Synopses & Reviews
Quantifying shape and size variation is essential in evolutionary biology and in many other disciplines. Since the "morphometric revolution of the 90s," an increasing number of publications in applied and theoretical morphometrics emerged in the new discipline of statistical shape analysis. The R language and environment offers a single platform to perform a multitude of analyses from the acquisition of data to the production of static and interactive graphs. This offers an ideal environment to analyze shape variation and shape change. This open-source language is accessible for novices and for experienced users. Adopting R gives the user and developer several advantages for performing morphometrics: evolvability, adaptability, interactivity, a single and comprehensive platform, possibility of interfacing with other languages and software, custom analyses, and graphs. The book explains how to use R for morphometrics and provides a series of examples of codes and displays covering approaches ranging from traditional morphometrics to modern statistical shape analysis such as the analysis of landmark data, Thin Plate Splines, and Fourier analysis of outlines. The book fills two gaps: The gap between theoreticians and students by providing worked examples from the acquisition of data to analyses and hypothesis testing. The gap between user and developers by providing and explaining codes for performing all the steps necessary for morphometrics rather than providing a manual for a given software or package. Students and scientists interested in shape analysis can use the book as a reference for performing applied morphometrics, while prospective researchers will learn how to implement algorithms or interfacing R for new methods. In addition, adopting the "R" philosophy will enhance exchanges within and outside the morphometrics community. Julien Claude is evolutionary biologist and palaeontologist at the University of Montpellier 2 where he got his Ph.D. in 2003. He works on biodiversity and phenotypic evolution of a variety of organisms, especially vertebrates. He teaches evolutionary biology and biostatistics to undergraduate and graduate students and has developed several functions in R for the package APE.
Review
From the reviews: "A key feature of this book is the extensive use of R, both through the direct use of code and through references to a large number of packages relevant to the morphometrics area.... This is an interesting book and I certainly learned new things by reading it. Its particular contribution is to bring together a wide variety of tools, both statistical and computational, which are relevant to morphometrics and to present these in a very practical manner through R. Those who are new to the topic are likely to gain most value from the book once they have gained some familiarity with at least some of the tools involved. However, the synthesis of tools presented here will undoubtedly lead readers into contact with, and subsequent understanding of. a wider array of methods at a very practical level." (Adrian Bowman, The American Statistical Association, Volume 31, September 2009)
Review
From the reviews:
"A key feature of this book is the extensive use of R, both through the direct use of code and through references to a large number of packages relevant to the morphometrics area.... This is an interesting book and I certainly learned new things by reading it. Its particular contribution is to bring together a wide variety of tools, both statistical and computational, which are relevant to morphometrics and to present these in a very practical manner through R. Those who are new to the topic are likely to gain most value from the book once they have gained some familiarity with at least some of the tools involved. However, the synthesis of tools presented here will undoubtedly lead readers into contact with, and subsequent understanding of. a wider array of methods at a very practical level." (Adrian Bowman, The American Statistical Association, Volume 31, September 2009)
Synopsis
This book aims to explain how to use R to perform morphometrics. Morpho- tric analysis is the study of shape and size variations and covariations and their covariations with other variables. Morphometrics is thus deeply rooted within stat- tical sciences. While most applications concern biology, morphometrics is becoming common tools used in archeological, palaeontological, geographical, or medicine disciplines. Since the recent formalizations of some of the ideas of predecessors, such as D'arcy Thompson, and thanks to the development of computer techno- gies and new ways for appraising shape changes and variation, morphometrics have undergone, and are still undergoing, a revolution. Most techniques dealing with s- tistical shape analysis have been developed in the last three decades, and the number of publications using morphometrics is increasing rapidly. However, the majority of these methods cannot be implemented in available software and therefore prosp- tive students often need to acquire detailed knowledge in informatics and statistics before applying them to their data. With acceleration in the accumulation of me- ods accompanying the emerging science of statistical shape analysis, it is becoming important to use tools that allow some autonomy. R easily helps ful?ll this need. Risalanguage andenvironment forstatisticalcomputingandgraphics. Although there is an increasing number of computer applications that perform morphometrics, using R has several advantages that confer to users considerable power and possible new horizons in a world that requires rapid adaptability.
Synopsis
This book is addressed to both institutional researchers and students. For the first time, it explains how to use R for performing shape statistical analysis. It covers many theoretical and applied aspects, and leads the user as well as the developer to get adaptability in an evolving science.
Synopsis
Using R for morphometrics can overcome problems in familiarizing oneself with various software languages, converting data and results every time another software is required, and adapting and converting the results to go further. With a single environment, shape analysis can be performed from data acquisition to data analysis, and the results can be presented in the form of graphs, both accurate and esthetic.
Synopsis
This book explains how to use R for performing shape statistical analysis. It covers many theoretical and applied aspects and leads the user as well as the developer to get adaptability in an evolving science.
Table of Contents
Contributors. - Abbreviations and notations. - Introduction. - Acquiring and manipulating morphometric data. - Traditional statistics for morphometrics. - Modern morphometrics based on configurations of landmarks. - Statistical analysis of shape using modern morphometrics. - Going further with R. - Appendix A: functions developed in this text. - Appendix B: packages used in this text. - References. - Index.