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Chapter 1 - Best practices for supervised machine learning when examining biomarkers in clinical populations
Benjamin G. Schultz, Zaher Joukhadar, ... Adam P. Vogel
Pages 1-34 - Book chapterAbstract only
Chapter 2 - Big data in personalized healthcare
Lidong Wang and Cheryl Alexander
Pages 35-49 - Book chapterAbstract only
Chapter 3 - Longitudinal data analysis: The multiple indicators growth curve model approach
Thierno M.O. Diallo and Ahmed A. Moustafa
Pages 51-68 - Book chapterAbstract only
Chapter 4 - Challenges and solutions for big data in personalized healthcare
Tim Hulsen
Pages 69-94 - Book chapterAbstract only
Chapter 5 - Data linkages in epidemiology
Sinéad Moylett
Pages 95-117 - Book chapterAbstract only
Chapter 6 - Neutrosophic rule-based classification system and its medical applications
Sameh H. Basha, Areeg Abdalla and Aboul Ella Hassanien
Pages 119-135 - Book chapterAbstract only
Chapter 7 - From complex to neural networks
Nicola Amoroso and Loredana Bellantuono
Pages 137-154 - Book chapterAbstract only
Chapter 8 - The use of Big Data in Psychiatry—The role of administrative databases
Manuel Gonçalves-Pinho and Alberto Freitas
Pages 155-165 - Book chapterAbstract only
Chapter 9 - Predicting the emergence of novel psychoactive substances with big data
Robert Todd Perdue and James Hawdon
Pages 167-179 - Book chapterAbstract only
Chapter 10 - Hippocampus segmentation in MR images: Multiatlas methods and deep learning methods
Hancan Zhu, Shuai Wang, ... Dinggang Shen
Pages 181-215 - Book chapterAbstract only
Chapter 11 - A scalable medication intake monitoring system
Diane Myung-Kyung Woodbridge and Kevin Bengtson Wong
Pages 217-240 - Book chapterAbstract only
Chapter 12 - Evaluating cascade prediction via different embedding techniques for disease mitigation
Abhinav Choudhury, Shubham Shakya, ... Varun Dutt
Pages 241-261 - Book chapterAbstract only
Chapter 13 - A two-stage classification framework for epileptic seizure prediction using EEG wavelet-based features
Sahar Elgohary, Mahmoud I. Khalil and Seif Eldawlatly
Pages 263-286 - Book chapterAbstract only
Chapter 14 - Visual neuroscience in the age of big data and artificial intelligence
Kohitij Kar
Pages 287-304 - Book chapterAbstract only
Chapter 15 - Application of big data and artificial intelligence approaches in diagnosis and treatment of neuropsychiatric diseases
Qiurong Song, Tianhui Huang, ... Long Lu
Pages 305-323 - Book chapterAbstract only
Chapter 16 - Harnessing big data to strengthen evidence-informed precise public health response
G.V. Asokan and Mohammed Yousif Mohammed
Pages 325-337 - Book chapterAbstract only
Chapter 17 - How big data analytics is changing the face of precision medicine in women’s health
Maryam Panahiazar, Maryam Karimzadehgan, ... Ramin E. Beygui
Pages 339-350 - Book chapterNo access
Index
Pages 351-360
About the book
Description
Big Data in Psychiatry and Neurology provides an up-to-date overview of achievements in the field of big data in Psychiatry and Medicine, including applications of big data methods to aging disorders (e.g., Alzheimer’s disease and Parkinson’s disease), mood disorders (e.g., major depressive disorder), and drug addiction. This book will help researchers, students and clinicians implement new methods for collecting big datasets from various patient populations. Further, it will demonstrate how to use several algorithms and machine learning methods to analyze big datasets, thus providing individualized treatment for psychiatric and neurological patients.
As big data analytics is gaining traction in psychiatric research, it is an essential component in providing predictive models for both clinical practice and public health systems. As compared with traditional statistical methods that provide primarily average group-level results, big data analytics allows predictions and stratification of clinical outcomes at an individual subject level.
Big Data in Psychiatry and Neurology provides an up-to-date overview of achievements in the field of big data in Psychiatry and Medicine, including applications of big data methods to aging disorders (e.g., Alzheimer’s disease and Parkinson’s disease), mood disorders (e.g., major depressive disorder), and drug addiction. This book will help researchers, students and clinicians implement new methods for collecting big datasets from various patient populations. Further, it will demonstrate how to use several algorithms and machine learning methods to analyze big datasets, thus providing individualized treatment for psychiatric and neurological patients.
As big data analytics is gaining traction in psychiatric research, it is an essential component in providing predictive models for both clinical practice and public health systems. As compared with traditional statistical methods that provide primarily average group-level results, big data analytics allows predictions and stratification of clinical outcomes at an individual subject level.
Key Features
- Discusses longitudinal big data and risk factors surrounding the development of psychiatric disorders
- Analyzes methods in using big data to treat psychiatric and neurological disorders
- Describes the role machine learning can play in the analysis of big data
- Demonstrates the various methods of gathering big data in medicine
- Reviews how to apply big data to genetics
- Discusses longitudinal big data and risk factors surrounding the development of psychiatric disorders
- Analyzes methods in using big data to treat psychiatric and neurological disorders
- Describes the role machine learning can play in the analysis of big data
- Demonstrates the various methods of gathering big data in medicine
- Reviews how to apply big data to genetics
Details
ISBN
978-0-12-822884-5
Language
English
Published
2021
Copyright
Copyright © 2021 Elsevier Inc. All rights reserved.
Imprint
Academic Press