Dysphagia in primary progressive aphasia: Clinical predictors and neuroanatomical basis

Author:

Mazzeo Salvatore1234,Mulroy Eoin1,Jiang Jessica1,Lassi Michael5,Johnson Jeremy C. S.1,Hardy Chris J. D.1ORCID,Rohrer Jonathan D.1,Warren Jason D.1,Volkmer Anna6

Affiliation:

1. Dementia Research Centre, Department of Neurodegenerative Disease, UCL Queen Square Institute of Neurology University College London London UK

2. Research and Innovation Centre for Dementia–CRIDEM University of Florence, Azienda Ospedaliera–Universitaria Careggi Florence Italy

3. Vita‐Salute San Raffaele University Milan Italy

4. IRCCS Policlinico San Donato San Donato Milanese Italy

5. BioRobotics Institute and Department of Excellence in Robotics and AI Scuola Superiore Sant'Anna Pisa Italy

6. Department of Psychology & Language Sciences University College London London UK

Abstract

AbstractBackground and purposeDysphagia is an important feature of neurodegenerative diseases and potentially life‐threatening in primary progressive aphasia (PPA) but remains poorly characterized in these syndromes. We hypothesized that dysphagia would be more prevalent in nonfluent/agrammatic variant (nfv)PPA than other PPA syndromes, predicted by accompanying motor features, and associated with atrophy affecting regions implicated in swallowing control.MethodsIn a retrospective case–control study at our tertiary referral centre, we recruited 56 patients with PPA (21 nfvPPA, 22 semantic variant [sv]PPA, 13 logopenic variant [lv]PPA). Using a pro forma based on caregiver surveys and clinical records, we documented dysphagia (present/absent) and associated, potentially predictive clinical, cognitive, and behavioural features. These were used to train a machine learning model. Patients' brain magnetic resonance imaging scans were assessed using voxel‐based morphometry and region‐of‐interest analyses comparing differential atrophy profiles associated with dysphagia presence/absence.ResultsDysphagia was significantly more prevalent in nfvPPA (43% vs. 5% svPPA and no lvPPA). The machine learning model revealed a hierarchy of features predicting dysphagia in the nfvPPA group, with excellent classification accuracy (90.5%, 95% confidence interval = 77.9–100); the strongest predictor was orofacial apraxia, followed by older age, parkinsonism, more severe behavioural disturbance, and more severe cognitive impairment. Significant grey matter atrophy correlates of dysphagia in nfvPPA were identified in left middle frontal, right superior frontal, and right supramarginal gyri and right caudate.ConclusionsDysphagia is a common feature of nfvPPA, linked to underlying corticosubcortical network dysfunction. Clinicians should anticipate this symptom particularly in the context of other motor features and more severe disease.

Funder

Alzheimer’s Research UK

Alzheimer's Society

National Brain Appeal

UK Dementia Research Institute

Invention for Innovation

Publisher

Wiley

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5. Pneumonia-associated death in patients with dementia: A systematic review and meta-analysis

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