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RAFP-Pred:使用 n-肽组成的局部分析进行抗冻蛋白的稳健预测。

RAFP-Pred: Robust Prediction of Antifreeze Proteins Using Localized Analysis of n-Peptide Compositions.

出版信息

IEEE/ACM Trans Comput Biol Bioinform. 2018 Jan-Feb;15(1):244-250. doi: 10.1109/TCBB.2016.2617337. Epub 2016 Oct 13.

DOI:10.1109/TCBB.2016.2617337
PMID:28113406
Abstract

In extreme cold weather, living organisms produce Antifreeze Proteins (AFPs) to counter the otherwise lethal intracellular formation of ice. Structures and sequences of various AFPs exhibit a high degree of heterogeneity, consequently the prediction of the AFPs is considered to be a challenging task. In this research, we propose to handle this arduous manifold learning task using the notion of localized processing. In particular, an AFP sequence is segmented into two sub-segments each of which is analyzed for amino acid and di-peptide compositions. We propose to use only the most significant features using the concept of information gain (IG) followed by a random forest classification approach. The proposed RAFP-Pred achieved an excellent performance on a number of standard datasets. We report a high Youden's index (sensitivity+specificity-1) value of 0.75 on the standard independent test data set outperforming the AFP-PseAAC, AFP_PSSM, AFP-Pred, and iAFP by a margin of 0.05, 0.06, 0.14, and 0.68, respectively. The verification rate on the UniProKB dataset is found to be 83.19 percent which is substantially superior to the 57.18 percent reported for the iAFP method.

摘要

在极寒天气下,生物体会产生抗冻蛋白 (AFP) 以防止细胞内形成致命的冰。各种 AFP 的结构和序列表现出高度的异质性,因此 AFP 的预测被认为是一项具有挑战性的任务。在这项研究中,我们建议使用局部处理的概念来处理这个艰巨的流形学习任务。具体来说,将 AFP 序列分成两个子序列,每个子序列都分析其氨基酸和二肽组成。我们建议使用信息增益 (IG) 的概念仅选择最重要的特征,然后使用随机森林分类方法。所提出的 RAFP-Pred 在多个标准数据集上取得了优异的性能。我们报告了在标准独立测试数据集上的高 Youden 指数(灵敏度+特异性-1)值为 0.75,分别比 AFP-PseAAC、AFP_PSSM、AFP-Pred 和 iAFP 高出 0.05、0.06、0.14 和 0.68。在 UniProKB 数据集上的验证率为 83.19%,明显优于 iAFP 方法报告的 57.18%。

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