{"title":"脉搏波信号驱动的机器学习用于识别心力衰竭患者的左心室扩大。","authors":"Dandan Wu, Ryohei Ono, Sirui Wang, Yoshio Kobayashi, Koichi Sughimoto, Hao Liu","doi":"10.1186/s12938-024-01257-5","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Left ventricular enlargement (LVE) is a common manifestation of cardiac remodeling that is closely associated with cardiac dysfunction, heart failure (HF), and arrhythmias. This study aimed to propose a machine learning (ML)-based strategy to identify LVE in HF patients by means of pulse wave signals.</p><p><strong>Method: </strong>We constructed two high-quality pulse wave datasets comprising a non-LVE group and an LVE group based on the 264 HF patients. Fourier series calculations were employed to determine if significant frequency differences existed between the two datasets, thereby ensuring their validity. Then, the ML-based identification was undertaken by means of classification and regression models: a weighted random forest model was employed for binary classification of the datasets, and a densely connected convolutional network was utilized to directly estimate the left ventricular diastolic diameter index (LVDdI) through regression. Finally, the accuracy of the two models was validated by comparing their results with clinical measurements, using accuracy and the area under the receiver operating characteristic curve (AUC-ROC) to assess their capability for identifying LVE patients.</p><p><strong>Results: </strong>The classification model exhibited superior performance with an accuracy of 0.91 and an AUC-ROC of 0.93. The regression model achieved an accuracy of 0.88 and an AUC-ROC of 0.89, indicating that both models can quickly and accurately identify LVE in HF patients.</p><p><strong>Conclusion: </strong>The proposed ML methods are verified to achieve effective classification and regression with good performance for identifying LVE in HF patients based on pulse wave signals. This study thus demonstrates the feasibility and potential of the ML-based strategy for clinical practice while offering an effective and robust tool for diagnosing and intervening ventricular remodeling.</p>","PeriodicalId":8927,"journal":{"name":"BioMedical Engineering OnLine","volume":"23 1","pages":"60"},"PeriodicalIF":2.9000,"publicationDate":"2024-06-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11193305/pdf/","citationCount":"0","resultStr":"{\"title\":\"Pulse wave signal-driven machine learning for identifying left ventricular enlargement in heart failure patients.\",\"authors\":\"Dandan Wu, Ryohei Ono, Sirui Wang, Yoshio Kobayashi, Koichi Sughimoto, Hao Liu\",\"doi\":\"10.1186/s12938-024-01257-5\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Left ventricular enlargement (LVE) is a common manifestation of cardiac remodeling that is closely associated with cardiac dysfunction, heart failure (HF), and arrhythmias. 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引用次数: 0
摘要
背景:左心室扩大(LVE)是心脏重塑的常见表现,与心功能不全、心力衰竭(HF)和心律失常密切相关。本研究旨在提出一种基于机器学习(ML)的策略,通过脉搏波信号识别高频患者的 LVE:方法:我们以 264 名高频患者为基础,构建了两个高质量的脉搏波数据集,包括非 LVE 组和 LVE 组。通过傅立叶序列计算来确定两个数据集之间是否存在明显的频率差异,从而确保其有效性。然后,通过分类和回归模型进行基于 ML 的识别:采用加权随机森林模型对数据集进行二元分类,利用密集连接的卷积网络通过回归直接估计左心室舒张直径指数(LVDdI)。最后,通过将两个模型的结果与临床测量结果进行比较,验证了它们的准确性,并使用准确性和接收器工作特征曲线下面积(AUC-ROC)来评估它们识别 LVE 患者的能力:分类模型表现优异,准确率为 0.91,AUC-ROC 为 0.93。回归模型的准确率为 0.88,AUC-ROC 为 0.89,表明这两种模型都能快速准确地识别出 HF 患者中的 LVE:结论:根据脉搏波信号对心房颤动患者的 LVE 进行识别,验证了所提出的 ML 方法可以实现有效的分类和回归,并具有良好的性能。因此,这项研究证明了基于 ML 的策略在临床实践中的可行性和潜力,同时也为诊断和干预心室重塑提供了一种有效而稳健的工具。
Pulse wave signal-driven machine learning for identifying left ventricular enlargement in heart failure patients.
Background: Left ventricular enlargement (LVE) is a common manifestation of cardiac remodeling that is closely associated with cardiac dysfunction, heart failure (HF), and arrhythmias. This study aimed to propose a machine learning (ML)-based strategy to identify LVE in HF patients by means of pulse wave signals.
Method: We constructed two high-quality pulse wave datasets comprising a non-LVE group and an LVE group based on the 264 HF patients. Fourier series calculations were employed to determine if significant frequency differences existed between the two datasets, thereby ensuring their validity. Then, the ML-based identification was undertaken by means of classification and regression models: a weighted random forest model was employed for binary classification of the datasets, and a densely connected convolutional network was utilized to directly estimate the left ventricular diastolic diameter index (LVDdI) through regression. Finally, the accuracy of the two models was validated by comparing their results with clinical measurements, using accuracy and the area under the receiver operating characteristic curve (AUC-ROC) to assess their capability for identifying LVE patients.
Results: The classification model exhibited superior performance with an accuracy of 0.91 and an AUC-ROC of 0.93. The regression model achieved an accuracy of 0.88 and an AUC-ROC of 0.89, indicating that both models can quickly and accurately identify LVE in HF patients.
Conclusion: The proposed ML methods are verified to achieve effective classification and regression with good performance for identifying LVE in HF patients based on pulse wave signals. This study thus demonstrates the feasibility and potential of the ML-based strategy for clinical practice while offering an effective and robust tool for diagnosing and intervening ventricular remodeling.
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