剂量指南:基于图的术后疼痛动态时间感知预测系统

Ziyi Zhou, Baoshen Guo, Cao Zhang
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引用次数: 0

摘要

术后疼痛会给患者带来不适,严重者甚至会出现术后并发症,因此对术后疼痛进行预测是非常必要的。多项研究探讨了不同生理参数与术中伤害感受的相关性,并建立了术中伤害感受程度的评价指标。然而,这些技术需要额外的监测设备,这增加了部署和普及术后疼痛预测的难度。在本文中,我们提出了一个基于图的动态时间感知预测系统DoseGuide,该系统基于从现有标准基础设施中收集的患者数据。DoseGuide以患者的静态物理数据和术中动态数据作为输入,输出对某患者术后疼痛程度的预测,其中两类特征通过混合特征编码器融合。此外,引入图注意机制,利用患者之间的相似关系,进一步提高了预测的准确性。我们以浙江大学医学院附属第四医院的999例心胸外科患者的病历对该系统进行评价。实验结果表明,我们的模型对术后疼痛的准确率达到78%,与基线相比具有最佳的综合性能。
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DoseGuide: A Graph-based Dynamic Time-aware Prediction System for Postoperative Pain
Postoperative pain cause discomfort to the patient, and even postoperative complications in severe cases, which suggests there is a severe need for predicting the postoperative pain. A number of studies have investigated the correlation between different physiological parameters and nociception, and developed indicators for evaluating the degree of intraoperative nociception. However, these technologies require additional monitoring equipment, which increases the difficulty of deployment and popularization of postoperative pain prediction. In this paper, We propose DoseGuide, a graph-based dynamic time-aware prediction system based on the patient data collected from existing standard infrastructure. DoseGuide takes as input the static physical data and the dynamic intraoperative data of the patient, and output the prediction of postoperative pain level for the certain patient, in which the two types of features are fused via a hybrid feature encoder. Additionally, a graph attention mechanism is introduced to utilize the similarity relationships between patients, which promoted the accuracy of prediction further. We evaluate the system with the medical records of 999 patients undergoing cardiothoracic surgery in the Fourth Affiliated Hospital of Zhejiang University School of Medicine. The Experimental results show that our model achieves 78% accuracy for postoperative pain, and has the best comprehensive performance in comparison with baselines.
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