Pathogenicity Prediction of Gene Fusion in Structural Variations: A Knowledge Graph-Infused Explainable Artificial Intelligence (XAI) Framework

Author:

Murakami Katsuhiko1ORCID,Tago Shin-ichiro1ORCID,Takishita Sho1,Morikawa Hiroaki1,Kojima Rikuhiro1,Yokoyama Kazuaki2,Ogawa Miho23,Fukushima Hidehito2,Takamori Hiroyuki2,Nannya Yasuhito2,Imoto Seiya4ORCID,Fuji Masaru1

Affiliation:

1. Computing Laboratories, Fujitsu Research, Fujitsu Ltd., Kawasaki 211-8588, Kanagawa, Japan

2. Division of Hematopoietic Disease Control, The Institute of Medical Science, The University of Tokyo, Tokyo 108-8639, Japan

3. The University of Tokyo Hospital, The University of Tokyo, Tokyo 113-8655, Japan

4. Division of Health Medical Intelligence, Human Genome Center, The Institute of Medical Science, The University of Tokyo, Tokyo 108-8639, Japan

Abstract

When analyzing cancer sample genomes in clinical practice, many structural variants (SVs), other than single nucleotide variants (SNVs), have been identified. To identify driver variants, the leading candidates must be narrowed down. When fusion genes are involved, selection is particularly difficult, and highly accurate predictions from AI is important. Furthermore, we also wanted to determine how the prediction can make more reliable diagnoses. Here, we developed an explainable AI (XAI) suitable for SVs with gene fusions, based on the XAI technology we previously developed for the prediction of SNV pathogenicity. To cope with gene fusion variants, we added new data to the previous knowledge graph for SVs and we improved the algorithm. Its prediction accuracy was as high as that of existing tools. Moreover, our XAI could explain the reasons for these predictions. We used some variant examples to demonstrate that the reasons are plausible in terms of pathogenic basic mechanisms. These results can be seen as a hopeful step toward the future of genomic medicine, where efficient and correct decisions can be made with the support of AI.

Publisher

MDPI AG

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