GRIP: Graph Representation of Immune Repertoire Using Graph Neural Network and Transformer
DOI:
https://doi.org/10.1609/aaai.v37i4.25645Keywords:
APP: Bioinformatics, ML: Graph-based Machine Learning, ML: Multi-Instance/Multi-View LearningAbstract
The immune repertoire is a collection of immune recep-tors that has emerged as an important biomarker for both diagnostic and therapeutic of cancer patients. In terms of deep learning, analyzing immune repertoire is a challeng-ing multiple-instance learning problem in which the im-mune repertoire of an individual is a bag, and the immune receptor is an instance. Although several deep learning methods for immune repertoire analysis are introduced, they consider the immune repertoire as a set-like struc-ture that doesn’t take account of the nature of the im-mune response. When the immune response occurs, mu-tations are introduced to the immune receptor sequence sequentially to optimize the immune response against the pathogens that enter our body. As a result, immune receptors for the specific pathogen have the lineage of evolution; thus, immune repertoire is better represented as a graph-like structure. In this work, we present our novel method graph representation of immune repertoire (GRIP), which analyzes the immune repertoire as a hier-archical graph structure and utilize the collection of graph neural network followed by graph pooling and transformer to efficiently represents the immune reper-toire as an embedding vector. We show that GRIP predict the survival probability of cancer patients better than the set-based methods and graph-based structure is critical for performance. Also, GRIP provides interpretable re-sults, which prove that GRIP adequately use the progno-sis-related immune receptor and give further possibility to use the GRIP as the novel biomarker searching toolDownloads
Published
2023-06-26
How to Cite
Lee, Y., Lee, H., Shin, K., & Kwon, S. (2023). GRIP: Graph Representation of Immune Repertoire Using Graph Neural Network and Transformer. Proceedings of the AAAI Conference on Artificial Intelligence, 37(4), 5160-5168. https://doi.org/10.1609/aaai.v37i4.25645
Issue
Section
AAAI Technical Track on Domain(s) of Application