NABP-LSTM-Att: Nanobody-Antigen binding prediction using bidirectional LSTM and soft attention mechanism.

Journal: Computational biology and chemistry
Published Date:

Abstract

In vertebrates, antibody-mediated immunity is a vital component of the immune system, and antibodies have become a rapidly expanding class of therapeutic agents. Nanobodies, a distinct type of antibody, have recently emerged as a stable and cost-effective alternative to traditional antibodies. Their small size, high target specificity, notable solubility, and stability make nanobodies promising candidates for developing high-quality drugs. However, the lack of available nanobodies for most antigens remains a key challenge. Advancing the development of nanobodies requires a better understanding of their interactions with antigens to enhance binding affinity and specificity. Experimental methods for identifying these interactions are essential but often costly and time-consuming, posing challenges for developing nanobody therapies. Although several computational approaches have been designed to screen potential nanobodies, their dependency on 3D structures limits their broad application. This research introduces NABP-LSTM-Att, a deep learning model designed to predict nanobody-antigen binding solely from sequence information. NABP-LSTM-Att leverages bidirectional long short-term memory (biLSTM) to capture both long- and short-term dependencies within nanobody and antigen sequences, combined with a soft attention mechanism to focus on key features. When evaluated on nanobody-antigen sequence pairs from the SAbDab-nano database, NABP-LSTM-Att achieved an AUROC of 0.926 and an AUPR of 0.952. Considering the significance of nanobody-based treatments and their prospective uses in immunotherapy and diagnostics, we believe that the proposed model will serve as an effective tool for predicting nanobody-antigen binding.

Authors

  • Fatma S Ahmed
    Department of Computer Science and Technology, Xiamen University, Xiamen, 361005, China. fatmasayed@stu.xmu.edu.cn.
  • Saleh Aly
    Department of Electrical Engineering, Aswan University, Aswan, 81542, Egypt. s.haridy@mu.edu.sa.
  • Mohamed A M El-Tabakh
    Department of Molecular Biology, Al-Azhar University, Cairo, 4450113, Egypt. Electronic address: dr.m.eltabakh.201@azhar.edu.eg.
  • Xiangrong Liu