Skip to main content

Implementation of event-based models for degenerative diseases.

Project description

EBM

This is the python package for implementing Event Based Models for Disease Progression.

Installation

pip install alabebm

Change Log

  • 2025-02-26 (V 0.3.4).
    • Modified the shuffle_order function to ensure full derangement, making convergence faster.
  • 2025-03-06 (V 0.4.0)
    • use pyproject.toml instead
    • update conjuage_priors_algo.py, now without using the auxiliary variable of participant_stages. Kept the uncertainties just like in soft_kmeans_algo.py.
  • 2025-03-07 (V 0.4.2)
    • Compute new_ln_likelihood_new_theta_phi based on new_theta_phi_estimates, which is based on stage_likelihoods_posteriors that is based on the newly proposed order and previous theta_phi_estimates.
    • Update theta_phi_estimates with new_theta_phi_estimates only if new order is accepted.
    • The fallback theta_phi_estimates is the previous parameters rather than theta_phi_default
    • all_accepted_orders.append(current_order_dict.copy()) to make sure the results are not mutated.
    • Previously I calculated the new_ln_likelihood and stage_likelihoods_posteriors based on the newly proposed order and previous theta_phi_estimates, and directly update theta_phi_estimates whether we accept the new order or not.
    • Previously, I excluded copy() in all_accepted_orders.append(current_order_dict.copy()), which is inaccurate.
  • 2025-03-17 (V 0.4.3)
    • Added skip and title_detail parameter in save_traceplot function.
  • 2025-03-18 (V 0.4.4)
    • Add optional horizontal bar indicating upper limit in trace plot.
  • 2025-03-18 (V 0.4.7)
    • Allowed keeping all cols (keep_all_cols) in data generation.
  • 2025-03-18 (V 0.4.9)
    • copy data_we_have and use data_we_have.loc[:, 'S_n'] in soft kmeans algo when preprocessing participant and biomarker data.
  • 2025-03-20 (V 0.5.1)
    • In hard kmeans, updated delta = ln_likelihood - current_ln_likelihood, and in soft kmeans and conjugate priors, made sure I am using delta = new_ln_likelihood_new_theta_phi - current_ln_likelihood.
    • In each iteration, use theta_phi_estimates = theta_phi_default.copy() first. This means, stage_likelihoods_posteriors is based on the default theta_phi, not the previous iteration.
  • 2025-03-21 (V 0.6.0)
    • Integrated all three algorithms to just one file algorithms/algorithm.py.
    • Changed the algorithm name of soft_kmeans to mle (maximum likelihood estimation)
    • Moved all helper functions from the algorithm script to utils/data_processing.py.
  • 2025-03-22 (V 0.7.6)
    • Current state should include both the current accepted order and its associated theta/phi. When updating theta/phi at the start of each iteration, use the current state's theta/phi (1) in the calculation of stage likelihoods and (2) as the fallback if either of the biomarker's clusters is empty or has only one measurement; (3) as the prior mean and variance.
    • Set conjugate_priors as the default algorithm.
    • (Tried using cluster's mean and var as the prior but the results are not as good as using current state's theta/phi as the prior).

Generate Random Data

from alabebm import generate, get_params_path, get_biomarker_order_path
import os
import json 

# Get path to default parameters
params_file = get_params_path()

# Get path to biomarker_order
biomarker_order_json = get_biomarker_order_path()

with open(biomarker_order_json, 'r') as file:
    biomarker_order = json.load(file)

generate(
    biomarker_order = biomarker_order,
    real_theta_phi_file=params_file,  # Use default parameters
    js = [50, 100],
    rs = [0.1, 0.5],
    num_of_datasets_per_combination=2,
    output_dir='my_data',
    seed = None,
    prefix = None,
    suffix = None,
)

Run MCMC Algorithms

from alabebm import run_ebm
from alabebm.data import get_sample_data_path
import os

print("Current Working Directory:", os.getcwd())

for algorithm in ['soft_kmeans', 'conjugate_priors', 'hard_kmeans']:
    results = run_ebm(
        data_file=get_sample_data_path('25|50_10.csv'),  # Use the path helper
        algorithm=algorithm,
        n_iter=2000,
        n_shuffle=2,
        burn_in=1000,
        thinning=20,
    )

Input data

The input data should have four columns:

  • participant: int
  • biomarker: str
  • measurement: float
  • diseased: bool

An example is https://raw.githubusercontent.com/hongtaoh/alabEBM/refs/heads/main/alabEBM/tests/my_data/10%7C100_0.csv

The data should be in a tidy format, i.e.,

  • Each variable is a column.
  • Each observation is a row.
  • Each type of observational unit is a table.

Features

  • Multiple MCMC algorithms:

    • Conjugate Priors
    • Hard K-means
    • Soft K-means
  • Data generation utilities

  • Extensive logging

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

alabebm-0.7.6.tar.gz (43.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

alabebm-0.7.6-py3-none-any.whl (45.5 kB view details)

Uploaded Python 3

File details

Details for the file alabebm-0.7.6.tar.gz.

File metadata

  • Download URL: alabebm-0.7.6.tar.gz
  • Upload date:
  • Size: 43.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.5

File hashes

Hashes for alabebm-0.7.6.tar.gz
Algorithm Hash digest
SHA256 8e82e5863abc61d11ae971181d1aa95cfecaafffd0db068e39f5bdfd02d92b0a
MD5 4f567592a8d29ecc7430b3941811aa82
BLAKE2b-256 1deb789bbcfd4c025702b5ff2af3b1024111b1ff470297200a08f7922c6a6a7b

See more details on using hashes here.

File details

Details for the file alabebm-0.7.6-py3-none-any.whl.

File metadata

  • Download URL: alabebm-0.7.6-py3-none-any.whl
  • Upload date:
  • Size: 45.5 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.5

File hashes

Hashes for alabebm-0.7.6-py3-none-any.whl
Algorithm Hash digest
SHA256 13507688f7211e404764d3bf4b6b05b3509e7570abf3530f1bc16f33dcd097f0
MD5 c1c6ec23eb6febd1f1c449156493ec5d
BLAKE2b-256 f9c38221aa751b09dc9277adbc0be4f0cebad53eab5a67d95acab33ae425898a

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page