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The Brain Tumor Sequence Registration (BraTS-Reg) Challenge: Establishing Correspondence Between Pre-Operative and Follow-up MRI Scans of Diffuse Glioma Patients

13 December 2021
Bhakti Baheti
Satrajit Chakrabarty
H. Akbari
Michel Bilello
Benedikt Wiestler
Julian Schwarting
Evan Calabrese
J. Rudie
S. A. Abidi
Mina S. Mousa
Javier Villanueva-Meyer
Brandon K. K. Fields
Florian Kofler
Russell Takeshi Shinohara
Juan Eugenio Iglesias
Tony C. W. Mok
Albert C. S. Chung
Marek Wodzinski
Artur Jurgas
Niccolo Marini
Manfredo Atzori
Henning Muller
Christoph Grobroehmer
Hanna Siebert
Lasse Hansen
Mattias P. Heinrich
Luca Canalini
Jan Klein
Annika Gerken
Stefan Heldmann
Alessa Hering
Horst K. Hahn
Mingyuan Meng
Lei Bi
Dagan Feng
Jinman Kim
Ramy A. Zeineldin
Mohamed E. Karar
Franziska Mathis-Ullrich
Oliver Burgert
S. Abidi
Aymeric Pionteck
Agamdeep Chopra
Mehmet Kurt
Kewei Yan
Yonghong Yan
Zhe Tang
J. Villanueva-Meyer
Sahar Almahfouz Nasser
Nikhil Cherian Kurian
Mohit Meena
Saqib Nizam Shamsi
Amit Sethi
Nicholas J. Tustison
Brian B. Avants
Philip Cook
James C. Gee
Lin Tian
Hastings Greer
Marc Niethammer
Andrew Hoopes
Malte Hoffmann
Adrian V. Dalca
Stergios Christodoulidis
Theo Estiene
Maria Vakalopoulou
Nikos Paragios
Daniel S. Marcus
Christos Davatzikos
Aristeidis Sotiras
Bjoern H. Menze
Spyridon Bakas
Diana Waldmannstetter
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Abstract

Registration of longitudinal brain MRI scans containing pathologies is challenging due to dramatic changes in tissue appearance. Although there has been progress in developing general-purpose medical image registration techniques, they have not yet attained the requisite precision and reliability for this task, highlighting its inherent complexity. Here we describe the Brain Tumor Sequence Registration (BraTS-Reg) challenge, as the first public benchmark environment for deformable registration algorithms focusing on estimating correspondences between pre-operative and follow-up scans of the same patient diagnosed with a diffuse brain glioma. The BraTS-Reg data comprise de-identified multi-institutional multi-parametric MRI (mpMRI) scans, curated for size and resolution according to a canonical anatomical template, and divided into training, validation, and testing sets. Clinical experts annotated ground truth (GT) landmark points of anatomical locations distinct across the temporal domain. Quantitative evaluation and ranking were based on the Median Euclidean Error (MEE), Robustness, and the determinant of the Jacobian of the displacement field. The top-ranked methodologies yielded similar performance across all evaluation metrics and shared several methodological commonalities, including pre-alignment, deep neural networks, inverse consistency analysis, and test-time instance optimization per-case basis as a post-processing step. The top-ranked method attained the MEE at or below that of the inter-rater variability for approximately 60% of the evaluated landmarks, underscoring the scope for further accuracy and robustness improvements, especially relative to human experts. The aim of BraTS-Reg is to continue to serve as an active resource for research, with the data and online evaluation tools accessible at https://bratsreg.github.io/.

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