FinUniversity Electronic Library

     

Details

Irimata, Katherine E.,. Fundamental statistical methods for analysis of Alzheimer's and other neurodegenerative diseases / Katherine E. Irimata, Brittany N. Dugger, Jeffrey R. Wilson. — 1 online resource — <URL:http://elib.fa.ru/ebsco/2266289.pdf>.

Record create date: 6/4/2019

Subject: Alzheimer's disease.; Biometry.; Nervous system — Degeneration.; Statistics.; Statistics as Topic; Neurodegenerative Diseases; Alzheimer Disease; Biometry; Maladie d'Alzheimer.; Biométrie.; Statistiques.; biometrics.; Alzheimer's disease.; Biometry.; Nervous system — Degeneration.

Collections: EBSCO

Allowed Actions:

Action 'Read' will be available if you login or access site from another network Action 'Download' will be available if you login or access site from another network

Group: Anonymous

Network: Internet

Annotation

"This book explains statistical techniques commonly used in analyzing data for Alzheimer's and other neurodegenerative diseases, and it presents examples from real-world applications in an effort to make the techniques useful for professionals and students. The book leads readers through the steps of conducting multivariate analyses while adjusting for correlation or the hierarchical structure of data in prediction and inferences. Techniques such as spatial analysis, Bayesian analysis, and time-dependent covariates are included. Several data sets from the National Alzheimer's Coordinating Center are analyzed with statistical software commonly used by Alzheimer's researchers, and the results are shown to readers by way of illustration"--.

Document access rights

Network User group Action
Finuniversity Local Network All Read Print Download
Internet Readers Read Print
-> Internet Anonymous

Table of Contents

  • Contents
  • Foreword
  • 1. Introduction to Statistical Software and Alzheimer’s Data
  • 2. Review of Introductory Statistical Methods
  • 3. Generalized Linear Models
  • 4. Hierarchical Regression Models for Continuous Responses
  • 5. Hierarchical Logistic Regression Models
  • 6. Bayesian Regression Models
  • 7. Multiple-Membership Models
  • 8. Survival Data Analysis
  • 9. Modeling Responses with Time-Dependent Covariates
  • 10. Joint Modeling of Mean and Dispersion
  • 11. Neural Networks and Other Machine Learning Techniques for Big Data
  • 12. Case Study
  • Acknowledgments
  • References
  • Index
    • A
    • B
    • C
    • D
    • E
    • F
    • G
    • H
    • I
    • J
    • K
    • L
    • M
    • N
    • O
    • P
    • Q
    • R
    • S
    • T
    • U
    • V
    • W
    • Z

Usage statistics

stat Access count: 0
Last 30 days: 0
Detailed usage statistics