Author:
Malepathirana Tamasha,Senanayake Damith,Gautam Vini,Engel Martin,Balez Rachelle,Lovelace Michael D.,Sundaram Gayathri,Heng Benjamin,Chow Sharron,Marquis Christopher,Guillemin Gilles J.,Brew Bruce,Jagadish Chennupati,Ooi Lezanne,Halgamuge Saman
Abstract
AbstractLongitudinal 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.
Funder
Dementia Australia Research Foundation and Yulgilbar Alzheimer’s Research Program
Melbourne Graduate Research Scholarship
GCI Women in STEM Student Award
Australian Research Council
Australian Research Council Discovery Early Career Researcher Award
Peter Duncan Neurosciences Research Unit at St. Vincent’s Centre for Applied Medical Research
Perpetual IMPACT grant
National Health and Medical Research Council
Australia Boosting Dementia Research Leadership Fellowship
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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