Copyright of individual chapters belongs to the respective authors. The authors grant unrestricted publishing and distribution rights to the publisher. The electronic versions of the chapters are published under Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0). Users are allowed to share and adapt the chapters for any non-commercial purposes as long as the authors and the publisher are explicitly identified and properly acknowledged as the original source. The book in its entirety is subject to copyright by the publisher. The reproduction, modification, replication and display of the book in its entirety, in any form, by anyone, for commercial purposes are strictly prohibited without the written consent of the publisher.
NCBI Bookshelf. A service of the National Library of Medicine, National Institutes of Health.
Today, a single laboratory can generate a vast amount of biological data. There is a wealth of data already available in public databases, which makes the modern life sciences almost dependent on bioinformatics. This book brings together an international team of experts to discuss the state-of-the-art from several fields of bioinformatics, from the automatic identification and classification of viruses to the analysis of the transcriptome of single cells and plants, including artificial intelligence algorithms to discover biomarkers and text mining approaches to help in the interpretation of the findings. Machine learning, pattern discovery and analysis, error correction, Bayesian inference and novel computational techniques to discover chromosomal rearrangements continue to play crucial roles in biological discovery, and all of them are explored in chapters of this book. In sum, this book contains high-quality chapters that provide excellent views into key topics of current bioinformatics research, topics that should remain important for the next several years.
Contents
- Foreword
- Preface
- List of Contributors
- 1. Text Mining Gene Selection to Understand Pathological Phenotype Using Biological Big DataChristophe Desterke, Hans Kristian Lorenzo, and Jean-Jacques Candelier.
- INTRODUCTION
- BIOINFORMATICS TOOLS FOR THE TEXT MINING OF GENE RANKING
- TEXT MINING GENE SELECTION FOR HYDATIDIFORM MOLES: A CASE STUDY
- UNDERSTANDING FOCAL SEGMENTAL GLOMERULOSCLEROSIS USING SINGLE CELL TRANSCRIPTOME OF A HEALTHY ADULT DONOR KIDNEY: PROOF OF CONCEPT
- ONLINE RESULT VISUALIZATION AND THE DEVELOPMENT OF AN INTERACTIVE WEB INTERFACE
- CONCLUSION
- REFERENCES
- 2. Single-Cell RNA Sequencing Procedures and Data AnalysisMarkus Wolfien, Robert David, and Anne-Marie Galow.
- 3. Computational Methods for Detecting Large-Scale Structural Rearrangements in ChromosomesMuneeba Jilani and Nurit Haspel.
- 4. Machine Learning Approaches for Biomarker Discovery Using Gene Expression DataXiaokang Zhang, Inge Jonassen, and Anders Goksøyr.
- 5. Bayesian Inference of Gene ExpressionVíctor Jiménez-Jiménez, Carlos Martí-Gómez, Miguel Ángel Del Pozo, Enrique Lara-Pezzi, and Fátima Sánchez-Cabo.
- 6. Comprehensive Evaluation of Error-Correction Methodologies for Genome Sequencing DataYun Heo, Gowthami Manikandan, Anand Ramachandran, and Deming Chen.
- 7. Plant Transcriptome Assembly: Review and BenchmarkingSairam Behera, Adam Voshall, and Etsuko N. Moriyama.
- 8. WeMine Aligned Pattern Clustering System for Biosequence Pattern AnalysisEn-Shiun Annie Lee, Peiyuan Zhou, and Andrew K. C. Wong.
- 9. Rational Design of Profile Hidden Markov Models for Viral Classification and DiscoveryLiliane Santana Oliveira and Arthur Gruber.
- INTRODUCTION
- DATABASES OF VIRAL PROFILE HMMS
- A ROADMAP FOR THE RATIONAL DESIGN OF PROFILE HMMS
- RATIONAL DESIGN OF PROFILE HMMS
- SCREENING SEQUENCING DATASETS WITH PROFILE HMMS
- USING PROFILE HMMS FOR TARGETED SEQUENCE RECONSTRUCTION
- FINDING MULTIGENE ELEMENTS IN CELLULAR ORGANISMS WITH PROFILE HMMS
- AN INTEGRATED APPROACH FOR VIRAL RESEARCH USING PROFILE HMMS
- MINIONDB - A DATABASE OF VIRAL PROFILE HMMS
- CONCLUSION
- REFERENCES
- 10. Pattern Discovery and Disentanglement for Aligned Pattern Cluster Analysis and Protein Binding Complexes DetectionPeiyuan Zhou, En-Shiun Annie Lee, and Andrew K. C. Wong.
