Automated deep learning segmentation of high-resolution 7 Tesla postmortem MRI for quantitative analysis of structure-pathology correlations in neurodegenerative diseases

Author:

Khandelwal Pulkit12,Duong Michael Tran1,Sadaghiani Shokufeh3,Lim Sydney24,Denning Amanda E.24,Chung Eunice24,Ravikumar Sadhana24,Arezoumandan Sanaz3,Peterson Claire3,Bedard Madigan24,Capp Noah3,Ittyerah Ranjit24,Migdal Elyse3,Choi Grace3,Kopp Emily3,Loja Bridget3,Hasan Eusha3,Li Jiacheng3,Bahena Alejandra3,Prabhakaran Karthik4,Mizsei Gabor4,Gabrielyan Marianna3,Schuck Theresa5,Trotman Winifred3,Robinson John5,Ohm Daniel T.3,Lee Edward B.5,Trojanowski John Q.5,McMillan Corey3,Grossman Murray3,Irwin David J.3,Detre John A.3,Tisdall M. Dylan4,Das Sandhitsu R.23,Wisse Laura E. M.6,Wolk David A.3,Yushkevich Paul A.24

Affiliation:

1. Department of Bioengineering, University of Pennsylvania, Philadelphia, PA, United States

2. Penn Image Computing and Science Laboratory, University of Pennsylvania, Philadelphia, PA, United States

3. Department of Neurology, University of Pennsylvania, Philadelphia, PA, United States

4. Department of Radiology, University of Pennsylvania, Philadelphia, PA, United States

5. Department of Pathology and Laboratory Medicine, University of Pennsylvania, Philadelphia, PA, United States

6. Department of Diagnostic Radiology, Lund University, Lund, Sweden

Abstract

Abstract Postmortem MRI allows brain anatomy to be examined at high resolution and to link pathology measures with morphometric measurements. However, automated segmentation methods for brain mapping in postmortem MRI are not well developed, primarily due to limited availability of labeled datasets, and heterogeneity in scanner hardware and acquisition protocols. In this work, we present a high-resolution dataset of 135 postmortem human brain tissue specimens imaged at 0.3 mm3 isotropic using a T2w sequence on a 7T whole-body MRI scanner. We developed a deep learning pipeline to segment the cortical mantle by benchmarking the performance of nine deep neural architectures, followed by post-hoc topological correction. We evaluate the reliability of this pipeline via overlap metrics with manual segmentation in 6 specimens, and intra-class correlation between cortical thickness measures extracted from the automatic segmentation and expert-generated reference measures in 36 specimens. We also segment four subcortical structures (caudate, putamen, globus pallidus, and thalamus), white matter hyperintensities, and the normal appearing white matter, providing a limited evaluation of accuracy. We show generalizing capabilities across whole-brain hemispheres in different specimens, and also on unseen images acquired at 0.28 mm3 and 0.16 mm3 isotropic T2*w fast low angle shot (FLASH) sequence at 7T. We report associations between localized cortical thickness and volumetric measurements across key regions, and semi-quantitative neuropathological ratings in a subset of 82 individuals with Alzheimer’s disease (AD) continuum diagnoses. Our code, Jupyter notebooks, and the containerized executables are publicly available at the project webpage (https://pulkit-khandelwal.github.io/exvivo-brain-upenn/).

Publisher

MIT Press

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