Affiliation:
1. The BioRobotics Institute Sant'Anna School of Advanced Studies Pisa Italy
2. Department of Excellence in Robotics and AI Sant'Anna School of Advanced Studies Pisa Italy
3. IRCSS Fondazione Don Carlo Gnocchi Florence Italy
4. Department of Neuroscience Psychology, Drug Research and Child Health Careggi University Hospital Florence Italy
5. Università di Pisa Dipartimento di Fisica Pisa Italy
Abstract
AbstractINTRODUCTIONEarly identification of Alzheimer's disease (AD) is necessary for a timely onset of therapeutic care. However, cortical structural alterations associated with AD are difficult to discern.METHODSWe developed a cortical model of AD‐related neurodegeneration accounting for slowing of local dynamics and global connectivity degradation. In a monocentric study we collected electroencephalography (EEG) recordings at rest from participants in healthy (HC, n = 17), subjective cognitive decline (SCD, n = 58), and mild cognitive impairment (MCI, n = 44) conditions. For each patient, we estimated neurodegeneration model parameters based on individual EEG recordings.RESULTSOur model outperformed standard EEG analysis not only in discriminating between HC and MCI conditions (F1 score 0.95 vs 0.75) but also in identifying SCD patients with biological hallmarks of AD in the cerebrospinal fluid (recall 0.87 vs 0.50).DISCUSSIONPersonalized models could (1) support classification of MCI, (2) assess the presence of AD pathology, and (3) estimate the risk of cognitive decline progression, based only on economical and non‐invasive EEG recordings.Highlights
Personalized cortical model estimating structural alterations from EEG recordings.
Discrimination of Mild Cognitive Impairment (MCI) and Healthy (HC) subjects (95%)
Prediction of biological markers of Alzheimer's in Subjective Decline (SCD) Subjects (87%)
Transition correctly predicted for 3/3 subjects that converted from SCD to MCI after 1y
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2 articles.
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