Development and Deployment of Web Application Using Machine Learning for Predicting Intraoperative Transfusions in Neurosurgical Operations

Thara Tunthanathip, Sakchai Sae-heng, T. Oearsakul, Anukoon Kaewborisutsakul, Chin Taweesomboonyat
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Abstract

Background and Aim: Preoperative blood product preparation is a common practice in neurosurgical patients. However, over-requesting of blood is common and leads to the wastage of blood bank resources. Machine learning (ML) is currently one of the novel computational data analysis methods for assisting neurosurgeons in their decision-making process. The objective of the present study was to use machine learning to predict intraoperative packed red cell transfusion. Additionally, a secondary objective focused on estimating the effectiveness of blood utilization in neurosurgical operations. Methods and Materials/Patients: This was a retrospective cohort study of 3,021 patients who had previously undergone neurosurgical operations. Data from the total cohort were randomly divided into a training dataset (N=2115) and a testing dataset (N=906). The supervised ML models of various algorithms were trained and tested with test data using both classification and regression algorithms. Results: Almost all neurosurgical conditions had a cross-match to transfusion ratio of more than 2.5. Support vector machine (SVM) with linear kernel, SVM radial kernel, and random forest (RF) classification had a performance with good AUC of 0.83,0.82, and 0.82, respectively, while RF regression had the lowest root mean squared error and mean absolute error. Conclusion: In almost all neurosurgical surgeries, preoperative overpreparation of blood products was detected. The ML algorithm was proposed as a high-performance method for optimizing blood preparation and intraoperative consumption. Furthermore, ML has the potential to be incorporated into clinical practice as a calculator for the optimal cross-match to transfusion ratio.
神经外科手术中使用机器学习预测术中输血的Web应用的开发和部署
背景与目的:术前血液制品准备是神经外科患者的常见做法。然而,血液的过度需求是常见的,导致血库资源的浪费。机器学习(ML)是目前帮助神经外科医生进行决策过程的新型计算数据分析方法之一。本研究的目的是使用机器学习来预测术中填充红细胞输血。此外,次要目标集中于评估神经外科手术中血液利用的有效性。方法和材料/患者:这是一项回顾性队列研究,共纳入3021例既往接受过神经外科手术的患者。来自整个队列的数据随机分为训练数据集(N=2115)和测试数据集(N=906)。使用分类和回归算法对各种算法的监督ML模型进行训练和测试。结果:几乎所有神经外科病例的交叉配血比均大于2.5。线性核支持向量机(SVM)、径向核支持向量机(SVM)和随机森林(RF)分类的AUC分别为0.83、0.82和0.82,而RF回归的均方根误差和平均绝对误差最低。结论:在几乎所有神经外科手术中,均存在术前血液制品制备过量的现象。ML算法是一种优化血液准备和术中消耗的高性能方法。此外,ML有可能被纳入临床实践,作为最佳交叉匹配与输血比的计算器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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