School of Science, Xi'an Polytechnic University, Xi'an, 710048, PR China.
School of Science, Xi'an Polytechnic University, Xi'an, 710048, PR China.
Anal Biochem. 2024 Dec;695:115648. doi: 10.1016/j.ab.2024.115648. Epub 2024 Aug 16.
Neuropeptides play crucial roles in regulating neurological function acting as signaling molecules, which provide new opportunity for developing drugs for the treatment of neurological diseases. Therefore, it is very necessary to develop a rapid and accurate prediction model for neuropeptides. Although a few prediction tools have been developed, there is room for improvement in prediction accuracy by using deep learning approach. In this paper, we establish the NeuroPred-ResSE model based on residual block and squeeze-excitation attention mechanism. Firstly, we extract multi-features by using one-hot coding based on the NT5CT5 sequence, dipeptide deviation from expected mean and natural vector. Then, we integrate residual block and squeeze-excitation attention mechanism, which can capture and identify the most relevant attribute features. Finally, the accuracies of the training set and test set are 97.16 % and 96.60 % based on the 5-fold cross-validation and independent test, respectively, and other evaluation metrics have also obtained satisfactory results. The experimental results show that the performance of the NeuroPred-ResSE model outperforms those of existing state-of-the-art models, and our model is an effective, intelligent and robust prediction tool. The datasets and source codes are available at https://github.com/yunyunliang88/NeuroPred-ResSE.
神经肽在调节神经功能方面发挥着重要作用,作为信号分子,为开发治疗神经疾病的药物提供了新的机会。因此,开发一种快速准确的神经肽预测模型非常必要。虽然已经开发了一些预测工具,但通过深度学习方法可以提高预测准确性。在本文中,我们基于残差块和挤压激励注意力机制建立了 NeuroPred-ResSE 模型。首先,我们使用基于 NT5CT5 序列、二肽偏离预期均值和自然向量的独热编码提取多特征。然后,我们整合残差块和挤压激励注意力机制,能够捕获和识别最相关的属性特征。最后,基于 5 折交叉验证和独立测试,训练集和测试集的准确率分别达到 97.16%和 96.60%,其他评估指标也取得了满意的结果。实验结果表明,NeuroPred-ResSE 模型的性能优于现有的最先进模型,我们的模型是一种有效、智能和强大的预测工具。数据集和源代码可在 https://github.com/yunyunliang88/NeuroPred-ResSE 上获取。