Serum Metabolomic Profiling for Colorectal Cancer using Machine Learning

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Abstract

Background: Colorectal cancer is one of the deadliest diseases with a high prevalence worldwide and is characterized by the appearance of adenomatous polyps in the colon mucosa which are at high risk of developing into colorectal cancer. This study aims to use serum metabolites as promising non-invasive biomarkers for colorectal cancer detection and prognostication. Differences in serum metabolites in patients with adenomatous polyps, colorectal cancer, and healthy controls are considered to be able to support the prognosis of colorectal cancer. Methods: Metabolite dataset is taken from the Metabolomic Workbench. Analysis and validation are carried out in silico using machine learning methods. Results: From a total of 234 samples, 113 metabolites were found and 5 metabolites; histidine, lysine, glyceraldehyde, linolenic acid, and aspartic acid were identified as the most significant in differentiating the sample groups. CTD analysis showed that aspartic acid and histidine are associated with the biological pathways of colorectal cancer progression and significant metabolites are associated with cancer-related phenotypes. Conclusion: The serum metabolites differ in colorectal cancer and healthy control. The significant metabolites can be used as a consideration in selecting colorectal cancer biomarkers, but improvisation is needed to obtain more accurate biomarkers.
使用机器学习分析结直肠癌的血清代谢组学分析
背景:结直肠癌是世界范围内发病率最高的致命疾病之一,其特点是结肠黏膜出现腺瘤性息肉,发展为结直肠癌的风险很高。本研究旨在利用血清代谢物作为大肠癌检测和预后的无创生物标志物。腺瘤性息肉患者、结直肠癌患者和健康对照者血清代谢物的差异被认为能够支持结直肠癌的预后。方法:代谢物数据集取自代谢组学工作台。使用机器学习方法在计算机上进行分析和验证。结果:从234份样品中检出代谢物113种,代谢物5种;组氨酸、赖氨酸、甘油醛、亚麻酸和天冬氨酸被认为是区分样品组最显著的。CTD分析显示,天冬氨酸和组氨酸与结直肠癌进展的生物学途径相关,重要的代谢物与癌症相关表型相关。结论:结直肠癌患者与健康对照组血清代谢物存在差异。显著代谢物可作为选择结直肠癌生物标志物的考虑因素,但为了获得更准确的生物标志物,需要即兴发挥。
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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