MAGICAL: A multi-class classifier to predict synthetic lethal and viable interactions using protein-protein interaction network

Author:

Dey Anubha,Mudunuri Suresh,Kiran ManjariORCID

Abstract

Synthetic lethality (SL) and synthetic viability (SV) are commonly studied genetic interactions in the targeted therapy approach in cancer. In SL, inhibiting either of the genes does not affect the cancer cell survival, but inhibiting both leads to a lethal phenotype. In SV, inhibiting the vulnerable gene makes the cancer cell sick; inhibiting the partner gene rescues and promotes cell viability. Many low and high-throughput experimental approaches have been employed to identify SLs and SVs, but they are time-consuming and expensive. The computational tools for SL prediction involve statistical and machine-learning approaches. Almost all machine learning tools are binary classifiers and involve only identifying SL pairs. Most importantly, there are limited properties known that best describe and discriminate SL from SV. We developed MAGICAL (Multi-class Approach for Genetic Interaction in Cancer via Algorithm Learning), a multi-class random forest based machine learning model for genetic interaction prediction. Network properties of protein derived from physical protein-protein interactions are used as features to classify SL and SV. The model results in an accuracy of ~80% for the training dataset (CGIdb, BioGRID, and SynLethDB) and performs well on DepMap and other experimentally derived reported datasets. Amongst all the network properties, the shortest path, average neighbor2, average betweenness, average triangle, and adhesion have significant discriminatory power. MAGICAL is the first multi-class model to identify discriminatory features of synthetic lethal and viable interactions. MAGICAL can predict SL and SV interactions with better accuracy and precision than any existing binary classifier.

Funder

University of Hyderabad Institute of Eminence Grant

University of Hyderabad

Publisher

Public Library of Science (PLoS)

Reference46 articles.

1. Targeted Therapy for Cancer—NCI. [cited 25 Oct 2023]. https://www.cancer.gov/about-cancer/treatment/types/targeted-therapies

2. Synthetic lethality: General principles, utility and detection using genetic screens in human cells;SMB Nijman;FEBS Lett,2011

3. Synthetic dosage lethality in the human metabolic network is highly predictive of tumor growth and cancer patient survival;W Megchelenbrink;Proc Natl Acad Sci U S A,2015

4. A landscape of synthetic viable interactions in cancer;Y Gu;Brief Bioinform,2018

5. A large-scale RNAi screen in human cells identifies new components of the p53 pathway;K Berns;Nature,2004

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