Survival analysis in Python
-
Updated
Oct 29, 2024 - Python
Survival analysis in Python
Fast Best-Subset Selection Library
Explainable Machine Learning in Survival Analysis
COX Proportional risk model and survival analysis implemented by tensorflow.
Resources for Survival Analysis
SurvSHAP(t): Time-dependent explanations of machine learning survival models
Survival analysis in Julia
Perform a survival analysis based on the time-to-event (death event) for the subjects. Compare machine learning models to assess the likelihood of a death by heart failure condition. This can be used to help hospitals in assessing the severity of patients with cardiovascular diseases and heart failure condition.
Code repository for the manuscript: 'Assessing performance in prediction models with survival outcomes: practical guidance for Cox proportional hazards models' (published in Annals of Internal Medicine)
Code for the paper "Deep Cox Mixtures for Survival Regression", Machine Learning for Healthcare Conference 2021
snpnet - Efficient Lasso Solver for Large-scale genetic variant data
geneSurv: an interactive web-based tool for survival analysis in genomics research
ISMB 2020: Improved survival analysis by learning shared genomic information from pan-cancer data
R material for LSHTM's Advanced Statistical Methods in Epidemiology (ASME) practical sessions
A 30+ node flowchart for selecting the right statistical test for evaluating experimental data.
Survival analysis utility functions using functional programming principals
psfmi: Predictor Selection Functions for Logistic and Cox regression models in multiply imputed datasets
MAMBA – Multi-pAradigM voxel-Based Analysis: a computational cookbot
Survival analysis functions that allow left truncation and weighting, including Aalen-Johansen, Kaplan-Meier, and Cox proportional hazards regression
Add a description, image, and links to the cox-regression topic page so that developers can more easily learn about it.
To associate your repository with the cox-regression topic, visit your repo's landing page and select "manage topics."