Health equity assessment of machine learning performance (HEAL): a framework and dermatology AI model case study

被引:2
|
作者
Schaekermann, Mike [1 ]
Spitz, Terry [1 ]
Pyles, Malcolm [2 ,3 ]
Cole-Lewis, Heather [1 ]
Wulczyn, Ellery [1 ]
Pfohl, Stephen R. [1 ]
Martin Jr, Donald [1 ]
Jaroensri, Ronnachai [1 ]
Keeling, Geoff [1 ]
Liu, Yuan [1 ]
Farquhar, Stephanie [1 ]
Xue, Qinghan [1 ]
Lester, Jenna [2 ,4 ]
Hughes, Cian [1 ]
Strachan, Patricia [1 ]
Tan, Fraser [1 ]
Bui, Peggy [1 ]
Mermel, Craig H. [1 ,5 ]
Peng, Lily H. [1 ,6 ]
Matias, Yossi [1 ]
Corrado, Greg S. [1 ]
Webster, Dale R. [1 ]
Virmani, Sunny [1 ]
Semturs, Christopher [1 ]
Liu, Yun [1 ]
Horn, Ivor [1 ]
Chen, Po-Hsuan Cameron [1 ]
机构
[1] Google Hlth, 600 Amphitheatre Pkwy, Mountain View, CA 94043 USA
[2] Assoc Adv Wound Care, Mundelein, IL USA
[3] Cleveland Clin, Dept Dermatol, Cleveland Hts, OH USA
[4] Pediat Univ Calif, Dept Dermatol, San Francisco, CA USA
[5] IETF, Mountain View, CA USA
[6] Verily Life Sci, South San Francisco, CA USA
关键词
Artificial intelligence; Machine learning; Health equity; Dermatology; DISPARITIES; MELANOMA; LIFE; BIAS;
D O I
10.1016/j.eclinm.2024.102479
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Artificial intelligence (AI) has repeatedly been shown to encode historical inequities in healthcare. We aimed to develop a framework to quantitatively assess the performance equity of health AI technologies and to illustrate its utility via a case study. Methods Here, we propose a methodology to assess whether health AI technologies prioritise performance for patient populations experiencing worse outcomes, that is complementary to existing fairness metrics. We developed the Health Equity Assessment of machine Learning performance (HEAL) framework designed to quantitatively assess the performance equity of health AI technologies via a four-step interdisciplinary process to understand and quantify domain-specific criteria, and the resulting HEAL metric. As an illustrative case study (analysis conducted between October 2022 and January 2023), we applied the HEAL framework to a dermatology AI model. A set of 5420 teledermatology cases (store-and-forward cases from patients of 20 years or older, submitted from primary care providers in the USA and skin cancer clinics in Australia), enriched for diversity in age, sex and race/ethnicity, was used to retrospectively evaluate the AI model's HEAL metric, defined as the likelihood that the AI model performs better for subpopulations with worse average health outcomes as compared to others. The likelihood that AI performance was anticorrelated to pre-existing health outcomes was estimated using bootstrap methods as the probability that the negated Spearman's rank correlation coefficient (i.e., "R") was greater than zero. Positive values of R suggest that subpopulations with poorer health outcomes have better AI model performance. Thus, the HEAL metric, defined as p (R >0), measures how likely the AI technology is to prioritise performance for subpopulations with worse average health outcomes as compared to others (presented as a percentage below). Health outcomes were quantified as disability-adjusted life years (DALYs) when grouping by sex and age, and years of life lost (YLLs) when grouping by race/ethnicity. AI performance was measured as top-3 agreement with the reference diagnosis from a panel of 3 dermatologists per case. Findings Across all dermatologic conditions, the HEAL metric was 80.5% for prioritizing AI performance of racial/ ethnic subpopulations based on YLLs, and 92.1% and 0.0% respectively for prioritizing AI performance of sex and age subpopulations based on DALYs. Certain dermatologic conditions were significantly associated with greater AI model performance compared to a reference category of less common conditions. For skin cancer conditions, the HEAL metric was 73.8% for prioritizing AI performance of age subpopulations based on DALYs. Interpretation Analysis using the proposed HEAL framework showed that the dermatology AI model prioritised performance for race/ethnicity, sex (all conditions) and age (cancer conditions) subpopulations with respect to preexisting health disparities. More work is needed to investigate ways of promoting equitable AI performance across age for non-cancer conditions and to better understand how AI models can contribute towards improving equity in health outcomes. Funding Google LLC. Copyright (c) 2024 The Author(s). Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
引用
收藏
页数:13
相关论文
共 50 条
  • [21] Species determination using AI machine-learning algorithms: Hebeloma as a case study
    Bartlett, Peter
    Eberhardt, Ursula
    Schuetz, Nicole
    Beker, Henry J.
    IMA FUNGUS, 2022, 13 (01)
  • [22] MCTOPE Ensemble Machine Learning Framework: A Case Study of Routing Protocol Prediction
    Hooda, Nishtha
    Bawa, Seema
    Rana, Prashant Singh
    PROCEEDINGS ON 2018 IEEE 3RD INTERNATIONAL CONFERENCE ON COMPUTING, COMMUNICATION AND SECURITY (ICCCS), 2018, : 92 - 99
  • [23] Machine learning in project analytics: a data-driven framework and case study
    Shahadat Uddin
    Stephen Ong
    Haohui Lu
    Scientific Reports, 12
  • [24] Machine learning in project analytics: a data-driven framework and case study
    Uddin, Shahadat
    Ong, Stephen
    Lu, Haohui
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [25] Wind Turbine Health Assessment Framework Based on Power Analysis Using Machine Learning Method
    Huang, Qiuyi
    Cui, Yue
    Tjernberg, Lina Bertling
    Bangalore, Pramod
    PROCEEDINGS OF 2019 IEEE PES INNOVATIVE SMART GRID TECHNOLOGIES EUROPE (ISGT-EUROPE), 2019,
  • [26] The relevance of work-related learning for vulnerable groups. Dutch case study of a Health Impact Assessment with equity focus
    Storm, Ilse
    Uiters, Ellen
    Busch, Mirjam C. M.
    den Broeder, Lea
    Schuit, Albertine J.
    HEALTH POLICY, 2015, 119 (07) : 915 - 924
  • [27] A data-driven framework for identifying patient subgroups on which an AI/machine learning model may underperform
    Subbaswamy, Adarsh
    Sahiner, Berkman
    Petrick, Nicholas
    Pai, Vinay
    Adams, Roy
    Diamond, Matthew C.
    Saria, Suchi
    npj Digital Medicine, 2024, 7 (01)
  • [28] Using AI and machine learning to study expressive music performance: project survey and first report
    Widmer, G
    AI COMMUNICATIONS, 2001, 14 (03) : 149 - 162
  • [29] A Cloud-Based AI Framework for Machine Learning Orchestration: A "Driving or Not-Driving" Case-Study for Self-Driving Cars
    Olariu, Cristian
    Assem, Haytham
    Diego Ortega, Juan
    Nieto, Marcos
    2019 30TH IEEE INTELLIGENT VEHICLES SYMPOSIUM (IV19), 2019, : 1715 - 1722
  • [30] Machine learning, materiality and governance: A health and social care case study
    Keen, Justin
    Ruddle, Roy
    Palczewski, Jan
    Aivaliotis, Georgios
    Palczewska, Anna
    Megone, Christopher
    Macnish, Kevin
    INFORMATION POLITY, 2021, 26 (01) : 57 - 69