Network-level connectivity is a critical feature distinguishing dystonic tremor and essential tremor

Author:

DeSimone Jesse C1,Archer Derek B1ORCID,Vaillancourt David E123,Wagle Shukla Aparna34

Affiliation:

1. Department of Applied Physiology and Kinesiology, University of Florida, Gainesville, FL, USA

2. Department of Biomedical Engineering, University of Florida, Gainesville, FL, USA

3. Department of Neurology, College of Medicine, University of Florida, Gainesville, FL, USA

4. Fixel Center for Neurological Disease, College of Medicine, University of Florida, Gainesville, FL, USA

Abstract

AbstractDystonia is a movement disorder characterized by involuntary muscle co-contractions that give rise to disabling movements and postures. A recent expert consensus labelled the incidence of tremor as a core feature of dystonia that can affect body regions both symptomatic and asymptomatic to dystonic features. We are only beginning to understand the neural network-level signatures that relate to clinical features of dystonic tremor. At the same time, clinical features of dystonic tremor can resemble that of essential tremor and present a diagnostic confound for clinicians. Here, we examined network-level functional activation and connectivity in patients with dystonic tremor and essential tremor. The dystonic tremor group included primarily cervical dystonia patients with dystonic head tremor and the majority had additional upper-limb tremor. The experimental paradigm included a precision grip-force task wherein online visual feedback related to force was manipulated across high and low spatial feedback levels. Prior work using this paradigm in essential tremor patients produced exacerbation of grip-force tremor and associated changes in functional activation. As such, we directly compared the effect of visual feedback on grip-force tremor and associated functional network-level activation and connectivity between dystonic tremor and essential tremor patient cohorts to better understand disease-specific mechanisms. Increased visual feedback similarly exacerbated force tremor during the grip-force task in dystonic tremor and essential tremor cohorts. Patients with dystonic tremor and essential tremor were characterized by distinct functional activation abnormalities in cortical regions but not in the cerebellum. We examined seed-based functional connectivity from the sensorimotor cortex, globus pallidus internus, ventral intermediate thalamic nucleus, and dentate nucleus, and observed abnormal functional connectivity networks in dystonic tremor and essential tremor groups relative to controls. However, the effects were far more widespread in the dystonic tremor group as changes in functional connectivity were revealed across cortical, subcortical, and cerebellar regions independent of the seed location. A unique pattern for dystonic tremor included widespread reductions in functional connectivity compared to essential tremor within higher-level cortical, basal ganglia, and cerebellar regions. Importantly, a receiver operating characteristic determined that functional connectivity z-scores were able to classify dystonic tremor and essential tremor with 89% area under the curve, whereas combining functional connectivity with force tremor yielded 94%. These findings point to network-level connectivity as an important feature that differs substantially between dystonic tremor and essential tremor and should be further explored in implementing appropriate diagnostic and therapeutic strategies.

Funder

National Institutes of Health

Tyler’s Hope Foundation

Parkinson’s Foundation

NIH

NSF

Benign Essential Blepharospasm Research Foundation, Dystonia Coalition

Dystonia Medical Research Foundation

National Organization for Rare Disorders

Publisher

Oxford University Press (OUP)

Subject

Clinical Neurology

Reference67 articles.

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