Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Chi-Wei Chen is active.

Publication


Featured researches published by Chi-Wei Chen.


BMC Bioinformatics | 2013

iStable: off-the-shelf predictor integration for predicting protein stability changes

Chi-Wei Chen; Jerome Lin; Yen-Wei Chu

BackgroundMutation of a single amino acid residue can cause changes in a protein, which could then lead to a loss of protein function. Predicting the protein stability changes can provide several possible candidates for the novel protein designing. Although many prediction tools are available, the conflicting prediction results from different tools could cause confusion to users.ResultsWe proposed an integrated predictor, iStable, with grid computing architecture constructed by using sequence information and prediction results from different element predictors. In the learning model, several machine learning methods were evaluated and adopted the support vector machine as an integrator, while not just choosing the majority answer given by element predictors. Furthermore, the role of the sequence information played was analyzed in our model, and an 11-window size was determined. On the other hand, iStable is available with two different input types: structural and sequential. After training and cross-validation, iStable has better performance than all of the element predictors on several datasets. Under different classifications and conditions for validation, this study has also shown better overall performance in different types of secondary structures, relative solvent accessibility circumstances, protein memberships in different superfamilies, and experimental conditions.ConclusionsThe trained and validated version of iStable provides an accurate approach for prediction of protein stability changes. iStable is freely available online at: http://predictor.nchu.edu.tw/iStable.


PLOS ONE | 2011

siPRED: predicting siRNA efficacy using various characteristic methods.

Wei-Jie Pan; Chi-Wei Chen; Yen-Wei Chu

Small interfering RNA (siRNA) has been used widely to induce gene silencing in cells. To predict the efficacy of an siRNA with respect to inhibition of its target mRNA, we developed a two layer system, siPRED, which is based on various characteristic methods in the first layer and fusion mechanisms in the second layer. Characteristic methods were constructed by support vector regression from three categories of characteristics, namely sequence, features, and rules. Fusion mechanisms considered combinations of characteristic methods in different categories and were implemented by support vector regression and neural networks to yield integrated methods. In siPRED, the prediction of siRNA efficacy through integrated methods was better than through any method that utilized only a single method. Moreover, the weighting of each characteristic method in the context of integrated methods was established by genetic algorithms so that the effect of each characteristic method could be revealed. Using a validation dataset, siPRED performed better than other predictive systems that used the scoring method, neural networks, or linear regression. Finally, siPRED can be improved to achieve a correlation coefficient of 0.777 when the threshold of the whole stacking energy is ≥−34.6 kcal/mol. siPRED is freely available on the web at http://predictor.nchu.edu.tw/siPRED.


Small Ruminant Research | 1997

Changes in apparent mammary uptake of blood metabolites during involution in dairy goats

Chia-Yu Chang; Chi-Wei Chen; Chia-Che Wu

Six goats, three multiparous lactating and three non-pregnant dry dairy goats were used to examine the changes in plasma concentrations of metabolites and concentration differences between jugular and mammary veins during involution stages as compared to lactation stage. Jugular concentrations of glucose and FFA were not different between stages, while jugular concentrations of acetate and triglycerides were higher (P < 0.01) and β-hydroxybutyrate was lower (< 0.01) during involution. Differences in plasma glucose, acetate, β-hydroxybutyrate and triglycerides between jugular and mammary veins were lower (P < 0.01) during involution indicating decreases in mammary uptake of these metabolites. In terms of amounts, glucose was the most important precursor for the lactating glands; an average of approximately 14.6 mg glucose was taken per 100 ml plasma flow through the glands; while acetate (2.37 mg dl−1) and β-hydroxybutyrate (0.17 mg dl−1) were the major precursors for the dry glands. Jugular plasma concentrations and jugular-mammary differences (apparent mammary uptake) for all five metabolites show strong linear relationships during lactation, while jugular concentrations of β-hydroxybutyrate and triglycerides become independent of their apparent mammary uptake during involution. Therefore, changes in pattern and mechanisms of metabolites taken up by the mammary gland probably occurred for dairy goats during involution rather than the lactation stage.


