findings revealed significant associations between patient characteristics and ACD patterns, with hand dermatitis showing the strongest correlation. MCA provided insights into the complex interplay of demographic and clinical factors influencing ACD prevalence. Conclusion: Overall, this study highlights the potential of machine learning in unveiling hidden patterns within dermatological data, paving the way for future advancements in the field.
过敏性接触性皮炎中的机器学习:识别多过敏和单过敏患者的(不)相似性
背景:过敏性接触性皮炎(ACD)是一种迟发性超敏反应,发生在接触过敏原的过敏个体身上。多过敏(定义为对多种不相关的过敏原产生的阳性反应)会增加过敏性接触性皮炎的发病风险,并影响患者的生活质量。本研究旨在应用机器学习分析 ACD、多过敏、个体易感性和患者特征之间的关联。研究方法对 400 名 ACD 患者(研究方案编号:3765/2022)的斑贴试验结果和人口统计学特征进行了分析,这些患者被分为多敏或单敏。利用经典统计分析和多重对应分析 (MCA) 来探讨变量之间的关系。结果研究结果表明,患者特征与 ACD 模式之间存在明显关联,其中手部皮炎的关联性最强。多重对应分析深入揭示了影响 ACD 患病率的人口和临床因素之间复杂的相互作用。结论:总之,这项研究凸显了机器学习在揭示皮肤病学数据中隐藏模式方面的潜力,为该领域的未来发展铺平了道路。
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CiteScore
1.70
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0.00%
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