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Recent Development of Machine Learning Methods in Microbial Phosphorylation Sites

机译:微生物磷酸化地区机器学习方法的最新发展

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摘要

A variety of protein post-translational modifications has been identified that control many cellular functions. Phosphorylation studies in mycobacterial organisms have shown critical importance in diverse biological processes, such as intercellular communication and cell division. Recent technical advances in high-precision mass spectrometry have determined a large number of microbial phosphorylated proteins and phosphorylation sites throughout the proteome analysis. Identification of phosphorylated proteins with specific modified residues through experimentation is often labor-intensive, costly and time-consuming. All these limitations could be overcome through the application of machine learning (ML) approaches. However, only a limited number of computational phosphorylation site prediction tools have been developed so far. This work aims to present a complete survey of the existing ML-predictors for microbial phosphorylation. We cover a variety of important aspects for developing a successful predictor, including operating ML algorithms, feature selection methods, window size, and software utility. Initially, we review the currently available phosphorylation site databases of the microbiome, the state-of-the-art ML approaches, working principles, and their performances. Lastly, we discuss the limitations and future directions of the computational ML methods for the prediction of phosphorylation.
机译:已经确定了多种翻译后修改,其控制许多蜂窝功能。分枝杆菌生物中的磷酸化研究表明了各种生物过程中的至关重要,例如细胞间通信和细胞分裂。最近在高精度质谱中的技术进步在整个蛋白质组分析中确定了大量微生物磷酸化蛋白和磷酸化位点。通过实验鉴定具有特异性改性残基的磷酸化蛋白通常是劳动密集型,昂贵,耗时的耗时。通过应用机器学习(ML)方法,可以克服所有这些限制。然而,到目前为止仅开发了有限数量的计算磷化位点预测工具。这项工作旨在对现有的ML预测因子进行完整的微生物磷酸化进行调查。我们涵盖了开发成功预测器的各种重要方面,包括操作ML算法,特征选择方法,窗口大小和软件实用程序。最初,我们审查了当前可用的微生物组的磷化位点数据库,最先进的ML方法,工作原则及其表演。最后,我们讨论了计算磷酸化预测的计算ML方法的限制和未来方向。

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