Jiang Limin, Tang Jijun, Guo Fei, Guo Yan
Comprehensive Cancer Center, Department of Internal Medicine, University of New Mexico, Albuquerque, NM 87131, USA.
Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences, Shenzhen 518055, China.
Biology (Basel). 2022 Jun 1;11(6):848. doi: 10.3390/biology11060848.
As an important part of immune surveillance, major histocompatibility complex (MHC) is a set of proteins that recognize foreign molecules. Computational prediction methods for MHC binding peptides have been developed. However, existing methods share the limitation of fixed peptide sequence length, which necessitates the training of models by peptide length or prediction with a length reduction technique. Using a bidirectional long short-term memory neural network, we constructed BVMHC, an MHC class I and II binding prediction tool that is independent of peptide length. The performance of BVMHC was compared to seven MHC class I prediction tools and three MHC class II prediction tools using eight performance criteria independently. BVMHC attained the best performance in three of the eight criteria for MHC class I, and the best performance in four of the eight criteria for MHC class II, including accuracy and AUC. Furthermore, models for non-human species were also trained using the same strategy and made available for applications in mice, chimpanzees, macaques, and rats. BVMHC is composed of a series of peptide length independent MHC class I and II binding predictors. Models from this study have been implemented in an online web portal for easy access and use.
作为免疫监视的重要组成部分,主要组织相容性复合体(MHC)是一组识别外来分子的蛋白质。已经开发了用于MHC结合肽的计算预测方法。然而,现有方法存在固定肽序列长度的局限性,这需要按肽长度训练模型或使用长度缩减技术进行预测。我们使用双向长短期记忆神经网络构建了BVMHC,这是一种独立于肽长度的MHC I类和II类结合预测工具。使用八个性能标准分别将BVMHC的性能与七种MHC I类预测工具和三种MHC II类预测工具进行了比较。BVMHC在MHC I类的八个标准中的三个中表现最佳,在MHC II类的八个标准中的四个中表现最佳,包括准确性和AUC。此外,还使用相同策略训练了非人类物种的模型,并将其用于小鼠、黑猩猩、猕猴和大鼠的应用。BVMHC由一系列独立于肽长度的MHC I类和II类结合预测器组成。本研究中的模型已在在线门户网站上实现,以便于访问和使用。