Deep Learning Model with Individualized Fine-tuning for Dynamic and Beat-to-Beat Blood Pressure Estimation

Jingyuan Hong, Jiasheng Gao, Qing Liu, Yuan-ting Zhang, Yali Zheng
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引用次数: 1

Abstract

Deep learning (DL) models have demonstrated great potential in cuffless blood pressure (BP) estimation under static conditions, while the performance under dynamic conditions was still not fully validated. This study developed a DL model using population data for training and followed by individualized fine-tuning to directly learn features from multisensory signals including electrocardiogram (ECG), photoplethysmogram (PPG) and PPG derivatives for beat-to-beat BP estimation under water drinking. 25 healthy subjects were recruited, and the leave-one-subject-out approach was used to evaluate the model performance. The results showed that individualized fine-tuning using a small amount of individual baseline data did not change the tracking capability of the model, while can largely reduce the individual bias in dynamic BP estimation, with the mean absolute errors decreased from 13.43 to 9.49 mmHg and 8.48 to 5.54 mmHg for systolic BP and diastolic BP, respectively. It was also found that the model presented better results around the baseline BP levels than that at larger deviations from the baseline, indicating that future work should incorporate individual dynamic data in the fine-tuning to improve dynamic BP estimation further.
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深度学习模型与个性化微调动态和搏动血压估计
深度学习(DL)模型在静态条件下的无袖扣血压(BP)估计中显示出巨大的潜力,但在动态条件下的性能仍未得到充分验证。本研究开发了一个DL模型,使用人口数据进行训练,然后进行个性化微调,直接学习多感官信号的特征,包括心电图(ECG)、光容积描记图(PPG)和PPG衍生物,用于饮用水下的搏动血压估计。招募25名健康受试者,采用留一受试者法评估模型的性能。结果表明,使用少量个体基线数据进行个体化微调不会改变模型的跟踪能力,但可以大大减少动态血压估计中的个体偏差,收缩压和舒张压的平均绝对误差分别从13.43降至9.49 mmHg和8.48降至5.54 mmHg。研究还发现,该模型在基线BP水平附近的结果比在基线偏差较大时的结果更好,这表明未来的工作应将个体动态数据纳入微调中,以进一步改善动态BP估计。
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