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Clinical Phenotype Discovery using Latent Class / Profile Analysis with Automatic Model Selection

Project description

PhenoCluster

A flexible data-driven framework for identifying clinical phenotypes using latent class and profile analysis

PyPI version Python versions MIT License CI Docs


Overview

PhenoCluster is a Python framework for unsupervised discovery of clinical phenotypes from heterogeneous patient data. It implements an end-to-end pipeline: from data preprocessing and latent class identification to outcome association analysis, survival modelling, and multistate transition modelling.

The framework is domain-agnostic and can be applied to any clinical cohort study where the goal is to identify latent patient subgroups and characterise their relationship with clinical outcomes. Users supply a dataset and a YAML configuration file; PhenoCluster handles model selection, phenotype assignment, and downstream inference automatically.

Key capabilities

  • Latent Class / Profile Analysis via the StepMix framework with native support for mixed continuous/categorical data and missing values
  • Automatic model selection using information criteria (BIC, AIC, ICL, CAIC, SABIC) with configurable cluster-size constraints
  • Classification quality assessment with per-phenotype Average Posterior Probability (AvePP) and assignment confidence metrics
  • Outcome association analysis with logistic regression yielding odds ratios, confidence intervals, and FDR-corrected p-values
  • Survival analysis with Cox proportional hazards models producing hazard ratios and log-rank tests
  • Multistate modelling with transition-specific Cox PH analysis, Monte Carlo simulation for state occupation probabilities with confidence interval bands, and clinical pathway enumeration
  • Temporal and multi-site generalizability (v0.3.0) - validate phenotypes across time windows or sites/centers (cutoff, sliding/expanding windows, leave-one-site-out), with apply-only or refit-and-match modes, calibration metrics (Brier, ECE), drift detection (PSI, KS, chi-square), and per-phenotype OR/HR concordance with FDR-corrected delta tests
  • Optional Streamlit dashboard (v0.3.0) for interactive exploration of saved results: phenocluster dashboard <results_dir>
  • Comprehensive output including an interactive HTML report (toggleable via generate_html_report or --no-html-report), forest plots with confidence intervals, Kaplan-Meier and Nelson-Aalen curves, heatmaps, and JSON/CSV data exports

Installation

Requires Python >= 3.11

pip install phenocluster

To enable the optional interactive dashboard:

pip install 'phenocluster[dashboard]'

Quick start

1. Generate a configuration file

phenocluster create-config -p complete -o config.yaml

2. Edit the configuration

Open config.yaml and fill in your dataset-specific parameters:

global:
  project_name: "My Study"
  output_dir: "results"
  random_state: 42

data:
  continuous_columns:
    - age
    - bmi
    - lab_value_1
  categorical_columns:
    - sex
    - smoking_status
    - disease_stage
  split:
    test_size: 0.2

outcome:
  enabled: true
  outcome_columns:
    - mortality_30d
    - readmission_30d

survival:
  enabled: true
  targets:
    - name: "overall_survival"
      time_column: "time_to_death"
      event_column: "death_indicator"

3. Run the pipeline

phenocluster run -d data.csv -c config.yaml

4. Inspect results

Results are written to the output directory (default: results/):

File Description
analysis_report.html Comprehensive HTML report (skip with generate_html_report: false or --no-html-report)
cluster_statistics.json Phenotype sizes, feature distributions, and classification quality
outcome_results.json Odds ratios with confidence intervals and p-values
survival_results.json Kaplan-Meier estimates and Cox PH hazard ratios
multistate_results.json Transition-specific hazard ratios, pathways, and state occupation
data/model_fit_metrics.csv Information criteria, entropy, and average posterior probabilities
data/phenotypes_data.csv Original data augmented with phenotype assignments
data/posterior_probabilities.csv Posterior class membership probabilities
results/model_selection_summary.json Model selection comparison table and best model info
results/feature_importance.json Feature characterisation per phenotype
results/validation_report.json Internal validation metrics (train/test comparison)
results/stability_results.json Consensus clustering stability metrics
results/split_info.json Train/test split details
results/external_validation_results.json External validation results (when enabled)
results/temporal_validation_results.json Temporal generalizability results (when enabled, v0.3.0)
results/multisite_validation_results.json Multi-site (LOGO / holdout) generalizability results (v0.3.0)
results/external_cohorts_results.json External-CSV generalizability results (v0.3.0)
results/generalizability_summary.json Aggregate ARI / PSI summary across cohorts plus training_scope flag (v0.3.0)
data/generalizability/ Per-cohort cluster_distribution_<label>.csv and drift_<label>.csv (v0.3.0)
phenocluster.log Pipeline execution log
artifacts/ Cached intermediate results for incremental re-runs

5. Validate phenotypes across time or sites (v0.3.0)

Add a generalizability block to the config to enable temporal, multi-site, and/or external-CSV validation. The default training_scope: per_split fits a fresh preprocessor and StepMix model on the derivation rows of each in-CSV split and applies it to the validation rows. The pipeline's full-cohort model stays untouched for descriptive analyses.

