Keyword search (4,163 papers available)

"Mohammadi A" Authored Publications:

Title Authors PubMed ID
1 Lung Nodule Malignancy Classification Integrating Deep and Radiomic Features in a Three-Way Attention-Based Fusion Module Khademi S; Heidarian S; Afshar P; Mohammadi A; Sidiqi A; Nguyen ET; Ganeshan B; Oikonomou A; 41150036
ENCS
2 Energy-delay analysis in advection-diffusion-based wireless body area networks Kianfar G; Hosseini P; Azadi M; Abouei J; Mohammadi A; 40880450
ENCS
3 Differentiation of COVID-19 from other types of viral pneumonia and severity scoring on baseline chest radiographs: Comparison of deep learning with multi-reader evaluation Enshaei N; Mohammadi A; Naderkhani F; Daneman N; Abu Mughli R; Anconina R; Berger FH; Kozak RA; Mubareka S; Villanueva Campos AM; Narang K; Vivekanandan T; Chan AK; Lam P; Andany N; Oikonomou A; 40729327
ENCS
4 Transformer-based hand gesture recognition from instantaneous to fused neural decomposition of high-density EMG signals Montazerin M; Rahimian E; Naderkhani F; Atashzar SF; Yanushkevich S; Mohammadi A; 37419881
ENCS
5 Robust framework for COVID-19 identication from a multicenter dataset of chest CT scans Khademi S; Heidarian S; Afshar P; Enshaei N; Naderkhani F; Rafiee MJ; Oikonomou A; Shafiee A; Babaki Fard F; Plataniotis KN; Mohammadi A; 36862633
ENCS
6 DF-SSmVEP: Dual Frequency Aggregated Steady-State Motion Visual Evoked Potential Design with Bifold Canonical Correlation Analysis Karimi R; Mohammadi A; Asif A; Benali H; 35408182
ENCS
7 Human-level COVID-19 diagnosis from low-dose CT scans using a two-stage time-distributed capsule network Afshar P; Rafiee MJ; Naderkhani F; Heidarian S; Enshaei N; Oikonomou A; Babaki Fard F; Anconina R; Farahani K; Plataniotis KN; Mohammadi A; 35318368
ENCS
8 COVID-rate: an automated framework for segmentation of COVID-19 lesions from chest CT images Enshaei N; Oikonomou A; Rafiee MJ; Afshar P; Heidarian S; Mohammadi A; Plataniotis KN; Naderkhani F; 35217712
ENCS
9 COVID-FACT: A Fully-Automated Capsule Network-Based Framework for Identification of COVID-19 Cases from Chest CT Scans Heidarian S; Afshar P; Enshaei N; Naderkhani F; Rafiee MJ; Babaki Fard F; Samimi K; Atashzar SF; Oikonomou A; Plataniotis KN; Mohammadi A; 34113843
ENCS
10 COVID-CAPS: A Capsule Network-based Framework for Identification of COVID-19 cases from X-ray Images. Afshar P, Heidarian S, Naderkhani F, Oikonomou A, Plataniotis KN, Mohammadi A 32958971
ENCS
11 PHTNet: Characterization and Deep Mining of Involuntary Pathological Hand Tremor using Recurrent Neural Network Models. Shahtalebi S; Atashzar SF; Samotus O; Patel RV; Jog MS; Mohammadi A; 32042111
ENCS

 

Title:PHTNet: Characterization and Deep Mining of Involuntary Pathological Hand Tremor using Recurrent Neural Network Models.
Authors:Shahtalebi SAtashzar SFSamotus OPatel RVJog MSMohammadi A
Link:https://www.ncbi.nlm.nih.gov/pubmed/32042111
DOI:10.1038/s41598-020-58912-9
Publication:Scientific reports
Keywords:
PMID:32042111 Category:Sci Rep Date Added:2020-02-12
Dept Affiliation: ENCS
1 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, H3G 1M8, QC, Canada.
2 Departments of Electrical and Computer Engineering, and Mechanical and Aerospace Engineering, New York University, New York, 10003, NY, USA.
3 NYU WIRELESS center, New York University (NYU), New York, USA.
4 London Movement Disorders Centre, London Health Sciences Centre, London, ON, Canada.
5 Department of Electrical and Computer Engineering, University of Western Ontario, London, N6A 5B9, ON, Canada.
6 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, H3G 1M8, QC, Canada. arash.mohammadi@concordia.ca.

Description:

The global aging phenomenon has increased the number of individuals with age-related neurological movement disorders including Parkinson's Disease (PD) and Essential Tremor (ET). Pathological Hand Tremor (PHT), which is considered among the most common motor symptoms of such disorders, can severely affect patients' independence and quality of life. To develop advanced rehabilitation and assistive technologies, accurate estimation/prediction of nonstationary PHT is critical, however, the required level of accuracy has not yet been achieved. The lack of sizable datasets and generalizable modeling techniques that can fully represent the spectrotemporal characteristics of PHT have been a critical bottleneck in attaining this goal. This paper addresses this unmet need through establishing a deep recurrent model to predict and eliminate the PHT component of hand motion. More specifically, we propose a machine learning-based, assumption-free, and real-time PHT elimination framework, the PHTNet, by incorporating deep bidirectional recurrent neural networks. The PHTNet is developed over a hand motion dataset of 81 ET and PD patients collected systematically in a movement disorders clinic over 3 years. The PHTNet is the first intelligent systems model developed on this scale for PHT elimination that maximizes the resolution of estimation and allows for prediction of future and upcoming sub-movements.

PMID: 32042111 [PubMed - indexed for MEDLINE]





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