Predictive model for yeast protein functions using modular neural approach

Doosung Hwang, F. Fotouhi, R. Finley, W. Grosky
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引用次数: 1

Abstract

In this paper we use a modular neural network to predict the molecular functions of yeast proteins. To solve this class problem, our proposed approach decomposes the original problem into a set of solvable 2-class subproblems using class information. Each 2-class problem has a set of positive and negative data. The yeast data is not equally distributed in function classes and hinders the learning of each neural network. We adopt a sampling strategy that generates a set of new class data to the subordinate class in order to balance the positive and negative data set. In data preparation, the biological concept of "guilt-by-interaction" is used for covering possible interaction partners among proteins of known functions. The proposed framework has been tested as a predictive model of yeast protein functions where the data source is stored in a relational database. In the experiments, the proposed system shows an average accuracy of 91.0% in the test set.
基于模块化神经网络的酵母蛋白功能预测模型
本文采用模块化神经网络对酵母蛋白的分子功能进行预测。为了解决这类问题,我们提出的方法利用类信息将原始问题分解为一组可解的2类子问题。每个2类问题都有一组正数据和负数据。酵母数据在函数类中分布不均,阻碍了每个神经网络的学习。为了平衡正负数据集,我们采用了一种采样策略,即向从属类生成一组新的类数据。在数据准备中,“相互作用的负罪感”的生物学概念用于覆盖已知功能的蛋白质之间可能的相互作用伙伴。所提出的框架已被测试为酵母蛋白功能的预测模型,其中数据源存储在关系数据库中。在实验中,该系统在测试集中的平均准确率为91.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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