NTpred:用于蛋白质序列中酪氨酸硝化位点硅学鉴定的强大而精确的机器学习框架。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Sourajyoti Datta, Muhammad Nabeel Asim, Andreas Dengel, Sheraz Ahmed
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引用次数: 0

摘要

翻译后修饰(PTMs)可以增强蛋白质在各种亚细胞过程中的活性,也可以降低其活性,导致细胞内过程失效。酪氨酸硝化(NT)修饰会降低蛋白质的活性,从而引发和传播各种疾病,包括神经退行性疾病、心血管疾病、自身免疫性疾病和致癌疾病。NT修饰的鉴定有助于针对相关疾病开发新型疗法和药物。在生化实验室鉴定 NT 修饰既昂贵又耗时,而且容易出错。为了补充这一过程,人们提出了几种计算方法。然而,由于从蛋白质序列中提取了不相关的、冗余的和辨别力较低的特征,这些方法无法精确地识别 NT 修饰。本文介绍了 NTpred 框架,该框架能利用四种不同的序列编码器从原始蛋白质序列中提取综合特征。为了充分利用不同编码器的优势,它通过融合不同的编码组合生成了四个额外的特征空间。此外,它还通过递归特征消除过程,从八个不同的特征空间中消除无关和冗余特征。从四个单独编码和四个特征融合向量中选取的特征用于训练八个不同的梯度提升树分类器。训练好的分类器的概率分数被用来生成新的概率特征空间,并用于训练逻辑回归分类器。在 BD1 基准数据集上,所提出的框架在 5 倍交叉验证和独立测试评估中的表现优于现有表现最好的预测器,MCC 和 AUC 分别提高了 13.7% 和 20.1%。同样,在 BD2 基准数据集上,拟议框架的 MCC 和 AUC 分别提高了 5.3% 和 1.0%,优于现有表现最佳的预测器。NTpred 可在以下网址公开获取,供进一步实验和预测使用:https://sds_genetic_analysis.opendfki.de/PredNTS/。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NTpred: a robust and precise machine learning framework for in silico identification of Tyrosine nitration sites in protein sequences.

Post-translational modifications (PTMs) either enhance a protein's activity in various sub-cellular processes, or degrade their activity which leads toward failure of intracellular processes. Tyrosine nitration (NT) modification degrades protein's activity that initiates and propagates various diseases including neurodegenerative, cardiovascular, autoimmune diseases and carcinogenesis. Identification of NT modification supports development of novel therapies and drug discoveries for associated diseases. Identification of NT modification in biochemical labs is expensive, time consuming and error-prone. To supplement this process, several computational approaches have been proposed. However these approaches fail to precisely identify NT modification, due to the extraction of irrelevant, redundant and less discriminative features from protein sequences. This paper presents the NTpred framework that is competent in extracting comprehensive features from raw protein sequences using four different sequence encoders. To reap the benefits of different encoders, it generates four additional feature spaces by fusing different combinations of individual encodings. Furthermore, it eradicates irrelevant and redundant features from eight different feature spaces through a Recursive Feature Elimination process. Selected features of four individual encodings and four feature fusion vectors are used to train eight different Gradient Boosted Tree classifiers. The probability scores from the trained classifiers are utilized to generate a new probabilistic feature space, which is used to train a Logistic Regression classifier. On the BD1 benchmark dataset, the proposed framework outperforms the existing best-performing predictor in 5-fold cross validation and independent test evaluation with combined improvement of 13.7% in MCC and 20.1% in AUC. Similarly, on the BD2 benchmark dataset, the proposed framework outperforms the existing best-performing predictor with combined improvement of 5.3% in MCC and 1.0% in AUC. NTpred is publicly available for further experimentation and predictive use at: https://sds_genetic_analysis.opendfki.de/PredNTS/.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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