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Intestinal microbiota alterations by dietary exposure to chemicals from food cooking and processing. Application of data science for risk prediction

机译:通过饮食暴露于食品烹饪和加工的化学品的肠道微生物群。 数据科学在风险预测中的应用

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Diet is one of the main sources of exposure to toxic chemicals with carcinogenic potential, some of which are generated during food processing, depending on the type of food (primarily meat, fish, bread and potatoes), cooking methods and temperature. Although demonstrated in animal models at high doses, an unequivocal link between dietary exposure to these compounds with disease has not been proven in humans. A major difficulty in assessing the actual intake of these toxic compounds is the lack of standardised and harmonised protocols for collecting and analysing dietary information. The intestinal microbiota (IM) has a great influence on health and is altered in some diseases such as colorectal cancer (CRC). Diet influences the composition and activity of the IM, and the net exposure to genotoxicity of potential dietary carcinogens in the gut depends on the interaction among these compounds, IM and diet. This review analyses critically the difficulties and challenges in the study of interactions among these three actors on the onset of CRC. Machine Learning (ML) of data obtained in subclinical and precancerous stages would help to establish risk thresholds for the intake of toxic compounds generated during food processing as related to diet and IM profiles, whereas Semantic Web could improve data accessibility and usability from different studies, as well as helping to elucidate novel interactions among those chemicals, IM and diet.
机译:饮食是暴露于有毒化学品具有致癌潜力的主要来源之一,其中一些在食品加工过程中产生,取决于食品(主要是肉,鱼,面包和土豆),烹饪方法和温度。虽然在高剂量下在动物模型中证明,但在人类中仍未证明饮食暴露于这些化合物之间的明确联系。评估这些有毒化合物的实际摄入的重大困难是缺乏用于收集和分析膳食信息的标准化和协调方案。肠道微生物群(IM)对健康有很大影响,并且在某些疾病(如结肠直肠癌)(CRC)中被改变。饮食影响IM的组成和活性,肠道中潜在膳食癌的遗传毒性净暴露取决于这些化合物,IM和饮食中的相互作用。本综述批判性地分析了这三个演员在CRC发作中的相互作用研究中的困难和挑战。在亚临床和癌前阶段中获得的数据的机器学习(ml)将有助于建立与饮食和IM型材相关的食物加工期间产生的有毒化合物的风险阈值,而语义网络可以改善不同研究的数据可访问性和可用性,除了帮助阐明这些化学品,IM和饮食中的新型相互作用。

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