Wei Yuting, Tao Junlong, Geng Yifan, Ning Yi, Li Weixia, Bi Bo
School of Public Health, Hainan Medical University, Haikou, Hainan, China.
Key Laboratory of Tropical Translational Medicine of Ministry of Education, Hainan Medical University and Hainan Academy of Medical Sciences, Haikou, Hainan, China.
Front Cardiovasc Med. 2024 Sep 23;11:1454642. doi: 10.3389/fcvm.2024.1454642. eCollection 2024.
Cardiovascular diseases (CVD) constitute a grave global health challenge, engendering significant socio-economic repercussions. Carotid artery plaques (CAP) are critical determinants of CVD risk, and proactive screening can substantially mitigate the frequency of cardiovascular incidents. However, the unequal distribution of medical resources precludes many patients from accessing carotid ultrasound diagnostics. Machine learning (ML) offers an effective screening alternative, delivering accurate predictions without the need for advanced diagnostic equipment. This study aimed to construct ML models that utilize routine health assessments and blood biomarkers to forecast the onset of CAP.
In this study, seven ML models, including LightGBM, LR, multi-layer perceptron (MLP), NBM, RF, SVM, and XGBoost, were used to construct the prediction model, and their performance in predicting the risk of CAP was compared. Data on health checkups and biochemical indicators were collected from 19,751 participants at the Beijing MJ Health Screening Center for model training and validation. Of these, 6,381 were diagnosed with CAP using carotid ultrasonography. In this study, 21 indicators were selected. The performance of the models was evaluated using the accuracy, sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), F1 score, and area under the curve (AUC) value.
Among the seven ML models, the light gradient boosting machine (LightGBM) had the highest AUC value (85.4%). Moreover, age, systolic blood pressure (SBP), gender, low-density lipoprotein cholesterol (LDL-C), and total cholesterol (CHOL) were the top five predictors of carotid plaque formation.
This study demonstrated the feasibility of predicting carotid plaque risk using ML algorithms. ML offers effective tools for improving public health monitoring and risk assessment, with the potential to improve primary care and community health by identifying high-risk individuals and enabling proactive healthcare measures and resource optimization.
心血管疾病(CVD)是一项严峻的全球健康挑战,会产生重大的社会经济影响。颈动脉斑块(CAP)是心血管疾病风险的关键决定因素,积极筛查可大幅降低心血管事件的发生频率。然而,医疗资源分配不均使许多患者无法接受颈动脉超声诊断。机器学习(ML)提供了一种有效的筛查替代方案,无需先进的诊断设备就能做出准确预测。本研究旨在构建利用常规健康评估和血液生物标志物来预测CAP发病的ML模型。
在本研究中,使用包括LightGBM、LR、多层感知器(MLP)、NBM、RF、SVM和XGBoost在内的七种ML模型构建预测模型,并比较它们在预测CAP风险方面的性能。从北京美兆健康体检中心的19751名参与者中收集健康检查和生化指标数据用于模型训练和验证。其中,6381人通过颈动脉超声检查被诊断为患有CAP。本研究中选择了21项指标。使用准确率、灵敏度、特异性、阳性预测值(PPV)、阴性预测值(NPV)、F1分数和曲线下面积(AUC)值来评估模型的性能。
在七种ML模型中,轻梯度提升机(LightGBM)的AUC值最高(85.4%)。此外,年龄、收缩压(SBP)、性别、低密度脂蛋白胆固醇(LDL-C)和总胆固醇(CHOL)是颈动脉斑块形成的前五大预测因素。
本研究证明了使用ML算法预测颈动脉斑块风险的可行性。ML为改善公共卫生监测和风险评估提供了有效的工具,通过识别高危个体并采取积极的医疗措施和优化资源,有可能改善初级保健和社区健康。