| Literature DB >> 34933123 |
Daniela Ushizima1, Yuheng Chen2, Maryana Alegro3, Dulce Ovando2, Rana Eser2, WingHung Lee2, Kinson Poon2, Anubhav Shankar2, Namrata Kantamneni2, Shruti Satrawada2, Edson Amaro Junior4, Helmut Heinsen5, Duygu Tosun6, Lea T Grinberg7.
Abstract
Abnormal tau inclusions are hallmarks of Alzheimer's disease and predictors of clinical decline. Several tau PET tracers are available for neurodegenerative disease research, opening avenues for molecular diagnosis in vivo. However, few have been approved for clinical use. Understanding the neurobiological basis of PET signal validation remains problematic because it requires a large-scale, voxel-to-voxel correlation between PET and (immuno) histological signals. Large dimensionality of whole human brains, tissue deformation impacting co-registration, and computing requirements to process terabytes of information preclude proper validation. We developed a computational pipeline to identify and segment particles of interest in billion-pixel digital pathology images to generate quantitative, 3D density maps. The proposed convolutional neural network for immunohistochemistry samples, IHCNet, is at the pipeline's core. We have successfully processed and immunostained over 500 slides from two whole human brains with three phospho-tau antibodies (AT100, AT8, and MC1), spanning several terabytes of images. Our artificial neural network estimated tau inclusion from brain images, which performs with ROC AUC of 0.87, 0.85, and 0.91 for AT100, AT8, and MC1, respectively. Introspection studies further assessed the ability of our trained model to learn tau-related features. We present an end-to-end pipeline to create terabytes-large 3D tau inclusion density maps co-registered to MRI as a means to facilitate validation of PET tracers.Entities:
Keywords: Alzheimer's disease; Big data; Convolutional neural networks; Deep learning; Digital pathology; Histopathology; Imaging; Machine learning
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Year: 2021 PMID: 34933123 PMCID: PMC8983026 DOI: 10.1016/j.neuroimage.2021.118790
Source DB: PubMed Journal: Neuroimage ISSN: 1053-8119 Impact factor: 7.400