scholarly journals Movement Disorders and Dementia in a Woman With Chronic Aluminium Toxicity: Video-MRI Imaging

2021 ◽  
Vol 11 (1) ◽  
pp. 5
Author(s):  
Antonio Jose Reyes ◽  
Kanterpersad Ramcharan ◽  
Stanley Lawrence Giddings ◽  
Amrit Ramesar ◽  
Edmundo Rivero Arias ◽  
...  
2019 ◽  
Author(s):  
Ryan Cunningham ◽  
María B. Sánchez ◽  
Ian D. Loram

Objectives: To automate online segmentation of cervical muscles from transverse ultrasound (US) images of the human neck during functional head movement. To extend ground-truth labelling methodology beyond dependence upon MRI imaging of static head positions required for application to participants with involuntary movement disorders. Method: We collected sustained sequences (> 3 minutes) of US images of human posterior cervical neck muscles at 25 fps from 28 healthy adults, performing visually-guided pitch and yaw head motions. We sampled 1,100 frames (approx. 40 per participant) spanning the experimental range of head motion. We manually labelled all 1,100 US images and trained deconvolutional neural networks (DCNN) with a spatial SoftMax regression layer to classify every pixel in the full resolution (525x491) US images, as one of 14 classes (10 muscles, ligamentum nuchae, vertebra, skin, background). We investigated ‘MaxOut’ and Exponential Linear unit (ELU) transfer functions and compared with our previous benchmark (analytical shape modelling). Results: These DCNNs showed higher Jaccard Index (53.2%) and lower Hausdorff Distance (5.7 mm) than the previous benchmark (40.5%, 6.2 mm). SoftMax Confidence corresponded with correct classification. ‘MaxOut’ outperformed ELU marginally. Conclusion: The DCNN architecture accommodates challenging images and imperfect manual labels. The SoftMax layer gives user feedback of likely correct classification. The ‘MaxOut’ transfer function benefits from near-linear operation, compatibility with deconvolution operations and the dropout regulariser. Significance: This methodology for labelling ground-truth and training automated labelling networks is applicable for dynamic segmentation of moving muscles and for participants with involuntary movement disorders who cannot remain still.


Author(s):  
Amy Lustig ◽  
Cesar Ruiz

The purpose of this article is to present a general overview of the features of drug-induced movement disorders (DIMDs) comprised by Parkinsonism and extrapyramidal symptoms. Speech-language pathologists (SLPs) who work with patients presenting with these issues must have a broad understanding of the underlying disease process. This article will provide a brief introduction to the neuropathophysiology of DIMDs, a discussion of the associated symptomatology, the pharmacology implicated in causing DIMDs, and the medical management approaches currently in use.


2001 ◽  
Vol 120 (5) ◽  
pp. A68-A68
Author(s):  
G VANASSCHE ◽  
D VANBECKEVOORT ◽  
D BIELEN ◽  
G COREMANS ◽  
I AERDEN ◽  
...  

2008 ◽  
Author(s):  
Jonathan D. Richards ◽  
Paul M. Wilson ◽  
Pennie S. Seibert ◽  
Carin M. Patterson ◽  
Caitlin C. Otto ◽  
...  

1992 ◽  
Vol 10 (4) ◽  
pp. 907-919 ◽  
Author(s):  
Christopher G. Goetz ◽  
Eric J. Pappert
Keyword(s):  

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