Can adverse childhood experiences predict chronic health conditions? Development of trauma-informed, explainable machine learning models

被引:0
|
作者
Afzal, Hanin B. [1 ]
Jahangir, Tasfia [2 ]
Mei, Yiyang [3 ]
Madden, Annabelle [4 ]
Sarker, Abeed [5 ]
Kim, Sangmi [6 ]
机构
[1] Univ Toronto, Dept Mech & Ind Engn, Toronto, ON, Canada
[2] Emory Univ, Rollins Sch Publ Hlth, Dept Behav Social & Hlth Educ Sci, Atlanta, GA 30322 USA
[3] Emory Univ, Sch Law, Atlanta, GA USA
[4] Columbia Univ, Teachers Coll, New York, NY USA
[5] Emory Univ, Dept Biomed Informat, Sch Med, Atlanta, GA USA
[6] Emory Univ, Nell Hodgson Woodruff Sch Nursing, Atlanta, GA USA
基金
美国国家卫生研究院;
关键词
behavioral risk factor surveillance survey; machine learning; adverse childhood experiences; chronic diseases; health behaviors; health outcomes; CHRONIC DISEASE; ARTIFICIAL-INTELLIGENCE; HOUSEHOLD DYSFUNCTION; RISK; CARE; ADULTHOOD; CANCER; TRAJECTORIES; INFLUENZA; OUTCOMES;
D O I
10.3389/fpubh.2023.1309490
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Introduction Decades of research have established the association between adverse childhood experiences (ACEs) and adult onset of chronic diseases, influenced by health behaviors and social determinants of health (SDoH). Machine Learning (ML) is a powerful tool for computing these complex associations and accurately predicting chronic health conditions.Methods Using the 2021 Behavioral Risk Factor Surveillance Survey, we developed several ML models-random forest, logistic regression, support vector machine, Naive Bayes, and K-Nearest Neighbor-over data from a sample of 52,268 respondents. We predicted 13 chronic health conditions based on ACE history, health behaviors, SDoH, and demographics. We further assessed each variable's importance in outcome prediction for model interpretability. We evaluated model performance via the Area Under the Curve (AUC) score.Results With the inclusion of data on ACEs, our models outperformed or demonstrated similar accuracies to existing models in the literature that used SDoH to predict health outcomes. The most accurate models predicted diabetes, pulmonary diseases, and heart attacks. The random forest model was the most effective for diabetes (AUC = 0.784) and heart attacks (AUC = 0.732), and the logistic regression model most accurately predicted pulmonary diseases (AUC = 0.753). The strongest predictors across models were age, ever monitored blood sugar or blood pressure, count of the monitoring behaviors for blood sugar or blood pressure, BMI, time of last cholesterol check, employment status, income, count of vaccines received, health insurance status, and total ACEs. A cumulative measure of ACEs was a stronger predictor than individual ACEs.Discussion Our models can provide an interpretable, trauma-informed framework to identify and intervene with at-risk individuals early to prevent chronic health conditions and address their inequalities in the U.S.
引用
收藏
页数:16
相关论文
共 50 条
  • [41] STRYV365 peak team and Brain agents: teacher perspectives on school impact of a trauma-informed, social-emotional learning approach for students facing adverse childhood experiences
    Stoltenburg, Abbey
    McGuire, Madison
    Liverman, Elizabeth
    Lumelsky, Paula
    Bates, Garrett
    Gundacker, Constance
    Currie, Brandon
    Meurer, John R.
    FRONTIERS IN PSYCHOLOGY, 2024, 15
  • [42] Child Protection and Welfare During the COVID 19 Pandemic: Revisiting the Value of Resilience-Building, Systems Theory, Adverse Childhood Experiences and Trauma-Informed Approaches
    Flynn, Susan
    CHILD CARE IN PRACTICE, 2023, 29 (04) : 371 - 388
  • [43] Adverse Childhood Experiences Predict Common Neurodevelopmental and Behavioral Health Conditions among U.S. Children
    Zarei, Kasra
    Xu, Guifeng
    Zimmerman, Bridget
    Giannotti, Michele
    Strathearn, Lane
    CHILDREN-BASEL, 2021, 8 (09):
  • [44] Can Machine Learning Models Predict Asparaginase-associated Pancreatitis in Childhood Acute Lymphoblastic Leukemia
    Nielsen, Rikke L.
    Wolthers, Benjamin O.
    Helenius, Marianne
    Albertsen, Birgitte K.
    Clemmensen, Line
    Nielsen, Kasper
    Kanerva, Jukka
    Niinimaki, Riitta
    Frandsen, Thomas L.
    Attarbaschi, Andishe
    Barzilai, Shlomit
    Colombini, Antonella
    Escherich, Gabriele
    Aytan-Aktug, Derya
    Liu, Hsi-Che
    Moricke, Anja
    Samarasinghe, Sujith
    van der Sluis, Inge M.
    Stanulla, Martin
    Tulstrup, Morten
    Yadav, Rachita
    Zapotocka, Ester
    Schmiegelow, Kjeld
    Gupta, Ramneek
    JOURNAL OF PEDIATRIC HEMATOLOGY ONCOLOGY, 2022, 44 (03) : E628 - E636
  • [45] Development and validation of explainable machine learning models for female hip osteoporosis using electronic health records
    Jin, Wanlin
    Xu, Lulu
    Yue, Chun
    Hu, Li
    Wang, Yuzhou
    Fu, Yaqian
    Guo, Yuanwei
    Bai, Fan
    Yang, Yanyi
    Zhao, Xianmei
    Luo, Yingquan
    Wu, Xiyu
    Sheng, Zhifeng
    INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2025, 199
  • [46] Can machine learning identify childhood characteristics that predict future development of bipolar disorder a decade later?
    Uchida, Mai
    Bukhari, Qasim
    DiSalvo, Maura
    Green, Allison
    Serra, Giulia
    Vater, Chloe Hutt
    Ghosh, Satrajit S.
    V. Faraone, Stephen
    Gabrieli, John D. E.
    Biederman, Joseph
    JOURNAL OF PSYCHIATRIC RESEARCH, 2022, 156 : 261 - 267
  • [47] The Missing Vital Sign: Adverse Childhood Experiences (ACEs) Impact on the Epigenome, Behavioral Health, and the Critical Need for Nurses to Practice Trauma Informed Care
    Lauerer, Joy A.
    Gaffney, Kathleen C.
    Williams, Colleen C.
    JOURNAL OF THE AMERICAN PSYCHIATRIC NURSES ASSOCIATION, 2015, 21 (01) : 45 - 46
  • [48] Development and Validation of Machine Learning Models to Predict Bacteremia and Fungemia Using Electronic Health Record (EHR) Data
    Bhavani, S.
    Lonjers, Z.
    Carey, K.
    Gilbert, E. R.
    Afshar, M.
    Shah, N.
    Huang, E.
    Churpek, M. M.
    AMERICAN JOURNAL OF RESPIRATORY AND CRITICAL CARE MEDICINE, 2020, 201
  • [49] Development of a machine learning tool to predict the risk of incident chronic kidney disease using health examination data
    Yoshizaki, Yuki
    Kato, Kiminori
    Fujihara, Kazuya
    Sone, Hirohito
    Akazawa, Kohei
    FRONTIERS IN PUBLIC HEALTH, 2024, 12
  • [50] Development of explicit models to predict methane hydrate equilibrium conditions in pure water and brine solutions: A machine learning approach
    Hosseini, Mostafa
    Leonenko, Yuri
    CHEMICAL ENGINEERING SCIENCE, 2024, 286