A bias evaluation checklist for predictive models and its pilot application for 30-day hospital readmission models

被引:26
|
作者
Wang, H. Echo Echo [1 ]
Landers, Matthew [2 ]
Adams, Roy [3 ]
Subbaswamy, Adarsh [4 ]
Kharrazi, Hadi [1 ]
Gaskin, Darrell J. [1 ]
Saria, Suchi [4 ]
机构
[1] Johns Hopkins Bloomberg Sch Publ Hlth, Dept Hlth Policy & Management, Baltimore, MD USA
[2] Univ Virginia, Dept Comp Sci, Charlottesville, VA 22903 USA
[3] Johns Hopkins Sch Med, Dept Psychiat & Behav Sci, Baltimore, MD USA
[4] Johns Hopkins Univ, Dept Comp Sci & Stat, Whiting Sch Engn, Malone Hall,3400 N Charles St, Baltimore, MD 21218 USA
关键词
predictive model; hospital readmission; bias; health care disparity; clinical decision-making; OBSERVATIONAL INTENSITY BIAS; CROSS-SECTIONAL ANALYSIS; ACG CASE-MIX; HEALTH-CARE; LACE INDEX; RACIAL/ETHNIC DISPARITIES; ARTIFICIAL-INTELLIGENCE; ETHNIC DISPARITIES; MEDICAL PATIENTS; VALIDATION;
D O I
10.1093/jamia/ocac065
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Objective Health care providers increasingly rely upon predictive algorithms when making important treatment decisions, however, evidence indicates that these tools can lead to inequitable outcomes across racial and socio-economic groups. In this study, we introduce a bias evaluation checklist that allows model developers and health care providers a means to systematically appraise a model's potential to introduce bias. Materials and Methods Our methods include developing a bias evaluation checklist, a scoping literature review to identify 30-day hospital readmission prediction models, and assessing the selected models using the checklist. Results We selected 4 models for evaluation: LACE, HOSPITAL, Johns Hopkins ACG, and HATRIX. Our assessment identified critical ways in which these algorithms can perpetuate health care inequalities. We found that LACE and HOSPITAL have the greatest potential for introducing bias, Johns Hopkins ACG has the most areas of uncertainty, and HATRIX has the fewest causes for concern. Discussion Our approach gives model developers and health care providers a practical and systematic method for evaluating bias in predictive models. Traditional bias identification methods do not elucidate sources of bias and are thus insufficient for mitigation efforts. With our checklist, bias can be addressed and eliminated before a model is fully developed or deployed. Conclusion The potential for algorithms to perpetuate biased outcomes is not isolated to readmission prediction models; rather, we believe our results have implications for predictive models across health care. We offer a systematic method for evaluating potential bias with sufficient flexibility to be utilized across models and applications.
引用
收藏
页码:1323 / 1333
页数:11
相关论文
共 50 条
  • [1] A bias evaluation checklist for predictive models and its pilot application for 30-day hospital readmission models (May, 10.1093/jamia/ocac065, 2022)
    Wang, H. Echo
    Landers, Matthew
    Adams, Roy
    Subbaswamy, Adarsh
    Kharrazi, Hadi
    Gaskin, Darrell J.
    Saria, Suchi
    [J]. JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2022, 29 (09) : 1656 - 1656
  • [2] Assessing racial bias in healthcare predictive models: Practical lessons from an empirical evaluation of 30-day hospital readmission models
    Wang, H. Echo
    Weiner, Jonathan P.
    Saria, Suchi
    Lehmann, Harold
    Kharrazi, Hadi
    [J]. JOURNAL OF BIOMEDICAL INFORMATICS, 2024, 156
  • [3] Evaluating Algorithmic Bias in 30-Day Hospital Readmission Models: Retrospective Analysis
    Wang, H. Echo
    Weiner, Jonathan P.
    Saria, Suchi
    Kharrazi, Hadi
    [J]. JOURNAL OF MEDICAL INTERNET RESEARCH, 2024, 26
  • [4] Applicability of predictive models for 30-day unplanned hospital readmission risk in paediatrics: a systematic review
    Niehaus, Ines Marina
    Kansy, Nina
    Stock, Stephanie
    Doetsch, Joerg
    Mueller, Dirk
    [J]. BMJ OPEN, 2022, 12 (03): : e055956
  • [5] Intelligible Models for HealthCare: Predicting Pneumonia Risk and Hospital 30-day Readmission
    Caruana, Rich
    Lou, Yin
    Gehrke, Johannes
    Koch, Paul
    Sturm, Marc
    Elhadad, Noemie
    [J]. KDD'15: PROCEEDINGS OF THE 21ST ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY AND DATA MINING, 2015, : 1721 - 1730
  • [6] Analyzing 30-Day Readmission Rate for Heart Failure Using Different Predictive Models
    Mahajan, Satish
    Burman, Prabir
    Hogarth, Michael
    [J]. NURSING INFORMATICS 2016: EHEALTH FOR ALL: EVERY LEVEL COLLABORATION - FROM PROJECT TO REALIZATION, 2016, 225 : 143 - 147
  • [7] Comparison of Unplanned 30-Day Readmission Prediction Models, Based on Hospital Warehouse and Demographic Data
    Dhalluin, Thibault
    Bannay, Aurelie
    Lemordant, Pierre
    Sylvestre, Emmanuelle
    Chazard, Emmanuel
    Cuggia, Marc
    Bouzille, Guillaume
    [J]. DIGITAL PERSONALIZED HEALTH AND MEDICINE, 2020, 270 : 547 - 551
  • [8] EVALUATION OF PREDICTIVE VALUE OF LACE SCORE FOR 30-DAY READMISSION FOR PNEUMONIA
    Tiperneni, Raghu
    Padappayil, Rana Prathap
    Vyas, Charmee
    Mohan, Gaurav
    Patel, Shailee Girish
    Jordan, Alyson
    Patton, Chandler
    [J]. CRITICAL CARE MEDICINE, 2023, 51 (01) : 556 - 556
  • [9] PREDICTIVE MODEL OF 30-DAY HOSPITAL READMISSION FOR PATIENTS WITH ALZHEIMER'S DISEASE
    Mahmoudi, Elham
    Najarian, Cyrus
    Wu, Wenbo
    Aikens, James
    Bynum, Julie
    [J]. INNOVATION IN AGING, 2022, 6 : 180 - 180
  • [10] Assessing the impact of social determinants of health on predictive models for potentially avoidable 30-day readmission or death
    Zhang, Yongkang
    Zhang, Yiye
    Sholle, Evan
    Abedian, Sajjad
    Sharko, Marianne
    Turchioe, Meghan Reading
    Wu, Yiyuan
    Ancker, Jessica S.
    [J]. PLOS ONE, 2020, 15 (06):