Integrating Deep Learning Models with Genome-Wide Association Study-Based Identification Enhanced Phenotype Predictions in Group A .

Journal: Journal of microbiology and biotechnology
PMID:

Abstract

Group A (GAS) is a major pathogen with diverse clinical outcomes linked to its genetic variability, making accurate phenotype prediction essential. While previous studies have identified many GAS-associated genetic factors, translating these findings into predictive models remains challenging due to data complexity. The current study aimed to integrate deep learning models with genome-wide association study-derived genetic variants to predict pathogenic phenotypes in GAS. We evaluated the performance of several deep neural network models, including CNN, ResNet18, LSTM, and their ensemble approach in predicting GAS phenotypes. It was found that the ensemble model consistently achieved the highest prediction accuracy across phenotypes. Models trained on the full 4722-genotype set outperformed those trained on a reduced 175-genotype set, underscoring the importance of comprehensive variant data in capturing complex genotype-phenotype interactions. Performance changes in the reduced 175-genotype set compared to the full-set genotype scenarios revealed the impact of data dimensionality on model effectiveness, with CNN remaining robust, while ResNet18 and LSTM underperformed. Our findings emphasized the potential of deep learning in phenotype prediction and the critical role of data-model compatibility.

Authors

  • Peng-Ying Wang
    School of Life Sciences, Hubei University, Wuhan 430062, P.R. China.
  • Zhi-Song Chen
    School of Life Sciences, Hubei University, Wuhan 430062, P.R. China.
  • Xiaoguo Jiao
    School of Life Sciences, Hubei University, Wuhan 430062, P.R. China.
  • Yun-Juan Bao
    School of Life Sciences, Hubei University, Wuhan 430062, P.R. China.