2022
DOI: 10.1101/2022.06.23.497293
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Reconstructing the functional effect ofTP53somatic mutations on its regulon using causal signalling network modelling

Abstract: The gene encoding tumor protein p53 is the most frequently mutated gene in human cancer. Mutations in both coding and non-coding regions of TP53 can disrupt the regulatory function of the transcription factor, but the functional impact of different somatic mutations on the global TP53 regulon is complex and poorly understood. To address this, we first proceed with a machine learning (ML) approach, and then propose an integrated computational network modelling approach that reconstructs signalling networks usin… Show more

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