Keyword search (4,164 papers available)

"Healthcare" Keyword-tagged Publications:

Title Authors PubMed ID
1 COVID-19 vaccination status and motivators among Canadian healthcare workers: are they different from the general population? Léger C; Boucher VG; Deslauriers F; Gupta S; Dialufuma M; Vallis M; Bacon SL; Lavoie KL; iCARE Study Team OBOT; 41608973
HKAP
2 Symptom burden, healthcare utilization, and risky behaviors in survivors of the childhood cancer survivor study (CCSS): an observation cohort study Webster R; Srivastava DK; Xie L; Darji H; Liu W; McGrady ME; Brinkman TM; Alberts NM; Ness KK; Fuemmeler B; Kunin-Batson AS; Huang IC; Armstrong GT; Howell RM; Green DM; Yasui Y; Krull KR; 41340862
PSYCHOLOGY
3 The Need for Health Systems to Engage With and Support Youth who are Caregivers-A Lived Experience Perspective From Young Carers Grant A; Goberdhan N; Mar K; Ramkishun A; Rahman S; Redublo T; Caven I; Okrainec K; 41064416
CONCORDIA
4 Wearable biosensors: A comprehensive overview Wu KY; Su ME; Kim Y; Nguyen L; Marchand M; Tran SD; 40683741
ENCS
5 Machine learning innovations in CPR: a comprehensive survey on enhanced resuscitation techniques Islam S; Rjoub G; Elmekki H; Bentahar J; Pedrycz W; Cohen R; 40336660
ENCS
6 Implementation of a national programme to train and support healthcare professionals in brief behavioural interventions: A qualitative study using the theoretical domains framework Meade O; Aehlig L; O' Brien M; Lawless A; McSharry J; Dragomir A; Hart JK; Keyworth C; Lavoie KL; Byrne M; 39815763
PSYCHOLOGY
7 The impact of directed choice on the design of preventive healthcare facility network under congestion Vidyarthi N; Kuzgunkaya O; 24879402
JMSB
8 Evaluation of the effectiveness of a Strengths-Based Nursing and Healthcare Leadership program aimed at building leadership capacity: A concurrent mixed-methods study Lavoie-Tremblay M; Boies K; Clausen C; Frechette J; Manning K; Gelsomini C; Cyr G; Lavigne G; Gottlieb B; Gottlieb LN; 38746801
JMSB
9 Enhancing sibling support in oncology: Collaborative care for families facing cancer in young people Gélinas-Gagné C; D' Amico M; 38706652
CONCORDIA
10 Canadian healthcare workers' mental health and health behaviours during the COVID-19 pandemic: results from nine representative samples between April 2020 and February 2022 Vincent Gosselin Boucher 37548891
HKAP
11 Canadian pediatric eating disorder programs and virtual care during the COVID-19 pandemic: a mixed-methods approach to understanding clinicians' perspectives Novack K; Dufour R; Picard L; Taddeo D; Nadeau PO; Katzman DK; Booij L; Chadi N; 37101241
PSYCHOLOGY
12 Group Telehealth Music Therapy With Caregivers: A Qualitative Inquiry Brault A; Vaillancourt G; 35734471
CONCORDIA
13 Evaluation of System Modelling Techniques for Waste Identification in Lean Healthcare Applications. Alkaabi M, Simsekler MCE, Jayaraman R, Al Kaf A, Ghalib H, Quraini D, Ellahham S, Tuzcu EM, Demirli K 33447104
ENCS
14 Core Competencies in Cancer Genomics for Healthcare Professionals: Results From a Systematic Literature Review and a Delphi Process. Hoxhaj I, Tognetto A, Acampora A, Stojanovic J, Boccia S 33442861
HKAP
15 Augmented reality mastectomy surgical planning prototype using the HoloLens template for healthcare technology letters. Amini S, Kersten-Oertel M 32038868
PERFORM
16 Examining Weight Bias among Practicing Canadian Family Physicians. Alberga AS, Nutter S, MacInnis C, Ellard JH, Russell-Mayhew S 31707395
HKAP

 

Title:Machine learning innovations in CPR: a comprehensive survey on enhanced resuscitation techniques
Authors:Islam SRjoub GElmekki HBentahar JPedrycz WCohen R
Link:https://pubmed.ncbi.nlm.nih.gov/40336660/
DOI:10.1007/s10462-025-11214-w
Publication:Artificial intelligence review
Keywords:Artificial intelligence (AI)Cardiac arrestCardiopulmonary resuscitation (CPR)Healthcare integrationMachine learning (ML)Reinforcement learning (RL)
PMID:40336660 Category: Date Added:2025-05-08
Dept Affiliation: ENCS
1 Concordia Institute for Information Systems Engineering, Concordia University, Montreal, Canada.
2 Faculty of Information Technology, Aqaba University of Technology, Aqaba, Jordan.
3 Department of Computer Science, 6 G Research Center, Khalifa University, Abu Dhabi, United Arab Emirates.
4 Gina Cody School of Engineering and Computer Science, Concordia University, Montreal, Canada.
5 Department of Electrical and Computer Engineering, University of Alberta, Edmonton, Canada.
6 Systems Research Institute, Polish Academy of Sciences, Warsaw, Poland.
7 Research Center of Performance and Productivity Analysis, Istinye University, Sariyer/Istanbul, Turkey.
8 David R. Cheriton School of Computer Science, University of Waterloo, Waterloo, Canada.

Description:

This survey paper explores the transformative role of Machine Learning (ML) and Artificial Intelligence (AI) in Cardiopulmonary Resuscitation (CPR), marking a paradigm shift from conventional, manually driven resuscitation practices to intelligent, data-driven interventions. It examines the evolution of CPR through the lens of predictive modeling, AI-enhanced devices, and real-time decision-making tools that collectively aim to improve resuscitation outcomes and survival rates. Unlike prior surveys that either focus solely on traditional CPR methods or offer general insights into ML applications in healthcare, this work provides a novel interdisciplinary synthesis tailored specifically to the domain of CPR. It presents a comprehensive taxonomy that classifies ML techniques into four key CPR-related tasks: rhythm analysis, outcome prediction, non-invasive blood pressure and chest compression modeling, and real-time detection of pulse and Return of Spontaneous Circulation (ROSC). The paper critically evaluates emerging ML approaches-including Reinforcement Learning (RL) and transformer-based models-while also addressing real-world implementation barriers such as model interpretability, data limitations, and deployment in high-stakes clinical settings. Furthermore, it highlights the role of eXplainable AI (XAI) in fostering clinical trust and adoption. By bridging the gap between resuscitation science and advanced ML techniques, this survey establishes a structured foundation for future research and practical innovation in ML-enhanced CPR. It offers clear insights, identifies unexplored opportunities, and sets a forward-looking research agenda identifying emerging trends and practical implementation challenges aiming to improve both the reliability and effectiveness of CPR in real-world emergencies.





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