4.7 Article

CT-based volumetric measures obtained through deep learning: Association with biomarkers of neurodegeneration

Journal

ALZHEIMERS & DEMENTIA
Volume -, Issue -, Pages -

Publisher

WILEY
DOI: 10.1002/alz.13445

Keywords

brain segmentation; cognition; CSF biomarkers; CT; deep learning; dementia; plasma biomarkers

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This study found that CT-based volumetric measures can accurately distinguish patients with neurodegenerative diseases from healthy individuals, as well as patients with prodromal dementia from controls. These measures are significantly associated with cognitive functioning, biochemical markers, and neuroimaging markers of neurodegenerative diseases. After further validation, CT-based volumetric measures have the potential to become a preferred examination tool for the diagnosis of neurodegenerative diseases.
INTRODUCTIONCranial computed tomography (CT) is an affordable and widely available imaging modality that is used to assess structural abnormalities, but not to quantify neurodegeneration. Previously we developed a deep-learning-based model that produced accurate and robust cranial CT tissue classification.MATERIALS AND METHODSWe analyzed 917 CT and 744 magnetic resonance (MR) scans from the Gothenburg H70 Birth Cohort, and 204 CT and 241 MR scans from participants of the Memory Clinic Cohort, Singapore. We tested associations between six CT-based volumetric measures (CTVMs) and existing clinical diagnoses, fluid and imaging biomarkers, and measures of cognition.RESULTSCTVMs differentiated cognitively healthy individuals from dementia and prodromal dementia patients with high accuracy levels comparable to MR-based measures. CTVMs were significantly associated with measures of cognition and biochemical markers of neurodegeneration.DISCUSSIONThese findings suggest the potential future use of CT-based volumetric measures as an informative first-line examination tool for neurodegenerative disease diagnostics after further validation.HIGHLIGHTSComputed tomography (CT)-based volumetric measures can distinguish between patients with neurodegenerative disease and healthy controls, as well as between patients with prodromal dementia and controls.CT-based volumetric measures associate well with relevant cognitive, biochemical, and neuroimaging markers of neurodegenerative diseases.Model performance, in terms of brain tissue classification, was consistent across two cohorts of diverse nature.Intermodality agreement between our automated CT-based and established magnetic resonance (MR)-based image segmentations was stronger than the agreement between visual CT and MR imaging assessment.

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