An artificial intelligence-driven support tool for prediction of urine culture test results

被引:4
|
作者
Dedeene, Lieselot [1 ]
Van Elslande, Jan [1 ]
Dewitte, Jannes [1 ]
Martens, Geert [1 ]
De Laere, Emmanuel [1 ]
De Jaeger, Peter [2 ]
De Smet, Dieter [1 ]
机构
[1] AZ Delta Gen Hosp, Dept Lab Med, Roeselare, Belgium
[2] AZ Delta Gen Hosp, RADar Innovat Ctr, Roeselare, Belgium
关键词
Urinary tract infection; Urine culture; Machine learning; Artificial intelligence; Prediction model; Likelihood ratio; Clinical decision support; LIKELIHOOD RATIOS; CONFIDENCE;
D O I
10.1016/j.cca.2024.119854
中图分类号
R446 [实验室诊断]; R-33 [实验医学、医学实验];
学科分类号
1001 ;
摘要
Background and aims: We aimed to develop an easily deployable artificial intelligence (AI)-driven model for rapid prediction of urine culture test results. Material and Methods: We utilized a training dataset (n = 34,584 urine samples) and two separate, unseen test sets (n = 10,083 and 9,289 samples). Various machine learning models were compared for diagnostic performance. Predictive parameters included urinalysis results (dipstick and flow cytometry), patient demographics (age and gender), and sample collection method. Results: Although more complex models achieved the highest AUCs for predicting positive cultures (highest: multilayer perceptron (MLP) with AUC of 0.884, 95% CI 0.878-0.89), multiple logistic regression (MLR) using only flow cytometry parameters achieved a very good AUC (0.858, 95% CI 0.852-0.865). To aid interpretation, prediction results of the MLP and MLR models were categorized based on likelihood ratio (LR) for positivity: highly unlikely (LR 0.1), unlikely (LR 0.3), grey zone (LR 0.9), likely (LR 5.0), and highly likely (LR 40). This resulted in 17%, 28%, 34%, 9%, and 13% of samples falling into each respective category for the MLR model and 20%, 26%, 31%, 7%, and 16% for the MLP model. Conclusions: In conclusion, this robust model has the potential to assist clinicians in their decision-making process by providing insights prior to the availability of urine culture results in a significant portion of samples (similar to 2/3rd).
引用
收藏
页数:7
相关论文
共 50 条
  • [31] The ethics of artificial intelligence-driven diagnostic testing in dermatology
    Muzumdar, Sonal
    Grant-Kels, Jane M.
    JOURNAL OF THE AMERICAN ACADEMY OF DERMATOLOGY, 2024, 91 (06) : 1307 - 1308
  • [32] The ethical challenges of artificial intelligence-driven digital pathology
    McKay, Francis
    Williams, Bethany J.
    Prestwich, Graham
    Bansal, Daljeet
    Hallowell, Nina
    Treanor, Darren
    JOURNAL OF PATHOLOGY CLINICAL RESEARCH, 2022, 8 (03): : 209 - 216
  • [33] Artificial intelligence-driven disruption in science production ahead
    de Miguel, Sergio
    SILVA FENNICA, 2023, 57 (01)
  • [34] Artificial intelligence-driven intelligent learning models for identification and prediction of cardioneurological disorders: A comprehensive study
    Hussain, Shahadat
    Ahmad, Shahnawaz
    Wasid, Mohammed
    Computers in Biology and Medicine, 2025, 184
  • [35] Explainable artificial intelligence-driven gestational diabetes mellitus prediction using clinical and laboratory markers
    Khanna, Varada Vivek
    Chadaga, Krishnaraj
    Sampathila, Niranjana
    Prabhu, Srikanth
    Chadaga, Rajagopala P.
    Bhat, Devadas
    Swathi, K. S.
    COGENT ENGINEERING, 2024, 11 (01):
  • [36] Assessing the Performance of a New Artificial Intelligence-Driven Diagnostic Support Tool Using Medical Board Exam Simulations: Clinical Vignette Study
    Ben-Shabat, Niv
    Sloma, Ariel
    Weizman, Tomer
    Kiderman, David
    Amital, Howard
    Ben-Shabat, Niv
    JMIR MEDICAL INFORMATICS, 2021, 9 (11)
  • [37] Artificial intelligence-driven prediction of COVID-19-related hospitalization and death: a systematic review
    Shakibfar, Saeed
    Nyberg, Fredrik
    Li, Huiqi
    Zhao, Jing
    Nordeng, Hedvig Marie Egeland
    Sandve, Geir Kjetil Ferkingstad
    Pavlovic, Milena
    Hajiebrahimi, Mohammadhossein
    Andersen, Morten
    Sessa, Maurizio
    FRONTIERS IN PUBLIC HEALTH, 2023, 11
  • [38] Toward Artificial Intelligence-Driven Pathology Assessment for Hematologic Malignancies
    Elemento, Olivier
    BLOOD CANCER DISCOVERY, 2021, 2 (03): : 195 - 197
  • [39] Artificial intelligence-driven real-world battery diagnostics
    Zhao, Jingyuan
    Qu, Xudong
    Wu, Yuyan
    Fowler, Michael
    Burke, Andrew F.
    ENERGY AND AI, 2024, 18
  • [40] Artificial intelligence-driven precision surgery: revolutionizing complex procedures
    Sowndharya, B. Bhavani
    Vickram, A. S.
    Bin Emran, Talha
    INTERNATIONAL JOURNAL OF SURGERY OPEN, 2024, 62 (06) : 826 - 827