Survival Analysis in Medicine and Genetics

Regular price €127.99
A01=Jialiang Li
A01=Shuangge Ma
Additive Risk Model
advanced genetic survival analysis
Aft Model
Age Group_Uncategorized
Age Group_Uncategorized
Analyzing High-Dimensional Survival Data
Author_Jialiang Li
Author_Shuangge Ma
automatic-update
Bayesian survival modeling
Binary Diagnostic Test
biostatistics
Bridge Penalty
Category1=Non-Fiction
Category=PBT
Category=PS
Censored Survival Time Data In Medical And Genetic Research
clinical data interpretation
Continuous Diagnostic Test
COP=United States
Cox Model
Cox PH Model
Data Set
Delivery_Pre-order
Diagnostic Accuracy Measures
eq_bestseller
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_science
Fine-Gray Model For Competing Risks Data
Frailty Model
hazard regression
High Dimensional Covariates
High-Dimensional Genetic Data Analysis
Interval Censored
interval censoring analysis
Iterative Convex Minorant Algorithm
Kaplan Meier Weights
Km Estimator
Language_English
Lasso Estimate
Log Rank Test
multivariate survival methods
Nonparametric Regression For Survival Analysis
PA=Temporarily unavailable
Panel Count Data
Price_€100 and above
PS=Active
Roc Analysis
Roc Curve
Sample Size Calculation
Scad Penalty
softlaunch
Statistical Developments In Medicine And Genetics
Survival Function
Time-Dependent Diagnostic Accuracy Studies
Van Der Vaart
Variable Selection Methods
Weighted Bootstrap

Product details

  • ISBN 9781439893111
  • Weight: 674g
  • Dimensions: 156 x 234mm
  • Publication Date: 04 Jun 2013
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
  • Language: English
Delivery/Collection within 10-20 working days

Our Delivery Time Frames Explained
2-4 Working Days: Available in-stock

10-20 Working Days: On Backorder

Will Deliver When Available: On Pre-Order or Reprinting

We ship your order once all items have arrived at our warehouse and are processed. Need those 2-4 day shipping items sooner? Just place a separate order for them!

Using real data sets throughout, Survival Analysis in Medicine and Genetics introduces the latest methods for analyzing high-dimensional survival data. It provides thorough coverage of recent statistical developments in the medical and genetics fields.

The text mainly addresses special concerns of the survival model. After covering the fundamentals, it discusses interval censoring, nonparametric and semiparametric hazard regression, multivariate survival data analysis, the sub-distribution method for competing risks data, the cure rate model, and Bayesian inference methods. The authors then focus on time-dependent diagnostic medicine and high-dimensional genetic data analysis. Many of the methods are illustrated with clinical examples.

Emphasizing the applications of survival analysis techniques in genetics, this book presents a statistical framework for burgeoning research in this area and offers a set of established approaches for statistical analysis. It reveals a new way of looking at how predictors are associated with censored survival time and extracts novel statistical genetic methods for censored survival time outcome from the vast amount of research results in genomics.

Jialiang Li is an associate professor in the Department of Statistics and Applied Probability at the National University of Singapore, an associate professor at the Duke-NUS Graduate Medical School, and a scientist at the Singapore Eye Research Institute. He is on the editorial board of Biometrics and has published 70 peer-reviewed research papers in scientific journals. He has been a recipient the Young Scientist Award from the National University of Singapore and the New Investigator Grant and Cooperative Basic Research Grant from the National Medical Research Council.

Shuangge Ma is an associate professor in the Department of Biostatistics, Yale School of Public Health at Yale University. He earned a PhD in statistics from the University of Wisconsin and completed postdoctoral training in the Department of Biostatistics at the University of Washington. His research interests include survival analysis, semiparametric methods, bioinformatics, cancer studies, and health economics.