Bioinformatics
ISBN: 978-0-6450017-1-6
DOI: https://doi.org/10.36255/exonpublications.bioinformatics.2021
Edited by
Helder I. Nakaya, PhD, Department of Clinical and Toxicological Analyses, School of Pharmaceutical Sciences, University of Sao Paulo, Sao Paulo, Brazil.
Published by
Exon Publications, Brisbane, Australia
Copyright© 2021 Exon Publications
Copyright of individual chapters belongs to the respective authors. The authors grant unrestricted publishing and distribution rights to the publisher. The electronic versions of the chapters are published under Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0). https://creativecommons.org/licenses/by-nc/4.0/. Users are allowed to share and adapt the chapters for any non-commercial purposes as long as the authors and the publisher are explicitly identified and properly acknowledged as the original source. The book in its entirety is subject to copyright by the publisher. The reproduction, modification, replication and display of the book in its entirety, in any form, by anyone, for commercial purposes are strictly prohibited without the written consent of the publisher.
Notice to the user
The views and opinions expressed in this book are believed to be accurate at the time of publication. The publisher, editors or authors cannot be held responsible or liable for any errors, omissions or consequences arising from the use of the information contained in this book. The publisher makes no warranty, implicit or explicit, with respect to the contents of this book, or its use.
First Published in March 2021
Printed in Australia
- NLM CatalogRelated NLM Catalog Entries
- Machine learning: an indispensable tool in bioinformatics.[Methods Mol Biol. 2010]Machine learning: an indispensable tool in bioinformatics.Inza I, Calvo B, Armañanzas R, Bengoetxea E, Larrañaga P, Lozano JA. Methods Mol Biol. 2010; 593:25-48.
- Role of biological Data Mining and Machine Learning Techniques in Detecting and Diagnosing the Novel Coronavirus (COVID-19): A Systematic Review.[J Med Syst. 2020]Role of biological Data Mining and Machine Learning Techniques in Detecting and Diagnosing the Novel Coronavirus (COVID-19): A Systematic Review.Albahri AS, Hamid RA, Alwan JK, Al-Qays ZT, Zaidan AA, Zaidan BB, Albahri AOS, AlAmoodi AH, Khlaf JM, Almahdi EM, et al. J Med Syst. 2020 May 25; 44(7):122. Epub 2020 May 25.
- Review Promoting synergistic research and education in genomics and bioinformatics.[BMC Genomics. 2008]Review Promoting synergistic research and education in genomics and bioinformatics.Yang JY, Yang MQ, Zhu MM, Arabnia HR, Deng Y. BMC Genomics. 2008; 9 Suppl 1(Suppl 1):I1.
- Review Survey of Machine Learning Techniques in Drug Discovery.[Curr Drug Metab. 2019]Review Survey of Machine Learning Techniques in Drug Discovery.Stephenson N, Shane E, Chase J, Rowland J, Ries D, Justice N, Zhang J, Chan L, Cao R. Curr Drug Metab. 2019; 20(3):185-193.
- Review Machine Learning and Artificial Intelligence in Toxicological Sciences.[Toxicol Sci. 2022]Review Machine Learning and Artificial Intelligence in Toxicological Sciences.Lin Z, Chou WC. Toxicol Sci. 2022 Aug 25; 189(1):7-19.
- BioinformaticsBioinformatics
- Zaleplon - LiverToxZaleplon - LiverTox
- Betaxolol - LiverToxBetaxolol - LiverTox
- Abatacept - LiverToxAbatacept - LiverTox
- The Energy Costs of Protein Metabolism: Lean and Mean on Uncle Sam's Team - The ...The Energy Costs of Protein Metabolism: Lean and Mean on Uncle Sam's Team - The Role of Protein and Amino Acids in Sustaining and Enhancing Performance
Your browsing activity is empty.
Activity recording is turned off.
See more...