Publication | Open Access
Interpretable classification of Alzheimer’s disease pathologies with a convolutional neural network pipeline
17
Citations
43
References
2018
Year
Unknown Venue
Convolutional Neural NetworkHigh ResolutionEngineeringDigital PathologyDisease PathologiesAlzheimer ’Image ClassificationAlzheimer's DiseaseImage AnalysisData ScienceNeurologyBrain PathologyAutomated SegmentationNeuroinformaticsComputational PathologyNeuroimagingNeurodegenerationDeep LearningMedical Image ComputingNeuroimaging BiomarkersNeurodegenerative DiseasesBiomedical ImagingSaliency MappingNeuroscienceMedicineInterpretable Classification
Abstract Neuropathologists assess vast brain areas to identify diverse and subtly-differentiated morphologies. Standard semi-quantitative scoring approaches, however, are coarse-grained and lack precise neuroanatomic localization. We report a proof-of-concept deep learning pipeline identifying specific neuropathologies—amyloid plaques and cerebral amyloid angiopathy—in immunohistochemically-stained archival slides. Using automated segmentation of stained objects and a cloud-based interface, we annotated >70,000 plaque candidates from 43 whole slide images (WSIs) to train and evaluate convolutional neural networks. Networks achieved strong plaque classification on a 10-WSI hold-out set (0.993 and 0.743 areas under the receiver operating characteristic and precision recall curve, respectively). Prediction confidence maps visualized morphology distributions for WSIs at high resolution. Resulting plaque-burden scores correlated well with established semi-quantitative scores on a 30-WSI blinded hold-out. Finally, saliency mapping demonstrated that networks learned patterns agreeing with accepted pathologic features. This scalable means to augment a neuropathologist’s ability may suggest a route to neuropathologic deep phenotyping.
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