Examining arterial pulsation to identify and risk-stratify heart failure subjects with deep neural network.

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-06-01 Epub Date: 2024-02-15 DOI:10.1007/s13246-023-01378-6
Chieh-Chun Huang, Shih-Hsien Sung, Wei-Ting Wang, Yin-Yuan Su, Chi-Jung Huang, Tzu-Yu Chu, Shao-Yuan Chuang, Chern-En Chiang, Chen-Huan Chen, Chen-Ching Lin, Hao-Min Cheng
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Abstract

Hemodynamic parameters derived from pulse wave analysis have been shown to predict long-term outcomes in patients with heart failure (HF). Here we aimed to develop a deep-learning based algorithm that incorporates pressure waveforms for the identification and risk stratification of patients with HF. The first study, with a case-control study design to address data imbalance issue, included 431 subjects with HF exhibiting typical symptoms and 1545 control participants with no history of HF (non-HF). Carotid pressure waveforms were obtained from all the participants using applanation tonometry. The HF score, representing the probability of HF, was derived from a one-dimensional deep neural network (DNN) model trained with characteristics of the normalized carotid pressure waveform. In the second study of HF patients, we constructed a Cox regression model with 83 candidate clinical variables along with the HF score to predict the risk of all-cause mortality along with rehospitalization. To identify subjects using the HF score, the sensitivity, specificity, accuracy, F1 score, and area under receiver operating characteristic curve were 0.867, 0.851, 0.874, 0.878, and 0.93, respectively, from the hold-out cross-validation of the DNN, which was better than other machine learning models, including logistic regression, support vector machine, and random forest. With a median follow-up of 5.8 years, the multivariable Cox model using the HF score and other clinical variables outperformed the other HF risk prediction models with concordance index of 0.71, in which only the HF score and five clinical variables were independent significant predictors (p < 0.05), including age, history of percutaneous coronary intervention, concentration of sodium in the emergency room, N-terminal pro-brain natriuretic peptide, and hemoglobin. Our study demonstrated the diagnostic and prognostic utility of arterial waveforms in subjects with HF using a DNN model. Pulse wave contains valuable information that can benefit the clinical care of patients with HF.

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利用深度神经网络检查动脉搏动,识别心衰患者并进行风险分级。
脉搏波分析得出的血流动力学参数已被证明可以预测心力衰竭(HF)患者的长期预后。在此,我们旨在开发一种基于深度学习的算法,结合压力波形对心衰患者进行识别和风险分层。第一项研究采用病例对照研究设计以解决数据不平衡问题,研究对象包括 431 名表现出典型症状的高血压患者和 1545 名无高血压病史(非高血压)的对照组参与者。所有受试者均使用眼压计测量颈动脉压力波形。根据归一化颈动脉压力波形特征训练的一维深度神经网络(DNN)模型得出了代表高血压概率的高血压评分。在对高血压患者的第二项研究中,我们利用 83 个候选临床变量和高血压评分构建了一个 Cox 回归模型,以预测全因死亡和再住院的风险。在使用 HF 评分识别受试者时,DNN 的灵敏度、特异性、准确性、F1 评分和接收器工作特征曲线下面积分别为 0.867、0.851、0.874、0.878 和 0.93,优于其他机器学习模型,包括逻辑回归、支持向量机和随机森林。在中位随访 5.8 年的情况下,使用心房颤动评分和其他临床变量的多变量 Cox 模型优于其他心房颤动风险预测模型,一致性指数为 0.71,其中只有心房颤动评分和五个临床变量是独立的显著预测因子(P<0.05)。
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来源期刊
CiteScore
8.40
自引率
4.50%
发文量
110
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