Abstract

BackgroundGranzyme B is a serine protease which cleaves at unique tetrapeptide sequences. It is involved in several signaling cross-talks with caspases and functions as a pivotal mediator in a broad range of cellular processes such as apoptosis and inflammation. The granzyme B degradome constitutes proteins from a myriad of functional classes with many more expected to be discovered. However, the experimental discovery and validation of bona fide granzyme B substrates require time consuming and laborious efforts. As such, computational methods for the prediction of substrates would be immensely helpful.ResultsWe have compiled a dataset of 580 experimentally verified granzyme B cleavage sites and found distinctive patterns of residue conservation and position-specific residue propensities which could be useful for in silico prediction using machine learning algorithms. We trained a series of support vector machines (SVM) classifiers employing Bayes Feature Extraction to predict cleavage sites using sequence windows of diverse lengths and compositions. The SVM classifiers achieved accuracy and AROC scores between 71.00% to 86.50% and 0.78 to 0.94 respectively on independent test sets. We have applied our prediction method on the Chikungunya viral proteome and identified several regulatory domains of viral proteins to be potential sites of granzyme B cleavage, suggesting direct antiviral activity of granzyme B during host-viral innate immune responses.ConclusionsWe have compiled a comprehensive dataset of granzyme B cleavage sites and developed an accurate SVM-based prediction method utilizing Bayes Feature Extraction to identify novel substrates of granzyme B in silico. The prediction server is available online, together with reference datasets and supplementary materials.

Highlights

  • Granzyme B is a serine protease which cleaves at unique tetrapeptide sequences

  • We have compiled a comprehensive dataset of granzyme B cleavage sites and developed an accurate support vector machines (SVM)-based prediction method utilizing Bayes Feature Extraction to identify novel substrates of granzyme B in silico

  • Sequence analysis of granzyme B cleavage sites Using peptide combinatorial libraries, Thornberry and co-workers had previously identified the presence of distinctive sequence specificities governing protein cleavage of both caspase and granzyme B substrates [4]

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Summary

Introduction

Granzyme B is a serine protease which cleaves at unique tetrapeptide sequences It is involved in several signaling cross-talks with caspases and functions as a pivotal mediator in a broad range of cellular processes such as apoptosis and inflammation. The experimental discovery and validation of bona fide granzyme B substrates require time consuming and laborious efforts. While systematic experimental discovery and validation of bona fide substrates are necessary for elucidating the granzyme B degradome, many of the processes are often time consuming and laborious. For these reasons, computational prediction of substrates could be immensely helpful in generating initial hypotheses and experimental leads. Barkan et al advanced the field through the application of the support vector machines (SVM) method on a set of experimentally verified cleavage sites using both sequence and structural features [10]

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