Deep Image Prior for Spatio-temporal Fluorescence Microscopy Images: DECO-DIP

Abstract

Image deconvolution and denoising is a common postprocessing step
to improve the quality of biomedical fluorescence microscopy images. In recent
years, this task has been increasingly tackled with the help of supervised deep
learning methods. However, generating a large number of training pairs is, if at all possible, often laborious. Here, we present a new deep learning algorithm called DECO-DIP that builds on the Deep Image Prior (DIP) framework and does not rely on training data. We extend DIP by incorporating a novel loss function that, in addition to a standard 𝐿2 data term, contains a term to model the underlying image generation forward model. We apply our framework both to synthetic data and Ca2+ microscopy data of biological samples, namely Jurkat T-cells and astrocytes. DECO-DIP outperforms both classical deconvolution and the standard DIP implementation. We further introduce an extension, DECO-DIP-T, which explicitly utilizes the time dependence in live cell microscopy image series.

Bibliographical data

Original languageEnglish
Title of host publicationBildverarbeitung für die Medizin 2024 : Proceedings, German Conference on Medical Image Computing, Erlangen, March 10–12, 2024
EditorsA Maier, TM Deserno, H Handels, K Maier-Hein, C Palm, TM Tolxdorff
REQUIRED books only: Number of pages6
PublisherSpringer Vieweg
Publication date2024
Edition1
Pages322-327
ISBN (Print)978-3-658-44036-7
ISBN (Electronic)978-3-658-44037-4
DOIs
Publication statusPublished - 2024