Sequence of clinical and neurodegeneration events in Parkinson’s disease progression

Author:

Oxtoby Neil P1ORCID,Leyland Louise-Ann2,Aksman Leon M1,Thomas George E C2ORCID,Bunting Emma L2,Wijeratne Peter A1ORCID,Young Alexandra L13ORCID,Zarkali Angelika2ORCID,Tan Manuela M X45ORCID,Bremner Fion D6,Keane Pearse A78ORCID,Morris Huw R45ORCID,Schrag Anette E45,Alexander Daniel C1,Weil Rimona S259ORCID

Affiliation:

1. Centre for Medical Image Computing, Department of Computer Science and Department of Medical Physics and Biomedical Engineering, UCL, London, UK

2. Dementia Research Centre, UCL Institute of Neurology, UCL, London, UK

3. Department of Neuroimaging, Institute of Psychiatry, Psychology and Neuroscience, King’s College London, London, UK

4. Department of Clinical and Movement Neuroscience, UCL Queen Square Institute of Neurology, UCL, London, UK

5. Movement Disorders Consortium, UCL, London, UK

6. Neuro-ophthalmology, National Hospital for Neurology and Neurosurgery, University College London Hospitals, London, UK

7. Institute of Ophthalmology, UCL, London, UK

8. Moorfields Eye Hospital, London, UK

9. The Wellcome Centre for Human Neuroimaging, UCL Institute of Neurology, UCL, London, UK

Abstract

Abstract Dementia is one of the most debilitating aspects of Parkinson’s disease. There are no validated biomarkers that can track Parkinson’s disease progression, nor accurately identify patients who will develop dementia and when. Understanding the sequence of observable changes in Parkinson’s disease in people at elevated risk for developing dementia could provide an integrated biomarker for identifying and managing individuals who will develop Parkinson’s dementia. We aimed to estimate the sequence of clinical and neurodegeneration events, and variability in this sequence, using data-driven statistical modelling in two separate Parkinson’s cohorts, focusing on patients at elevated risk for dementia due to their age at symptom onset. We updated a novel version of an event-based model that has only recently been extended to cope naturally with clinical data, enabling its application in Parkinson’s disease for the first time. The observational cohorts included healthy control subjects and patients with Parkinson’s disease, of whom those diagnosed at age 65 or older were classified as having high risk of dementia. The model estimates that Parkinson’s progression in patients at elevated risk for dementia starts with classic prodromal features of Parkinson’s disease (olfaction, sleep), followed by early deficits in visual cognition and increased brain iron content, followed later by a less certain ordering of neurodegeneration in the substantia nigra and cortex, neuropsychological cognitive deficits, retinal thinning in dopamine layers, and further deficits in visual cognition. Importantly, we also characterize variation in the sequence. We found consistent, cross-validated results within cohorts, and agreement between cohorts on the subset of features available in both cohorts. Our sequencing results add powerful support to the increasing body of evidence suggesting that visual processing specifically is affected early in patients with Parkinson’s disease at elevated risk of dementia. This opens a route to earlier and more precise detection, as well as a more detailed understanding of the pathological mechanisms underpinning Parkinson’s dementia.

Funder

MRC

EuroPOND

European Union’s Horizon 2020 research and innovation programme

NPO

DCA

Network Models Of Neurodegeneration

Biomarkers Across Neurodegenerative Disease program

The Michael J Fox Foundation

Alzheimer’s Association

Alzheimer’s Research UK

Weston Brain Institute

Moorfields Eye Charity Career Development Award

UK Research & Innovation Future Leaders Fellowship

Parkinson’s UK

GE Healthcare

ESRC

Movement disorders society

RSW

Medical Research Council PhD studentships

National Institute for Health Research University College London Hospitals Biomedical Research Centre

Michael J. Fox Foundation

Publisher

Oxford University Press (OUP)

Subject

Neurology (clinical)

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