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Title Authors PubMed ID
1 Metaphors in context and in isolation: Familiarity, aptness, concreteness, metaphoricity, and structure norms for 300 two-word expressions Pissani L; de Almeida RG; 41491452
PSYCHOLOGY
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 Automated abdominal aortic calcification and trabecular bone score independently predict incident fracture during routine osteoporosis screening Gebre AK; Sim M; Gilani SZ; Saleem A; Smith C; Hans D; Reid S; Monchka BA; Kimelman D; Jozani MJ; Schousboe JT; Lewis JR; Leslie WD; 41071096
ENCS
4 MedCLIP-SAMv2: Towards universal text-driven medical image segmentation Koleilat T; Asgariandehkordi H; Rivaz H; Xiao Y; 40779830
ENCS
5 Contextual variations in the effects of social withdrawal, peer exclusion, and friendship on growth curves of depressed affect in late childhood Commisso M; Persram RP; Lopez LS; Bukowski WM; 40583455
CONCORDIA
6 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
7 Leveraging Personal Technologies in the Treatment of Schizophrenia Spectrum Disorders: Scoping Review D' Arcey J; Torous J; Asuncion TR; Tackaberry-Giddens L; Zahid A; Ishak M; Foussias G; Kidd S; 39348196
PSYCHOLOGY
8 Context-induced renewal of passive but not active coping behaviours in the shock-probe defensive burying task Alexa Brown 37095421
PSYCHOLOGY
9 A new circuit underlying the renewal of appetitive Pavlovian responses: Commentary on Brown and Chaudhri (2022) Valyear MD; Britt JP; 36700576
CSBN
10 Cross-collection latent Beta-Liouville allocation model training with privacy protection and applications Luo Z; Amayri M; Fan W; Bouguila N; 36685642
ENCS
11 Learning processes in relapse to alcohol use: lessons from animal models Valyear MD; LeCocq MR; Brown A; Villaruel FR; Segal D; Chaudhri N; 36264342
PSYCHOLOGY
12 Supplementary dataset of context-dependent conditioned responding to an alcohol-predictive cue in female and male rats Segal D; Valyear MD; Chaudhri N; 35330738
PSYCHOLOGY
13 Entropy-Based Variational Scheme with Component Splitting for the Efficient Learning of Gamma Mixtures Bourouis S; Pawar Y; Bouguila N; 35009726
ENCS
14 Indeterminate and Enriched Propositions in Context Linger: Evidence From an Eye-Tracking False Memory Paradigm Antal C; de Almeida RG; 34744914
PSYCHOLOGY
15 The role of context on responding to an alcohol-predictive cue in female and male rats Segal D; Valyear MD; Chaudhri N; 34742865
PSYCHOLOGY
16 Depressive Symptoms and Social Context Modulate Oxytocin's Effect on Negative Memory Recall Wong SF; Cardoso C; Orlando MA; Brown CA; Ellenbogen MA; 34100542
PSYCHOLOGY
17 Filtration for improving surface water quality of a eutrophic lake. Palakkeel Veetil D, Arriagada EC, Mulligan CN, Bhat S 33310244
ENCS
18 Understanding the temporal evolution of COVID-19 research through machine learning and natural language processing. Ebadi A; Xi P; Tremblay S; Spencer B; Pall R; Wong A; 33230352
ENCS
19 The contribution of dry indoor built environment on the spread of Coronavirus: Data from various Indian states. V AAR, R V, Haghighat F 32834934
ENCS
20 Comparing ABA, AAB, and ABC Renewal of Appetitive Pavlovian Conditioned Responding in Alcohol- and Sucrose-Trained Male Rats. Khoo SY, Sciascia JM, Brown A, Chaudhri N 32116588
PSYCHOLOGY
21 Context controls the timing of responses to an alcohol-predictive conditioned stimulus. Valyear MD, Chaudhri N 32017964
PSYCHOLOGY
22 Biodiversity Observations Miner: A web application to unlock primary biodiversity data from published literature. Muñoz G, Kissling WD, van Loon EE 30692868
BIOLOGY

 

