Deep learning from multiple experts improves identification of amyloid neuropathologies

Author:

Wong Daniel R.ORCID,Tang ZiqiORCID,Mew Nicholas C.ORCID,Das Sakshi,Athey Justin,McAleese Kirsty E.ORCID,Kofler Julia K.,Flanagan Margaret E.,Borys Ewa,White Charles L.ORCID,Butte Atul J.ORCID,Dugger Brittany N.ORCID,Keiser Michael J.ORCID

Abstract

AbstractPathologists can label pathologies differently, making it challenging to yield consistent assessments in the absence of one ground truth. To address this problem, we present a deep learning (DL) approach that draws on a cohort of experts, weighs each contribution, and is robust to noisy labels. We collected 100,495 annotations on 20,099 candidate amyloid beta neuropathologies (cerebral amyloid angiopathy (CAA), and cored and diffuse plaques) from three institutions, independently annotated by five experts. DL methods trained on a consensus-of-two strategy yielded 12.6–26% improvements by area under the precision recall curve (AUPRC) when compared to those that learned individualized annotations. This strategy surpassed individual-expert models, even when unfairly assessed on benchmarks favoring them. Moreover, ensembling over individual models was robust to hidden random annotators. In blind prospective tests of 52,555 subsequent expert-annotated images, the models labeled pathologies like their human counterparts (consensus model AUPRC = 0.74 cored; 0.69 CAA). This study demonstrates a means to combine multiple ground truths into a common-ground DL model that yields consistent diagnoses informed by multiple and potentially variable expert opinions.

Funder

National Institute on Aging

McCune Foundation

Winspear Family Center for Research on the Neuropathology of Alzheimer Disease

Office of the President, University of California

Chan Zuckerberg Initiative

California Department of Public Health

Publisher

Springer Science and Business Media LLC

Subject

Cellular and Molecular Neuroscience,Neurology (clinical),Pathology and Forensic Medicine

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