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Zhu, Lu: Context-specific subcellular localization prediction: Leveraging protein interaction networks and scientific texts. 2018
Inhalt
Table of contents
List of figures
List of tables
1 Introduction
1.1 Understanding protein SCLs
1.2 The importance of the context-specific subcellular distribution of proteins
1.3 Computational prediction of protein SCL
1.4 The aim of this work
1.5 Structure of this work
2 Background
2.1 SCL
2.1.1 Cell and cellular compartmentalization
2.1.2 Protein subcellular localization
2.1.3 Protein translocation
2.1.4 MLP
2.1.5 Protein mislocalization
2.2 PPI
2.2.1 Types of PPIs
2.2.2 Databases for PPIs
2.2.3 Reliability of PPI data
2.2.4 PPIN
2.3 Basic concepts in graph theory
2.4 Gene co-expression network analysis
2.5 Bayesian inference and Gibbs sampling
2.6 Markov random field
2.7 Multi-label dataset and classification
2.8 Text mining data curation
3 Overview of protein subcellular localization prediction
3.1 Access to the protein SCL data
3.1.1 Experimental data
3.1.2 Knowledge-bases of protein SCLs
3.1.3 Limitations
3.2 Computational prediction method
3.2.1 Sequence feature based methods
3.2.2 PPIN-based approaches
3.2.3 Limitation of existing methods
3.3 Spatial adjacency of SCCs
3.4 Direct neighbors and indirect neighbors
3.5 MRF for protein function prediction
3.6 From mono-SCL prediction to multi-SCL prediction
3.7 From generic SCL prediction to context-specific SCL prediction
3.8 Significance of tissue specificity in human biology
3.8.1 Tissue-specific SCL of proteins
3.8.2 Bring computational approaches to the study of tissue-specific SCL of proteins
3.9 Summary
4 Generic SCL prediction
4.1 The Bayesian Collective MRF Model
4.1.1 The weighted markov random field model
4.1.2 Gibbs sampler and likelihood estimation
4.1.3 Parameter learning
4.1.4 Collective MRFs
4.1.5 Computational complexity
4.1.6 Implementation
4.2 Experimental setup
4.2.1 Dataset
4.2.2 Evaluation
4.2.3 Comparison partners
4.3 Results
4.3.1 Likelihood and prediction performance
4.3.2 Effects of different potentials
4.3.3 A collective process improves the performance
4.3.4 Transductive learning from imbalanced MLDs
4.3.5 Comparison with existing methods
4.4 Summary
5 Tissue-specific SCL prediction
5.1 Methods
5.1.1 BCMRFs for predicting tissue-specific SCLs
5.1.2 Implementation
5.1.3 Data resources
5.1.4 Performance measures
5.2 Results
5.2.1 Statistics of the tissue-specific physical PPINs
5.2.2 Statistics of the tissue-specific SCLs
5.2.3 The impact of the noisy tissue-specific functional associations on tissue-specific SCL prediction
5.2.4 Genome-wide tissue-specific SCLs prediction
5.2.5 Predictions for novel tissue-specific protein candidate validated by text mining
5.3 Summary
6 Tissue-specific SCL Data Curation using Text mining
6.1 Methods
6.1.1 A. Retrieving relevant abstracts
6.1.2 B. Text preprocessing
6.1.3 C. NER
6.1.4 D. Term normalization
6.1.5 E. Extraction and scoring of tissue-protein-SCL associations
6.1.6 Experimental design and evaluation
6.2 Results
6.2.1 Dictionary-based tagger
6.2.2 Evaluation against manual curated corpus - Tissue
6.2.3 Evaluation against experimental dataset - Cell lines
6.2.4 Creation of TS-SCL database
6.2.5 TS-SCL database web interface
6.2.6 Generality of the approach
6.2.7 Limitation and future direction
6.3 Summary
7 Tissue-specific subcellular distribution of the human AGO2 protein
7.1 Tissue-specific PPI networks of the human AGO2 protein
7.2 Characterization of the tissue-specific networks
7.2.1 Roles in RNA silencing event
7.2.2 Roles in mRNA splice and translation
7.2.3 Roles in tumorigenesis
7.3 Analysis of the prediction results
7.3.1 Generic SCLs
7.3.2 Tissue-specific SCLs
7.4 Summary
8 Conclusion and discussion
8.1 Conclusion
8.2 Discussion
8.3 Future work
References
Notations