Localization and Registration of 2D Histological Mouse Brain Images in 3D Atlas Space
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Published:2023-06-26
Issue:3
Volume:21
Page:615-630
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ISSN:1539-2791
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Container-title:Neuroinformatics
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language:en
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Short-container-title:Neuroinform
Author:
Sadeghi Maryam,Ramos-Prats Arnau,Neto Pedro,Castaldi Federico,Crowley Devin,Matulewicz Pawel,Paradiso Enrica,Freysinger Wolfgang,Ferraguti Francesco,Goebel Georg
Abstract
AbstractTo accurately explore the anatomical organization of neural circuits in the brain, it is crucial to map the experimental brain data onto a standardized system of coordinates. Studying 2D histological mouse brain slices remains the standard procedure in many laboratories. Mapping these 2D brain slices is challenging; due to deformations, artifacts, and tilted angles introduced during the standard preparation and slicing process. In addition, analysis of experimental mouse brain slices can be highly dependent on the level of expertise of the human operator. Here we propose a computational tool for Accurate Mouse Brain Image Analysis (AMBIA), to map 2D mouse brain slices on the 3D brain model with minimal human intervention. AMBIA has a modular design that comprises a localization module and a registration module. The localization module is a deep learning-based pipeline that localizes a single 2D slice in the 3D Allen Brain Atlas and generates a corresponding atlas plane. The registration module is built upon the Ardent python package that performs deformable 2D registration between the brain slice to its corresponding atlas. By comparing AMBIA’s performance in localization and registration to human ratings, we demonstrate that it performs at a human expert level. AMBIA provides an intuitive and highly efficient way for accurate registration of experimental 2D mouse brain images to 3D digital mouse brain atlas. Our tool provides a graphical user interface and it is designed to be used by researchers with minimal programming knowledge.
Funder
Austrian Federal Ministry of Education, Science and Research Austrian Science Fund University of Innsbruck and Medical University of Innsbruck
Publisher
Springer Science and Business Media LLC
Subject
Information Systems,General Neuroscience,Software
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