Multivariate Data Integration Using R

Regular price €61.50
Quantity:
In stock with our UK publisher. 14-28 days
Delivery/Collection within 10-20 working days
14 days return policy Shipping & Delivery
16S rRNA Gene Data
A01=Kim-Anh Le Cao
A01=Zoe Marie Welham
advanced R data integration techniques
AUROC
Author_Kim-Anh Le Cao
Author_Zoe Marie Welham
Batch Effects
bioinformatics data analysis
Biological Question
biomedical data interpretation
Canonical Correlation Analysis
Canonical Variates
Category=PBT
Category=PS
Circos Plot
Classification Error Rate
Data Sets
eq_bestseller
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_science
high-dimensional biology
Independent Studies
Lasso Penalty
Loading Vectors
Matrix Factorisation Techniques
Microbiome Data
Mint
multivariate statistics
omics data integration
PLS
PLS Algorithm
PLS Component
PLS DA Model
PLS Method
PLS Model
PLS Regression
Sample Plot
Sparse Methods
Sparse PCA
statistical learning methods

Product details

  • ISBN 9781032128078
  • Weight: 880g
  • Dimensions: 178 x 254mm
  • Publication Date: 29 Jan 2024
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Paperback
Secure checkout Fast Shipping Easy returns

Large biological data, which are often noisy and high-dimensional, have become increasingly prevalent in biology and medicine. There is a real need for good training in statistics, from data exploration through to analysis and interpretation. This book provides an overview of statistical and dimension reduction methods for high-throughput biological data, with a specific focus on data integration. It starts with some biological background, key concepts underlying the multivariate methods, and then covers an array of methods implemented using the mixOmics package in R.

Features:

  • Provides a broad and accessible overview of methods for multi-omics data integration
  • Covers a wide range of multivariate methods, each designed to answer specific biological questions
  • Includes comprehensive visualisation techniques to aid in data interpretation
  • Includes many worked examples and case studies using real data
  • Includes reproducible R code for each multivariate method, using the mixOmics package

The book is suitable for researchers from a wide range of scientific disciplines wishing to apply these methods to obtain new and deeper insights into biological mechanisms and biomedical problems. The suite of tools introduced in this book will enable students and scientists to work at the interface between, and provide critical collaborative expertise to, biologists, bioinformaticians, statisticians and clinicians.

Dr Kim-Anh Lê Cao develops novel methods, software and tools to interpret big biological data and answer research questions efficiently. She is committed to statistical education to instill best analytical practice and has taught numerous statistical workshops for biologists and leads collaborative projects in medicine, fundamental biology or microbiology disciplines. Dr Kim-Anh Lê Cao has a mathematical engineering background and graduated with a PhD in Statistics from the Université de Toulouse, France. She then moved to Australia first as a biostatistician consultant at QFAB Bioinformatics, then as a research group leader at the biomedical University of Queensland Diamantina Institute. She currently is Associate Professor in Statistical Genomics at the University of Melbourne. In 2019, Kim-Anh received the Australian Academy of Science’s Moran Medal for her contributions to Applied Statistics in multidisciplinary collaborations. She has been part of leadership program for women in STEMM, including the international Homeward Bound which culminated in a trip to Antarctica, and Superstars of STEM from Science Technology Australia.

Zoe Welham completed a BSc in molecular biology and during this time developed a keen interest in the analysis of big data. She completed a Masters of Bioinformatics with a focus on the statistical integration of different omics data in bowel cancer. She is currently a PhD candidate at the Kolling Institute in Sydney where she is furthering her research into bowel cancer with a focus on integrating microbiome data with other omics to characterise early bowel polyps. Her research interests include bioinformatics and biostatistics for many areas of biology and disseminating that information to the general public through reader-friendly writing.

More from this author