kaplanmeier is an python library to create survival curves using kaplan-meier, and compute the log-rank test.
-
Updated
Mar 2, 2025 - Python
kaplanmeier is an python library to create survival curves using kaplan-meier, and compute the log-rank test.
Survival Analysis of Lung Cancer Patients
TNO PET Lab - secure Multi-Party Computation (MPC) - Protocols - Kaplan-Meier
Survival analysis of university completion. R(Survival Analysis), Python(EDA)
An introduction to the concepts of Survival Analysis and its implementation in lifelines package for Python.
UX Analytics & A/B Testing
Frequency Table, Chi-Squared & ANOVA Test, KM Model, Median Time Comparison, Log-Rank & Wilcoxon Test, Tukey Multiple Comparison, Immortal Time Bias, Cox Model, Proportional Hazards Assumption Tests, Supremum Test for Functional Form. *NCDB data is publicly available. Team members: Kah Meng Soh, Dr. Lynette Smith, Dr. Sharma Smriti, Dr. Apar Ganti.
Survival Analysis of cancer patient data
Survival Analysis for Glioblastoma Multiforme
A survival analysis study of ovarian carcinoma patients involved in clinical trials using R
Survival Analysis on the patients from a trial of laser coagulation for the treatment of diabetic retinopathy. Survival times in this dataset are actual time to blindness in months, minus the minimum possible time to event (6.5 months).
survival analysis on cirrhosis data from mayo clinic study: kaplan-meier estimator/curve, log rank test, cox proportional hazards model
Course site for BMI 741 at UW-Madison
Add a description, image, and links to the log-rank-test topic page so that developers can more easily learn about it.
To associate your repository with the log-rank-test topic, visit your repo's landing page and select "manage topics."