generalizability:
  enabled: true
  training_scope: per_split          # per_split (default) | global
  feature_selector_scope: auto       # auto (default) | global | per_split
  refit: true                        # refit-and-match Hungarian alignment
  min_validation_size_for_refit: 100
  temporal:
    time_column: admission_date
    scheme: cutoff                   # cutoff | fraction | sliding | expanding
    time_cutoff: "2020-12-31"
  multisite:
    site_column: center
    scheme: logo                     # logo | holdout | pairwise
    min_site_size: 30
  external_cohorts:                  # optional, one or more separate CSVs
    - { path: ./cohort_B.csv, label: hospital_X, kind: site }
    - { path: ./cohort_2024.csv, label: era_2024, kind: temporal }
  drift:        { enabled: true, n_bins: 10, top_k: 20 }
  calibration:  { enabled: true, n_bins: 10, strategy: quantile }
  outcome_concordance: { enabled: true, fdr_method: bh, alpha: 0.05 }

Each cohort yields a phenotype distribution, drift table, refit-and-match metrics (ARI / NMI / Hungarian-matched accuracy), calibration metrics, and per-phenotype OR/HR concordance with FDR-corrected delta tests. Cohort reports also expose a fit_mode field (per_split for in-CSV splits under the default scope; global for external CSVs and the legacy permissive path) and derivation_only_ari showing how the fresh derivation-only fit compares to the global model.

6. Explore results interactively (v0.3.0)

pip install 'phenocluster[dashboard]'
phenocluster dashboard ./results/

Streamlit launches at http://127.0.0.1:8501 with tabs for an Overview, Phenotypes, Outcomes, Survival, Multistate, Generalizability, and a per-cohort Drift explorer.

Pipeline overview

PhenoCluster executes the following stages in order:

  1. Data quality assessment. Missingness patterns, correlations, variance, and MCAR testing.
  2. Train/test split. Stratified splitting with configurable test size, performed before preprocessing to prevent data leakage.
  3. Preprocessing. Imputation, outlier handling, categorical encoding, standardization, and feature selection -- fit on training data only, then applied to the test set.
  4. Model selection. Cross-validated information criterion search over cluster counts (training set only).
  5. Full-cohort refit. Once K is selected, preprocessing and LCA/LPA model are refitted on the entire cohort; phenotypes reordered by size (largest = Phenotype 0).
  6. Stability analysis. Consensus clustering over subsampled runs.
  7. Internal validation. Train/test log-likelihood comparison, cluster proportion stability, and outcome OR consistency.
  8. Outcome association. Logistic regression for binary outcomes with FDR-corrected p-values (optional).
  9. Survival analysis. Kaplan-Meier curves, Nelson-Aalen estimators, log-rank tests, and Cox PH hazard ratios (optional).
  10. Multistate modelling. Transition-specific Cox PH models, transition hazard ratios, and Monte Carlo simulation (optional).
  11. Temporal / multi-site generalizability. Re-evaluate the derivation phenotypes on later time windows, held-out sites, and external CSVs; report ARI / NMI / matched accuracy, calibration, drift, and OR/HR concordance (optional, v0.3.0).
  12. Report generation. Interactive HTML report with all figures and tables.

CLI reference

Command Description
phenocluster run -d DATA -c CONFIG [--force-rerun] [-v] [-q] [--html-report/--no-html-report] Run the full pipeline
phenocluster create-config [-p PROFILE] [-o OUTPUT] Generate a config YAML from a profile template
phenocluster validate-config -c CONFIG [-d DATA] Validate config structure; cross-check columns against data
phenocluster list-profiles List available configuration profile templates
phenocluster show-profile NAME Print the resolved YAML for a profile with syntax highlighting
phenocluster dashboard RESULTS_DIR [--port 8501] [--host 127.0.0.1] [--headless/--browser] Launch the optional Streamlit dashboard (requires pip install 'phenocluster[dashboard]')
phenocluster version Show version, repository link, and documentation link

Configuration profiles

Profiles set sensible defaults for common use-cases. Generate one with phenocluster create-config -p <profile>:

Profile Description Inference Stability Multistate
descriptive Phenotype discovery only, no statistical inference off on off
complete All analyses enabled (outcomes, survival, multistate) on on on
quick Fast iteration for development on off off

Configuration reference

See the full Configuration Reference in the documentation.

Documentation

Full documentation (statistical methods, configuration reference, output descriptions) is available at ettorerocchi.github.io/phenocluster.

License

This project is licensed under the MIT License.

Citation

If you use PhenoCluster in your research, please cite:

Available soon.

Acknowledgment

This project relies on StepMix, a Python package for pseudo-likelihood estimation of generalized mixture models with external variables. We thank the authors for making their work openly available.

If you use this framework, please cite also:

Morin, S., Legault, R., Laliberté, F., Bakk, Z., Giguère, C.-É., de la Sablonnière, R., & Lacourse, É. (2025). StepMix: A Python Package for Pseudo-Likelihood Estimation of Generalized Mixture Models with External Variables. Journal of Statistical Software, 113(8), 1-39. doi: 10.18637/jss.v113.i08

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