Machine Learning and Deep Learning in Computational Toxicology (Computational Methods in Engineering & the Sciences)
By Huixiao Hong
This book is a collection of machine learning and deep learning algorithms, methods, architectures, and software tools that have been developed and widely applied in predictive toxicology. It compiles a set of recent applications using state-of-the-art machine learning and deep learning techniques in analysis of a variety of toxicological endpoint data. The contents illustrate those machine learning and deep learning algorithms, methods, and software tools and summarise the applications of machine learning and deep learning in predictive toxicology with informative text, figures, and tables that are contributed by the first tier of experts. One of the major features is the case studies of applications of machine learning and deep learning in toxicological research that serve as examples for readers to learn how to apply machine learning and deep learning techniques in predictive toxicology. This book is expected to provide a reference for practical applications of machine learning and deep learning in toxicological research. It is a useful guide for toxicologists, chemists, drug discovery and development researchers, regulatory scientists, government reviewers, and graduate students. The main benefit for the readers is understanding the widely used machine learning and deep learning techniques and gaining practical procedures for applying machine learning and deep learning in predictive toxicology.
The field of toxicology plays a critical role in ensuring the safety and well-being of individuals and communities. Predictive toxicology, in particular, focuses on using data and models to assess the potential harmful effects of chemical substances. In recent years, machine learning and deep learning algorithms have emerged as powerful tools in this field, revolutionizing the way toxicologists analyze and predict toxicological endpoints.
“Machine Learning and Deep Learning in Predictive Toxicology” by Huixiao Hong is a comprehensive and authoritative guide to the applications of machine learning and deep learning in toxicological research. This book offers a collection of algorithms, methods, architectures, and software tools that have been developed and widely applied in predictive toxicology. It provides readers with the necessary knowledge and practical procedures to apply these techniques in their own research.
One of the key features of this book is its focus on real-world applications. The author presents a series of case studies that demonstrate how machine learning and deep learning have been successfully applied to analyze various toxicological endpoint data. These case studies serve as valuable examples for readers, allowing them to learn from the experiences of experts and gain insights into the practical implementation of these techniques.
A Comprehensive Guide to Machine Learning and Deep Learning in Predictive Toxicology
The book starts by introducing readers to the fundamental concepts and principles of machine learning and deep learning. It covers the basics of data preprocessing, feature engineering, model training, evaluation, and interpretation. The author provides clear explanations and step-by-step instructions, making it accessible to both beginners and experienced researchers in the field.
Throughout the book, the author explores various machine learning and deep learning algorithms, including decision trees, random forests, support vector machines, neural networks, and deep neural networks. Each algorithm is accompanied by a detailed explanation of its underlying principles, strengths, and limitations. The author also discusses the latest advancements in these algorithms, ensuring that readers are up to date with the most cutting-edge techniques.
In addition to algorithms, the book also covers a range of topics related to predictive toxicology. It addresses issues such as imbalanced data, model interpretability, model selection, and ensemble methods. The author offers practical advice and tips for overcoming these challenges, allowing readers to make informed decisions in their own research.
Furthermore, the book provides an overview of various software tools and packages that can be used for implementing machine learning and deep learning in predictive toxicology. It discusses the features, capabilities, and limitations of popular tools such as scikit-learn, TensorFlow, and Keras. The author also provides code snippets and examples to demonstrate how these tools can be used effectively.
Real-World Applications and Case Studies
One of the highlights of the book is its extensive collection of case studies that showcase the practical applications of machine learning and deep learning in predictive toxicology. These case studies cover a wide range of toxicological research areas, including chemical toxicity prediction, drug safety assessment, environmental risk assessment, and toxicogenomics.
For example, one case study focuses on using machine learning algorithms to predict the toxicity of chemical compounds. The author explains how toxicological data can be collected, processed, and used to train predictive models. The case study demonstrates the accuracy and reliability of these models in identifying potentially harmful compounds.
Another case study explores the application of deep learning in toxicogenomics, which aims to understand how genes and environmental factors interact to influence toxicity. The author explains how deep neural networks can be used to analyze gene expression data and predict toxicological outcomes. The case study highlights the potential of deep learning in uncovering complex relationships and patterns in large-scale genomic data.
By presenting these case studies, the author not only demonstrates the capabilities of machine learning and deep learning in predictive toxicology but also inspires readers to explore new research directions and applications. The case studies serve as a source of inspiration and guidance, providing readers with practical insights into the potential of these techniques.
A Must-Have Reference for Toxicologists and Researchers
“Machine Learning and Deep Learning in Predictive Toxicology” is a valuable reference for toxicologists, chemists, drug discovery and development researchers, regulatory scientists, government reviewers, and graduate students. It provides a comprehensive overview of the latest machine learning and deep learning techniques and their applications in predictive toxicology.
For toxicologists and researchers, this book offers a wealth of knowledge and practical guidance. It equips them with the necessary tools and techniques to analyze toxicological data, predict toxicological outcomes, and make informed decisions regarding chemical safety. The case studies and examples provide readers with valuable insights and inspiration, enabling them to apply these techniques in their own research.
Moreover, the book is written in a clear and accessible language, making it suitable for both beginners and experienced researchers. The author provides step-by-step instructions and practical tips, ensuring that readers have a solid understanding of the underlying principles and are able to implement the techniques effectively.
In conclusion, “Machine Learning and Deep Learning in Predictive Toxicology” is a comprehensive and authoritative guide to the applications of machine learning and deep learning in toxicological research. It provides readers with the necessary knowledge, tools, and practical procedures to apply these techniques in their own research. Whether you are a toxicologist, chemist, drug discovery researcher, or graduate student, this book is a valuable resource that will enhance your understanding and skills in predictive toxicology.
Order Your Copy Today
If you are involved in the field of toxicology or have an interest in predictive toxicology, “Machine Learning and Deep Learning in Predictive Toxicology” is a must-have addition to your library. Order your copy today and discover the power of machine learning and deep learning in advancing toxicological research.
With its comprehensive coverage, real-world case studies, and practical guidance, this book is a valuable resource that will enhance your understanding and skills in predictive toxicology. Don’t miss out on the opportunity to explore the cutting-edge techniques and applications of machine learning and deep learning in this exciting field.
Product Details
- Publisher : Springer; 1st ed. 2023 edition (February 8, 2023)
- Language : English
- Hardcover : 654 pages
- ISBN-10 : 3031207297
- ISBN-13 : 978-3031207297