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蛋白质二级结构预测方法的评价
引用本文:孟翔燕,孟军,葛家麒.蛋白质二级结构预测方法的评价[J].生物信息学,2010,8(3):206-209.
作者姓名:孟翔燕  孟军  葛家麒
作者单位:1. 东北农业大学理学院,哈尔滨,150030
2. 国家大豆工程技术中心,哈尔滨,150030
基金项目:东北农业大学科技创新项目CXZ010-3 
摘    要:目前评价蛋白质二级结构预测方法主要考虑预测准确率,并没有充分考虑方法自身参数对方法的影响。本文提出一种新型评价方法,将内在评价与外在评价相结合评价预测方法的优劣。以基于混合并行遗传算法的蛋白质二级结构预测方法为例,通过内在评价,合理选取内在参数——切片长度和组内类别数,有效提高预测准确率,同时,通过外在评价,与其他基于随机算法的蛋白质二级结构预测算法比较和与CASP所提供的结论比较,说明了方法的有效性与正确性,以此验证内在评价和外在评价的客观性、公正性和全面性。

关 键 词:蛋白质二级结构预测方法  内在评价  外在评价

A method for assessing methods for protein secondary structure prediction
MENG Xiang-yan,MENG Jun,GE Jia-qi.A method for assessing methods for protein secondary structure prediction[J].China Journal of Bioinformation,2010,8(3):206-209.
Authors:MENG Xiang-yan  MENG Jun  GE Jia-qi
Institution:1.College of Science;Northeast Agricultural University,Harbin 150030,China;2.National Research Center of Soybean Engineering and Techniques of China,Harbin 150086,China)
Abstract:In the current methods for assessing methods for protein secondary structure prediction,the prediction precision is mainly considered,but the effect of internal parameter on prediction method is not sufficiently considered.This paper presents a new evaluation method,which assesses the advantages and disadvantages of prediction method by combining internal evaluation and external evaluation.With protein secondary structure prediction based on hybrid parallel genetic algorithm for example,reasonable selection of internal parameters(slice length and structure group class number) effectively improves the pre diction precision by using internal evaluation;on the other hand,its comparison with protein secondary structure prediction based other random algorithms and results provided by CASP shows the effectiveness and correctness of prediction.This example verifies objectivity,impartiality and comprehensiveness of internal and external evaluation.
Keywords:method for protein secondary structure prediction  internal evaluation  external evaluation
本文献已被 CNKI 维普 万方数据 等数据库收录!
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