Title:Utilizing large language models for detecting hospital-acquired conditions: an empirical study on pulmonary embolism
Authors:Cheligeer CSouthern DAYan JWu GPan JLee SMartin EAJafarpour HEastwood CAZeng YQuan H
Link:https://pubmed.ncbi.nlm.nih.gov/40105654/
DOI:10.1093/jamia/ocaf048
Publication:Journal of the American Medical Informatics Association : JAMIA
Keywords:adverse event detectionclinical text mininglarge language modelspulmonary embolism
PMID:40105654 Category: Date Added:2025-03-19
Dept Affiliation: ENCS
1 Centre for Health Informatics, Cumming School of Medicine, University of Calgary, Calgary T2N 4N1, Canada.
2 Provincial Research Data Services, Alberta Health Services, Calgary T2N 4N1, Canada.
3 Concordia Institute for Information Systems Engineering, Concordia University, Montreal H3G 2W1, Canada.
4 Department of Community Health Sciences, Cumming School of Medicine, University of Calgary, Calgary T2N 4N1, Canada.
5 Libin Cardiovascular Institute, University of Calgary, Calgary T2N 4N1, Canada.

Description:

Objectives: Adverse event detection from Electronic Medical Records (EMRs) is challenging due to the low incidence of the event, variability in clinical documentation, and the complexity of data formats. Pulmonary embolism as an adverse event (PEAE) is particularly difficult to identify using existing approaches. This study aims to develop and evaluate a Large Language Model (LLM)-based framework for detecting PEAE from unstructured narrative data in EMRs.

Materials and methods: We conducted a chart review of adult patients (aged 18-100) admitted to tertiary-care hospitals in Calgary, Alberta, Canada, between 2017-2022. We developed an LLM-based detection framework consisting of three modules: evidence extraction (implementing both keyword-based and semantic similarity-based filtering methods), discharge information extraction (focusing on six key clinical sections), and PEAE detection. Four open-source LLMs (Llama3, Mistral-7B, Gemma, and Phi-3) were evaluated using positive predictive value, sensitivity, specificity, and F1-score. Model performance for population-level surveillance was assessed at yearly, quarterly, and monthly granularities.

Results: The chart review included 10 066 patients, with 40 cases of PEAE identified (0.4% prevalence). All four LLMs demonstrated high sensitivity (87.5-100%) and specificity (94.9-98.9%) across different experimental conditions. Gemma achieved the highest F1-score (28.11%) using keyword-based retrieval with discharge summary inclusion, along with 98.4% specificity, 87.5% sensitivity, and 99.95% negative predictive value. Keyword-based filtering reduced the median chunks per patient from 789 to 310, while semantic filtering further reduced this to 9 chunks. Including discharge summaries improved performance metrics across most models. For population-level surveillance, all models showed strong correlation with actual PEAE trends at yearly granularity (r=0.92-0.99), with Llama3 achieving the highest correlation (0.988).

Discussion: The results of our method for PEAE detection using EMR notes demonstrate high sensitivity and specificity across all four tested LLMs, indicating strong performance in distinguishing PEAE from non-PEAE cases. However, the low incidence rate of PEAE contributed to a lower PPV. The keyword-based chunking approach consistently outperformed semantic similarity-based methods, achieving higher F1 scores and PPV, underscoring the importance of domain knowledge in text segmentation. Including discharge summaries further enhanced performance metrics. Our population-based analysis revealed better performance for yearly trends compared to monthly granularity, suggesting the framework's utility for long-term surveillance despite dataset imbalance. Error analysis identified contextual misinterpretation, terminology confusion, and preprocessing limitations as key challenges for future improvement.

Conclusions: Our proposed method demonstrates that LLMs can effectively detect PEAE from narrative EMRs with high sensitivity and specificity. While these models serve as effective screening tools to exclude non-PEAE cases, their lower PPV indicates they cannot be relied upon solely for definitive PEAE identification. Further chart review remains necessary for confirmation. Future work should focus on improving contextual understanding, medical terminology interpretation, and exploring advanced prompting techniques to enhance precision in adverse event detection from EMRs.





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