Abstract
Many bioinformatics analytical tools, especially for cancer classification and prediction, require complete sets of data matrix. Having missing values in gene expression studies significantly influences the interpretation of final data. However, to most analysts’ dismay, this has become a common problem and thus, relevant missing value imputation algorithms have to be developed and/or refined to address this matter. This paper intends to present a review of preferred and available missing value imputation methods for the analysis and imputation of missing values in gene expression data. Focus is placed on the abilities of algorithms in performing local or global data correlation to estimate the missing values. Approaches of the algorithms mentioned have been categorized into global approach, local approach, hybrid approach, and knowledge assisted approach. The methods presented are accompanied with suitable performance evaluation. The aim of this review is to highlight possible improvements on existing research techniques, rather than recommending new algorithms with the same functional aim.
Keywords: Gene expression analysis, gene expression data, information recovery, microarray data, missing value estimation, missing value imputation.
Current Bioinformatics
Title:A Review on Missing Value Imputation Algorithms for Microarray Gene Expression Data
Volume: 9 Issue: 1
Author(s): Kohbalan Moorthy, Mohd Saberi Mohamad and Safaai Deris
Affiliation:
Keywords: Gene expression analysis, gene expression data, information recovery, microarray data, missing value estimation, missing value imputation.
Abstract: Many bioinformatics analytical tools, especially for cancer classification and prediction, require complete sets of data matrix. Having missing values in gene expression studies significantly influences the interpretation of final data. However, to most analysts’ dismay, this has become a common problem and thus, relevant missing value imputation algorithms have to be developed and/or refined to address this matter. This paper intends to present a review of preferred and available missing value imputation methods for the analysis and imputation of missing values in gene expression data. Focus is placed on the abilities of algorithms in performing local or global data correlation to estimate the missing values. Approaches of the algorithms mentioned have been categorized into global approach, local approach, hybrid approach, and knowledge assisted approach. The methods presented are accompanied with suitable performance evaluation. The aim of this review is to highlight possible improvements on existing research techniques, rather than recommending new algorithms with the same functional aim.
Export Options
About this article
Cite this article as:
Moorthy Kohbalan, Mohamad Saberi Mohd and Deris Safaai, A Review on Missing Value Imputation Algorithms for Microarray Gene Expression Data, Current Bioinformatics 2014; 9 (1) . https://dx.doi.org/10.2174/1574893608999140109120957
DOI https://dx.doi.org/10.2174/1574893608999140109120957 |
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
-
Editorial: (Thematic Issue: Nanofluidics and Microfluidics: Novel Approaches in Biomedical Science)
Current Proteomics Heterocyclic Drug-polymer Conjugates for Cancer Targeted Drug Delivery
Anti-Cancer Agents in Medicinal Chemistry Membrane Transporters as Determinants of the Pharmacology of Platinum Anticancer Drugs
Current Cancer Drug Targets Molecular Evidence of Cryptotanshinone for Treatment and Prevention of Human Cancer
Anti-Cancer Agents in Medicinal Chemistry NPY Signalling Pathway in Bone Homeostasis: Y1 Receptor as a Potential Drug Target
Current Drug Targets Evaluation and Management of Adnexal Masses in Postmenopausal Women
Current Women`s Health Reviews Reduced Nicotinamide Adenine Dinucleotide (NADH) Fluorescence for the Detection of Cell Death
Anti-Cancer Agents in Medicinal Chemistry Modulation of TRAIL-Induced Apoptosis by HDAC Inhibitors
Current Cancer Drug Targets Inhibition of Polo-Like Kinase 1 by BI2536 Reverses the Multidrug Resistance of Human Hepatoma Cells In Vitro and In Vivo
Anti-Cancer Agents in Medicinal Chemistry The Medical Use of Wheatgrass: Review of the Gap Between Basic and Clinical Applications
Mini-Reviews in Medicinal Chemistry Targeting Transcription Factor Binding to DNA by Competing with DNA Binders as an Approach for Controlling Gene Expression
Current Topics in Medicinal Chemistry DNA Damage-inducing Compounds: Unraveling their Pleiotropic Effects Using High Throughput Sequencing
Current Medicinal Chemistry The Potential Anti-Tumorigenic and Anti-Metastatic Side of the Proprotein Convertases Inhibitors
Recent Patents on Anti-Cancer Drug Discovery The Role of T-Helper Cells in Atherosclerosis
Cardiovascular & Hematological Agents in Medicinal Chemistry Do Not Say Ever Never More: The Ins and Outs of Antiangiogenic Therapies
Current Pharmaceutical Design Vitamin D and Breast Cancer Incidence and Outcome
Anti-Cancer Agents in Medicinal Chemistry Voltage-Dependent Potassium Channels Kv1.3 and Kv1.5 in Human Cancer
Current Cancer Drug Targets Telomerase Inhibitors as Anticancer Therapy
Current Medicinal Chemistry - Anti-Cancer Agents Rationale Design, Synthesis, Cytotoxicity Evaluation, and Molecular Docking Studies of 1,3,4-oxadiazole Analogues
Anti-Cancer Agents in Medicinal Chemistry Recent Clinical Experience with Oncolytic Viruses
Current Pharmaceutical Biotechnology