| 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: | Robust framework for COVID-19 identication from a multicenter dataset of chest CT scans | ||||
| Authors: | Khademi S, Heidarian S, Afshar P, Enshaei N, Naderkhani F, Rafiee MJ, Oikonomou A, Shafiee A, Babaki Fard F, Plataniotis KN, Mohammadi A | ||||
| Link: | pubmed.ncbi.nlm.nih.gov/36862633/ | ||||
| DOI: | 10.1371/journal.pone.0282121 | ||||
| Publication: | PloS one | ||||
| Keywords: | |||||
| PMID: | 36862633 | Category: | Date Added: | 2023-03-02 | |
| Dept Affiliation: |
ENCS
1 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, Canada. 2 Department of Electrical and Computer Engineering, Concordia University, Montreal, QC, Canada. 3 Department of Medicine and Diagnostic Radiology, McGill University, Montreal, QC, Canada. 4 Department of Medical Imaging, Sunnybrook Health Sciences Center, Toronto, Canada. 5 Department of Cardiovascular Research, Tehran Heart Center, Cardiovascular Diseases Research Institute, Tehran University of Medical Sciences, Tehran, Iran. 6 Faculty of Medicine, University of Montreal, Montreal, QC, Canada. 7 Department of Electrical and Computer Engineering, University of Toronto, Toronto, Canada. |
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Description: |
The main objective of this study is to develop a robust deep learning-based framework to distinguish COVID-19, Community-Acquired Pneumonia (CAP), and Normal cases based on volumetric chest CT scans, which are acquired in different imaging centers using different scanners and technical settings. We demonstrated that while our proposed model is trained on a relatively small dataset acquired from only one imaging center using a specific scanning protocol, it performs well on heterogeneous test sets obtained by multiple scanners using different technical parameters. We also showed that the model can be updated via an unsupervised approach to cope with the data shift between the train and test sets and enhance the robustness of the model upon receiving a new external dataset from a different center. More specifically, we extracted the subset of the test images for which the model generated a confident prediction and used the extracted subset along with the training set to retrain and update the benchmark model (the model trained on the initial train set). Finally, we adopted an ensemble architecture to aggregate the predictions from multiple versions of the model. For initial training and development purposes, an in-house dataset of 171 COVID-19, 60 CAP, and 76 Normal cases was used, which contained volumetric CT scans acquired from one imaging center using a single scanning protocol and standard radiation dose. To evaluate the model, we collected four different test sets retrospectively to investigate the effects of the shifts in the data characteristics on the model's performance. Among the test cases, there were CT scans with similar characteristics as the train set as well as noisy low-dose and ultra-low-dose CT scans. In addition, some test CT scans were obtained from patients with a history of cardiovascular diseases or surgeries. This dataset is referred to as the "SPGC-COVID" dataset. The entire test dataset used in this study contains 51 COVID-19, 28 CAP, and 51 Normal cases. Experimental results indicate that our proposed framework performs well on all test sets achieving total accuracy of 96.15% (95%CI: [91.25-98.74]), COVID-19 sensitivity of 96.08% (95%CI: [86.54-99.5]), CAP sensitivity of 92.86% (95%CI: [76.50-99.19]), Normal sensitivity of 98.04% (95%CI: [89.55-99.95]) while the confidence intervals are obtained using the significance level of 0.05. The obtained AUC values (One class vs Others) are 0.993 (95%CI: [0.977-1]), 0.989 (95%CI: [0.962-1]), and 0.990 (95%CI: [0.971-1]) for COVID-19, CAP, and Normal classes, respectively. The experimental results also demonstrate the capability of the proposed unsupervised enhancement approach in improving the performance and robustness of the model when being evaluated on varied external test sets. |



