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首页> 外文期刊>BMC Musculoskeletal Disorders >Development and validation of a novel predictive model and web calculator for evaluating transfusion risk after spinal fusion for spinal tuberculosis: a retrospective cohort study
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Development and validation of a novel predictive model and web calculator for evaluating transfusion risk after spinal fusion for spinal tuberculosis: a retrospective cohort study

机译:一种新型预测模型和Web计算器的开发和验证,用于评估脊髓结核脊髓融合后输血风险:回顾性队列研究

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The incidence and adverse events of postoperative blood transfusion in spinal tuberculosis (TB) have attracted increasing attention. Our purpose was to develop a prediction model to evaluate blood transfusion risk after spinal fusion (SF) for spinal TB. Nomogram and machine learning algorithms, support vector machine (SVM), decision tree (DT), multilayer perceptron (MLP), Naive Bayesian (NB), k-nearest neighbors (K-NN) and random forest (RF), were constructed to identified predictors of blood transfusion from all spinal TB cases treated by SF in our department between May 2010 and April 2020. The prediction performance of the models was evaluated by 10-fold cross-validation. We calculated the average AUC and the maximum AUC, then demonstrated the ROC curve with maximum AUC. The collected cohort ultimately was consisted of 152 patients, where 56 required allogeneic blood transfusions. The predictors were surgical duration, preoperative Hb, preoperative ABL, preoperative MCHC, number of fused vertebrae, IBL, and anticoagulant history. We obtained the average AUC of nomogram (0.75), SVM (0.62), k-NM (0.65), DT (0.56), NB (0.74), MLP (0.56) and RF (0.72). An interactive web calculator based on this model has been provided ( https://drwenleli.shinyapps.io/STTapp/ ). We confirmed seven independent risk factors affecting blood transfusion and diagramed them with the nomogram and web calculator.
机译:脊髓结核病术后输血(TB)的发病率和不良事件引起了越来越关注。我们的目的是开发一种预测模型,以评估脊髓结核病脊髓融合后的输血风险。构建了NOMIVAL和机器学习算法,支持向量机(SVM),决策树(DT),多层贝叶斯(NB),幼稚贝叶斯(NB),K-CORMONT邻居(K-NN)和随机森林(RF),在2010年5月和4月20日期间,我们部门在我们部门治疗的所有脊柱结核病病例的输血预测因子。通过10倍的交叉验证评估模型的预测性能。我们计算了平均AUC和最大AUC,然后展示了最大AUC的ROC曲线。收集的队列最终由152名患者组成,其中56例所需的同种异体输血。预测因子是手术持续时间,术前Hb,术前Abl,术前MCHC,融合椎体的数量,IBL和抗凝病史。我们获得了Nom图(0.75),SVM(0.62),K-NM(0.65),DT(0.56),NB(0.74),MLP(0.56)和RF(0.72)的平均AUC。提供了一种基于此模型的交互式Web计算器(https://drwenleli.shinyapps.io/sttapp/)。我们确认了影响血液输血的七种独立危险因素,并用NOM图和Web计算器绘制了它们。

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