代谢组学对结核病的洞察:生物标志物鉴定的机器学习方法

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摘要

肺实质在很大程度上受到被称为肺结核的传染病的影响。当免疫系统在肺部的细菌周围形成一堵墙时,一个小而硬的凸起被称为结核,这种疾病因此得名肺结核。虽然大多数结核病菌以肺部为目标,但它们也会损害其他身体器官。结核病生物标志物的鉴定对诊断、治疗监测、风险分析和预后至关重要,已成为广泛研究的主题。正常细胞和结核细胞之间代谢物的差异被认为能够支持结核病的诊断。代谢物数据来自代谢组学工作台,并在计算机上进行进一步的鉴定和预测。44份样本共发现69种代谢物,然后进行进一步分析。发现多达5种代谢物在结核病中起重要作用。在5种代谢物中,发现2种候选生物标志物,已知具有作为生物标志物的潜力。这些代谢物的候选生物标志物是反式-3-甲基尿酸和烟酸。然而,该模拟需要进一步测试以获得更准确的生物标志物并支持诊断。
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Metabolomic Insights into Tuberculosis: Machine Learning Approaches for Biomarker Identification
The lung parenchyma is largely impacted by the infectious condition known as pulmonary tuberculosis (pulmonary TB) when the immune system creates a wall around the germs in the lungs, a tiny, hard bulge known as a tubercle develops, earning the disease the name tuberculosis. Although the majority of TB germs target the lungs, they can also harm other bodily organs. The identification of TB biomarkers, which are crucial for diagnosis, treatment monitoring, risk analysis, and prognosis, has been the subject of extensive research. Differences in metabolites between normal cells and tuberculosis are considered to be able to support the diagnosis of tuberculosis. Metabolite data was taken from the Metabolomic workbench and further identification and prediction were carried out in silico. A total of 44 samples found 69 metabolites which were then carried out further analysis. Found as many as 5 metabolites that play an important role in tuberculosis. Of the 5 metabolites, 2 candidate biomarkers were found which are known to have potential as biomarkers. The candidate biomarkers for these metabolites are trans-3-methyluric acid and nicotinic acid. However, this simulation needs further testing to obtain more accurate biomarkers and support the diagnosis.
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