Md. Easin Arafat, Md. Wakil Ahmad, S. M. Shovan, Towhid Ul Haq, Nazrul Islam, Mufti Mahmud, M. Shamim Kaiser
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引用次数: 0
摘要
甲基化被认为是蛋白质最重要的翻译后修饰(PTM)之一。可塑性和细胞动力学是受甲基化调控的许多特征之一。目前,甲基化位点是通过实验方法确定的。然而,这些方法既耗时又昂贵。利用计算机建模可以快速、准确地确定甲基化位点,为进一步试验和研究提供有价值的信息。在本研究中,我们提出了一种名为 MeSEP 的新机器学习模型,用于预测甲基化位点,该模型结合了基于进化和结构的信息。为了建立这个模型,我们首先分别从 PSSM 和 SPD2 图谱中提取进化和结构特征。然后,我们采用极端梯度提升(XGBoost)作为分类模型来预测甲基化位点。为了解决数据不平衡和偏向负样本的问题,我们采用了基于 SMOTETomek 的混合采样方法。我们使用赖氨酸甲基化位点在独立测试集(ITS)和 10 倍交叉验证(TCV)上对 MeSEP 进行了验证。该方法的准确率在 ITS 中为 82.9%,在 TCV 中为 84.6%;精确度在 ITS 中为 0.92,在 TCV 中为 0.94;曲线下面积值在 ITS 中为 0.90,在 TCV 中为 0.92;F1 分数在 ITS 中为 0.81,在 TCV 中为 0.83;MCC 在 ITS 中为 0.67,在 TCV 中为 0.70。MeSEP 的性能明显优于以往文献中的研究。MeSEP 作为一个独立的工具包及其所有源代码均可在 https://github.com/arafatro/MeSEP 上公开获取。
Accurate Prediction of Lysine Methylation Sites Using Evolutionary and Structural-Based Information
Methylation is considered one of the proteins’ most important post-translational modifications (PTM). Plasticity and cellular dynamics are among the many traits that are regulated by methylation. Currently, methylation sites are identified using experimental approaches. However, these methods are time-consuming and expensive. With the use of computer modelling, methylation sites can be identified quickly and accurately, providing valuable information for further trial and investigation. In this study, we propose a new machine-learning model called MeSEP to predict methylation sites that incorporates both evolutionary and structural-based information. To build this model, we first extract evolutionary and structural features from the PSSM and SPD2 profiles, respectively. We then employ Extreme Gradient Boosting (XGBoost) as the classification model to predict methylation sites. To address the issue of imbalanced data and bias towards negative samples, we use the SMOTETomek-based hybrid sampling method. The MeSEP was validated on an independent test set (ITS) and 10-fold cross-validation (TCV) using lysine methylation sites. The method achieved: an accuracy of 82.9% in ITS and 84.6% in TCV; precision of 0.92 in ITS and 0.94 in TCV; area under the curve values of 0.90 in ITS and 0.92 in TCV; F1 score of 0.81 in ITS and 0.83 in TCV; and MCC of 0.67 in ITS and 0.70 in TCV. MeSEP significantly outperformed previous studies found in the literature. MeSEP as a standalone toolkit and all its source codes are publicly available at https://github.com/arafatro/MeSEP.
期刊介绍:
Cognitive Computation is an international, peer-reviewed, interdisciplinary journal that publishes cutting-edge articles describing original basic and applied work involving biologically-inspired computational accounts of all aspects of natural and artificial cognitive systems. It provides a new platform for the dissemination of research, current practices and future trends in the emerging discipline of cognitive computation that bridges the gap between life sciences, social sciences, engineering, physical and mathematical sciences, and humanities.