Abstract
In this review, we have discussed the class-prediction and discovery methods that are applied to gene expression data, along with the implications of the findings. We attempted to present a unified approach that considers both class-prediction and class-discovery. We devoted a substantial part of this review to an overview of pattern classification/recognition methods and discussed important issues such as preprocessing of gene expression data, curse of dimensionality, feature extraction/selection, and measuring or estimating classifier performance. We discussed and summarized important properties such as generalizability (sensitivity to overtraining), built-in feature selection, ability to report prediction strength, and transparency (ease of understanding of the operation) of different class-predictor design approaches to provide a quick and concise reference. We have also covered the topic of biclustering, which is an emerging clustering method that processes the entries of the gene expression data matrix in both gene and sample directions simultaneously, in detail.
Keywords: cDNA microarrays, Fisher's Linear Discriminant Analysis (FLDA), Artificial Neural Networks, multidimensional scaling, cross-validation (CV), Super-Paramagnetic Clustering algorithm
Current Bioinformatics
Title: Gene Expression Profile Classification: A Review
Volume: 1 Issue: 1
Author(s): Musa H. Asyali, Dilek Colak, Omer Demirkaya and Mehmet S. Inan
Affiliation:
Keywords: cDNA microarrays, Fisher's Linear Discriminant Analysis (FLDA), Artificial Neural Networks, multidimensional scaling, cross-validation (CV), Super-Paramagnetic Clustering algorithm
Abstract: In this review, we have discussed the class-prediction and discovery methods that are applied to gene expression data, along with the implications of the findings. We attempted to present a unified approach that considers both class-prediction and class-discovery. We devoted a substantial part of this review to an overview of pattern classification/recognition methods and discussed important issues such as preprocessing of gene expression data, curse of dimensionality, feature extraction/selection, and measuring or estimating classifier performance. We discussed and summarized important properties such as generalizability (sensitivity to overtraining), built-in feature selection, ability to report prediction strength, and transparency (ease of understanding of the operation) of different class-predictor design approaches to provide a quick and concise reference. We have also covered the topic of biclustering, which is an emerging clustering method that processes the entries of the gene expression data matrix in both gene and sample directions simultaneously, in detail.
Export Options
About this article
Cite this article as:
Asyali H. Musa, Colak Dilek, Demirkaya Omer and Inan S. Mehmet, Gene Expression Profile Classification: A Review, Current Bioinformatics 2006; 1 (1) . https://dx.doi.org/10.2174/157489306775330615
DOI https://dx.doi.org/10.2174/157489306775330615 |
Print ISSN 1574-8936 |
Publisher Name Bentham Science Publisher |
Online ISSN 2212-392X |
- Author Guidelines
- Graphical Abstracts
- Fabricating and Stating False Information
- Research Misconduct
- Post Publication Discussions and Corrections
- Publishing Ethics and Rectitude
- Increase Visibility of Your Article
- Archiving Policies
- Peer Review Workflow
- Order Your Article Before Print
- Promote Your Article
- Manuscript Transfer Facility
- Editorial Policies
- Allegations from Whistleblowers
Related Articles
-
Interactions of VDAC with Proteins Involved in Neurodegenerative Aggregation: An Opportunity for Advancement on Therapeutic Molecules
Current Medicinal Chemistry Artificial Intelligence, Big Data and Machine Learning Approaches in Precision Medicine & Drug Discovery
Current Drug Targets Natural Anti-inflammatory Compounds as Drug Candidates in Alzheimer’s Disease
Current Medicinal Chemistry Iron Chelators as Potential Therapeutic Agents for Parkinsons Disease
Current Bioactive Compounds Therapeutic Targeting of Melanoma Cells Using Neural Stem Cells Expressing Carboxylesterase, a CPT-11 Activating Enzyme
Current Stem Cell Research & Therapy Emerging β-Amyloid Therapies for the Treatment of Alzheimers Disease
Current Pharmaceutical Design Evolution of Resistance to Cancer Therapy
Current Pharmaceutical Design Image-Guided Nanoparticle-Based siRNA Delivery for Cancer Therapy
Current Pharmaceutical Design Mangrove Plants as a Source of Bioactive Compounds: A Review
The Natural Products Journal Betulinic Acid as a Potent and Complex Antitumor Phytochemical: A Minireview
Anti-Cancer Agents in Medicinal Chemistry Pharmacology of Cell Adhesion Molecules of the Nervous System
Current Neuropharmacology Pharmacoproteomics Applications for Drug Target Discovery in CNS Disorders
Current Pharmacogenomics and Personalized Medicine The Many Faces of Amyloid β in Alzheimers Disease
Current Molecular Medicine Anticancer Drug Design Using Scaffolds of β-Lactams, Sulfonamides, Quinoline, Quinoxaline and Natural Products. Drugs Advances in Clinical Trials
Current Medicinal Chemistry Pathobiology and Prevention of Cancer Chemotherapy-Induced Bone Growth Arrest, Bone Loss, and Osteonecrosis
Current Molecular Medicine Topotecan and Irinotecan in the Treatment of Pediatric Solid Tumors
Current Pediatric Reviews Nutlin-3, A p53-Mdm2 Antagonist for Nasopharyngeal Carcinoma Treatment
Mini-Reviews in Medicinal Chemistry Strategies to Convert PACAP from a Hypophysiotropic Neurohormone Into a Neuroprotective Drug
Current Pharmaceutical Design Small Molecule Inhibitors of Peptidylprolyl cis/trans Isomerase
Current Enzyme Inhibition Ribonucleases, Nucleases and Antiangiogenins in Antiproliferative Activities
Current Signal Transduction Therapy