Prediction of systemic lupus erythematosus-related genes based on graph attention network and deep neural network.

Journal: Computers in biology and medicine
Published Date:

Abstract

Systemic lupus erythematosus (SLE) is an autoimmune disorder intricately linked to genetic factors, with numerous approaches having identified genes linked to its development, diagnosis and prognosis. Despite genome-wide association analysis and gene knockout experiments confirming some genes associated with SLE, there are still numerous potential genes yet to be discovered. The search for relevant genes through biological experiments entails significant financial and human resources. With the advancement of computational technologies like deep learning, we aim to identify SLE-related genes through deep learning methods, thereby narrowing down the scope for biological experimentation. This study introduces SLEDL, a deep learning-based approach that leverages DNN and graph neural networks to effectively identify SLE-related genes by capturing relevant features in the gene interaction network. The above steps transform the identification of SLE related genes into a binary classification problem, ultimately solved through a fully connected layer. The results demonstrate the superiority of SLEDL, achieving higher AUC (0.7274) and AUPR (0.7599), further validated through case studies.

Authors

  • Fang Fang
    Department of Cardiology, Central War Zone General Hospital of the Chinese People's Liberation Army, Wuhan 430061, China.
  • Yizhou Sun
    College of Computer and Information Science, Northeastern University, 360 Huntington Avenue, Boston, MA, USA.