MLLGDec 1, 2020

Deep dynamic modeling with just two time points: Can we still allow for individual trajectories?

arXiv:2012.00634v20.008 citations
AI Analysis50

This research addresses the challenge of modeling individual-specific development patterns in longitudinal biomedical data for epidemiological cohort studies and clinical registries, particularly when only baseline and one follow-up measurement are available, by exploring the limits of deep learning approaches in such extreme small data settings.

This paper investigates the feasibility of using deep dynamic modeling, specifically VAEs linked to ODEs, to infer individual-specific latent trajectories from longitudinal biomedical data with only two time points per individual. The study shows that this approach can recover individual trajectories from ODE systems with two and four unknown parameters and infer groups of similar trajectories using simulated data, but requires careful adaptation.

Longitudinal biomedical data are often characterized by a sparse time grid and individual-specific development patterns. Specifically, in epidemiological cohort studies and clinical registries we are facing the question of what can be learned from the data in an early phase of the study, when only a baseline characterization and one follow-up measurement are available. Inspired by recent advances that allow to combine deep learning with dynamic modeling, we investigate whether such approaches can be useful for uncovering complex structure, in particular for an extreme small data setting with only two observations time points for each individual. Irregular spacing in time could then be used to gain more information on individual dynamics by leveraging similarity of individuals. We provide a brief overview of how variational autoencoders (VAEs), as a deep learning approach, can be linked to ordinary differential equations (ODEs) for dynamic modeling, and then specifically investigate the feasibility of such an approach that infers individual-specific latent trajectories by including regularity assumptions and individuals' similarity. We also provide a description of this deep learning approach as a filtering task to give a statistical perspective. Using simulated data, we show to what extent the approach can recover individual trajectories from ODE systems with two and four unknown parameters and infer groups of individuals with similar trajectories, and where it breaks down. The results show that such dynamic deep learning approaches can be useful even in extreme small data settings, but need to be carefully adapted.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes