Institute of Brain Disease and Neuroscience, Department of Anesthesiology, Xiangyang Central Hospital, Affiliated Hospital of Hubei University of Arts and Science, Xiangyang, Hubei, China.
BMC Med Inform Decis Mak. 2023 Apr 19;23(1):71. doi: 10.1186/s12911-023-02157-9.
Intraoperative blood transfusion is associated with adverse events. We aimed to establish a machine learning model to predict the probability of intraoperative blood transfusion during intracranial aneurysm surgery.
Patients, who underwent intracranial aneurysm surgery in our hospital between January 2019 and December 2021 were enrolled. Four machine learning models were benchmarked and the best learning model was used to establish the nomogram, before conducting a discriminative assessment.
A total of 375 patients were included for analysis in this model, among whom 108 received an intraoperative blood transfusion during the intracranial aneurysm surgery. The least absolute shrinkage selection operator identified six preoperative relative factors: hemoglobin, platelet, D-dimer, sex, white blood cell, and aneurysm rupture before surgery. Performance evaluation of the classification error demonstrated the following: K-nearest neighbor, 0.2903; logistic regression, 0.2290; ranger, 0.2518; and extremely gradient boosting model, 0.2632. A nomogram based on a logistic regression algorithm was established using the above six parameters. The AUC values of the nomogram were 0.828 (0.775, 0.881) and 0.796 (0.710, 0.882) in the development and validation groups, respectively.
Machine learning algorithms present a good performance evaluation of intraoperative blood transfusion. The nomogram established using a logistic regression algorithm showed a good discriminative ability to predict intraoperative blood transfusion during aneurysm surgery.
术中输血与不良事件有关。我们旨在建立一种机器学习模型,以预测颅内动脉瘤手术中术中输血的概率。
纳入 2019 年 1 月至 2021 年 12 月在我院行颅内动脉瘤手术的患者。对 4 种机器学习模型进行了基准测试,使用最佳学习模型建立列线图,然后进行判别评估。
该模型共纳入 375 例患者,其中 108 例在颅内动脉瘤手术中接受了术中输血。最小绝对收缩选择算子确定了术前 6 个相对因素:血红蛋白、血小板、D-二聚体、性别、白细胞和术前动脉瘤破裂。分类误差的性能评估表明:K-最近邻为 0.2903;逻辑回归为 0.2290; ranger 为 0.2518;极端梯度增强模型为 0.2632。使用上述 6 个参数建立了基于逻辑回归算法的列线图。列线图在开发组和验证组的 AUC 值分别为 0.828(0.775,0.881)和 0.796(0.710,0.882)。
机器学习算法对术中输血的评估效果良好。基于逻辑回归算法建立的列线图对预测动脉瘤手术中术中输血具有良好的判别能力。