改进蛋白质紊乱预测的方法

S. Vucetic, P. Radivojac, Z. Obradovic, Celeste J. Brown, Dunker Ak
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引用次数: 14

摘要

本文提出了几种改进蛋白质紊乱预测的方法。这包括从蛋白质序列中构建属性、选择分类器和后处理。虽然神经网络的集成实现了更高的精度,但与逻辑回归分类器相比,差异小于1%。神经网络的装袋,在长度为61的窗口上的移动平均被用于属性构建,结合在长度为81的窗口上的平均预测的后处理,导致比以前使用的更大的有序和无序蛋白质集的准确性为82.6%。该结果比以前的方法有了显著的改进,其准确度为70.2%。此外,与以前的方法不同,改进的属性构建允许在蛋白质末端进行预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods for improving protein disorder prediction
In this paper we propose several methods for improving prediction of protein disorder. These include attribute construction from protein sequence, choice of classifier and postprocessing. While ensembles of neural networks achieved the higher accuracy, the difference as compared to logistic regression classifiers was smaller than 1%. Bagging of neural networks, where moving averages over windows of length 61 were used for attribute construction, combined with postprocessing by averaging predictions over windows of length 81 resulted in 82.6% accuracy for a larger set of ordered and disordered proteins than used previously. This result was a significant improvement over previous methodology, which gave an accuracy of 70.2%. Moreover, unlike the previous methodology, the modified attribute construction allowed prediction at protein ends.
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