Keyword search (4,163 papers available)

"Zeng Y" Authored Publications:

Title Authors PubMed ID
1 Impact of COVID-19 on incidence and trends of adverse events among hospitalised patients in Calgary, Canada: a retrospective chart review study Wu G; Eastwood CA; Cheligeer C; Southern DA; Zeng Y; Ghali WA; Bakal JA; Boussat B; Flemons W; Forster A; Xu Y; Quan H; 41592994
CONCORDIA
2 Preprocessing narrative texts in electronic medical records to identify hospital adverse events: A scoping review Jafarpour H; Wu G; Cheligeer CK; Yan J; Xu Y; Southern DA; Eastwood CA; Zeng Y; Quan H; 41072367
ENCS
3 Correlations of pilot trainees brainwave dynamics with subjective performance evaluations: insights from EEG microstate analysis Zhao M; Law A; Su C; Jennings S; Bourgon A; Jia W; Larose MH; Bowness D; Zeng Y; 40109507
ENCS
4 Utilizing large language models for detecting hospital-acquired conditions: an empirical study on pulmonary embolism Cheligeer C; Southern DA; Yan J; Wu G; Pan J; Lee S; Martin EA; Jafarpour H; Eastwood CA; Zeng Y; Quan H; 40105654
ENCS
5 Monitoring pilot trainees' cognitive control under a simulator-based training process with EEG microstate analysis Zhao M; Jia W; Jennings S; Law A; Bourgon A; Su C; Larose MH; Grenier H; Bowness D; Zeng Y; 39428425
ENCS
6 EEG-based study of design creativity: a review on research design, experiments, and analysis Zangeneh Soroush M; Zeng Y; 39148896
ENCS
7 Identifying personalized barriers for hypertension self-management from TASKS framework Yang J; Zeng Y; Yang L; Khan N; Singh S; Walker RL; Eastwood R; Quan H; 39143621
ENCS
8 Loosely controlled experimental EEG datasets for higher-order cognitions in design and creativity tasks Zangeneh Soroush M; Zhao M; Jia W; Zeng Y; 38152489
ENCS
9 Design Principles in mHealth Interventions for Sustainable Health Behavior Changes: Protocol for a Systematic Review Yang L; Kuang A; Xu C; Shewchuk B; Singh S; Quan H; Zeng Y; 36811938
ENCS
10 Reinforcement learning for automatic quadrilateral mesh generation: A soft actor-critic approach Pan J; Huang J; Cheng G; Zeng Y; 36375347
ENCS
11 Developing EMR-based algorithms to Identify hospital adverse events for health system performance evaluation and improvement: Study protocol Wu G; Eastwood C; Zeng Y; Quan H; Long Q; Zhang Z; Ghali WA; Bakal J; Boussat B; Flemons W; Forster A; Southern DA; Knudsen S; Popowich B; Xu Y; 36197944
ENCS
12 A Proposed Multi-Criteria Optimization Approach to Enhance Clinical Outcomes Evaluation for Diabetes Care: A Commentary Wan TTH; Matthews S; Luh H; Zeng Y; Wang Z; Yang L; 35372638
ENCS
13 Network oscillations imply the highest cognitive workload and lowest cognitive control during idea generation in open-ended creation tasks Jia W; von Wegner F; Zhao M; Zeng Y; 34930950
ENCS
14 EEG signals respond differently to idea generation, idea evolution and evaluation in a loosely controlled creativity experiment. Jia W, Zeng Y 33483583
ENCS
15 Phylogeny reconstruction and hybrid analysis of populus (Salicaceae) based on nucleotide sequences of multiple single-copy nuclear genes and plastid fragments. Wang Z, Du S, Dayanandan S, Wang D, Zeng Y, Zhang J 25116432
BIOLOGY

 

