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Tensor image registration library: deformable registration of stand‐alone histology images to whole‐brain post‐mortem MRI data

Title: Tensor image registration library: deformable registration of stand‐alone histology images to whole‐brain post‐mortem MRI data
Authors: Huszar, IN; Pallebage-Gamarallage, M; Bangerter-Christensen, S; Brooks, H; Fitzgibbon, S; Foxley, S; Hiemstra, M; Howard, AFD; Jbabdi, S; Kor, DZL; Leonte, A; Mollink, J; Smart, A; Tendler, BC; Turner, MR; Ansorge, O; Miller, KL; Jenkinson, M
Publisher Information: Elsevier
Publication Year: 2025
Collection: Oxford University Research Archive (ORA)
Description: Background Accurate registration between microscopy and MRI data is necessary for validating imaging biomarkers against neuropathology, and to disentangle complex signal dependencies in microstructural MRI. Existing registration methods often rely on serial histological sampling or significant manual input, providing limited scope to work with a large number of stand-alone histology sections. Here we present a customisable pipeline to assist the registration of stand-alone histology sections to whole-brain MRI data. Methods Our pipeline registers stained histology sections to whole-brain post-mortem MRI in 4 stages, with the help of two photographic intermediaries: a block face image (to undistort histology sections) and coronal brain slab photographs (to insert them into MRI space). Each registration stage is implemented as a configurable stand-alone Python script using our novel platform, Tensor Image Registration Library (TIRL), which provides flexibility for wider adaptation. We report our experience of registering 87 PLP-stained histology sections from 14 subjects and perform various experiments to assess the accuracy and robustness of each stage of the pipeline. Results All 87 histology sections were successfully registered to MRI. Histology-to-block registration (Stage 1) achieved 0.2–0.4 mm accuracy, better than commonly used existing methods. Block-to-slice matching (Stage 2) showed great robustness in automatically identifying and inserting small tissue blocks into whole brain slices with 0.2 mm accuracy. Simulations demonstrated sub-voxel level accuracy (0.13 mm) of the slice-to-volume registration (Stage 3) algorithm, which was observed in over 200 actual brain slice registrations, compensating 3D slice deformations up to 6.5 mm. Stage 4 combined the previous stages and generated refined pixelwise aligned multi-modal histology-MRI stacks. Conclusions Our open-source pipeline provides robust automation tools for registering stand-alone histology sections to MRI data with sub-voxel level precision, and ...
Document Type: article in journal/newspaper
Language: English
Relation: https://doi.org/10.1016/j.neuroimage.2022.119792
DOI: 10.1016/j.neuroimage.2022.119792
Availability: https://doi.org/10.1016/j.neuroimage.2022.119792; https://ora.ox.ac.uk/objects/uuid:c0ccf4ca-66c4-4edc-b68c-7c50e0fbb794
Rights: info:eu-repo/semantics/openAccess ; CC Attribution (CC BY)
Accession Number: edsbas.B726C6EE
Database: BASE