Abstract
The growth in chemical diversity has increased the need to adjudicate the toxicity of different chemical compounds raising the burden on the demand of animal testing. The toxicity evaluation requires time consuming and expensive undertaking, leading to the deprivation of the methods employed for screening chemicals pointing towards the need to develop more efficient toxicity assessment systems. Computational approaches have reduced the time as well as the cost for evaluating the toxicity and kinetic behavior of any chemical. The accessibility of a large amount of data and the intense need of turning this data into useful information have attracted the attention towards data mining. Machine Learning, one of the powerful data mining techniques has evolved as the most effective and potent tool for exploring new insights on combinatorial relationships among various experimental data generated. The article accounts on some sophisticated machine learning algorithms like Artificial Neural Networks (ANN), Support Vector Machine (SVM), k-mean clustering and Self Organizing Maps (SOM) with some of the available tools used for classification, sorting and toxicological evaluation of data, clarifying, how data mining and machine learning interact cooperatively to facilitate knowledge discovery. Addressing the association of some commonly used expert systems, we briefly outline some real world applications to consider the crucial role of data set partitioning.
Keywords: Bioinformatics, computational prediction, data mining, in silico, machine learning, toxicity prediction.
Mini-Reviews in Medicinal Chemistry
Title:An Overview of Data Mining Algorithms in Drug Induced Toxicity Prediction
Volume: 14 Issue: 4
Author(s): Ankur Omer, Poonam Singh, N.K. Yadav and R.K. Singh
Affiliation:
Keywords: Bioinformatics, computational prediction, data mining, in silico, machine learning, toxicity prediction.
Abstract: The growth in chemical diversity has increased the need to adjudicate the toxicity of different chemical compounds raising the burden on the demand of animal testing. The toxicity evaluation requires time consuming and expensive undertaking, leading to the deprivation of the methods employed for screening chemicals pointing towards the need to develop more efficient toxicity assessment systems. Computational approaches have reduced the time as well as the cost for evaluating the toxicity and kinetic behavior of any chemical. The accessibility of a large amount of data and the intense need of turning this data into useful information have attracted the attention towards data mining. Machine Learning, one of the powerful data mining techniques has evolved as the most effective and potent tool for exploring new insights on combinatorial relationships among various experimental data generated. The article accounts on some sophisticated machine learning algorithms like Artificial Neural Networks (ANN), Support Vector Machine (SVM), k-mean clustering and Self Organizing Maps (SOM) with some of the available tools used for classification, sorting and toxicological evaluation of data, clarifying, how data mining and machine learning interact cooperatively to facilitate knowledge discovery. Addressing the association of some commonly used expert systems, we briefly outline some real world applications to consider the crucial role of data set partitioning.
Export Options
About this article
Cite this article as:
Omer Ankur, Singh Poonam, Yadav N.K. and Singh R.K., An Overview of Data Mining Algorithms in Drug Induced Toxicity Prediction, Mini-Reviews in Medicinal Chemistry 2014; 14 (4) . https://dx.doi.org/10.2174/1389557514666140219110244
DOI https://dx.doi.org/10.2174/1389557514666140219110244 |
Print ISSN 1389-5575 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-5607 |
Call for Papers in Thematic Issues
Bioprospecting of Natural Products as Sources of New Multitarget Therapies
According to the Convention on Biological Diversity, bioprospecting is the exploration of biodiversity and indigenous knowledge to develop commercially valuable products for pharmaceutical and other applications. Bioprospecting involves searching for useful organic compounds in plants, fungi, marine organisms, and microorganisms. Natural products traditionally constituted the primary source of more than ...read more
Computational Frontiers in Medicinal Chemistry
The thematic issue "Computational Frontiers in Medicinal Chemistry" provides a robust platform for delving into state-of-the-art computational methodologies and technologies that significantly propel advancements in medicinal chemistry. This edition seeks to amalgamate top-tier reviews spotlighting the latest trends and breakthroughs in the fusion of computational approaches, including artificial intelligence (AI) ...read more
Drugs and mitochondria
Mitochondria play a central role in the life and death of cells. They are not merely the center for energy metabolism but are also the headquarters for different catabolic and anabolic processes, calcium fluxes, and various signaling pathways. Mitochondria maintain homeostasis in the cell by interacting with reactive oxygen-nitrogen species ...read more
Mitochondria as a Therapeutic Target in Metabolic Disorders
Mitochondria are the primary site of adenosine triphosphate (ATP) production in mammalian cells. Moreover, these organelles are an important source of reactive oxygen and nitrogen species in virtually any nucleated cell type. The modulation of a myriad of cellular signaling pathways depends on the mitochondrial physiology. Mitochondrial dysfunction is observed ...read more
- 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
-
Heart Failure Pharmacotherapy: Differences Between Adult and Paediatric Patients
Current Medicinal Chemistry Bilirubin Chemistry and Metabolism; Harmful and Protective Aspects
Current Pharmaceutical Design Actions of Selected Cardiovascular Hormones on Arterial Stiffness and Wave Reflections
Current Pharmaceutical Design Structural Analysis Revealed the Interaction of Cardenolides from Calotropis procera with Na<sup>+</sup>/K<sup>+</sup> ATPases from Herbivores
Protein & Peptide Letters Retracted: Tocotrienols and its Role in Cardiovascular Health- a Lead for Drug Design
Current Pharmaceutical Design A Review of Wavelet Denoising in MRI and Ultrasound Brain Imaging
Current Medical Imaging Mechanisms and Medical Management of Exercise Intolerance in Hypertrophic Cardiomyopathy
Current Pharmaceutical Design Chemokines: Central Mediators of the Innate Response to Sepsis
Current Immunology Reviews (Discontinued) The Hemodynamics of Septic Shock: A Historical Perspective
Current Vascular Pharmacology Mathematical Modeling of the Cancer Cell ’ s Control Circuitry: Paving the Way to Individualized Therapeutic Strategies
Current Signal Transduction Therapy S100A1: Structure, Function, and Therapeutic Potential
Current Chemical Biology Benefits of L-Arginine on Cardiovascular System
Mini-Reviews in Medicinal Chemistry Hypotensive Natural Products: Current Status
Mini-Reviews in Medicinal Chemistry Corticotropin Releasing Factor (CRF) Receptor Signaling in the Central Nervous System: New Molecular Targets
CNS & Neurological Disorders - Drug Targets Anaemia, Polycythaemia and Chronic Heart Failure
Current Cardiology Reviews Mitral Balloon Valvuloplasty: State-of-the-Art Paper
Current Cardiology Reviews GLP-1 Agonists Exenatide and Liraglutide: A Review About Their Safety and Efficacy
Current Clinical Pharmacology Recent Updates on Peroxisome Proliferator-Activated Receptor δ Agonists for the Treatment of Metabolic Syndrome
Medicinal Chemistry Cellular Therapy of Lysosomal Storage Disorders: Current Status and Future Prospects
Current Pediatric Reviews Management of Hypertension in Patients with Aortic Valvular Stenosis
Current Hypertension Reviews