Search

Machine Learning in Medicine - Cookbook Two | 1st edition

by Ton J. Cleophas and Aeilko H. Zwinderman

Buy used book

Not in stock. Monitor this book.

Buy new book

Fakta

Publisher Springer Nature
Language English
Book type Paperback
Utgiven 2014-06-20
Edition 1
Pages 140
ISBN 9783319074122
Kategori(er) Medicin, Care & Physiology
 ↳ Medicin
Add to cart

Description

The amount of data medical databases doubles every 20 months, and physicians are at a loss to analyze them. Also, traditional data analysis has difficulty to identify outliers and patterns in big data and data with multiple exposure / outcome variables and analysis-rules for surveys and questionnaires, currently common methods of data collection, are, essentially, missing. Consequently, proper data-based health decisions will soon be impossible.

Obviously, it is time that medical and health professionals mastered their reluctance to use machine learning methods and this was the main incentive for the authors to complete a series of three textbooks entitled “Machine Learning in Medicine Part One, Two and Three, Springer Heidelberg Germany, 2012-2013", describing in a nonmathematical way over sixty machine learning methodologies, as available in SPSS statistical software and other major software programs. Although well received, it came to our attention that physicians and students often lacked time to read the entire books, and requested a small book, without background information and theoretical discussions and highlighting technical details.

For this reason we produced a 100 page cookbook, entitled "Machine Learning in Medicine - Cookbook One", with data examples available at extras.springer.com for self-assessment and with reference to the above textbooks for background information. Already at the completion of this cookbook we came to realize, that many essential methods were not covered. The current volume, entitled "Machine Learning in Medicine - Cookbook Two" is complementary to the first and also intended for providing a more balanced view of the field and thus, as a must-read not only for physicians and students, but also for any one involved in the process and progress of health and health care.

Similarly to Machine Learning in Medicine - Cookbook One, the current work will describe stepwise analyses of over twenty machine learning methods, that are, likewise, based on the three major machine learning methodologies:

  • Cluster methodologies (Chaps. 1-3)
  • Linear methodologies (Chaps. 4-11)
  • Rules methodologies (Chaps. 12-20)

In extras.springer.com the data files of the examples are given, as well as XML (Extended Mark up Language), SPS (Syntax) and ZIP (compressed) files for outcome predictions in future patients. In addition to condensed versions of the methods, fully described in the above three textbooks, an introduction is given to SPSS Modeler (SPSS' data mining workbench) in the Chaps. 15, 18, 19, while improved statistical methods like various automated analyses and Monte Carlo simulation models are in the Chaps. 1, 5, 7 and 8.

We should emphasize that all of the methods described have been successfully applied in practice by the authors, both of them professors in applied statistics and machine learning at the European Community College of Pharmaceutical Medicine in Lyon France. We recommend the current work not only as a training companion to investigators and students, because of plenty of step by step analyses given, but also as a brief introductory text to jaded clinicians new to the methods. For the latter purpose, background and theoretical information have been replaced with the appropriate references to the above textbooks, while single sections addressing "general purposes", "main scientific questions" and "conclusions" are given in place.

Finally, we will demonstrate that modern machine learning performs sometimes better than traditional statistics does. Machine learning may have little options for adjusting confounding and interaction, but you can add propensity scores and interaction variables to almost any machine learning method.

Read more

Passa på att köpa kontorsmaterial

,

So far, we have reused

 2 

 3 

 3 

 1 

 6 

 0 

 2 

books.

Trustpilot

Sweden's friendliest and environmental friendliest bookshop with the lowest priced textbooks.

This is our ambition, and we do what it takes to get there. We are here to help students to save and earn money on their textbooks while we at the same time save the environment. We were started in 2005 by two students and have since strived to constantly make it easier to buy and sell used textbooks for as many as possible.

Subscribe to our newsletter

Subscribe to receive our best student tips, offers and promotions.

Read more about how we handle personal data in our privacy policy.

Looking for stationaries?

Go to Stationaries 👉
Searching...
Stäng