About PCBert-Kla
Protein post-translational
modifications (PTMs) play a critical role in regulating protein functionality
and structural diversity. Among them, lysine lactylation (Kla), a newly
identified PTM, is involved in energy metabolism, cellular reprogramming, and
the progression of various diseases. In this study, we propose PCBert-Kla, a
feature-fusion deep learning model based on ProtBert. This model leverages
ProtBert to extract deep features from protein sequences, effectively capturing
global and local contextual information. It integrated various physicochemical
properties, including molecular weight, isoelectric point, amino acid composition,
secondary structure content, hydrophobicity, and charge distribution. An attention
mechanism in the fully connected layers enabled the model to select features
automatically. PCBert-Kla exhibited exceptional accuracy and reliability in Kla site
identification and demonstrated excellent generalization capability to outperform the
existing models. This model provided powerful tools for studying the functions of Kla
and elucidating the mechanisms of related diseases, which can advance biomedical
research and drug development.