SPECHT: Self-tuning Plausibility Based Object Detection Enables Quantification of Conflict in Heterogeneous Multi-scale Microscopy
preprint
posted on 2022-02-22, 00:41 authored by Ben CardoenBen Cardoen, Timothy Wong, Parsa Alan, Sieun Lee, Joanne Aiko Matsubara, Ivan Robert Nabi, Ghassan HamarnehWe introduce a novel method that is able to localize fluorescent labelled objects in multi-scale 2D microscopy, and is robust to highly variable imaging conditions. Localized objects are then classified in a novel way using belief theory, requiring only the image level label. Each object is assigned a `belief' that describes how likely it is to appear in an image with a given set of labels. We apply our method successfully to identify amyloid-beta deposits, associated with Alzheimer's disease, and to discover caveolae and their modular components in superresolution microscpy. We illustrate how our approach allows the fusion or combination of models learned across markedly different datasets. We show how we can compute the `conflict', or disagreement between the models, an insight that can allow the domain expert to interpret the composite model.
Funding
CIHR PJT-159845, PJT-156424
Natural Sciences and Engineering Research Council
Canada Foundation for Innovation and British Columbia Knowledge Development Fund
Simon Fraser University Big Data Scholarship
History
Email Address of Submitting Author
bcardoen@sfu.caORCID of Submitting Author
0000-0001-6871-1165Submitting Author's Institution
Simon Fraser UniversitySubmitting Author's Country
- Canada