Title:Preprocessing narrative texts in electronic medical records to identify hospital adverse events: A scoping review
Authors:Jafarpour HWu GCheligeer CKYan JXu YSouthern DAEastwood CAZeng YQuan H
Link:https://pubmed.ncbi.nlm.nih.gov/41072367/
DOI:10.1016/j.artmed.2025.103281
Publication:Artificial intelligence in medicine
Keywords:Clinical textHospital adverse eventLarge language modelNarrative EMRNatural language processingPreprocessing
PMID:41072367 Category: Date Added:2025-10-11
Dept Affiliation: ENCS
1 Concordia University, Gina Cody School of Engineering and Computer Science, Concordia Institute for Information Systems Engineering, 1515 Sainte Catherine West, Montreal, H3G 2W1, Quebec, Canada. Electronic address: hamed.jafarpour@concordia.ca.
2 University of Calgary, Department of Community Health Sciences, Cumming School of Medicine, 2500 University Drive NW, Calgary, T2N 1N4, Alberta, Canada. Electronic address: Guosong.wu@ucalgary.ca.
3 University of Calgary, Department of Community Health Sciences, Cumming School of Medicine, 2500 University Drive NW, Calgary, T2N 1N4, Alberta, Canada. Electronic address: cheligeerken@ucalgary.ca.
4 Concordia University, Gina Cody School of Engineering and Computer Science, Concordia Institute for Information Systems Engineering, 1515 Sainte Catherine West, Montreal, H3G 2W1, Quebec, Canada. Electronic address: jun.yan@concordia.ca.
5 University of Calgary, Department of Community Health Sciences, Cumming School of Medicine, 2500 University Drive NW, Calgary, T2N 1N4, Alberta, Canada. Electronic address: yuxu@ucalgary.ca.
6 University of Calgary, Department of Community Health Sciences, Cumming School of Medicine, 2500 University Drive NW, Calgary, T2N 1N4, Alberta, Canada. Electronic address: dasouthe@ucalgary.ca.
7 University of Calgary, Department of Community Health Sciences, Cumming School of Medicine, 2500 University Drive NW, Calgary, T2N 1N4, Alberta, Canada. Electronic address: caeastwo@ucalgary.ca.
8 Concordia University, Gina Cody School of Engineering and Computer Science, Concordia Institute for Information Systems Engineering, 1515 Sainte Catherine West, Montreal, H3G 2W1, Quebec, Canada. Electronic address: yong.zeng@concordia.ca.
9 University of Calgary, Department of Community Health Sciences, Cumming School of Medicine, 2500 University Drive NW, Calgary, T2N 1N4, Alberta, Canada. Electronic address: hquan@ucalgary.ca.

Description:

Background: Narrative electronic medical records (EMR), which include textual notes created by clinicians within healthcare environments, represent a significant resource for documenting various facets of patient care. This form of text exhibits distinctive characteristics, such as the occurrence of grammatically incorrect sentences, abbreviations, frequent acronyms, specialized characters with particular meanings, negation expressions, and sporadic misspellings. As a result, a primary goal in processing these textual notes is to implement effective preprocessing techniques that enhance data quality and ensure consistency across all entries. Recent advancements in algorithms and methodologies within the fields of natural language processing (NLP), machine learning (ML), and large language models (LLM) have prompted researchers to leverage narrative EMR for the detection of hospital adverse events (HAE).

Methods: The scoping review adhered to the PRISMA-ScR (Preferred Reporting Items for Systematic Reviews and Meta-Analyses Extension for Scoping Reviews) guidelines. A scoping review protocol was developed and utilized to guide the research process, clearly outlining the eligibility criteria, information sources, search strategies, data management, selection process, data collection procedures, data items, outcomes and prioritization, data synthesis, and meta-bias considerations. The search strategy was implemented across nine engineering and medical electronic databases.

Results: The results have indicated that from a total of 3,264 studies retrieved, 48 unique studies were included in the review. Responses to the research questions were systematically extracted from these studies. The review has identified challenges associated with the preprocessing of narrative texts in EMR for HAE identification. Additionally, three research gaps have been identified: (1) the imperative need for a pipeline to preprocess narrative EMR for the identification of HAE, (2) the necessity for a robust system capable of managing the extensive volume of narrative EMR data, and (3) the requirement for temporal event system, which are essential for effective HAE detection. The study also has underscored the essential role of preprocessing tasks in enhancing the performance of HAE detection. The study has emphasized the importance of extracting N-grams from clinical text, normalizing these N-grams through lemmatization and/or stemming, and establishing semantic feature extraction in preprocessing tasks that significantly affect HAE detection performance. While LLM-based systems naturally incorporate tokenization and normalization processes within their frameworks, it remains crucial to address features that hold semantic relevance to the specific type of HAE during preprocessing.

Conclusion: This scoping review has provided valuable insights for researchers focused on HAE detection utilizing narrative EMR data. It has elucidated how preprocessing tasks can elevate the performance of HAE detection and draws attention to neglected research gaps within the field. Addressing these gaps will necessitate further investigation in subsequent research endeavors.





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