整合常规血液生物标志物和人工智能,为工程石材工人的矽肺诊断提供支持

IF 6.1 2区 医学 Q1 ENGINEERING, BIOMEDICAL Bioengineering & Translational Medicine Pub Date : 2024-06-28 DOI:10.1002/btm2.10694
Daniel Sanchez-Morillo, Antonio León-Jiménez, María Guerrero-Chanivet, Gema Jiménez-Gómez, Antonio Hidalgo-Molina, Antonio Campos-Caro
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引用次数: 0

摘要

工程石材矽肺病(ESS)主要由吸入可吸入结晶二氧化硅引起,对全球职业健康构成严重威胁。ESS没有有效的治疗方法,并且会从单纯性矽肺(SS)迅速发展为进行性大块纤维化(PMF),导致呼吸衰竭和死亡。尽管使用了胸部 X 射线和高分辨率计算机断层扫描等诊断方法,但早期发现矽肺病仍然具有挑战性。由于常规血液检测有望检测出与该疾病相关的炎症标志物,本研究旨在评估常规血液生物标志物与机器学习技术相结合是否能有效区分健康人、矽肺病人和矽肺大流行病人。为此,研究人员招募了 107 名被诊断患有矽肺病的男性、曾在工程石材(ES)行业工作的人员,以及 22 名未接触 ES 粉尘的健康男性志愿者作为对照。从临床医院记录中回顾性地获得了从外周血中提取的 21 种主要生化指标。应用 Relief-F 特征选择技术,将得到的 11 个生物标志物子集用于建立 5 个机器学习模型,结果表明,最佳情况下的灵敏度和特异性分别大于 82% 和 89%,表现出很高的性能。结果显示,淋巴细胞百分比、血管紧张素转换酶和乳酸脱氢酶指数等血液生物标志物对机器学习模型具有显著的累积重要性。我们的研究表明,这些生物标志物可以检测慢性炎症状态,并有可能成为诊断、监测和早期发现矽肺进展的辅助工具。
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Integrating routine blood biomarkers and artificial intelligence for supporting diagnosis of silicosis in engineered stone workers

Engineered stone silicosis (ESS), primarily caused by inhaling respirable crystalline silica, poses a significant occupational health risk globally. ESS has no effective treatment and presents a rapid progression from simple silicosis (SS) to progressive massive fibrosis (PMF), with respiratory failure and death. Despite the use of diagnostic methods like chest x-rays and high-resolution computed tomography, early detection of silicosis remains challenging. Since routine blood tests have shown promise in detecting inflammatory markers associated with the disease, this study aims to assess whether routine blood biomarkers, coupled with machine learning techniques, can effectively differentiate between healthy individuals, subjects with SS, and PMF. To this end, 107 men diagnosed with silicosis, ex-workers in the engineered stone (ES) sector, and 22 healthy male volunteers as controls not exposed to ES dust were recruited. Twenty-one primary biochemical markers derived from peripheral blood extraction were obtained retrospectively from clinical hospital records. Relief-F features selection technique was applied, and the resulting subset of 11 biomarkers was used to build five machine learning models, demonstrating high performance with sensitivities and specificities in the best case greater than 82% and 89%, respectively. The percentage of lymphocytes, the angiotensin-converting enzyme, and lactate dehydrogenase indexes were revealed, among others, as blood biomarkers with significant cumulative importance for the machine learning models. Our study reveals that these biomarkers could detect a chronic inflammatory status and potentially serve as a supportive tool for the diagnosis, monitoring, and early detection of the progression of silicosis.

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来源期刊
Bioengineering & Translational Medicine
Bioengineering & Translational Medicine Pharmacology, Toxicology and Pharmaceutics-Pharmaceutical Science
CiteScore
8.40
自引率
4.10%
发文量
150
审稿时长
12 weeks
期刊介绍: Bioengineering & Translational Medicine, an official, peer-reviewed online open-access journal of the American Institute of Chemical Engineers (AIChE) and the Society for Biological Engineering (SBE), focuses on how chemical and biological engineering approaches drive innovative technologies and solutions that impact clinical practice and commercial healthcare products.
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