Incorporating machine learning and social determinants of health indicators into prospective risk adjustment for health plan payments

被引:28
|
作者
Irvin, Jeremy A. [1 ]
Kondrich, Andrew A. [1 ]
Ko, Michael [2 ]
Rajpurkar, Pranav [1 ]
Haghgoo, Behzad [1 ]
Landon, Bruce E. [3 ,4 ]
Phillips, Robert [5 ]
Petterson, Stephen [6 ]
Ng, Andrew Y. [1 ]
Basu, Sanjay [4 ,7 ,8 ]
机构
[1] Stanford Univ, Dept Comp Sci, 353 Serra Mall, Stanford, CA 94305 USA
[2] Stanford Univ, Dept Stat, Stanford, CA 94305 USA
[3] Harvard Med Sch, Dept Healthcare Policy, Boston, MA 02115 USA
[4] Harvard Med Sch, Ctr Primary Care, Boston, MA 02115 USA
[5] Amer Board Family Med Fdn, Ctr Professionalism & Value Hlth Care, Lexington, KY USA
[6] Amer Acad Family Phys, Ctr Professionalism & Value Hlth Care, Leawood, KS USA
[7] Collect Hlth, Res & Analyt, San Francisco, CA USA
[8] Imperial Coll London, Sch Publ Hlth, London, England
关键词
Risk estimation; Machine learning; Social determinants of health; SOCIOECONOMIC-STATUS; LOGISTIC-REGRESSION; MEDICARE; MODELS; INCOME;
D O I
10.1186/s12889-020-08735-0
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
BackgroundRisk adjustment models are employed to prevent adverse selection, anticipate budgetary reserve needs, and offer care management services to high-risk individuals. We aimed to address two unknowns about risk adjustment: whether machine learning (ML) and inclusion of social determinants of health (SDH) indicators improve prospective risk adjustment for health plan payments.MethodsWe employed a 2-by-2 factorial design comparing: (i) linear regression versus ML (gradient boosting) and (ii) demographics and diagnostic codes alone, versus additional ZIP code-level SDH indicators. Healthcare claims from privately-insured US adults (2016-2017), and Census data were used for analysis. Data from 1.02 million adults were used for derivation, and data from 0.26 million to assess performance. Model performance was measured using coefficient of determination (R-2), discrimination (C-statistic), and mean absolute error (MAE) for the overall population, and predictive ratio and net compensation for vulnerable subgroups. We provide 95% confidence intervals (CI) around each performance measure.ResultsLinear regression without SDH indicators achieved moderate determination (R-2 0.327, 95% CI: 0.300, 0.353), error ($6992; 95% CI: $6889, $7094), and discrimination (C-statistic 0.703; 95% CI: 0.701, 0.705). ML without SDH indicators improved all metrics (R-2 0.388; 95% CI: 0.357, 0.420; error $6637; 95% CI: $6539, $6735; C-statistic 0.717; 95% CI: 0.715, 0.718), reducing misestimation of cost by $3.5M per 10,000 members. Among people living in areas with high poverty, high wealth inequality, or high prevalence of uninsured, SDH indicators reduced underestimation of cost, improving the predictive ratio by 3% ($200/person/year).ConclusionsML improved risk adjustment models and the incorporation of SDH indicators reduced underpayment in several vulnerable populations.
引用
收藏
页数:10
相关论文
共 50 条
  • [1] Incorporating machine learning and social determinants of health indicators into prospective risk adjustment for health plan payments
    Jeremy A. Irvin
    Andrew A. Kondrich
    Michael Ko
    Pranav Rajpurkar
    Behzad Haghgoo
    Bruce E. Landon
    Robert L. Phillips
    Stephen Petterson
    Andrew Y. Ng
    Sanjay Basu
    BMC Public Health, 20
  • [2] Advancing the Learning Health System by Incorporating Social Determinants
    Palakshappa, Deepak
    Miller, David P., Jr.
    Rosenthal, Gary E.
    AMERICAN JOURNAL OF MANAGED CARE, 2020, 26 (01): : E4 - E6
  • [3] Incorporating Behavioral and Social Determinants of Health Variables Into a Machine Learning Model Predicting Cardiometabolic Disease
    Salvia, Meg
    Mattie, Heather
    Austin, S. Bryn
    Hu, Frank B.
    Mattei, Josiemer
    CIRCULATION, 2024, 149
  • [4] Machine learning approaches to the social determinants of health in the health and retirement study
    Seligman, Benjamin
    Tuljapurkar, Shripad
    Rehkopf, David
    SSM-POPULATION HEALTH, 2018, 4 : 95 - 99
  • [5] Social Determinants of Health in Machine-Learning Algorithms
    Boulos, Nancy M.
    Chang, En
    Burton, Brittany N.
    ANESTHESIA AND ANALGESIA, 2025, 140 (03): : e20 - e21
  • [6] IMPROVING PREDICTION OF MEDICAL COSTS AMONG MEDICARE BENEFICIARIES BY INCORPORATING SOCIAL DETERMINANTS OF HEALTH INDICATORS IN RISK PREDICTION
    Chen, Z.
    Jung, D.
    Young, H. N.
    Hou, X.
    Khan, M. M.
    Zhang, D.
    Shen, Y.
    Sekandi, J.
    Mu, L.
    Ma, S.
    VALUE IN HEALTH, 2024, 27 (06) : S220 - S220
  • [7] Mental Health Risk Adjustment with Clinical Categories and Machine Learning
    Shrestha, Akritee
    Bergquist, Savannah
    Montz, Ellen
    Rose, Sherri
    HEALTH SERVICES RESEARCH, 2018, 53 : 3189 - 3206
  • [8] Bringing context and nuance to risk prediction by incorporating social determinants of health
    Yao, Xiaoxi
    Noseworthy, Peter A.
    EUROPEAN JOURNAL OF PREVENTIVE CARDIOLOGY, 2022, 29 (10) : 1463 - 1464
  • [9] Risk adjustment of mental health and substance abuse payments
    Ettner, SL
    Frank, RG
    McGuire, TC
    Newhouse, JP
    Notman, EH
    INQUIRY-THE JOURNAL OF HEALTH CARE ORGANIZATION PROVISION AND FINANCING, 1998, 35 (02) : 223 - 239
  • [10] Social Determinants of Health in Machine-Learning Algorithms Response
    Gabriel, Rodney A.
    ANESTHESIA AND ANALGESIA, 2025, 140 (03): : e21 - e22