Prasad Varesh, Toschi Nicola, Canichella Antonio, Marcellucci Martina, Coniglione Filadelfo, Dauri Mario, Guerrisi Maria, Heldt Thomas
Annu Int Conf IEEE Eng Med Biol Soc. 2015 Aug;2015:989-92. doi: 10.1109/EMBC.2015.7318530.
Liver transplantation remains the only curative treatment option for a variety of end-stage liver diseases. Prediction of major adverse events following surgery has traditionally focused on static predictors that are known prior to surgery. The effects of intraoperative management can now be explored due to the archiving of high-resolution monitoring data. We extracted intraoperative hemodynamic trend data of 55 patients undergoing orthotopic liver transplantation (OLT) and computed 12 features from the systolic arterial blood pressure (ABP), cardiac index, central venous pressure (CVP), and stroke volume variation (SVV) signals. Using a logistic regression classifier with a leave-one-out cross-validation procedure, we selected subsets of these features to predict mortality up to 180 days after surgery. Best performance was achieved with a combination of 3 features - median absolute deviation (MAD) of ABP, median CVP, and time spent with SVV <; 10% - reaching an area under the receiver-operating characteristic (or c-statistic) of 0.808. Odds ratios (OR) computed from the coefficients of the multivariate logistic regression model constructed from these features showed that greater time spent with SVV <; 10% (OR = 0.981 min(-1), p = 0.001) and greater MAD of systolic ABP (OR = 0.696 mmHg(-1), p = 0.026) were significantly associated with survival. Adding preoperative measures such as age and serum concentrations of albumin, bilirubin, and creatinine failed to improve performance of the prediction model. These results show that the course of intraoperative hemodynamics can predict 180-day mortality after OLT.
肝移植仍然是各种终末期肝病唯一的治愈性治疗选择。传统上,对手术后主要不良事件的预测集中在手术前已知的静态预测指标上。由于高分辨率监测数据的存档,现在可以探讨术中管理的影响。我们提取了55例行原位肝移植(OLT)患者的术中血流动力学趋势数据,并从收缩压(ABP)、心脏指数、中心静脉压(CVP)和每搏量变异度(SVV)信号中计算了12个特征。使用具有留一法交叉验证程序的逻辑回归分类器,我们选择这些特征的子集来预测术后180天内的死亡率。使用ABP的中位数绝对偏差(MAD)、CVP中位数和SVV<10%的持续时间这3个特征的组合可实现最佳性能,受试者操作特征曲线下面积(或c统计量)达到0.808。根据由这些特征构建的多变量逻辑回归模型的系数计算出的优势比(OR)表明,SVV<10%的持续时间越长(OR = 0.981 min-1,p = 0.001)和收缩压的MAD越大(OR = 0.696 mmHg-1,p = 0.026)与生存率显著相关。添加术前指标如年龄以及白蛋白、胆红素和肌酐的血清浓度并不能提高预测模型的性能。这些结果表明,术中血流动力学过程可以预测OLT术后180天的死亡率。