Improving cardiovascular risk prediction with machine learning: a focus on perivascular adipose tissue characteristics.

IF 2.9 4区 医学 Q3 ENGINEERING, BIOMEDICAL
Cong He, Fangye Wu, Linfeng Fu, Lingting Kong, Zefeng Lu, Yingpeng Qi, Hongwei Xu
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Abstract

Background: Timely prevention of major adverse cardiovascular events (MACEs) is imperative for reducing cardiovascular diseases-related mortality. Perivascular adipose tissue (PVAT), the adipose tissue surrounding coronary arteries, has attracted increased amounts of attention. Developing a model for predicting the incidence of MACE utilizing machine learning (ML) integrating clinical and PVAT features may facilitate targeted preventive interventions and improve patient outcomes.

Methods: From January 2017 to December 2019, we analyzed a cohort of 1077 individuals who underwent coronary CT scanning at our facility. Clinical features were collected alongside imaging features, such as coronary artery calcium (CAC) scores and perivascular adipose tissue (PVAT) characteristics. Logistic regression (LR), Framingham Risk Score, and ML algorithms were employed for MACE prediction.

Results: We screened seven critical features to improve the practicability of the model. MACE patients tended to be older, smokers, and hypertensive. Imaging biomarkers such as CAC scores and PVAT characteristics differed significantly between patients with and without a 3-year MACE risk in a population that did not exhibit disparities in laboratory results. The ensemble model, which leverages multiple ML algorithms, demonstrated superior predictive performance compared with the other models. Finally, the ensemble model was used for risk stratification prediction to explore its clinical application value.

Conclusions: The developed ensemble model effectively predicted MACE incidence based on clinical and imaging features, highlighting the potential of ML algorithms in cardiovascular risk prediction and personalized medicine. Early identification of high-risk patients may facilitate targeted preventive interventions and improve patient outcomes.

利用机器学习改进心血管风险预测:关注血管周围脂肪组织特征。
背景:及时预防重大不良心血管事件(MACE)是降低心血管疾病相关死亡率的当务之急。血管周围脂肪组织(PVAT)是冠状动脉周围的脂肪组织,已引起越来越多的关注。利用机器学习(ML)整合临床和 PVAT 特征,开发一个预测 MACE 发生率的模型,可能有助于采取有针对性的预防干预措施并改善患者预后:从 2017 年 1 月到 2019 年 12 月,我们分析了在本机构接受冠状动脉 CT 扫描的 1077 人队列。在收集临床特征的同时还收集了成像特征,如冠状动脉钙化(CAC)评分和血管周围脂肪组织(PVAT)特征。采用逻辑回归(LR)、弗雷明汉风险评分(Framingham Risk Score)和ML算法进行MACE预测:我们筛选了七个关键特征,以提高模型的实用性。MACE患者多为老年人、吸烟者和高血压患者。CAC评分和PVAT特征等成像生物标志物在3年MACE风险患者和非MACE风险患者之间存在显著差异,而这一人群的实验室结果并无差异。与其他模型相比,利用多种 ML 算法的集合模型显示出更优越的预测性能。最后,该集合模型被用于风险分层预测,以探索其临床应用价值:结论:所开发的集合模型能根据临床和影像学特征有效预测 MACE 的发生率,凸显了 ML 算法在心血管风险预测和个性化医疗方面的潜力。早期识别高危患者有助于采取有针对性的预防干预措施,改善患者预后。
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来源期刊
BioMedical Engineering OnLine
BioMedical Engineering OnLine 工程技术-工程:生物医学
CiteScore
6.70
自引率
2.60%
发文量
79
审稿时长
1 months
期刊介绍: BioMedical Engineering OnLine is an open access, peer-reviewed journal that is dedicated to publishing research in all areas of biomedical engineering. BioMedical Engineering OnLine is aimed at readers and authors throughout the world, with an interest in using tools of the physical and data sciences and techniques in engineering to understand and solve problems in the biological and medical sciences. Topical areas include, but are not limited to: Bioinformatics- Bioinstrumentation- Biomechanics- Biomedical Devices & Instrumentation- Biomedical Signal Processing- Healthcare Information Systems- Human Dynamics- Neural Engineering- Rehabilitation Engineering- Biomaterials- Biomedical Imaging & Image Processing- BioMEMS and On-Chip Devices- Bio-Micro/Nano Technologies- Biomolecular Engineering- Biosensors- Cardiovascular Systems Engineering- Cellular Engineering- Clinical Engineering- Computational Biology- Drug Delivery Technologies- Modeling Methodologies- Nanomaterials and Nanotechnology in Biomedicine- Respiratory Systems Engineering- Robotics in Medicine- Systems and Synthetic Biology- Systems Biology- Telemedicine/Smartphone Applications in Medicine- Therapeutic Systems, Devices and Technologies- Tissue Engineering
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