Histone lysine crotonylation (Kcr)
is a post-translational modification
of histone proteins that is involved in the regulation of gene transcription,
acute and chronic kidney injury, spermatogenesis, depression, cancer,
and so forth. The identification of Kcr sites in proteins is important
for characterizing and regulating primary biological mechanisms. The
use of computational approaches such as machine learning and deep
learning algorithms have emerged in recent years as the traditional
wet-lab experiments are time-consuming and costly. We propose as part
of this study a deep learning model based on a recurrent neural network
(RNN) termed as Sohoko-Kcr for the prediction of Kcr sites. Through
the embedded encoding of the peptide sequences, we investigate the
efficiency of RNN-based models such as long short-term memory (LSTM),
bidirectional LSTM (BiLSTM), and bidirectional gated recurrent unit
(BiGRU) networks using cross-validation and independent tests. We
also established the comparison between Sohoko-Kcr and other published
tools to verify the efficiency of our model based on 3-fold, 5-fold,
and 10-fold cross-validations using independent set tests. The results
then show that the BiGRU model has consistently displayed outstanding
performance and computational efficiency. Based on the proposed model,
a webserver called Sohoko-Kcr was deployed for free use and is accessible
at .
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