Keyword search (4,163 papers available)

"Kadem L" Authored Publications:

Title Authors PubMed ID
1 Hemodynamic performance and blood damage of the Intra-aortic pumps: A CFD-Based investigation Aycan O; Park Y; Kadem L; 41863715
ENCS
2 A high-fidelity simulator for evaluation of hemodynamic response during cardiopulmonary resuscitation in hypogravity environments Lord Z; Andrade C; Leroux L; Kadem L; 41741473
CHEMISTRY
3 Comprehensive review of reinforcement learning for medical ultrasound imaging Elmekki H; Islam S; Alagha A; Sami H; Spilkin A; Zakeri E; Zanuttini AM; Bentahar J; Kadem L; Xie WF; Pibarot P; Mizouni R; Otrok H; Singh S; Mourad A; 40567264
ENCS
4 Experimental Investigation of the Effect of a MitraClip on Left Ventricular Flow Dynamics Teimouri K; Darwish A; Saleh W; Ng HD; Kadem L; 40325266
ENCS
5 CACTUS: An open dataset and framework for automated Cardiac Assessment and Classification of Ultrasound images using deep transfer learning Elmekki H; Alagha A; Sami H; Spilkin A; Zanuttini AM; Zakeri E; Bentahar J; Kadem L; Xie WF; Pibarot P; Mizouni R; Otrok H; Singh S; Mourad A; 40107020
ENCS
6 Numerical investigation of the flow induced by a transcatheter intra-aortic entrainment pump Park Y; Aycan O; Kadem L; 40014031
ENCS
7 Design, manufacturing, and multi-modal imaging of stereolithography 3D printed flexible intracranial aneurysm phantoms Yalman A; Jafari A; Léger É; Mastroianni MA; Teimouri K; Savoji H; Collins DL; Kadem L; Xiao Y; 39546636
BIOLOGY
8 Design and validation of an In Vitro test bench for the investigation of cardiopulmonary resuscitation procedure El-Khoury A; Leroux L; Dupuis Desroches J; Di Labbio G; Kadem L; 39305857
ENCS
9 An Anatomically Shaped Mitral Valve for Hemodynamic Testing Darwish A; Papolla C; Rieu R; Kadem L; 38228812
ENCS
10 Spectral-Clustering of Lagrangian Trajectory Graphs: Application to Abdominal Aortic Aneurysms Darwish A; Norouzi S; Kadem L; 34845627
ENCS
11 On Left Ventricle Stroke Work Efficiency in Children with Moderate Aortic Valve Regurgitation or Moderate Aortic Valve Stenosis Asaadi M; Mawad W; Djebbari A; Keshavardz-Motamed Z; Dahdah N; Kadem L; 34357415
ENCS
12 Response to: "Color Doppler Splay: a New Tool for the Assessment of Valvular Regurgitations?" by Allievi et al Wiener PC; Friend EJ; Bhargav R; Radhakrishnan K; Kadem L; Pressman GS; 34062241
ENCS
13 Energy loss associated with in-vitro modeling of mitral annular calcification. Wiener PC, Darwish A, Friend E, Kadem L, Pressman GS 33591991
ENCS
14 Proper Orthogonal Decomposition Analysis of the Flow Downstream of a Dysfunctional Bileaflet Mechanical Aortic Valve. Darwish A, Di Labbio G, Saleh W, Kadem L 33469847
ENCS
15 Impact of Mitral Regurgitation on the Flow in a Model of a Left Ventricle. Papolla C, Darwish A, Kadem L, Rieu R 33000444
ENCS
16 Color Doppler Splay: A Clue to the Presence of Significant Mitral Regurgitation. Wiener PC, Friend EJ, Bhargav R, Radhakrishnan K, Kadem L, Pressman GS 32712051
ENCS
17 Effects of Hemodynamic Conditions and Valve Sizing on Leaflet Bending Stress in Self-Expanding Transcatheter Aortic Valve: An In-vitro Study. Stanová V, Zenses AS, Thollon L, Kadem L, Barragan P, Rieu R, Pibarot P 31995230
ENCS
18 Experimental Investigation of the Effect of Heart Rate On Flow in the Left Ventricle in Health and Disease -- Aortic Valve Regurgitation. Di Labbio G, Ben-Assa E, Kadem L 31701119
ENCS
19 Jet collisions and vortex reversal in the human left ventricle. Di Labbio G, Kadem L 30049450
ENCS
20 Response to letter to the editor: 'Left ventricular flow in the presence of aortic regurgitation'. Di Labbio G, Kadem L 30871721
ENCS
21 Experimental investigation of the flow downstream of a dysfunctional bileaflet mechanical aortic valve. Darwish A, Di Labbio G, Saleh W, Smadi O, Kadem L 31066923
ENCS

 

Title:Comprehensive review of reinforcement learning for medical ultrasound imaging
Authors:Elmekki HIslam SAlagha ASami HSpilkin AZakeri EZanuttini AMBentahar JKadem LXie WFPibarot PMizouni ROtrok HSingh SMourad A
Link:https://pubmed.ncbi.nlm.nih.gov/40567264/
DOI:10.1007/s10462-025-11268-w
Publication:Artificial intelligence review
Keywords:Artificial intelligenceDeep learningMedical ultrasound imagingReinforcement learning
PMID:40567264 Category: Date Added:2025-06-26
Dept Affiliation: ENCS
1 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, Canada.
2 Department of Software and IT engineering, Ecole de Technologie Superieure (ETS), Montreal, Canada.
3 Department of CSM, Artificial Intelligence & Cyber Systems Research Center, Lebanese American University, Beirut, Lebanon.
4 Department of Mechanical, Industrial and Aerospace Engineering, Concordia University, Montreal, Canada.
5 Department of Medicine, Laval University, Quebec, Canada.
6 Department of Computer Science, Khalifa University, Abu Dhabi, UAE.
7 Gina Cody School of Engineering and Computer Science, Concordia University, Montreal, Canada.

Description:

Medical Ultrasound (US) imaging has seen increasing demands over the past years, becoming one of the most preferred imaging modalities in clinical practice due to its affordability, portability, and real-time capabilities. However, it faces several challenges that limit its applicability, such as operator dependency, variability in interpretation, and limited resolution, which are amplified by the low availability of trained experts. This calls for the need of autonomous systems that are capable of reducing the dependency on humans for increased efficiency and throughput. Reinforcement Learning (RL) comes as a rapidly advancing field under Artificial Intelligence (AI) that allows the development of autonomous and intelligent agents through rewarded interactions with their environments. Several existing surveys on advancements in US imaging predominantly focus on partially autonomous AI solutions. However, none of these surveys explore the intersection between the stages of the US process and the recent advancements in RL solutions. To bridge this gap, this survey proposes a comprehensive taxonomy that integrates the stages of the US process with the RL development pipeline -including data preparation, problem formulation, simulation environment, RL training, validation and finetuning- and reviews current research efforts under this taxonomy. This work aims to highlight the potential of RL in building autonomous US solutions while identifying limitations and opportunities for further advancements in this field.





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