Food Chemistry | 2016

2-DE combined with two-layer feature selection accurately establishes the origin of oolong tea.

Han-Ju Chien; Yen-Wei Chu; Chi-Wei Chen; Yu-Min Juang; Min-Wei Chien; Chih-Wei Liu; Chia-Chang Wu; Jason T. C. Tzen; Chien-Chen Lai

Taiwan is known for its high quality oolong tea. Because of high consumer demand, some tea manufactures mix lower quality leaves with genuine Taiwan oolong tea in order to increase profits. Robust scientific methods are, therefore, needed to verify the origin and quality of tea leaves. In this study, we investigated whether two-dimensional gel electrophoresis (2-DE) and nanoscale liquid chromatography/tandem mass spectroscopy (nano-LC/MS/MS) coupled with a two-layer feature selection mechanism comprising information gain attribute evaluation (IGAE) and support vector machine feature selection (SVM-FS) are useful in identifying characteristic proteins that can be used as markers of the original source of oolong tea. Samples in this study included oolong tea leaves from 23 different sources. We found that our method had an accuracy of 95.5% in correctly identifying the origin of the leaves. Overall, our method is a novel approach for determining the origin of oolong tea leaves.


Scientific Reports | 2018

SUMOgo: Prediction of sumoylation sites on lysines by motif screening models and the effects of various post-translational modifications

Chi-Chang Chang; Chi-Hua Tung; Chi-Wei Chen; Chin-Hau Tu; Yen-Wei Chu

Most modern tools used to predict sites of small ubiquitin-like modifier (SUMO) binding (referred to as SUMOylation) use algorithms, chemical features of the protein, and consensus motifs. However, these tools rarely consider the influence of post-translational modification (PTM) information for other sites within the same protein on the accuracy of prediction results. This study applied the Random Forest machine learning method, as well as motif screening models and a feature selection combination mechanism, to develop a SUMOylation prediction system, referred to as SUMOgo. With regard to prediction method, PTM sites were coded as new functional features in addition to structural features, such as sequence-based binary coding, encoded chemical features of proteins, and encoded secondary structure information that is important for PTM. Twenty cycles of prediction were conducted with a 1:1 combination of positive test data and random negative data. Matthew’s correlation coefficient of SUMOgo reached 0.511, which is higher than that of current commonly used tools. This study further verified the important role of PTM in SUMOgo and includes a case study on CREB binding protein (CREBBP). The website for the final tool is http://predictor.nchu.edu.tw/SUMOgo.


Genes | 2018

PClass: Protein Quaternary Structure Classification by Using Bootstrapping Strategy as Model Selection

Chi-Chou Huang; Chi-Chang Chang; Chi-Wei Chen; Shao-yu Ho; Hsung-Pin Chang; Yen-Wei Chu

Protein quaternary structure complex is also known as a multimer, which plays an important role in a cell. The dimer structure of transcription factors is involved in gene regulation, but the trimer structure of virus-infection-associated glycoproteins is related to the human immunodeficiency virus. The classification of the protein quaternary structure complex for the post-genome era of proteomics research will be of great help. Classification systems among protein quaternary structures have not been widely developed. Therefore, we designed the architecture of a two-layer machine learning technique in this study, and developed the classification system PClass. The protein quaternary structure of the complex is divided into five categories, namely, monomer, dimer, trimer, tetramer, and other subunit classes. In the framework of the bootstrap method with a support vector machine, we propose a new model selection method. Each type of complex is classified based on sequences, entropy, and accessible surface area, thereby generating a plurality of feature modules. Subsequently, the optimal model of effectiveness is selected as each kind of complex feature module. In this stage, the optimal performance can reach as high as 70% of Matthews correlation coefficient (MCC). The second layer of construction combines the first-layer module to integrate mechanisms and the use of six machine learning methods to improve the prediction performance. This system can be improved over 10% in MCC. Finally, we analyzed the performance of our classification system using transcription factors in dimer structure and virus-infection-associated glycoprotein in trimer structure. PClass is available via a web interface at http://predictor.nchu.edu.tw/PClass/.


