Genomic and Proteomic Biomarker Landscape in Clinical Trials
Overview
Authors
Affiliations
The use of molecular biomarkers to support disease diagnosis, monitor its progression, and guide drug treatment has gained traction in the last decades. While only a dozen biomarkers have been approved for their exploitation in the clinic by the FDA, many more are evaluated in the context of translational research and clinical trials. Furthermore, the information on which biomarkers are measured, for which purpose, and in relation to which conditions are not readily accessible: biomarkers used in clinical studies available through resources such as ClinicalTrials.gov are described as free text, posing significant challenges in finding, analyzing, and processing them by both humans and machines. We present a text mining strategy to identify proteomic and genomic biomarkers used in clinical trials and classify them according to the methodologies by which they are measured. We find more than 3000 biomarkers used in the context of 2600 diseases. By analyzing this dataset, we uncover patterns of use of biomarkers across therapeutic areas over time, including the biomarker type and their specificity. These data are made available at the Clinical Biomarker App at https://www.disgenet.org/biomarkers/, a new portal that enables the exploration of biomarkers extracted from the clinical studies available at ClinicalTrials.gov and enriched with information from the scientific literature. The App features several metrics that assess the specificity of the biomarkers, facilitating their selection and prioritization. Overall, the Clinical Biomarker App is a valuable and timely resource about clinical biomarkers, to accelerate biomarker discovery, development, and application.
Corvi J, Diaz-Roussel N, Fernandez J, Ronzano F, Centeno E, Accuosto P J Cheminform. 2025; 17(1):15.
PMID: 39901182 PMC: 11792311. DOI: 10.1186/s13321-024-00925-x.
Mohd Faizal N, Shai S, Savaliya B, Karen-Ng L, Kumari R, Kumar R Biomedicines. 2025; 13(1).
PMID: 39857718 PMC: 11759772. DOI: 10.3390/biomedicines13010134.
Liu L, Mu B, Zhou Y, Wu Q, Li B, Wang D Mol Biotechnol. 2025; .
PMID: 39843617 DOI: 10.1007/s12033-024-01356-7.
Decision Tree for Protein Biomarker Selection for Clinical Applications.
Waury K Methods Mol Biol. 2024; 2884:355-368.
PMID: 39716013 DOI: 10.1007/978-1-0716-4298-6_21.
Advances in the Clinical Application of High-throughput Proteomics.
Cui M, Deng F, Disis M, Cheng C, Zhang L Explor Res Hypothesis Med. 2024; 9(3):209-220.
PMID: 39148720 PMC: 11326426. DOI: 10.14218/erhm.2024.00006.