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一种用于使用PPG进行患者特异性非牛顿血液粘度评估的物理集成深度学习方法。

A Physics-Integrated Deep Learning Approach for Patient-Specific Non-Newtonian Blood Viscosity Assessment using PPG.

作者信息

Lee Hyeong Jun, Kim Young Woo, Shin Seung Yong, Lee San Lee, Kim Chae Hyeon, Chung Kyung Soo, Lee Joon Sang

机构信息

Division of Biomarkers, Imaging, and Hemodynamic Studies (BIOS), Department of Mechanical Engineering, Yonsei University, Seoul, Korea; Center for Precision Medicine Platform Based on Smart Hemo-Dynamic Index (SHDI), Seoul, Korea.

Department of Internal Medicine, Korea University Ansan Hospital, Ansan, Korea; Center for Precision Medicine Platform Based on Smart Hemo-Dynamic Index (SHDI), Seoul, Korea.

出版信息

Comput Methods Programs Biomed. 2025 Jun;265:108740. doi: 10.1016/j.cmpb.2025.108740. Epub 2025 Mar 23.

Abstract

BACKGROUND AND OBJECTIVE

The aim of this study is to extract a patient-specific viscosity equation from photoplethysmography (PPG) data. An aging society has increased the need for remote, non-invasive health monitoring systems. However, the circulatory system remains beyond the scope of wearable devices. The solution might be found in the possibility of measuring blood viscosity from wearable devices. Blood viscosity information can be used to monitor and diagnose various circulatory system diseases. Therefore, if blood viscosity can be calculated from wearable photoplethysmography, the versatility of a non-invasive health monitoring system can be broadened.

METHODS

A hybrid 1D CNN-LSTM architecture incorporating physics-informed constraints was developed to integrate rheological principles into data-driven PPG analysis. The shear-viscosity equation derived from the viscometer was used as ground-truth data. The signal obtained from the wearable devices was processed with noise filtering and wandering elimination to gain stable blood pressure waves. The neural network was trained using k-fold cross-validation and weight factor optimization, with the loss function incorporating rheological constraints from the Carreau-Yasuda model.

RESULTS

The final estimation model achieved an accuracy of 81.1 %. The accuracy in the physiological shear range (50-300 s) was 84.0 %, outperforming other low and high shear regions. Mean absolute errors of 0.67 cP in the physiological range align with clinical viscometry tolerances (< 1 cP), demonstrating diagnostic feasibility. Statistical analysis revealed strong linear relationships between predicted and ground truth values across all shear rates (correlation coefficients: 0.619-0.742, p < 0.0001), with mean absolute errors decreasing from 7.84 cP at low shear rates to 0.67 cP in the physiological range. The accuracy and contribution of each parameter to the Carreau-Yasuda model were also analyzed. The results show that the contribution of each parameter varies based on the shear range, providing insight into weight factor optimization.

CONCLUSION

By non-invasively estimating blood viscosity from PPG, the diagnostic capabilities of wearable healthcare systems can be expanded to target various diseases related to the circulatory system. The demonstrated accuracy in physiologically relevant shear ranges supports the potential clinical application of this methodology.

摘要

背景与目的

本研究旨在从光电容积脉搏波描记法(PPG)数据中提取特定患者的粘度方程。老龄化社会增加了对远程、非侵入式健康监测系统的需求。然而,循环系统仍超出可穿戴设备的范围。解决方案可能在于从可穿戴设备测量血液粘度的可能性。血液粘度信息可用于监测和诊断各种循环系统疾病。因此,如果能从可穿戴光电容积脉搏波描记法计算出血液粘度,无创健康监测系统的通用性就能得到扩展。

方法

开发了一种结合物理信息约束的混合一维卷积神经网络-长短期记忆网络(1D CNN-LSTM)架构,将流变学原理整合到数据驱动的PPG分析中。从粘度计得出的剪切粘度方程用作真实数据。对从可穿戴设备获得的信号进行噪声滤波和漂移消除处理,以获得稳定的血压波。使用k折交叉验证和权重因子优化对神经网络进行训练,损失函数纳入了来自卡罗伊-矢田模型的流变学约束。

结果

最终估计模型的准确率达到81.1%。在生理剪切范围(50-300秒)内的准确率为84.0%,优于其他低剪切和高剪切区域。生理范围内平均绝对误差为0.67厘泊,符合临床粘度测量公差(<1厘泊),证明了诊断可行性。统计分析显示,在所有剪切速率下,预测值与真实值之间存在强线性关系(相关系数:0.619-0.742,p<0.0001),平均绝对误差从低剪切速率下的7.84厘泊降至生理范围内的0.67厘泊。还分析了卡罗伊-矢田模型中每个参数的准确性和贡献。结果表明,每个参数的贡献根据剪切范围而变化,为权重因子优化提供了思路。

结论

通过从PPG无创估计血液粘度,可穿戴医疗系统的诊断能力可扩展到针对各种与循环系统相关的疾病。在生理相关剪切范围内所展示的准确性支持了该方法的潜在临床应用。

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