Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods
碩士 === 國立清華大學 === 資訊工程學系 === 95 === Protein secondary structure prediction has been extensively discussed for almost 50 years and the machine learning is one of feasible methods for it with more than 70% accuracy. PSIPRED, PHD and PROF are well-known machine learning approaches and based on the thre...
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ndltd-TW-095NTHU53920112016-05-25T04:14:00Z http://ndltd.ncl.edu.tw/handle/71577696826096177835 Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods 以線性轉換與正規化方法為基礎的蛋白質二級結構預測 Ying-Chuan Liu 劉盈詮 碩士 國立清華大學 資訊工程學系 95 Protein secondary structure prediction has been extensively discussed for almost 50 years and the machine learning is one of feasible methods for it with more than 70% accuracy. PSIPRED, PHD and PROF are well-known machine learning approaches and based on the three-state prediction, helix, strand, and coil. Various prediction tools based on the machine learning have been proposed. However, these tools may make a lot of effort to develop and their accuracy was close to or even lower than PSIPRED. Under the concern, making use of or combining outputs from existing methods is an alternative to make improvements. RAP is a post-processing method using linear transformation and normalization to refine scores of three-state prediction. Hence, RAP can be easily applied to any protein secondary structure prediction tool if it uses three-state prediction. RAP was tested on the CASP data set with 181 targets and a large-scale data set with 69534 chains separated from 31402 proteins in PDB. In the experiment, PHD, PROF and PSIPRED were used to give scores of three-state prediction for each target protein; then, RAP predicted secondary structures by refining the scores from them. More secondary structural segments were detected by RAP than by PHD, PROF and PSIPRED. Moreover, prediction results of combining methods with RAP can achieve higher accuracy than without RAP. RAP is freely available via http://ensembl.cs.nthu.edu.tw/RAP/. Chuan-Yi Tang 唐傳義 2007 學位論文 ; thesis 31 en_US |
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碩士 === 國立清華大學 === 資訊工程學系 === 95 === Protein secondary structure prediction has been extensively discussed for almost 50 years and the machine learning is one of feasible methods for it with more than 70% accuracy. PSIPRED, PHD and PROF are well-known machine learning approaches and based on the three-state prediction, helix, strand, and coil. Various prediction tools based on the machine learning have been proposed. However, these tools may make a lot of effort to develop and their accuracy was close to or even lower than PSIPRED. Under the concern, making use of or combining outputs from existing methods is an alternative to make improvements. RAP is a post-processing method using linear transformation and normalization to refine scores of three-state prediction. Hence, RAP can be easily applied to any protein secondary structure prediction tool if it uses three-state prediction. RAP was tested on the CASP data set with 181 targets and a large-scale data set with 69534 chains separated from 31402 proteins in PDB. In the experiment, PHD, PROF and PSIPRED were used to give scores of three-state prediction for each target protein; then, RAP predicted secondary structures by refining the scores from them. More secondary structural segments were detected by RAP than by PHD, PROF and PSIPRED. Moreover, prediction results of combining methods with RAP can achieve higher accuracy than without RAP. RAP is freely available via http://ensembl.cs.nthu.edu.tw/RAP/.
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author2 |
Chuan-Yi Tang |
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Chuan-Yi Tang Ying-Chuan Liu 劉盈詮 |
author |
Ying-Chuan Liu 劉盈詮 |
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Ying-Chuan Liu 劉盈詮 Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods |
author_sort |
Ying-Chuan Liu |
title |
Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods |
title_short |
Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods |
title_full |
Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods |
title_fullStr |
Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods |
title_full_unstemmed |
Protein Secondary Structure Prediction Based on Linear Transformation and Normalization Methods |
title_sort |
protein secondary structure prediction based on linear transformation and normalization methods |
publishDate |
2007 |
url |
http://ndltd.ncl.edu.tw/handle/71577696826096177835 |
work_keys_str_mv |
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