Litcius/Paper detail

SurvivalPath:A R package for conducting personalized survival path mapping based on time-series survival data

Lujun Shen, Jinqing Mo, Changsheng Yang, Yiquan Jiang, Liang‐Ru Ke, Dan Hou, Jingdong Yan, Tao Zhang, Weijun Fan

2023PLoS Computational Biology12 citationsDOIOpen Access PDF

Abstract

The survival path mapping approach has been proposed for dynamic prognostication of cancer patients using time-series survival data. The SurvivalPath R package was developed to facilitate building personalized survival path models. The package contains functions to convert time-series data into time-slices data by fixed interval based on time information of input medical records. After the pre-processing of data, under a user-defined parameters on covariates, significance level, minimum bifurcation sample size and number of time slices for analysis, survival paths can be computed using the main function, which can be visualized as a tree diagram, with important parameters annotated. The package also includes function for analyzing the connections between exposure/treatment and node transitions, and function for screening patient subgroup with specific features, which can be used for further exploration analysis. In this study, we demonstrate the application of this package in a large dataset of patients with hepatocellular carcinoma, which is embedded in the package. The SurvivalPath R package is freely available from CRAN, with source code and documentation hosted at https://github.com/zhangt369/SurvivalPath.

Topics & Concepts

Computer scienceR packageSeries (stratigraphy)Data miningFunction (biology)Tree (set theory)Node (physics)Path (computing)Time seriesMachine learningMathematicsComputational scienceBiologyEngineeringProgramming languageStructural engineeringEvolutionary biologyMathematical analysisPaleontologyMachine Learning in HealthcareStatistical Methods and InferenceRadiomics and Machine Learning in Medical Imaging