4.6 Article

A Serum Metabolomic Signature for the Detection and Grading of Bladder Cancer

期刊

APPLIED SCIENCES-BASEL
卷 11, 期 6, 页码 -

出版社

MDPI
DOI: 10.3390/app11062835

关键词

metabolome; bladder cancer; screening test; machine learning algorithm; cancer metabolism

资金

  1. POR Campania FESR [B61G18000470007]

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The study presents a serum metabolomics signature of bladder cancer along with a robust ensemble machine learning algorithm for effective patient discrimination. The signature shows potential as a reliable screening test if validated on a larger cohort, and it is able to discriminate high- and low-grade cancers. These findings contribute to the clinical understanding and early detection of bladder cancer, which has high morbidity and mortality.
Featured Application Here we describe a serum metabolomics signature of bladder cancer coupled with a robust ensemble machine learning algorithm able to effectively discriminate patients with and without bladder cancer. This signature, if further confirmed and validated on a larger cohort, could represent a reliable screening test for this disease. Moreover, the signature was able to discriminate high- and low-grade cancers. The results represent an important clinical contribution since the prognosis of these conditions strongly depends on early detection and grading. Bladder cancer has a high incidence and is marked by high morbidity and mortality. Early diagnosis is still challenging. The objective of this study was to create a metabolomics-based profile of bladder cancer in order to provide a novel approach for disease screening and stratification. Moreover, the study characterized the metabolic changes associated with the disease. Serum metabolomic profiles were obtained from 149 bladder cancer patients and 81 healthy controls. Different ensemble machine learning models were built in order to: (1) differentiate cancer patients from controls; (2) stratify cancer patients according to grading; (3) stratify patients according to cancer muscle invasiveness. Ensemble machine learning models were able to discriminate well between cancer patients and controls, between high grade (G3) and low grade (G1-2) cancers and between different degrees of muscle invasivity; ensemble model accuracies were >= 80%. Relevant metabolites, selected using the partial least square discriminant analysis (PLS-DA) algorithm, were included in a metabolite-set enrichment analysis, showing perturbations primarily associated with cell glucose metabolism. The metabolomic approach may be useful as a non-invasive screening tool for bladder cancer. Furthermore, metabolic pathway analysis can increase understanding of cancer pathophysiology. Studies conducted on larger cohorts, and including blind trials, are needed to validate results.

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