Fairness in the prediction of acute postoperative pain using machine learning models

被引:8
|
作者
Davoudi, Anis [1 ]
Sajdeya, Ruba [2 ]
Ison, Ron [1 ]
Hagen, Jennifer [3 ]
Rashidi, Parisa [4 ]
Price, Catherine C. [1 ,5 ]
Tighe, Patrick J. [1 ]
机构
[1] Univ Florida, Coll Med, Dept Anesthesiol, Gainesville, FL 32610 USA
[2] Univ Florida, Coll Publ Hlth & Hlth Profess, Dept Epidemiol, Gainesville, FL USA
[3] Univ Florida, Coll Med, Dept Orthoped Surg, Gainesville, FL USA
[4] Univ Florida, Herbert Wertheim Coll Engn, Dept Biomed Engn, Gainesville, FL USA
[5] Univ Florida, Coll Publ Hlth & Hlth Profess, Dept Clin & Hlth Psychol, Gainesville, FL USA
来源
基金
美国国家科学基金会;
关键词
algorithmic bias; machine learing; clinical decision support systems; postoperative pain; orthopedic procedures; RATING-SCALE; HEALTH-CARE; MODERATE; MILD; BIAS; CONSEQUENCES; VALIDATION; MANAGEMENT; INTENSITY; SEVERITY;
D O I
10.3389/fdgth.2022.970281
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
IntroductionOverall performance of machine learning-based prediction models is promising; however, their generalizability and fairness must be vigorously investigated to ensure they perform sufficiently well for all patients. ObjectiveThis study aimed to evaluate prediction bias in machine learning models used for predicting acute postoperative pain. MethodWe conducted a retrospective review of electronic health records for patients undergoing orthopedic surgery from June 1, 2011, to June 30, 2019, at the University of Florida Health system/Shands Hospital. CatBoost machine learning models were trained for predicting the binary outcome of low (& LE;4) and high pain (>4). Model biases were assessed against seven protected attributes of age, sex, race, area deprivation index (ADI), speaking language, health literacy, and insurance type. Reweighing of protected attributes was investigated for reducing model bias compared with base models. Fairness metrics of equal opportunity, predictive parity, predictive equality, statistical parity, and overall accuracy equality were examined. ResultsThe final dataset included 14,263 patients [age: 60.72 (16.03) years, 53.87% female, 39.13% low acute postoperative pain]. The machine learning model (area under the curve, 0.71) was biased in terms of age, race, ADI, and insurance type, but not in terms of sex, language, and health literacy. Despite promising overall performance in predicting acute postoperative pain, machine learning-based prediction models may be biased with respect to protected attributes. ConclusionThese findings show the need to evaluate fairness in machine learning models involved in perioperative pain before they are implemented as clinical decision support tools.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Systematic evaluation of machine learning models for postoperative surgical site infection prediction
    van Boekel, Anna M.
    van der Meijden, Siri L.
    Arbous, Sesmu M.
    Nelissen, Rob G. H. H.
    Veldkamp, Karin E.
    Nieswaag, Emma B.
    Jochems, Kim F. T.
    Holtz, Jeroen
    Veenstra, Annekee van IJlzinga
    Reijman, Jeroen
    de Jong, Ype
    van Goor, Harry
    Wiewel, Maryse A.
    Schoones, Jan W.
    Geerts, Bart F.
    de Boer, Mark G. J.
    PLOS ONE, 2024, 19 (12):
  • [32] Enhancing Algorithmic Fairness in Student Performance Prediction Through Unbiased and Equitable Machine Learning Models
    Cabral, Luciano de Souza
    Pereira, Filipe Dwan
    Mello, Rafael Ferreira
    ARTIFICIAL INTELLIGENCE IN EDUCATION: POSTERS AND LATE BREAKING RESULTS, WORKSHOPS AND TUTORIALS, INDUSTRY AND INNOVATION TRACKS, PRACTITIONERS, DOCTORAL CONSORTIUM AND BLUE SKY, AIED 2024, PT I, 2024, 2150 : 418 - 426
  • [33] Prediction of acute myocardial infarction or death in acute chest pain patients with machine learning models or first troponin T alone
    De Capretz, P. Olsson
    Bjorkelund, A.
    Mokhtari, A.
    Bjork, J.
    Ohlsson, M.
    Ekelund, U.
    EUROPEAN HEART JOURNAL, 2021, 42 : 3066 - 3066
  • [34] Machine learning based prediction models for analyzing risk factors in patients with acute abdominal pain: a retrospective study
    Gan, Tian
    Liu, Xiaochao
    Liu, Rong
    Huang, Jing
    Liu, Dingxi
    Tu, Wenfei
    Song, Jiao
    Cai, Pengli
    Shen, Hexiao
    Wang, Wei
    FRONTIERS IN MEDICINE, 2024, 11
  • [35] Black Box Fairness Testing of Machine Learning Models
    Aggarwal, Aniya
    Lohia, Pranay
    Nagar, Seema
    Dey, Kuntal
    Saha, Diptikalyan
    ESEC/FSE'2019: PROCEEDINGS OF THE 2019 27TH ACM JOINT MEETING ON EUROPEAN SOFTWARE ENGINEERING CONFERENCE AND SYMPOSIUM ON THE FOUNDATIONS OF SOFTWARE ENGINEERING, 2019, : 625 - 635
  • [36] Fairness Audit of Machine Learning Models with Confidential Computing
    Park, Saerom
    Kim, Seongmin
    Lim, Yeon-sup
    PROCEEDINGS OF THE ACM WEB CONFERENCE 2022 (WWW'22), 2022, : 3488 - 3499
  • [37] Moving forward with machine learning models in acute chest pain Comment
    Ekelund, Ulf
    de Capretz, Pontus Olsson
    LANCET DIGITAL HEALTH, 2022, 4 (05): : E291 - E292
  • [38] A Combinatorial Approach to Fairness Testing of Machine Learning Models
    Patel, Ankita Ramjibhai
    Chandrasekaran, Jaganmohan
    Lei, Yu
    Kacker, Raghu N.
    Kuhn, D. Richard
    2022 IEEE 15TH INTERNATIONAL CONFERENCE ON SOFTWARE TESTING, VERIFICATION AND VALIDATION WORKSHOPS (ICSTW 2022), 2022, : 94 - 101
  • [39] Prediction of Preeclampsia Using Machine Learning and Deep Learning Models: A Review
    Aljameel, Sumayh S.
    Alzahrani, Manar
    Almusharraf, Reem
    Altukhais, Majd
    Alshaia, Sadeem
    Sahlouli, Hanan
    Aslam, Nida
    Khan, Irfan Ullah
    Alabbad, Dina A.
    Alsumayt, Albandari
    BIG DATA AND COGNITIVE COMPUTING, 2023, 7 (01)
  • [40] Assessing fairness in machine learning models: A study of racial bias using matched counterparts in mortality prediction for patients with chronic diseases
    Wang, Yifei
    Wang, Liqin
    Zhou, Zhengyang
    Laurentiev, John
    Lakin, Joshua R.
    Zhou, Li
    Hong, Pengyu
    JOURNAL OF BIOMEDICAL INFORMATICS, 2024, 156