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利用机器学习模型推进肝移植术中大量输血风险预测。一项多中心回顾性研究。

Advancing Prediction of Risk of Intraoperative Massive Blood Transfusion in Liver Transplantation With Machine Learning Models. A Multicenter Retrospective Study.

作者信息

Chen Sai, Liu Le-Ping, Wang Yong-Jun, Zhou Xiong-Hui, Dong Hang, Chen Zi-Wei, Wu Jiang, Gui Rong, Zhao Qin-Yu

机构信息

Department of Blood Transfusion, The Third Xiangya Hospital of Central South University, Changsha, China.

Department of Blood Transfusion, The Second Xiangya Hospital of Central South University, Changsha, China.

出版信息

Front Neuroinform. 2022 May 13;16:893452. doi: 10.3389/fninf.2022.893452. eCollection 2022.

Abstract

BACKGROUND

Liver transplantation surgery is often accompanied by massive blood loss and massive transfusion (MT), while MT can cause many serious complications related to high mortality. Therefore, there is an urgent need for a model that can predict the demand for MT to reduce the waste of blood resources and improve the prognosis of patients.

OBJECTIVE

To develop a model for predicting intraoperative massive blood transfusion in liver transplantation surgery based on machine learning algorithms.

METHODS

A total of 1,239 patients who underwent liver transplantation surgery in three large grade lll-A general hospitals of China from March 2014 to November 2021 were included and analyzed. A total of 1193 cases were randomly divided into the training set (70%) and test set (30%), and 46 cases were prospectively collected as a validation set. The outcome of this study was an intraoperative massive blood transfusion. A total of 27 candidate risk factors were collected, and recursive feature elimination (RFE) was used to select key features based on the Categorical Boosting (CatBoost) model. A total of ten machine learning models were built, among which the three best performing models and the traditional logistic regression (LR) method were prospectively verified in the validation set. The Area Under the Receiver Operating Characteristic Curve (AUROC) was used for model performance evaluation. The Shapley additive explanation value was applied to explain the complex ensemble learning models.

RESULTS

Fifteen key variables were screened out, including age, weight, hemoglobin, platelets, white blood cells count, activated partial thromboplastin time, prothrombin time, thrombin time, direct bilirubin, aspartate aminotransferase, total protein, albumin, globulin, creatinine, urea. Among all algorithms, the predictive performance of the CatBoost model (AUROC: 0.810) was the best. In the prospective validation cohort, LR performed far less well than other algorithms.

CONCLUSION

A prediction model for massive blood transfusion in liver transplantation surgery was successfully established based on the CatBoost algorithm, and a certain degree of generalization verification is carried out in the validation set. The model may be superior to the traditional LR model and other algorithms, and it can more accurately predict the risk of massive blood transfusions and guide clinical decision-making.

摘要

背景

肝移植手术常伴随大量失血和大量输血(MT),而MT会引发许多与高死亡率相关的严重并发症。因此,迫切需要一种能够预测MT需求的模型,以减少血液资源的浪费并改善患者预后。

目的

基于机器学习算法开发一种预测肝移植手术中术中大量输血的模型。

方法

纳入并分析了2014年3月至2021年11月在中国三家大型三级甲等综合医院接受肝移植手术的1239例患者。将1193例随机分为训练集(70%)和测试集(30%),并前瞻性收集46例作为验证集。本研究的结果是术中大量输血。共收集了27个候选危险因素,并基于分类提升(CatBoost)模型使用递归特征消除(RFE)来选择关键特征。共构建了十个机器学习模型,其中性能最佳的三个模型和传统逻辑回归(LR)方法在验证集中进行了前瞻性验证。采用受试者操作特征曲线下面积(AUROC)进行模型性能评估。应用夏普利值解释复杂的集成学习模型。

结果

筛选出15个关键变量,包括年龄、体重、血红蛋白、血小板、白细胞计数、活化部分凝血活酶时间、凝血酶原时间、凝血酶时间、直接胆红素、天冬氨酸转氨酶、总蛋白、白蛋白、球蛋白、肌酐、尿素。在所有算法中,CatBoost模型的预测性能最佳(AUROC:0.810)。在前瞻性验证队列中,LR的表现远不如其他算法。

结论

基于CatBoost算法成功建立了肝移植手术中大量输血的预测模型,并在验证集中进行了一定程度的泛化验证。该模型可能优于传统LR模型和其他算法,能够更准确地预测大量输血的风险并指导临床决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/810c/9140217/d1afa49335bc/fninf-16-893452-g0001.jpg

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