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Outcome Prediction In Cancer Azzam F G Taktak Anthony C Fisher

  • SKU: BELL-4105202
Outcome Prediction In Cancer Azzam F G Taktak Anthony C Fisher
$ 31.00 $ 45.00 (-31%)

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Outcome Prediction In Cancer Azzam F G Taktak Anthony C Fisher instant download after payment.

Publisher: Elsevier
File Extension: PDF
File size: 11.88 MB
Pages: 483
Author: Azzam F G Taktak; Anthony C Fisher, Dr
ISBN: 9780080468037, 9780444528551, 0080468039, 0444528555
Language: English
Year: 2007

Product desciption

Outcome Prediction In Cancer Azzam F G Taktak Anthony C Fisher by Azzam F G Taktak; Anthony C Fisher, Dr 9780080468037, 9780444528551, 0080468039, 0444528555 instant download after payment.

This book is organized into 4 sections, each looking at the question of outcome prediction in cancer from a different angle. The first section describes the clinical problem and some of the predicaments that clinicians face in dealing with cancer. Amongst issues discussed in this section are the TNM staging, accepted methods for survival analysis and competing risks. The second section describes the biological and genetic markers and the rôle of bioinformatics. Understanding of the genetic and environmental basis of cancers will help in identifying high-risk populations and developing effective prevention and early detection strategies. The third section provides technical details of mathematical analysis behind survival prediction backed up by examples from various types of cancers. The fourth section describes a number of machine learning methods which have been applied to decision support in cancer. The final section describes how information is shared within the scientific and medical communities and with the general population using information technology and the World Wide Web.* Applications cover 8 types of cancer including brain, eye, mouth, head and neck, breast, lungs, colon and prostate* Include contributions from authors in 5 different disciplines* Provides a valuable educational tool for medical informatics

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