Keyword search (4,164 papers available)

"Fusion" Keyword-tagged Publications:

Title Authors PubMed ID
1 Attention-Fusion-Based Two-Stream Vision Transformer for Heart Sound Classification Ranipa K; Zhu WP; Swamy MNS; 41155032
ENCS
2 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
3 Surgical hyperspectral imaging: a systematic review Ali HM; Xiao Y; Kersten-Oertel M; 40824764
ENCS
4 Variations in perfusion detectable in advance of microstructure in white matter aging Robinson TD; Sun YL; Chang PTH; Gauthier CJ; Chen JJ; 40694306
PHYSICS
5 iSurgARy: A mobile augmented reality solution for ventriculostomy in resource-limited settings Asadi Z; Castillo JP; Asadi M; Sinclair DS; Kersten-Oertel M; 39816703
ENCS
6 A population-averaged structural connectomic brain atlas dataset from 422 HCP-aging subjects Xiao Y; Gilmore G; Kai J; Lau JC; Peters T; Khan AR; 37663773
ENCS
7 Cerebral blood flow in schizophrenia: A systematic review and meta-analysis of MRI-based studies Percie du Sert O; Unrau J; Gauthier CJ; Chakravarty M; Malla A; Lepage M; Raucher-Chéné D; 36341843
CRDH
8 Mapping pontocerebellar connectivity with diffusion MRI Rousseau PN; Chakravarty MM; Steele CJ; 36252913
PERFORM
9 UncertaintyFuseNet: Robust uncertainty-aware hierarchical feature fusion model with Ensemble Monte Carlo Dropout for COVID-19 detection Abdar M; Salari S; Qahremani S; Lam HK; Karray F; Hussain S; Khosravi A; Acharya UR; Makarenkov V; Nahavandi S; 36217534
ENCS
10 Structural brain network topological alterations in stuttering adults Gracco VL; Sares AG; Koirala N; 35368614
PSYCHOLOGY
11 White matter correlates of sensorimotor synchronization in persistent developmental stuttering Jossinger S; Sares A; Zislis A; Sury D; Gracco V; Ben-Shachar M; 34856426
PSYCHOLOGY
12 Human Activity Recognition: A Comparative Study to Assess the Contribution Level of Accelerometer, ECG, and PPG Signals Afzali Arani MS; Costa DE; Shihab E; 34770303
ENCS
13 Characterizing white matter alterations subject to clinical laterality in drug-naïve de novo Parkinson's disease Xiao Y; Peters TM; Khan AR; 34106502
PERFORM
14 Development and validation of the multidimensional version of the Fear of Self Questionnaire: Corrupted, culpable and malformed feared possible selves in obsessive-compulsive and body-dysmorphic symptoms. Aardema F, Radomsky AS, Moulding R, Wong SF, Bourguignon L, Giraldo-O'Meara M 33547834
PSYCHOLOGY
15 Comparing perturbation models for evaluating stability of neuroimaging pipelines. Kiar G, de Oliveira Castro P, Rioux P, Petit E, Brown ST, Evans AC, Glatard T 32831546
IMAGING
16 A Cross-Sectional Study on the Impact of Arterial Stiffness on the Corpus Callosum, a Key White Matter Tract Implicated in Alzheimer's Disease Badji A; de la Colina AN; Boshkovski T; Sabra D; Karakuzu A; Robitaille-Grou MC; Gros C; Joubert S; Bherer L; Lamarre-Cliche M; Stikov N; Gauthier CJ; Cohen-Adad J; Girouard H; 32741837
PERFORM
17 Simulation of Capillary Hemodynamics and Comparison with Experimental Results of Microphantom Perfusion Weighted Imaging. S S, N RA 32637373
PHYSICS
18 Influence of Homogenization and Solution Treatments Time on the Microstructure and Hardness of Inconel 718 Fabricated by Laser Powder Bed Fusion Process. Fayed EM, Shahriari D, Saadati M, Brailovski V, Jahazi M, Medraj M 32516909
ENCS
19 Body image-related cognitive fusion and disordered eating: the role of self-compassion and sad mood. Scardera S, Sacco S, Di Sante J, Booij L 32086789
PSYCHOLOGY
20 Diffusion dynamics on the coexistence subspace in a stochastic evolutionary game Popovic L; Peuckert L; 32025789
MATHSTATS
21 Computer-Aided Diagnosis System of Alzheimer's Disease Based on Multimodal Fusion: Tissue Quantification Based on the Hybrid Fuzzy-Genetic-Possibilistic Model and Discriminative Classification Based on the SVDD Model. Lazli L, Boukadoum M, Ait Mohamed O 31652635
ENCS
22 Inferior Longitudinal Fasciculus' Role in Visual Processing and Language Comprehension: A Combined MEG-DTI Study. Shin J, Rowley J, Chowdhury R, Jolicoeur P, Klein D, Grova C, Rosa-Neto P, Kobayashi E 31507359
PERFORM
23 Higher cardiovascular fitness level is associated with lower cerebrovascular reactivity and perfusion in healthy older adults. Intzandt B, Sabra D, Foster C, Desjardins-Crépeau L, Hoge RD, Steele CJ, Bherer L, Gauthier CJ 31342831
PERFORM
24 Distinct features of multivesicular body-lysosome fusion revealed by a new cell-free content-mixing assay. Karim MA, Samyn DR, Mattie S, Brett CL 29135058
BIOLOGY
25 Rab-Effector-Kinase Interplay Modulates Intralumenal Fragment Formation during Vacuole Fusion. Karim MA, McNally EK, Samyn DR, Mattie S, Brett CL 30269949
BIOLOGY
26 A Cell-Free Content Mixing Assay for SNARE-Mediated Multivesicular Body-Vacuole Membrane Fusion. Karim MA, Samyn DR, Brett CL 30317513
BIOLOGY
27 Visualization of SNARE-Mediated Organelle Membrane Hemifusion by Electron Microscopy. Mattie S, Kazmirchuk T, Mui J, Vali H, Brett CL 30317518
BIOLOGY
28 MAP Kinase Regulation of the Candida albicans Pheromone Pathway. Rastghalam G, Omran RP, Alizadeh M, Fulton D, Mallick J, Whiteway M 30787119
BIOLOGY
29 MEG-EEG Information Fusion and Electromagnetic Source Imaging: From Theory to Clinical Application in Epilepsy. Chowdhury RA, Zerouali Y, Hedrich T, Heers M, Kobayashi E, Lina JM, Grova C 26016950
PERFORM
30 Reproducibility of EEG-MEG fusion source analysis of interictal spikes: Relevance in presurgical evaluation of epilepsy. Chowdhury RA, Pellegrino G, Aydin Ü, Lina JM, Dubeau F, Kobayashi E, Grova C 29164737
PERFORM
31 Arterial stiffness and brain integrity: A review of MRI findings. Badji A, Sabra D, Bherer L, Cohen-Adad J, Girouard H, Gauthier CJ 31063866
PERFORM
32 Intra-operative Video Characterization of Carotid Artery Pulsation Patterns in Case Series with Post-endarterectomy Hypertension and Hyperperfusion Syndrome. Xiao Y, Rivaz H, Kasuya H, Yokosako S, Mindru C, Teitelbaum J, Sirhan D, Sinclair D, Angle M, Lo BWY 29322480
PERFORM

