应用人工神经网络预测妇科手术中估计失血量和输血量

S. Walczak, Emad Mikhail
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引用次数: 0

摘要

本章探讨了评估使用人工神经网络(ann)预测子宫肌瘤切除术患者估计失血量(EBL)和输血需求的有效性。我们收集了6年来在同一地点进行的所有146例子宫肌瘤切除术。由于各种原因,记录被删除,留下96个案件。反向传播和径向基函数神经网络模型与回归模型一起用于预测EBL和围手术期输血需求。单隐层反向传播人工神经网络模型在这两个预测问题上都表现最好。EBL的预测平均在测量失血量的127.33 ml内,预测输注的敏感性为71.4%,特异性为85.4%。利用EBL神经网络的输出作为输血预测神经网络的输入变量,建立了一个联合神经网络集成模型,其灵敏度为100%,特异性为62.9%。术前确定大EBL或输血需求可以帮助护理人员更好地规划可能的术后发病率和死亡率。
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Predicting Estimated Blood Loss and Transfusions in Gynecologic Surgery Using Artificial Neural Networks
This chapter explores valuating the efficacy of using artificial neural networks (ANNs) for predicting the estimated blood loss (EBL) and also transfusion requirements of myomectomy patients. All 146 myomectomy surgeries performed over a 6-year period from a single site are captured. Records were removed for various reasons, leaving 96 cases. Backpropagation and radial basis function ANN models were developed to predict EBL and perioperative transfusion needs along with a regression model. The single hidden layer backpropagation ANN models performed the best for both prediction problems. EBL was predicted on average within 127.33 ml of measured blood loss, and transfusions were predicted with 71.4% sensitivity and 85.4% specificity. A combined ANN ensemble model using the output of the EBL ANN as an input variable to the transfusion prediction ANN was developed and resulted in 100% sensitivity and 62.9% specificity. The preoperative identification of large EBL or transfusion need can assist caregivers in better planning for possible post-operative morbidity and mortality.
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