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基于全连接层和自注意力机制的模型,每小时预测心脏手术围术期患者的肝素剂量。

Full connected layer model with self-attention to hourly predict heparin dosage for perioperative cardiac surgery patients.

机构信息

Department of Critical Care Medicine, State Key Laboratory of Complex Severe and Rare Diseases, Peking Union Medical College Hospital, Peking Union Medical College, Chinese Academy of Medical Sciences, China.

Department of Information Center, Peking Union Medical College Hospital, Peking Union Medical College, Chinese Academy of Medical Sciences, China.

出版信息

Comput Biol Med. 2024 Nov;182:109085. doi: 10.1016/j.compbiomed.2024.109085. Epub 2024 Sep 8.

Abstract

BACKGROUND

Anticoagulant therapy for patients who underwent cardiac surgery is a challenge. Both inadequate and excessive anticoagulation can cause fatal complications. Previous studies failed to provide real-time guidance for heparin pump speed adjustment. This study intended to provide a quantitative prediction model to optimize heparin dosage for cardiac surgery patients based on machine learning method.

METHODS

Patients who underwent cardiac surgery and admitted to intensive care unit in Peking Union Medical College Hospital (PUMCH) from January 2013 to December 2023 were retrospectively analyzed. In order to reach target activated partial thromboplastin time (aPTT), linear regression, SVM, XGBoost, LSTM, GRU, FC (Full Connected Layer) and FC + self-attention models were used to make hourly adjustment recommendation for administrations of heparin pump speed. Mean absolute square, and absolute percentage errors were used to evaluate the reliability of the models. SHAP method and feature cumulative effect were used to interpret the features of the FC + self-attention model. Safety and economic evaluation based on clinical compliance of this real-world data-oriented model was further analyzed.

RESULTS

A total of 1080 patients including 112,554 heparin pump administrations were included in this study. Among seven candidate models, FC + self-attention model yielded the lowest mean absolute error of 0.9388 and 1.1325 in test and validation cohort. Gap to target aPTT, thrombin time, history of coronary heart disease, previous duration of arterial fibrillation and prothrombin activity were identified as important features affecting heparin adjustment. High compliance to FC + self-attention model may increase percentage of normal therapeutic time and decrease supratherapeutic therapeutic time and reducing blood draw until two consecutive normal therapeutic stabilization of aPTT.

CONCLUSIONS

This FC + self-attention model is potentially applicable for giving recommendation for healthcare providers to optimize heparin dosage for cardiac surgery patients.

摘要

背景

心脏手术后患者的抗凝治疗是一个挑战。抗凝不足和过度都会导致致命的并发症。之前的研究未能为肝素泵速度调整提供实时指导。本研究旨在基于机器学习方法为心脏手术患者提供肝素剂量优化的定量预测模型。

方法

回顾性分析 2013 年 1 月至 2023 年 12 月期间在北京协和医院重症监护病房接受心脏手术的患者。为了达到目标激活部分凝血活酶时间(aPTT),线性回归、SVM、XGBoost、LSTM、GRU、全连接层(FC)和 FC+自注意力模型被用于每小时调整肝素泵速度的建议。平均绝对平方和绝对百分比误差用于评估模型的可靠性。SHAP 方法和特征累积效应用于解释 FC+自注意力模型的特征。进一步分析了基于该真实世界数据导向模型的临床依从性的安全性和经济性评价。

结果

本研究共纳入 1080 例患者,包括 112554 次肝素泵给药。在 7 个候选模型中,FC+自注意力模型在测试和验证队列中产生了最低的平均绝对误差,分别为 0.9388 和 1.1325。目标 aPTT、凝血酶时间、冠心病史、既往房颤持续时间和凝血酶原活性被确定为影响肝素调整的重要特征。FC+自注意力模型的高依从性可能会增加正常治疗时间的百分比,减少超治疗治疗时间,并减少直到两次连续正常治疗 aPTT 稳定的采血次数。

结论

该 FC+自注意力模型可能适用于为医疗保健提供者提供建议,以优化心脏手术患者的肝素剂量。

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