# Visual analytics framework for survival analysis and biomarker discovery from gene expression data

**Authors:** Jaka Kokošar, Cagatay Turkay, Luka Ausec, Miha Štajdohar, Blaž Zupan, Diego Forero, Diego Forero, Diego Forero

PMC · DOI: 10.1371/journal.pone.0325399 · 2026-03-20

## TL;DR

This paper introduces a user-friendly visual analytics framework for survival analysis and biomarker discovery from gene expression data, making it easier for biomedical researchers to explore and analyze patient survival rates.

## Contribution

The paper presents a modular, visual analytics framework for survival analysis that supports exploratory and hypothesis-driven biomarker discovery without requiring programming expertise.

## Key findings

- The framework defines a minimal set of reusable visualization and modeling components for common survival analysis tasks.
- Interactive visualizations enable the discovery of survival cohorts and their characteristic features.
- The methodology was implemented as an open-source add-on to Orange Data Mining and validated through cancer research case studies.

## Abstract

We introduce a visual analytics methodology for survival analysis, and propose a framework that defines a reusable set of visualization and modeling components to support exploratory and hypothesis-driven biomarker discovery. Survival analysis—essential in biomedicine—evaluates patients‘ survival rates and the onset of medically relevant events, given their clinical and genetic profiles and genetic predispositions. Existing approaches often require programming expertise or rely on inflexible analysis pipelines, limiting their usability among biomedical researchers. The lack of advanced, user-friendly tools hinders problem solving, limits accessibility for biomedical researchers, and restricts interactive data exploration. Our methodology emphasizes functionality-driven design and modularity, akin to combining LEGO bricks to build tailored visual workflows. We (1) define a minimal set of reusable visualization and modeling components that support common survival analysis tasks, (2) implement interactive visualizations for discovering survival cohorts and their characteristic features, and (3) demonstrate integration within an existing visual analytics platform. We implemented the methodology as an open-source add-on to Orange Data Mining and validated it through use cases ranging from Kaplan–Meier estimation to biomarker discovery. While the framework is generally applicable, we illustrate its value through case studies in cancer research, where survival analysis is of critical importance. The resulting framework illustrates how methodological design can drive intuitive, transparent, and effective survival analysis.

## Full-text entities

- **Diseases:** cancer (MESH:D009369)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

10 figures with captions in the complete paper: https://tomesphere.com/paper/PMC13004513/full.md

---
Source: https://tomesphere.com/paper/PMC13004513