Journal article

Characterization on the oncogenic effect of the missense mutations of p53 via machine learning

Q Pan, S Portelli, TB Nguyen, DB Ascher

Briefings in Bioinformatics | Published : 2024

Abstract

Dysfunctions caused by missense mutations in the tumour suppressor p53 have been extensively shown to be a leading driver of many cancers. Unfortunately, it is time-consuming and labour-intensive to experimentally elucidate the effects of all possible missense variants. Recent works presented a comprehensive dataset and machine learning model to predict the functional outcome of mutations in p53. Despite the well-established dataset and precise predictions, this tool was trained on a complicated model with limited predictions on p53 mutations. In this work, we first used computational biophysical tools to investigate the functional consequences of missense mutations in p53, informing a bias ..

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University of Melbourne Researchers