Multimodal Graph-based Transformer Framework for BiomedicalRelation Extraction

 Abstract

task:Protein-Protein Interaction task

introduced a novel framework that enables the model to learn multi-omnics biological information about entities (proteins) with the help of additional multi-modal cues like molecular structure.
devise a generalized and optimized graph based multi-modal learning mechanism that utilizes the GraphBERT model
1 Introduction
The main contributions:
utilized protein atomic structural information while identifying the protein interactions
developed a generalized modality-agnostic approach
2 Proposed Method
four main components:
(1) Multi-modal Graph Constructor ,
(2) Multi -modal Graph Fusion
(3) Multi-modal Graph En coder
(4) PPI Predictor .
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Problem Statement:
a biomedical input text:
S = { w 1 , w 2 , . . . , w n }
a pair of protein mentions
p 1 , p 2 S
predict:
‘interact’ or ‘non-interact’
2.1 Multi-modal Graph Constructor
Textual Graph Constructor:
constructs the graph by considering the textual content that aims to capture the lexical and contextual informa tion present in the input
Protein Structure Graph Constructor:
exploits the atomic structure (3D PDB structure) of the protein molecules to build the graph.
2.2 Multi-modal Graph Fusion
2.3 Multi-modal Graph Encoder

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2.4 PPI Predictor

3 Datasets and Experimental Analysis

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4 Error Analysis
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