False discovery rate: the Achilles’ heel of proteogenomics

Author:

Aggarwal Suruchi1,Raj Anurag23ORCID,Kumar Dhirendra2,Dash Debasis23,Yadav Amit Kumar1ORCID

Affiliation:

1. Translational Health Science and Technology Institute, NCR Biotech Science Cluster , 3rd milestone, PO Box No. 04, Faridabad-Gurgaon Expressway, Faridabad-121001, Haryana, India

2. GN Ramachandran Knowledge Centre for Genome Informatics, CSIR-Institute of Genomics & Integrative Biology , South Campus, Mathura Road, New Delhi 110025, India

3. Academy of Scientific and Innovative Research (AcSIR) , Ghaziabad-201002, India

Abstract

Abstract Proteogenomics refers to the integrated analysis of the genome and proteome that leverages mass-spectrometry (MS)-based proteomics data to improve genome annotations, understand gene expression control through proteoforms and find sequence variants to develop novel insights for disease classification and therapeutic strategies. However, proteogenomic studies often suffer from reduced sensitivity and specificity due to inflated database size. To control the error rates, proteogenomics depends on the target-decoy search strategy, the de-facto method for false discovery rate (FDR) estimation in proteomics. The proteogenomic databases constructed from three- or six-frame nucleotide database translation not only increase the search space and compute-time but also violate the equivalence of target and decoy databases. These searches result in poorer separation between target and decoy scores, leading to stringent FDR thresholds. Understanding these factors and applying modified strategies such as two-pass database search or peptide-class-specific FDR can result in a better interpretation of MS data without introducing additional statistical biases. Based on these considerations, a user can interpret the proteogenomics results appropriately and control false positives and negatives in a more informed manner. In this review, first, we briefly discuss the proteogenomic workflows and limitations in database construction, followed by various considerations that can influence potential novel discoveries in a proteogenomic study. We conclude with suggestions to counter these challenges for better proteogenomic data interpretation.

Funder

Indian Council of Medical Research-Senior Research Fellowship

Department of Science and Technology, Philippines

Department of Biotechnology

Translational Research Program

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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