Jingdong Yang , Jiangtao Lü , Zehao Qiu , Mengchu Zhang , Haixia Yan
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引用次数: 0
摘要
将深度学习应用于中医(TCM)中与高血压靶器官损伤(TOD)相关的脉搏波分类,面临着分类准确率低和泛化性能不足等挑战。为了应对这些挑战,我们引入了一种名为 MobileNetV2SCP 的轻量级迁移学习模型。该模型将时域脉搏波转换为 36 维频域波形特征图,并基于这些特征图建立专用的预训练网络,以提高小样本的学习能力。为了改善全局特征相关性,我们在倒残差结构中加入了新颖的融合关注机制(SAS),并利用 3 × 3 卷积层和 BatchNorm 层来减轻模型的过拟合。利用 805 例与高血压 TOD 相关的脉搏波交叉验证结果对所提出的模型进行了评估。评估指标包括准确率(92.74 %)、F1-分数(91.47 %)和曲线下面积(AUC)(97.12 %),表明与各种最先进的模型相比,该模型的分类准确性和泛化性能更胜一筹。此外,本研究还探讨了脉搏波时域和频域特征与高血压 TOD 分类之间的相关性。它分析了影响脉搏波分类的关键因素,为 TOD 的临床诊断提供了有价值的见解。
Risk prediction of pulse wave for hypertensive target organ damage based on frequency-domain feature map
The application of deep learning to the classification of pulse waves in Traditional Chinese Medicine (TCM) related to hypertensive target organ damage (TOD) is hindered by challenges such as low classification accuracy and inadequate generalization performance. To address these challenges, we introduce a lightweight transfer learning model named MobileNetV2SCP. This model transforms time-domain pulse waves into 36-dimensional frequency-domain waveform feature maps and establishes a dedicated pre-training network based on these maps to enhance the learning capability for small samples. To improve global feature correlation, we incorporate a novel fusion attention mechanism (SAS) into the inverted residual structure, along with the utilization of 3 × 3 convolutional layers and BatchNorm layers to mitigate model overfitting. The proposed model is evaluated using cross-validation results from 805 cases of pulse waves associated with hypertensive TOD. The assessment metrics, including Accuracy (92.74 %), F1-score (91.47 %), and Area Under Curve (AUC) (97.12 %), demonstrate superior classification accuracy and generalization performance compared to various state-of-the-art models. Furthermore, this study investigates the correlations between time-domain and frequency-domain features in pulse waves and their classification in hypertensive TOD. It analyzes key factors influencing pulse wave classification, providing valuable insights for the clinical diagnosis of TOD.
期刊介绍:
Medical Engineering & Physics provides a forum for the publication of the latest developments in biomedical engineering, and reflects the essential multidisciplinary nature of the subject. The journal publishes in-depth critical reviews, scientific papers and technical notes. Our focus encompasses the application of the basic principles of physics and engineering to the development of medical devices and technology, with the ultimate aim of producing improvements in the quality of health care.Topics covered include biomechanics, biomaterials, mechanobiology, rehabilitation engineering, biomedical signal processing and medical device development. Medical Engineering & Physics aims to keep both engineers and clinicians abreast of the latest applications of technology to health care.