English

Joint Progression Modeling (JPM): A Probabilistic Framework for Mixed-Pathology Progression

Machine Learning 2026-01-14 v2 Applications

Abstract

Event-based models (EBMs) infer disease progression from cross-sectional data, and standard EBMs assume a single underlying disease per individual. In contrast, mixed pathologies are common in neurodegeneration. We introduce the Joint Progression Model (JPM), a probabilistic framework that treats single-disease trajectories as partial rankings and builds a prior over joint progressions. We study several JPM variants (Pairwise, Bradley-Terry, Plackett-Luce, and Mallows) and analyze three properties: (i) calibration -- whether lower model energy predicts smaller distance to the ground truth ordering; (ii) separation -- the degree to which sampled rankings are distinguishable from random permutations; and (iii) sharpness -- the stability of sampled aggregate rankings. All variants are calibrated, and all achieve near-perfect separation; sharpness varies by variant and is well-predicted by simple features of the input partial rankings (number and length of rankings, conflict, and overlap). In synthetic experiments, JPM improves ordering accuracy by roughly 21 percent over a strong EBM baseline (SA-EBM) that treats the joint disease as a single condition. Finally, using NACC, we find that the Mallows variant of JPM and the baseline model (SA-EBM) have results that are more consistent with prior literature on the possible disease progression of the mixed pathology of AD and VaD.

Keywords

Cite

@article{arxiv.2512.03475,
  title  = {Joint Progression Modeling (JPM): A Probabilistic Framework for Mixed-Pathology Progression},
  author = {Hongtao Hao and Joseph L. Austerweil},
  journal= {arXiv preprint arXiv:2512.03475},
  year   = {2026}
}

Comments

49 pages; Machine Learning for Health (ML4H) Symposium 2025

R2 v1 2026-07-01T08:07:09.084Z