PLOS ONE | 2017

Predicting human protein subcellular localization by heterogeneous and comprehensive approaches

Chi-Hua Tung; Chi-Wei Chen; Han-Hao Sun; Yen-Wei Chu

Drug development and investigation of protein function both require an understanding of protein subcellular localization. We developed a system, REALoc, that can predict the subcellular localization of singleplex and multiplex proteins in humans. This system, based on comprehensive strategy, consists of two heterogeneous systematic frameworks that integrate one-to-one and many-to-many machine learning methods and use sequence-based features, including amino acid composition, surface accessibility, weighted sign aa index, and sequence similarity profile, as well as gene ontology function-based features. REALoc can be used to predict localization to six subcellular compartments (cell membrane, cytoplasm, endoplasmic reticulum/Golgi, mitochondrion, nucleus, and extracellular). REALoc yielded a 75.3% absolute true success rate during five-fold cross-validation and a 57.1% absolute true success rate in an independent database test, which was >10% higher than six other prediction systems. Lastly, we analyzed the effects of Vote and GANN models on singleplex and multiplex localization prediction efficacy. REALoc is freely available at http://predictor.nchu.edu.tw/REALoc.


BioMed Research International | 2016

QuaBingo: A Prediction System for Protein Quaternary Structure Attributes Using Block Composition

Chi-Hua Tung; Chi-Wei Chen; Ren-Chao Guo; Hui-Fuang Ng; Yen-Wei Chu

Background. Quaternary structures of proteins are closely relevant to gene regulation, signal transduction, and many other biological functions of proteins. In the current study, a new method based on protein-conserved motif composition in block format for feature extraction is proposed, which is termed block composition. Results. The protein quaternary assembly states prediction system which combines blocks with functional domain composition, called QuaBingo, is constructed by three layers of classifiers that can categorize quaternary structural attributes of monomer, homooligomer, and heterooligomer. The building of the first layer classifier uses support vector machines (SVM) based on blocks and functional domains of proteins, and the second layer SVM was utilized to process the outputs of the first layer. Finally, the result is determined by the Random Forest of the third layer. We compared the effectiveness of the combination of block composition, functional domain composition, and pseudoamino acid composition of the model. In the 11 kinds of functional protein families, QuaBingo is 23% of Matthews Correlation Coefficient (MCC) higher than the existing prediction system. The results also revealed the biological characterization of the top five block compositions. Conclusions. QuaBingo provides better predictive ability for predicting the quaternary structural attributes of proteins.


Advanced Science Letters | 2012

Selecting High Efficacy siRNAs by Computational Models

Wei-Jie Pan; Chi-Wei Chen; Heng-Hao Liang; Yen-Wei Chu

Wei-Jie Pan1, Chi-Wei Chen1, Heng-Hao Liang1, Yen-Wei Chu1,2,3,4 1Institute of Genomics and Bioinformatics, National Chung Hsing University, Taichung, Taiwan 2Biotechnology Center, National Chung Hsing University, Taichung, Taiwan 3Institute of Molecular Biology, National Chung Hsing University, Taichung, Taiwan 4Graduate Institute of Biotechnology, National Chung Hsing University, Taichung, Taiwan


Plant and Cell Physiology | 2011

Characterization of Oncidium ‘Gower Ramsey’ Transcriptomes using 454 GS-FLX Pyrosequencing and Their Application to the Identification of Genes Associated with Flowering Time

Yu-Yun Chang; Yen-Wei Chu; Chi-Wei Chen; Wei-Ming Leu; Hsing-Fun Hsu; Chang-Hsien Yang

Collaboration


Dive into the Chi-Wei Chen's collaboration.

Top Co-Authors

Avatar

Yen-Wei Chu

National Chiao Tung University

View shared research outputs
Top Co-Authors

Avatar

Wei-Jie Pan

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Chang-Hsien Yang

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Chin-Hau Tu

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Yu-Yun Chang

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Chia-Che Wu

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Chia-Yu Chang

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Chien-Chen Lai

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Chih-Wei Liu

National Chung Hsing University

View shared research outputs
Top Co-Authors

Avatar

Han-Ju Chien

National Chung Hsing University

View shared research outputs
Researchain Logo
Decentralizing Knowledge