A risk prediction model based on machine learning for early cognitive impairment in hypertension: Development and validation study

被引:14
作者
Zhong, Xia [1 ]
Yu, Jie [2 ]
Jiang, Feng [3 ]
Chen, Haoyu [3 ]
Wang, Zhenyuan [3 ]
Teng, Jing [1 ]
Jiao, Huachen [3 ]
机构
[1] Shandong Univ Tradit Chinese Med, Dept Clin Med Coll 1, Jinan, Shandong, Peoples R China
[2] Shandong Univ Tradit Chinese Med, Jinan, Shandong, Peoples R China
[3] Shandong Univ Tradit Chinese Med, Dept Cardiol, Affiliated Hosp, Jinan, Shandong, Peoples R China
关键词
hypertension; cognitive impairment; machine learning; prediction model; risk factors; HIP CIRCUMFERENCE; ASSOCIATIONS; OBESITY;
D O I
10.3389/fpubh.2023.1143019
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
BackgroundClinical practice guidelines recommend early identification of cognitive impairment in individuals with hypertension with the help of risk prediction tools based on risk factors. ObjectiveThe aim of this study was to develop a superior machine learning model based on easily collected variables to predict the risk of early cognitive impairment in hypertensive individuals, which could be used to optimize early cognitive impairment risk assessment strategies. MethodsFor this cross-sectional study, 733 patients with hypertension (aged 30-85, 48.98% male) enrolled in multi-center hospitals in China were divided into a training group (70%) and a validation group (30%). After least absolute shrinkage and selection operator (LASSO) regression analysis with 5-fold cross-validation determined the modeling variables, three machine learning classifiers, logistic regression (LR), XGBoost (XGB), and gaussian naive bayes (GNB), were developed. The area under the ROC curve (AUC), accuracy, sensitivity, specificity, and F1 score were used to evaluate the model performance. Shape Additive explanation (SHAP) analysis was performed to rank feature importance. Further decision curve analysis (DCA) assessed the clinical performance of the established model and visualized it by nomogram. ResultsHip circumference, age, education levels, and physical activity were considered significant predictors of early cognitive impairment in hypertension. The AUC (0.88), F1 score (0.59), accuracy (0.81), sensitivity (0.84), and specificity (0.80) of the XGB model were superior to LR and GNB classifiers. ConclusionThe XGB model based on hip circumference, age, educational level, and physical activity has superior predictive performance and it shows promise in predicting the risk of cognitive impairment in hypertensive clinical settings.
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页数:14
相关论文
共 64 条
[1]   Mediation effects of diabetes and inflammation on the relationship of obesity to cognitive impairment in African Americans [J].
Abi Saleh, Rola ;
Lirette, Seth T. ;
Benjamin, Emelia J. ;
Fornage, Myriam ;
Turner, Stephen T. ;
Hammond, Pamela I. ;
Mosley, Thomas H. ;
Griswold, Michael E. ;
Windham, B. Gwen .
JOURNAL OF THE AMERICAN GERIATRICS SOCIETY, 2022, 70 (10) :3021-3029
[2]   Clinical applications of machine learning in cardiovascular disease and its relevance to cardiac imaging [J].
Al'Aref, Subhi J. ;
Anchouche, Khalil ;
Singh, Gurpreet ;
Slomka, Piotr J. ;
Kolli, Kranthi K. ;
Kumar, Amit ;
Pandey, Mohit ;
Maliakal, Gabriel ;
van Rosendael, Alexander R. ;
Beecy, Ashley N. ;
Berman, Daniel S. ;
Leipsic, Jonathan ;
Nieman, Koen ;
Andreini, Daniele ;
Pontone, Gianluca ;
Schoepf, U. Joseph ;
Shaw, Leslee J. ;
Chang, Hyuk-Jae ;
Narula, Jagat ;
Bax, Jeroen J. ;
Guan, Yuanfang ;
Min, James K. .
EUROPEAN HEART JOURNAL, 2019, 40 (24) :1975-+
[3]   HYPERTENSION AND CEREBRAL ATHEROSCLEROSIS [J].
BAKER, AB ;
RESCH, JA ;
LOEWENSON, RB .
CIRCULATION, 1969, 39 (05) :701-+
[4]   Stability in BMI over time is associated with a better cognitive trajectory in older adults [J].
Beeri, Michal Schnaider ;
Tirosh, Amir ;
Lin, Hung-Mo ;
Golan, Sapir ;
Boccara, Ethel ;
Sano, Mary ;
Zhu, Carolyn W. .
ALZHEIMERS & DEMENTIA, 2022, 18 (11) :2131-2139
[5]   The association of multiple anti-hypertensive medication classes with Alzheimer's disease incidence across sex, race, and ethnicity [J].
Berthold, Douglas ;
Joyce, Geoffrey ;
Wharton, Whitney ;
Kehoe, Patrick ;
Zissimopoulos, Julie .
PLOS ONE, 2018, 13 (11)
[6]   Pharmacological and non-pharmacological interventions to enhance sleep in mild cognitive impairment and mild Alzheimer's disease: A systematic review [J].
Blackman, Jonathan ;
Swirski, Marta ;
Clynes, James ;
Harding, Sam ;
Leng, Yue ;
Coulthard, Elizabeth .
JOURNAL OF SLEEP RESEARCH, 2021, 30 (04)
[7]  
Buysse D J, 1989, Psychiatry Res, V28, P193
[8]   Investigating Predictors of Cognitive Decline Using Machine Learning [J].
Casanova, Ramon ;
Saldana, Santiago ;
Lutz, Michael W. ;
Plassman, Brenda L. ;
Kuchibhatla, Maragatha ;
Hayden, Kathleen M. .
JOURNALS OF GERONTOLOGY SERIES B-PSYCHOLOGICAL SCIENCES AND SOCIAL SCIENCES, 2020, 75 (04) :733-742
[9]   Validity of the International Physical Activity Questionnaire (IPAQ) for assessing moderate-to-vigorous physical activity and sedentary behaviour of older adults in the United Kingdom [J].
Cleland, Claire ;
Ferguson, Sara ;
Ellis, Geraint ;
Hunter, Ruth F. .
BMC MEDICAL RESEARCH METHODOLOGY, 2018, 18
[10]   Nutrition, Physical Activity, and Other Lifestyle Factors in the Prevention of Cognitive Decline and Dementia [J].
Dominguez, Ligia J. ;
Veronese, Nicola ;
Vernuccio, Laura ;
Catanese, Giuseppina ;
Inzerillo, Flora ;
Salemi, Giuseppe ;
Barbagallo, Mario .
NUTRIENTS, 2021, 13 (11)