唾液代谢物是肝细胞癌和慢性肝病有前途的非侵入性生物标志物

Courtney E. Hershberger, Alejandro I. Rodarte, Shirin Siddiqi, Amika Moro, Lou-Anne Acevedo-Moreno, J. Mark Brown, Daniela S. Allende, Federico Aucejo, Daniel M. Rotroff
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引用次数: 13

摘要

肝细胞癌(HCC)是世界范围内癌症死亡的主要原因。需要改进检测HCC的工具,以便尽早开始治疗。目前的诊断方法和现有的生物标志物,如甲胎蛋白(AFP)缺乏敏感性,导致太多的假阴性诊断。机器学习可能能够识别生物标志物的组合,从而提供更可靠的预测并提高检测HCC的灵敏度。我们试图评估患者唾液中的代谢物是否可以区分HCC、肝硬化和无肝脏疾病的患者。方法和结果我们检测了110个人(43人健康,37人HCC, 30人肝硬化)的125种唾液代谢物,并确定了4种代谢物在组间表现出显著不同的丰度(FDR P <2)。我们还开发了四个基于树的机器学习模型,对其进行了优化,以包含不同数量的代谢物,并对99名患者进行了交叉验证,并在11名患者的保留测试集上进行了验证。使用十二种代谢物(十八醇、苯乙酮、月桂酸、1-单棕榈醇、十二醇、水杨醛、甘酰脯氨酸、1-单硬脂酸、肌酐、谷氨酰胺、丝氨酸和4-羟基丁酸)建立的模型,交叉验证的敏感性为84.8%,特异性为92.4%,对试验队列中90%的HCC患者进行了正确分类。该模型优于先前报道的AFP (20-100 ng/mL)(61%, 86%)和AFP +超声(62%,88%)的敏感性和特异性。结论和影响:唾液中检测到的代谢物可能是疾病病理或肝功能衰竭的产物。值得注意的是,来自机器学习的唾液代谢物组合可能作为检测HCC的有前途的非侵入性生物标志物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Salivary metabolites are promising non-invasive biomarkers of hepatocellular carcinoma and chronic liver disease

Salivary metabolites are promising non-invasive biomarkers of hepatocellular carcinoma and chronic liver disease

Background

Hepatocellular carcinoma (HCC) is a leading cause of cancer mortality worldwide. Improved tools are needed for detecting HCC so that treatment can begin as early as possible. Current diagnostic approaches and existing biomarkers, such as alpha-fetoprotein (AFP) lack sensitivity, resulting in too many false negative diagnoses. Machine learning may be able to identify combinations of biomarkers that provide more robust predictions and improve sensitivity for detecting HCC. We sought to evaluate whether metabolites in patient saliva could distinguish those with HCC, cirrhosis, and those with no documented liver disease.

Methods and Results

We tested 125 salivary metabolites from 110 individuals (43 healthy, 37 HCC, 30 cirrhosis) and identified four metabolites that displayed significantly different abundance between groups (FDR P < .2). We also developed four tree-based, machine-learning models, optimized to include different numbers of metabolites, that were trained using cross-validation on 99 patients and validated on a withheld test set of 11 patients. A model using 12 metabolites –octadecanol, acetophenone, lauric acid, 1-monopalmitin, dodecanol, salicylaldehyde, glycyl-proline, 1-monostearin, creatinine, glutamine, serine and 4-hydroxybutyric acid – had a cross-validated sensitivity of 84.8%, specificity of 92.4% and correctly classified 90% of the HCC patients in the test cohort. This model outperformed previously reported sensitivities and specificities for AFP (20-100 ng/mL) (61%, 86%) and AFP plus ultrasound (62%, 88%).

Conclusions and Impact

Metabolites detectable in saliva may represent products of disease pathology or a breakdown in liver function. Notably, combinations of salivary metabolites derived from machine learning may serve as promising non-invasive biomarkers for the detection of HCC.

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