Development of an Artificial Intelligence-Based Automated Recommendation System for Clinical Laboratory Tests: Retrospective Analysis of the National Health Insurance Database

被引:12
作者
Islam, Md Mohaimenul [1 ,2 ,3 ]
Yang, Hsuan-Chia [1 ,2 ,3 ]
Poly, Tahmina Nasrin [1 ,2 ,3 ]
Li, Yu-Chuan Jack [1 ,2 ,3 ,4 ,5 ]
机构
[1] Taipei Med Univ, Coll Med Sci & Technol, Grad Inst Biomed Informat, 250 Wu Hsing St, Taipei 110, Taiwan
[2] Taipei Med Univ, Int Ctr Hlth Informat Technol, Taipei, Taiwan
[3] Taipei Med Univ, Wan Fang Hosp, Res Ctr Big Data & Meta Anal, Taipei, Taiwan
[4] Wan Fang Hosp, Dept Dermatol, Taipei, Taiwan
[5] Taipei Med Univ, TMU Res Ctr Canc Translat Med, Taipei, Taiwan
关键词
artificial intelligence; deep learning; clinical decision-support system; laboratory test; patient safety; INAPPROPRIATE;
D O I
10.2196/24163
中图分类号
R-058 [];
学科分类号
摘要
Background: Laboratory tests are considered an essential part of patient safety as patients' screening, diagnosis, and follow-up are solely based on laboratory tests. Diagnosis of patients could be wrong, missed, or delayed if laboratory tests are performed erroneously. However, recognizing the value of correct laboratory test ordering remains underestimated by policymakers and clinicians. Nowadays, artificial intelligence methods such as machine learning and deep learning (DL) have been extensively used as powerful tools for pattern recognition in large data sets. Therefore, developing an automated laboratory test recommendation tool using available data from electronic health records (EHRs) could support current clinical practice. Objective: The objective of this study was to develop an artificial intelligence based automated model that can provide laboratory tests recommendation based on simple variables available in EHRs. Methods: A retrospective analysis of the National Health Insurance database between January 1, 2013, and December 31, 2013, was performed. We reviewed the record of all patients who visited the cardiology department at least once and were prescribed laboratory tests. The data set was split into training and testing sets (80:20) to develop the DL model. In the internal validation, 25% of data were randomly selected from the training set to evaluate the performance of this model. Results: We used the area under the receiver operating characteristic curve, precision, recall, and hamming loss as comparative measures. A total of 129,938 prescriptions were used in our model. The DL-based automated recommendation system for laboratory tests achieved a significantly higher area under the receiver operating characteristic curve (AUROCmacro and AUROCmicro of 0.76 and 0.87, respectively). Using a low cutoff, the model identified appropriate laboratory tests with 99% sensitivity. Conclusions: The developed artificial intelligence model based on DL exhibited good discriminative capability for predicting laboratory tests using routinely collected EHR data. Utilization of DL approaches can facilitate optimal laboratory test selection for patients, which may in turn improve patient safety. However, future study is recommended to assess the cost-effectiveness for implementing this model in real-world clinical settings.
引用
收藏
页数:10
相关论文
共 22 条
  • [1] A Cost-Effective Interdisciplinary Approach to Microbiologic Send-Out Test Use
    Aesif, Scott W.
    Parenti, David M.
    Lesky, Linda
    Keiser, John F.
    [J]. ARCHIVES OF PATHOLOGY & LABORATORY MEDICINE, 2015, 139 (02) : 194 - 198
  • [2] Using pathology-specific laboratory profiles in Clinical Pathology to reduce inappropriate test requesting: two completed audit cycles
    Baricchi, Roberto
    Zini, Michele
    Nibali, Maria Grazia
    Vezzosi, Walter
    Insegnante, Vincenzo
    Manfuso, Clotilde
    Polese, Alessandra
    Costoli, Valmer
    Spelti, Antonio
    Formisano, Debora
    Orlandini, Danilo
    Nicolini, Fausto
    Poli, Antonio
    [J]. BMC HEALTH SERVICES RESEARCH, 2012, 12
  • [3] Delivering safe and effective test-result communication, management and follow-up: a mixed-methods study protocol
    Dahm, Maria R.
    Georgiou, Andrew
    Westbrook, Johanna I.
    Greenfield, David
    Horvath, Andrea R.
    Wakefield, Denis
    Li, Ling
    Hillman, Ken
    Bolton, Patrick
    Brown, Anthony
    Jones, Graham
    Herkes, Robert
    Lindeman, Robert
    Legg, Michael
    Makeham, Meredith
    Moses, Daniel
    Badmus, Dauda
    Campbell, Craig
    Hardie, Rae-Anne
    Li, Julie
    McCaughey, Euan
    Sezgin, Gorkem
    Thomas, Judith
    Wabe, Nasir
    [J]. BMJ OPEN, 2018, 8 (02):
  • [4] Deng L, 2013, INT CONF ACOUST SPEE, P8599, DOI 10.1109/ICASSP.2013.6639344
  • [5] Inappropriate Requesting of Glycated Hemoglobin (Hb A1c) Is Widespread: Assessment of Prevalence, Impact of National Guidance, and Practice-to-Practice Variability
    Driskell, Owen J.
    Holland, David
    Hanna, Fahmy W.
    Jones, Peter W.
    Pemberton, R. John
    Martin Tran
    Fryer, Anthony A.
    [J]. CLINICAL CHEMISTRY, 2012, 58 (05) : 906 - 915
  • [6] Managing demand for laboratory tests: a laboratory toolkit
    Fryer, Anthony A.
    Smellie, W. Stuart A.
    [J]. JOURNAL OF CLINICAL PATHOLOGY, 2013, 66 (01) : 62 - 72
  • [7] Gupta R, 2017, AAAI CONF ARTIF INTE, P1345
  • [8] A Review of Medical Errors in Laboratory Diagnostics and Where We Are Today
    Hammerling, Julie A.
    [J]. LABMEDICINE, 2012, 43 (02): : 41 - 43
  • [9] Nationwide Population Science Lessons From the Taiwan National Health Insurance Research Database
    Hsing, Ann W.
    Ioannidis, John P. A.
    [J]. JAMA INTERNAL MEDICINE, 2015, 175 (09) : 1527 - 1529
  • [10] Deep learning algorithms for detection of diabetic retinopathy in retinal fundus photographs: A systematic review and meta-analysis
    Islam, Md Mohaimenul
    Yang, Hsuan-Chia
    Poly, Tahmina Nasrin
    Jian, Wen-Shan
    Li, Yu-Chuan
    [J]. COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2020, 191