Estimation of Machine Learning-Based Models to Predict Dementia Risk in Patients With Atherosclerotic Cardiovascular Diseases: UK Biobank Study

被引:0
|
作者
Gu, Zhengsheng [1 ]
Liu, Shuang [2 ]
Ma, Huijuan [2 ]
Long, Yifan [2 ]
Jiao, Xuehao [1 ]
Gao, Xin [1 ]
Du, Bingying [1 ,3 ]
Bi, Xiaoying [1 ]
Shi, Xingjie [2 ]
机构
[1] Naval Med Univ, Affiliated Hosp 1, Dept Neurol, Shanghai, Peoples R China
[2] East China Normal Univ, Acad Stat & Interdisciplinary Sci, Sch Stat, KLATASDS MOE, 3663 North Zhongshan Rd, Shanghai 200062, Peoples R China
[3] Fudan Univ, Inst Translat Brain Res, Shanghai, Peoples R China
基金
上海市自然科学基金;
关键词
atherosclerotic cardiovascular disease; dementia; Alzheimer disease; vascular dementia; machine learning; UK Biobank;
D O I
10.2196/64148
中图分类号
R592 [老年病学]; C [社会科学总论];
学科分类号
03 ; 0303 ; 100203 ;
摘要
Background: The atherosclerotic cardiovascular disease (ASCVD) is associated with dementia. However, the risk factors of dementia in patients with ASCVD remain unclear, necessitating the development of accurate prediction models. Objective: The aim of the study is to develop a machine learning model for use in patients with ASCVD to predict dementia risk using available clinical and sociodemographic data. Methods: This prognostic study included patients with ASCVD between 2006 and 2010, with registration of follow-up data ending on April 2023 based on the UK Biobank. We implemented a data-driven strategy, identifying predictors from 316 variables and developing a machine learning model to predict the risk of incident dementia, Alzheimer disease, and vascular dementia within 5, 10, and longer-term follow-up in patients with ASCVD. Results: A total of 29,561 patients with ASCVD were included, and 1334 (4.51%) developed dementia during a median follow-up time of 10.3 (IQR 7.6-12.4) years. The best prediction model (UK Biobank ASCVD risk prediction model) was light gradient boosting machine, comprising 10 predictors including age, time to complete pairs matching tasks, mean time to correctly identify matches, mean sphered cell volume, glucose levels, forced expiratory volume in 1 second z score, C-reactive protein, forced vital capacity, time engaging in activities, and age first had sexual intercourse. This model achieved the following performance metrics for all incident dementia: area under the receiver operating characteristic curve: mean 0.866 (SD 0.027), accuracy: mean 0.883 (SD 0.010), sensitivity: mean 0.637 (SD 0.084), specificity: mean 0.914 (SD 0.012), precision: mean 0.479 (SD 0.031), and F-1-score: mean 0.546 (SD 0.043). Meanwhile, this model was well-calibrated (Kolmogorov-Smirnov test showed goodness-of-fit P value>.99) and maintained robust performance across different temporal cohorts. Besides, the model had a beneficial potential in clinical practice with a decision curve analysis. Conclusions: The findings of this study suggest that predictive modeling could inform patients and clinicians about ASCVD at risk for dementia.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] A Machine Learning Approach to Simplify Risk Stratification of Patients with Atherosclerotic Cardiovascular Disease
    Li, Hsin Fang
    Nute, Andrew
    Weerasinghe, Roshanthi
    Wendt, Staci
    Wilson, Eleni
    Sidelnikov, Eduard
    Kathe, Niranjan
    Swihart, Charissa
    Jones, Laney
    Gluckman, Ty
    CIRCULATION, 2024, 150
  • [32] Identification of Risk Factors and Machine Learning-Based Prediction Models for Knee Osteoarthritis Patients
    Kokkotis, Christos
    Moustakidis, Serafeim
    Giakas, Giannis
    Tsaopoulos, Dimitrios
    APPLIED SCIENCES-BASEL, 2020, 10 (19):
  • [33] Machine Learning-Based Models for Assessing Postoperative Risk Factors in Patients with Cervical Cancer
    Zhang, Yu
    Qin, Zhihui
    Li, Linrui
    Liu, Long
    Wu, Qibing
    ACADEMIC RADIOLOGY, 2024, 31 (04) : 1410 - 1418
  • [34] Cardiovascular disease risk prediction using automated machine learning: A prospective study of 423,604 UK Biobank participants
    Alaa, Ahmed M.
    Bolton, Thomas
    Di Angelantonio, Emanuele
    Rudd, James H. F.
    van der Schaar, Mihaela
    PLOS ONE, 2019, 14 (05):
  • [35] Machine learning and statistical models to predict all-cause mortality in type 2 diabetes: Results from the UK Biobank study
    Zhang, Tingjing
    Huang, Mingyu
    Chen, Liangkai
    Xia, Yang
    Min, Weiqing
    Jiang, Shuqiang
    DIABETES & METABOLIC SYNDROME-CLINICAL RESEARCH & REVIEWS, 2024, 18 (09)
  • [36] A Machine Learning-Based Prediction Model for Cardiovascular Risk in Women With Preeclampsia
    Wang, Guan
    Zhang, Yanbo
    Li, Sijin
    Zhang, Jun
    Jiang, Dongkui
    Li, Xiuzhen
    Li, Yulin
    Du, Jie
    FRONTIERS IN CARDIOVASCULAR MEDICINE, 2021, 8
  • [37] Machine-learning-based models to predict cardiovascular risk using oculomics and clinic variables in KNHANES
    Zhang, Yuqi
    Li, Sijin
    Wu, Weijie
    Zhao, Yanqing
    Han, Jintao
    Tong, Chao
    Luo, Niansang
    Zhang, Kun
    BIODATA MINING, 2024, 17 (01)
  • [38] Machine learning-based classifiers to predict metastasis in colorectal cancer patients
    Talebi, Raheleh
    Celis-Morales, Carlos A.
    Akbari, Abolfazl
    Talebi, Atefeh
    Borumandnia, Nasrin
    Pourhoseingholi, Mohamad Amin
    FRONTIERS IN ARTIFICIAL INTELLIGENCE, 2024, 7
  • [39] Pulse-rich diets and risk of cardiovascular diseases: findings from the UK Biobank prospective study
    Olotu, O. A.
    Kaimila, Y.
    Clegg, M. E.
    Jackson, K. G.
    Lovegrove, J. A.
    PROCEEDINGS OF THE NUTRITION SOCIETY, 2024, 83 (OCE4)
  • [40] Machine learning-based prediction models for accidental hypothermia patients
    Yohei Okada
    Tasuku Matsuyama
    Sachiko Morita
    Naoki Ehara
    Nobuhiro Miyamae
    Takaaki Jo
    Yasuyuki Sumida
    Nobunaga Okada
    Makoto Watanabe
    Masahiro Nozawa
    Ayumu Tsuruoka
    Yoshihiro Fujimoto
    Yoshiki Okumura
    Tetsuhisa Kitamura
    Ryoji Iiduka
    Shigeru Ohtsuru
    Journal of Intensive Care, 9