Identifying signs and symptoms of urinary tract infection from emergency department clinical notes using large language models

被引:4
|
作者
Iscoe, Mark [1 ,2 ]
Socrates, Vimig [2 ,3 ]
Gilson, Aidan [4 ]
Chi, Ling [5 ]
Li, Huan [3 ]
Huang, Thomas [4 ]
Kearns, Thomas [1 ]
Perkins, Rachelle [1 ]
Khandjian, Laura [1 ]
Taylor, R. Andrew [1 ,2 ]
机构
[1] Yale Sch Med, Dept Emergency Med, New Haven, CT 06519 USA
[2] Yale Univ, Sch Med, Sect Biomed Informat & Data Sci, New Haven, CT USA
[3] Yale Univ, Program Computat Biol & Bioinformat, New Haven, CT USA
[4] Yale Sch Med, New Haven, CT 06519 USA
[5] Yale Sch Publ Hlth, Dept Biostat, New Haven, CT USA
关键词
emergency medicine; infectious diseases; informatics; large language models; named entity recognition; natural language processing; urinary tract infection; INFORMATION; AGREEMENT; CARE; EXTRACTION; MANAGEMENT; ACCURACY; CRITERIA;
D O I
10.1111/acem.14883
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
BackgroundNatural language processing (NLP) tools including recently developed large language models (LLMs) have myriad potential applications in medical care and research, including the efficient labeling and classification of unstructured text such as electronic health record (EHR) notes. This opens the door to large-scale projects that rely on variables that are not typically recorded in a structured form, such as patient signs and symptoms.ObjectivesThis study is designed to acquaint the emergency medicine research community with the foundational elements of NLP, highlighting essential terminology, annotation methodologies, and the intricacies involved in training and evaluating NLP models. Symptom characterization is critical to urinary tract infection (UTI) diagnosis, but identification of symptoms from the EHR has historically been challenging, limiting large-scale research, public health surveillance, and EHR-based clinical decision support. We therefore developed and compared two NLP models to identify UTI symptoms from unstructured emergency department (ED) notes.MethodsThe study population consisted of patients aged >= 18 who presented to an ED in a northeastern U.S. health system between June 2013 and August 2021 and had a urinalysis performed. We annotated a random subset of 1250 ED clinician notes from these visits for a list of 17 UTI symptoms. We then developed two task-specific LLMs to perform the task of named entity recognition: a convolutional neural network-based model (SpaCy) and a transformer-based model designed to process longer documents (Clinical Longformer). Models were trained on 1000 notes and tested on a holdout set of 250 notes. We compared model performance (precision, recall, F1 measure) at identifying the presence or absence of UTI symptoms at the note level.ResultsA total of 8135 entities were identified in 1250 notes; 83.6% of notes included at least one entity. Overall F1 measure for note-level symptom identification weighted by entity frequency was 0.84 for the SpaCy model and 0.88 for the Longformer model. F1 measure for identifying presence or absence of any UTI symptom in a clinical note was 0.96 (232/250 correctly classified) for the SpaCy model and 0.98 (240/250 correctly classified) for the Longformer model.ConclusionsThe study demonstrated the utility of LLMs and transformer-based models in particular for extracting UTI symptoms from unstructured ED clinical notes; models were highly accurate for detecting the presence or absence of any UTI symptom on the note level, with variable performance for individual symptoms.
引用
收藏
页码:599 / 610
页数:12
相关论文
共 50 条
  • [1] Using Large Language Models to Extract Core Injury Information From Emergency Department Notes
    Choi, Dong Hyun
    Kim, Yoonjic
    Choi, Sae Won
    Kim, Ki Hong
    Choi, Yeongho
    Shin, Sang Do
    JOURNAL OF KOREAN MEDICAL SCIENCE, 2024, 39 (46)
  • [2] STRATEGIES TO PREVENT URINARY TRACT INFECTION FROM URINARY CATHETER INSERTION IN THE EMERGENCY DEPARTMENT
    Burnett, Kimberly Parnell
    Erickson, Deborah
    Hunt, Ann
    Beaulieu, Lynn
    Bobo, Peggy
    Shute, Penny
    JOURNAL OF EMERGENCY NURSING, 2010, 36 (06) : 546 - 550
  • [3] Identifying incarceration status in the electronic health record using large language models in emergency department settings
    Huang, Thomas
    Socrates, Vimig
    Gilson, Aidan
    Safranek, Conrad
    Chi, Ling
    Wang, Emily A.
    Puglisi, Lisa B.
    Brandt, Cynthia
    Taylor, R. Andrew
    Wang, Karen
    JOURNAL OF CLINICAL AND TRANSLATIONAL SCIENCE, 2024, 8 (01)
  • [4] Acute epiploic appendagitis mimicking symptoms of urinary tract infection: A diagnostic enigma in the emergency department
    Iqbal, Phool
    Murtaza, Muhammad
    Younis, Hafiz Waqar
    Rehman, Muhammad Abd Ur
    Bilal, Ammara Bint, I
    Niraula, Sushil
    CLINICAL CASE REPORTS, 2022, 10 (01):
  • [5] A CASE OF RIGHT RENAL ARTERIOVENOUS MALFORMATION MIMICKING THE SYMPTOMS OF URINARY TRACT INFECTION IN THE EMERGENCY DEPARTMENT
    Lai, Yu-Nong
    Yu, Ching Juing
    Chung, Jui-Yuan
    JOURNAL OF EMERGENCY MEDICINE, 2020, 58 (02): : E55 - E57
  • [6] Evaluating the use of large language models to provide clinical recommendations in the Emergency Department
    Williams, Christopher Y. K.
    Miao, Brenda Y.
    Kornblith, Aaron E.
    Butte, Atul J.
    NATURE COMMUNICATIONS, 2024, 15 (01)
  • [7] Atypical symptoms in emergency department patients with urosepsis challenge current urinary tract infection management guidelines
    Biebelberg, Brett
    Kehoe, Iain E.
    Zheng, Hui
    O'Connell, Abigail
    Filbin, Michael R.
    Heldt, Thomas
    Reisner, Andrew T.
    ACADEMIC EMERGENCY MEDICINE, 2024, 31 (08) : 828 - 831
  • [8] Leveraging Large Language Models for Improving Clinical Outcomes in the Emergency Department: A Systematic Review
    Abbott, E.
    Apakama, D.
    Klang, E.
    Nadkarni, G.
    ANNALS OF EMERGENCY MEDICINE, 2024, 84 (04) : S95 - S95
  • [9] Use of Large Language Models for Querying Clinical Notes on Peripheral Arterial Disease Symptoms
    Gonzalez, Andrew A.
    JOURNAL OF THE AMERICAN COLLEGE OF SURGEONS, 2024, 239 (05) : S584 - S584
  • [10] Diagnostic uncertainty and urinary tract infection in the emergency department: a cohort study from a UK hospital
    Shallcross, Laura J.
    Rockenschaub, Patrick
    MCNulty, David
    Freemantle, Nick
    Hayward, Andrew
    Gill, Martin J.
    BMC EMERGENCY MEDICINE, 2020, 20 (01)