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应用机器学习方法分析趾甲中砷形态和金属组学特征,评估环境砷与新发癌症病例的关系。

Applying Machine Learning to Arsenic Species and Metallomics Profiles of Toenails to Evaluate Associations of Environmental Arsenic with Incident Cancer Cases.

机构信息

NICHE Research Group, Faculty of Computer Science, Dalhousie University, Halifax, Canada.

Department of Community Health and Epidemiology, Faculty of Medicine, Dalhousie University, Halifax, Nova Scotia, Canada.

出版信息

Stud Health Technol Inform. 2022 May 25;294:3-7. doi: 10.3233/SHTI220385.

Abstract

Chronic exposure to environmental arsenic has been linked to a number of human diseases affecting multiple organ systems, including cancer. The greatest concern for chronic exposure to arsenic is contaminated groundwater used for drinking as it is the main contributor to the amount of arsenic present in the body. An estimated 40% of households in Nova Scotia (Canada) use water from private wells, and there is a concern that exposure to arsenic may be linked to/associated with cancer. In this preliminary study, we are aiming to gain insights into the association of environmental metal's pathogenicity and carcinogenicity with prostate cancer. We use toenails as a novel biomarker for capturing long-term exposure to arsenic, and have performed toxicological analysis to generate data about differential profiles of arsenic species and the metallome (entirety of metals) for both healthy and individuals with a history cancer. We have applied feature selection and machine learning algorithms to arsenic species and metallomics profiles of toenails to investigate the complex association between environmental arsenic (as a carcinogen) and prostate cancer. We present machine learning based models to ultimately predict the association of environmental arsenic exposure in cancer cases.

摘要

慢性暴露于环境砷已与多种影响多个器官系统的人类疾病有关,包括癌症。对于慢性砷暴露的最大关注是饮用受污染的地下水,因为它是体内砷含量的主要贡献者。估计加拿大新斯科舍省(加拿大)有 40%的家庭使用私人水井的水,人们担心接触砷可能与癌症有关。在这项初步研究中,我们旨在深入了解环境金属的致病性和致癌性与前列腺癌之间的关联。我们使用趾甲作为捕获长期暴露于砷的新型生物标志物,并进行了毒理学分析,以生成有关砷物种和金属组(所有金属)的差异图谱的数据,这些图谱分别来自健康个体和有癌症病史的个体。我们已经应用了特征选择和机器学习算法来研究环境砷(作为一种致癌物质)和前列腺癌之间的复杂关联。我们提出了基于机器学习的模型,最终预测癌症病例中环境砷暴露的关联。

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