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通过在皮肤层面进行与心电图无关的心脏诱导加速度和角速度多部位测量对主动脉瓣狭窄患者进行分类。

Classification of Aortic Stenosis Patients via ECG-Independent Multi-Site Measurements of Cardiac-Induced Accelerations and Angular Velocities at the Skin Level.

作者信息

Romano Chiara, Maiorana Emanuele, Nusca Annunziata, Circhetta Simone, Silvestri Sergio, Emiliano Schena, Ussia Gian Paolo, Massaroni Carlo

机构信息

Research Unit of Measurements and Biomedical InstrumentationDepartment of Engineering, Università Campus Bio-Medico di Roma 00128 Rome Italy.

Biometric Systems and Multimedia Forensics (BioMedia4n6) Laboratory of the Department of Industrial, Electronic and Mechanical EngineeringRoma Tre University 00146 Rome Italy.

出版信息

IEEE Open J Eng Med Biol. 2024 May 20;5:867-876. doi: 10.1109/OJEMB.2024.3402151. eCollection 2024.

Abstract

To evaluate the suitability of seismocardiogram (SCG) and gyrocardiogram (GCG) recorded at the skin level to classify aortic stenosis (AS) patients from healthy volunteers, and to determine the optimal sensor position for the classification. SCG and GCG were recorded along three axes at five chest locations of fifteen healthy subjects and AS patients. Signal frames underwent feature extraction in frequency and time-frequency domains. Then, binary classification was performed through three machine learning and three deep learning methods, considering SCG, GCG, and their combination. The highest classification accuracies were achieved using Support Vector Machine (SVM) classifier, with the best sensor locations being at the mitral valve for SCG signals (92.3% accuracy) and at the pulmonary valve for GCG (92.1%). Combining SCG and GCG data allows for further improvement in the achievable accuracy (93.5%). Jointly exploiting SCG and GCG signals and both SVM- and ResNet18-based classifiers, 40 s of monitoring allows for reaching 97.2% accuracy with a single sensor on the pulmonary valve. Combining SCG and GCG with adequate machine learning and deep learning classifiers allows reliable classification of AS patients.

摘要

评估在皮肤层面记录的地震心动图(SCG)和陀螺心动图(GCG)对区分主动脉瓣狭窄(AS)患者与健康志愿者的适用性,并确定用于分类的最佳传感器位置。在15名健康受试者和AS患者的五个胸部位置沿三个轴记录SCG和GCG。对信号帧在频域和时频域进行特征提取。然后,通过三种机器学习方法和三种深度学习方法进行二元分类,考虑SCG、GCG及其组合。使用支持向量机(SVM)分类器可实现最高分类准确率,SCG信号的最佳传感器位置在二尖瓣处(准确率92.3%),GCG的最佳传感器位置在肺动脉瓣处(准确率92.1%)。结合SCG和GCG数据可进一步提高可实现的准确率(93.5%)。联合利用SCG和GCG信号以及基于SVM和ResNet18的分类器,使用肺动脉瓣上的单个传感器进行40秒监测可达到97.2%的准确率。将SCG和GCG与适当的机器学习和深度学习分类器相结合可对AS患者进行可靠分类。

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