Free — no account required

Heart Failure Survival Analysis In Minutes

Upload your data and get a complete heart failure survival analysis report. Free.

24,000+ analyses run
Encrypted & deleted in 7 days
PDF & citation included

Drop your CSV here

or click to browse · max 3 MB

📊
-
Rows
-
Columns
-
Numeric

Running heart failure survival analysis analysis...

Running heart failure survival analysis analysis...

Your report is ready

Sent to — interactive charts, statistical results, R code, and AI insights.

Analyze another file
Sample Output

Every report includes interactive charts, tables, and AI insights

Upload your data to get your own report

View all case studies See all free tools

How it works

Kaplan-Meier survival analysis and Cox proportional hazards regression to identify clinical predictors of time-to-death in heart failure patients

Use when you have time-to-event data with censoring and want to identify which covariates affect survival probability

Do not use if outcome is binary without time component, or if follow-up is too short to observe meaningful events

Built for: Clinical researchers, cardiologists, biostatisticians, epidemiologists, cardiology fellows, medical data scientists

Typical data source: Patient-level heart failure registry data with follow-up time in days, a binary death event indicator, and clinical variables such as ejection fraction, serum creatinine, anaemia status, age, and comorbidities

healthcareclinical researchpharmaceuticalacademic medicine

What data do you need?

Dataset with 13 columns

age (numeric) anaemia (binary) creatinine_phosphokinase (numeric) diabetes (binary) ejection_fraction (numeric) high_blood_pressure (binary) platelets (numeric) serum_creatinine (numeric) serum_sodium (numeric) sex (binary) smoking (binary) time (numeric) death_event (binary)

Minimum 50 rows

What's in the report?

Cornerstone #16 — Kaplan-Meier + Cox proportional hazards on heart failure (3,163 votes)

📈

Overall Survival Probability

Kaplan-Meier overall survival probability curve showing time-to-death distribution across the follow-up period

📈

Survival by Ejection Fraction Group

Stratified KM curves by ejection fraction group (Low/Borderline/Normal) with log-rank test significance

📈

Survival by Anaemia Status

Stratified KM curves comparing anaemic vs non-anaemic patients with log-rank test significance

📊

Cox Regression Hazard Ratios

Cox proportional hazards model hazard ratios for all clinical predictors after multivariate adjustment

🔵

Ejection Fraction vs Serum Creatinine by Outcome

Scatter plot of serum creatinine vs ejection fraction colored by survival outcome

📋

Baseline Characteristics by Outcome

Statistical comparison of key clinical characteristics between patients who died vs survived

🤖

AI Insights

Plain-English interpretation — what the numbers mean, what's significant, and what to do next.

Related tools

Need something simpler? Diabetes Risk Drivers — When you only need to predict a binary outcome (survived vs. died) without accounting for when the event occurred or censored observations -- logistic regression ignores time but is simpler to interpret

Need more power? Cancer Classification — When you need to classify patients into multiple diagnostic categories rather than model time-to-event outcomes -- uses machine learning classifiers instead of Cox regression

Similar: Stroke Risk Factors, Attrition Drivers

The Question This Answers

Upload your heart failure registry with follow-up time and death event indicator. The Cox proportional hazards model ranks all clinical predictors by adjusted hazard ratio, showing which factors independently increase mortality risk after controlling for confounders.

Questions?

See our FAQ for details on pricing, data privacy, and how the analysis works. Every report includes a Methodology section showing the statistical test, assumptions checked, and diagnostics run.

Your data has more stories to tell

Run any analysis on your own data — validated R analyses, interactive reports, AI insights, and PDF export.

Try Free — No Credit Card
Powered by MCP Analytics