Cytokine Profiles as Predictive Biomarkers of Disease Severity and Progression in Engineered Stone Silicosis: A Machine Learning Approach.

IF 3.3 3区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Daniel Sanchez-Morillo, Ana Martín-Carrillo, Blanca Priego-Torres, Iris Sopo-Lambea, Gema Jiménez-Gómez, Antonio León-Jiménez, Antonio Campos-Caro
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Abstract

Background/Objectives: Silicosis caused by dust from engineered stone (ES) exposure is an emerging occupational lung disease that severely impacts respiratory health. This study aimed to analyze the association between cytokine profiles and disease severity and progression in patients with engineered stone silicosis (ESS) to assess their potential as biomarkers of progression and their usefulness to stratify risk. Methods: A longitudinal study was conducted with a seven-year follow-up (2017-2024) on 72 workers with simple silicosis (SS) or progressive massive fibrosis (PMF), all with a history of cutting, polishing, and finishing ES countertops. Data on lung function and levels of 27 cytokines were collected at four control points. Machine learning (ML) models were built to classify the disease stage and predict its progression. Results: 39% of patients with SS progressed to PMF. Significant differences in the expression of some cytokines were observed between ESS stages, suggesting a role in the evolution of the inflammatory process. Specifically, higher levels of IL-1RA, IL-8, IL-9, and IFN-γ were found at checkpoint 1 in patients with PMF compared to SS. The longitudinal analysis revealed a significant relationship between IL-1RA and MCP-1α and disease duration with MCP-1α also being associated with time and disease grade. Machine learning (ML) models were built using the cytokines selected through a sequential backward feature selection. The Support Vector Machine model achieved an accuracy of 83% in classifying disease stage (SS, PMF), and of 77% in predicting the disease progression. Conclusions: The findings suggest that cytokines can be used as dynamic biomarkers to reflect underlying inflammatory processes and monitor disease evolution. The performance of ML algorithms to predict diagnostic status based on cytokine profiles highlights their clinical value in supporting early diagnosis, monitoring disease progression, and guiding clinical decisions.

细胞因子谱作为工程性石质矽肺疾病严重程度和进展的预测性生物标志物:机器学习方法。
背景/目的:工程石粉尘引起的矽肺病是一种新兴的职业性肺病,严重影响呼吸系统健康。本研究旨在分析细胞因子谱与工程性石质矽肺(ESS)患者疾病严重程度和进展之间的关系,以评估其作为进展生物标志物的潜力及其对风险分层的有用性。方法:对72名患有单纯性矽肺(SS)或进行性大规模纤维化(PMF)的工人进行了一项为期7年(2017-2024)的纵向研究,这些工人都有切割、抛光和整理ES台面的历史。在4个控制点收集肺功能和27种细胞因子水平数据。建立机器学习(ML)模型来分类疾病阶段并预测其进展。结果:39%的SS患者进展为PMF。在ESS分期之间观察到一些细胞因子的表达有显著差异,提示在炎症过程的演变中起作用。具体而言,与SS相比,PMF患者在检查点1处发现了更高水平的IL-1RA、IL-8、IL-9和IFN-γ。纵向分析显示,IL-1RA和MCP-1α与疾病持续时间之间存在显著关系,MCP-1α也与时间和疾病等级相关。机器学习(ML)模型是使用通过顺序向后特征选择选择的细胞因子构建的。支持向量机模型在分类疾病分期(SS, PMF)方面达到83%的准确率,在预测疾病进展方面达到77%的准确率。结论:研究结果表明,细胞因子可以作为动态生物标志物,反映潜在的炎症过程并监测疾病演变。基于细胞因子谱预测诊断状态的ML算法的性能突出了它们在支持早期诊断、监测疾病进展和指导临床决策方面的临床价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Diagnostics
Diagnostics Biochemistry, Genetics and Molecular Biology-Clinical Biochemistry
CiteScore
4.70
自引率
8.30%
发文量
2699
审稿时长
19.64 days
期刊介绍: Diagnostics (ISSN 2075-4418) is an international scholarly open access journal on medical diagnostics. It publishes original research articles, reviews, communications and short notes on the research and development of medical diagnostics. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodological details must be provided for research articles.
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