open access publication

Article, 2024

A Novel Approach Utilizing Domain Adversarial Neural Networks for the Detection and Classification of Selective Sweeps

Advanced Science, ISSN 2198-3844, Volume 11, 14, Page 2304842, 10.1002/advs.202304842

Contributors

Song, Hui [1] Chu, Jinyu [1] Li, Wangjiao [1] Li, Xinyun [1] [2] Fang, Ling-Zhao [3] Han, Jian-Lin [1] [4] [5] Zhao, Shuhong-H 0000-0002-3997-2320 (Corresponding author) [1] [2] [6] Ma, Yunlong 0000-0002-9892-3887 (Corresponding author) [1] [2] [6]

Affiliations

  1. [1] Huazhong Agricultural University
  2. [NORA names: China; Asia, East];
  3. [2] Hubei Hongshan Laboratory, Wuhan, 430070, China
  4. [NORA names: China; Asia, East];
  5. [3] Aarhus University
  6. [NORA names: AU Aarhus University; University; Denmark; Europe, EU; Nordic; OECD];
  7. [4] Institute of Animal Sciences
  8. [NORA names: China; Asia, East];
  9. [5] International Livestock Research Institute
  10. [NORA names: Kenya; Africa];

Abstract

The identification and classification of selective sweeps are of great significance for improving the understanding of biological evolution and exploring opportunities for precision medicine and genetic improvement. Here, a domain adaptation sweep detection and classification (DASDC) method is presented to balance the alignment of two domains and the classification performance through a domain-adversarial neural network and its adversarial learning modules. DASDC effectively addresses the issue of mismatch between training data and real genomic data in deep learning models, leading to a significant improvement in its generalization capability, prediction robustness, and accuracy. The DASDC method demonstrates improved identification performance compared to existing methods and excels in classification performance, particularly in scenarios where there is a mismatch between application data and training data. The successful implementation of DASDC in real data of three distinct species highlights its potential as a useful tool for identifying crucial functional genes and investigating adaptive evolutionary mechanisms, particularly with the increasing availability of genomic data.

Keywords

accuracy, adaptive evolutionary mechanisms, adversarial learning module, adversarial neural network, alignment, application data, applications, availability of genomic data, biological evolution, capability, classification, classification performance, data, deep learning models, detection, domain, domain adversarial neural network, evolution, evolutionary mechanisms, excellence, functional genes, generalization, generalization capability, genes, genetic improvement, genomic data, identification, identification performance, implementation, improvement, increasing availability, increasing availability of genomic data, issue of mismatch, issues, learning models, learning module, mechanism, medicine, method, mismatch, model, modulation, network, neural network, opportunities, performance, potential, precision, precision medicine, prediction, prediction robustness, robustness, scenarios, significance, species, training, training data

Funders

  • National Natural Science Foundation of China
  • Ministry of Science and Technology of the People's Republic of China

Data Provider: Digital Science