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Coupling Machine Learning and Lipidomics as a Tool to Investigate Metabolic Dysfunction-Associated Fatty Liver Disease. A General Overview

机译:耦合机学习和脂多元族人作为调查代谢功能障碍相关脂肪肝病的工具。一般概述

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摘要

Hepatic biopsy is the gold standard for staging nonalcoholic fatty liver disease (NAFLD). Unfortunately, accessing the liver is invasive, requires a multidisciplinary team and is too expensive to be conducted on large segments of the population. NAFLD starts quietly and can progress until liver damage is irreversible. Given this complex situation, the search for noninvasive alternatives is clinically important. A hallmark of NAFLD progression is the dysregulation in lipid metabolism. In this context, recent advances in the area of machine learning have increased the interest in evaluating whether multi-omics data analysis performed on peripheral blood can enhance human interpretation. In the present review, we show how the use of machine learning can identify sets of lipids as predictive biomarkers of NAFLD progression. This approach could potentially help clinicians to improve the diagnosis accuracy and predict the future risk of the disease. While NAFLD has no effective treatment yet, the key to slowing the progression of the disease may lie in predictive robust biomarkers. Hence, to detect this disease as soon as possible, the use of computational science can help us to make a more accurate and reliable diagnosis. We aimed to provide a general overview for all readers interested in implementing these methods.
机译:肝活组织检查是暂存非酒精性脂肪肝病(NAFLD)的金标准。不幸的是,访问肝脏是侵入性的,需要一个多学科团队,并且在大量人口中进行太昂贵。 NAFLD静静地开始,直到肝脏损坏是不可逆转的。鉴于这种复杂的情况,寻找非侵入性替代品在临床上很重要。 NAFLD进展的标志是脂质代谢的失调。在这种情况下,机器学习领域的最近进步增加了评估对外围血液中的多OMIC数据分析是否可以增强人类解释的兴趣。在本综述中,我们展示了如何使用机器学习可以识别脂质的脂质作为NAFLD进展的预测生物标志物。这种方法可能有助于临床医生提高诊断准确性并预测疾病的未来风险。虽然NAFLD没有有效的待遇,但减缓疾病进展的关键可能位于预测的强大生物标志物中。因此,为了尽快检测这种疾病,使用计算科学可以帮助我们做出更准确和可靠的诊断。我们旨在为所有有兴趣实施这些方法的读者提供一般概述。

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