 

Title:UncertaintyFuseNet: Robust uncertainty-aware hierarchical feature fusion model with Ensemble Monte Carlo Dropout for COVID-19 detection
Authors:Abdar MSalari SQahremani SLam HKKarray FHussain SKhosravi AAcharya URMakarenkov VNahavandi S
Link:pubmed.ncbi.nlm.nih.gov/36217534/
DOI:10.1016/j.inffus.2022.09.023
Publication:An international journal on information fusion
Keywords:COVID-19Deep learningEarly fusionFeature fusionUncertainty quantification
PMID:36217534 Category: Date Added:2022-10-11
Dept Affiliation: ENCS
1 Institute for Intelligent Systems Research and Innovation (IISRI), Deakin University, Geelong, Australia.
2 Department of Computer Science and Software Engineering, Concordia University, Montreal, Canada.
3 Department of Electrical Engineering, Sharif University of Technology, Tehran, Iran.
4 Centre for Robotics Research, Department of Engineering, King's College London, London, United Kingdom.
5 Centre for Pattern Analysis and Machine Intelligence, Department of Electrical and Computer Engineering, University of Waterloo, Waterloo, ON, Canada.
6 Department of Machine Learning, Mohamed bin Zayed University of Artificial Intelligence, Abu Dhabi, United Arab Emirates.
7 System Administrator, Dibrugarh University, Dibrugarh, India.
8 Department of Electronics and Computer Engineering, Ngee Ann Polytechnic, Clementi, Singapore.
9 Dep

Description:

The COVID-19 (Coronavirus disease 2019) pandemic has become a major global threat to human health and well-being. Thus, the development of computer-aided detection (CAD) systems that are capable of accurately distinguishing COVID-19 from other diseases using chest computed tomography (CT) and X-ray data is of immediate priority. Such automatic systems are usually based on traditional machine learning or deep learning methods. Differently from most of the existing studies, which used either CT scan or X-ray images in COVID-19-case classification, we present a new, simple but efficient deep learning feature fusion model, called <math><mrow><mi>U</mi> <mi>n</mi> <mi>c</mi> <mi>e</mi> <mi>r</mi> <mi>t</mi> <mi>a</mi> <mi>i</mi> <mi>n</mi> <mi>t</mi> <mi>y</mi> <mi>F</mi> <mi>u</mi> <mi>s</mi> <mi>e</mi> <mi>N</mi> <mi>e</mi> <mi>t</mi></mrow> </math> , which is able to classify accurately large datasets of both of these types of images. We argue that the uncertainty of the model's predictions should be taken into account in the learning process, even though most of the existing studies have overlooked it. We quantify the prediction uncertainty in our feature fusion model using effective Ensemble Monte Carlo Dropout (EMCD) technique. A comprehensive simulation study has been conducted to compare the results of our new model to the existing approaches, evaluating the performance of competing models in terms of Precision, Recall, F-Measure, Accuracy and ROC curves. The obtained results prove the efficiency of our model which provided the prediction accuracy of 99.08% and 96.35% for the considered CT scan and X-ray datasets, respectively. Moreover, our <math><mrow><mi>U</mi> <mi>n</mi> <mi>c</mi> <mi>e</mi> <mi>r</mi> <mi>t</mi> <mi>a</mi> <mi>i</mi> <mi>n</mi> <mi>t</mi> <mi>y</mi> <mi>F</mi> <mi>u</mi> <mi>s</mi> <mi>e</mi> <mi>N</mi> <mi>e</mi> <mi>t</mi></mrow> </math> model was generally robust to noise and performed well with previously unseen data. The source code of our implementation is freely available at: https: github.com/moloud1987/UncertaintyFuseNet-for-COVID-19-Classification.




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