Publication Type
Journal Article
Version
publishedVersion
Publication Date
11-2021
Abstract
A principal task in dissecting the genetics of complex traits is to identify causal genes for disease phenotypes. Millions of genes have been sequenced in data-driven genomics era, but their causal relationships with disease phenotypes remain limited, due to the difficulty of elucidating underlying causal genes by laboratory-based strategies. Here, we proposed an innovative deep learning computational modeling alternative (DPPCG framework) for identifying causal (coding) genes for a specific disease phenotype. In terms of male infertility, we introduced proteins as intermediate cell variables, leveraging integrated deep knowledge representations (Word2vec, ProtVec, Node2vec, and Space2vec) quantitatively represented as ‘protein deep profiles’. We adopted deep convolutional neural network (CNN) classifier to model protein deep profiles relationships with male infertility, creatively training deep CNN models of single-label binary classification and multi-label eight classification. We demonstrate the capabilities of DPPCG framework by integrating and fully harnessing the utility of heterogeneous biomedical big data, including literature, protein sequences, protein–protein interactions, gene expressions, and gene–phenotype relationships, and effective indirect prediction of 794 causal genes of male infertility and associated pathological processes. We present this research in an interactive ‘Smart Protein’ intelligent (demo) system (http://www.smartprotein.cloud/public/home). Researchers can benefit from our intelligent system by (i) accessing a shallow gene/protein-radar service involving research status and a knowledge graph-based vertical search; (ii) querying and downloading protein deep profile matrices; (iii) accessing intelligent recommendations for causal genes of male infertility and associated pathological processes, and references for model architectures, parameter settings, and training outputs; and (iv) carrying out personalized analysis such as online K-Means clustering.
Keywords
Data integration, Disease phenotype, Male infertility, Causal gene, Knowledge representation, Convolutional neural network, Manifold learning, Deep learning
Discipline
Databases and Information Systems
Research Areas
Data Science and Engineering
Areas of Excellence
Digital transformation
Publication
Information Fusion: An International Journal on Multi-Sensor, Multi-Source Information Fusion
Volume
75
First Page
70
Last Page
89
ISSN
1566-2535
Identifier
10.1016/j.inffus.2021.04.012
Publisher
Elsevier
Citation
XU, Fang; GUO, Ganggang; ZHU, Feida; TAN, Xiaojun; and FAN, Liqing.
Protein deep profile and model predictions for identifying the causal genes of male infertility based on deep learning. (2021). Information Fusion: An International Journal on Multi-Sensor, Multi-Source Information Fusion. 75, 70-89.
Available at: https://ink.library.smu.edu.sg/sis_research/10187
Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International License.
Additional URL
https://doi.org/10.1016/j.inffus.2021.04.012