A gene prioritization method based on a swine multi-omics knowledgebase and a deep learning model

Yuhua Fu(Wuhan University of Technology), Jingya Xu(Huazhong Agricultural University), Zhenshuang Tang(Huazhong Agricultural University), Lu Wang(Huazhong Agricultural University), Dong Yin(Huazhong Agricultural University), Yu Fan(Huazhong Agricultural University), Dongdong Zhang(Wuhan University of Technology), Fei Deng(Wuhan University of Technology), Yanping Zhang(Wuhan University of Technology), Haohao Zhang(Wuhan University of Technology), Haiyan Wang(Huazhong Agricultural University), Wenhui Xing(Wuhan University of Technology), Lilin Yin(Huazhong Agricultural University), Shilin Zhu(Huazhong Agricultural University), Mengjin Zhu(Huazhong Agricultural University), Mei Yu(Huazhong Agricultural University), Xinyun Li(Huazhong Agricultural University), Xiaolei Liu(Huazhong Agricultural University), Xiaohui Yuan(Wuhan University of Technology), Shuhong Zhao(Huazhong Agricultural University)
Communications Biology
September 10, 2020
Cited by 118Open Access
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Abstract

The analyses of multi-omics data have revealed candidate genes for objective traits. However, they are integrated poorly, especially in non-model organisms, and they pose a great challenge for prioritizing candidate genes for follow-up experimental verification. Here, we present a general convolutional neural network model that integrates multi-omics information to prioritize the candidate genes of objective traits. By applying this model to Sus scrofa, which is a non-model organism, but one of the most important livestock animals, the model precision was 72.9%, recall 73.5%, and F1-Measure 73.4%, demonstrating a good prediction performance compared with previous studies in Arabidopsis thaliana and Oryza sativa. Additionally, to facilitate the use of the model, we present ISwine ( http://iswine.iomics.pro/ ), which is an online comprehensive knowledgebase in which we incorporated almost all the published swine multi-omics data. Overall, the results suggest that the deep learning strategy will greatly facilitate analyses of multi-omics integration in the future.


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