Resources
Authors & Affiliations
Doris Kaltenecker, Rami Al-Maskari, Moritz Negwer, Luciano Hoeher, Kofler Florian, Shan Zhao, Mihail Todorov, Zhouyi Rong, Johannes Christian Paetzold, Benedikt Wiestler, Marie Piraud, Daniel Rueckert, Julia Geppert, Pauline Morigny, Maria Rohm, Bjoern H. Menze, Stephan Herzig, Mauricio Berriel Diaz, Ali Ertürk
Abstract
Automatically detecting antibody labelled cells within three-dimensional datasets such as whole-brain image stacks generated with light-sheet fluorescence microscopy is a complex task. In this study, we introduce DELiVR, a virtual reality (VR) trained deep learning pipeline for identifying c-Fos+ cells, which serve as markers of neuronal activity, in cleared mouse brains. By employing VR annotation, we significantly accelerated training data generation, resulting in DELiVR surpassing current state-of-the-art methods for cell segmentation. Our pipeline, which encompasses cell detection, brain atlas registration and visualization, is conveniently packaged in a single Docker container. It operates seamlessly via the user-friendly interface of the open-source software Fiji, making it accessible to users without coding expertise. Additionally, we designed a re-training option that allows researchers to train the deep learning model on custom data sets. We highlight this feature by re-training DELiVR to detect microglia somata in the brain. Applying DELiVR to examine cancer-related brain activity, we discovered a distinct activation pattern that distinguishes weight-stable cancer from cancers associated with weight loss. Overall, DELiVR represents a robust deep learning solution for analyzing whole-brain imaging data in health and disease, eliminating the need for coding skills.