Scientific Reports (Jun 2024)

Visualization of incrementally learned projection trajectories for longitudinal data

  • Tamasha Malepathirana,
  • Damith Senanayake,
  • Vini Gautam,
  • Martin Engel,
  • Rachelle Balez,
  • Michael D. Lovelace,
  • Gayathri Sundaram,
  • Benjamin Heng,
  • Sharron Chow,
  • Christopher Marquis,
  • Gilles J. Guillemin,
  • Bruce Brew,
  • Chennupati Jagadish,
  • Lezanne Ooi,
  • Saman Halgamuge

DOI
https://doi.org/10.1038/s41598-024-63511-z
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 15

Abstract

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Abstract Longitudinal studies that continuously generate data enable the capture of temporal variations in experimentally observed parameters, facilitating the interpretation of results in a time-aware manner. We propose IL-VIS (incrementally learned visualizer), a new machine learning pipeline that incrementally learns and visualizes a progression trajectory representing the longitudinal changes in longitudinal studies. At each sampling time point in an experiment, IL-VIS generates a snapshot of the longitudinal process on the data observed thus far, a new feature that is beyond the reach of classical static models. We first verify the utility and correctness of IL-VIS using simulated data, for which the true progression trajectories are known. We find that it accurately captures and visualizes the trends and (dis)similarities between high-dimensional progression trajectories. We then apply IL-VIS to longitudinal multi-electrode array data from brain cortical organoids when exposed to different levels of quinolinic acid, a metabolite contributing to many neuroinflammatory diseases including Alzheimer’s disease, and its blocking antibody. We uncover valuable insights into the organoids’ electrophysiological maturation and response patterns over time under these conditions.