主动脉手术精确输血评估模型:一项单中心回顾性研究。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-06-01 Epub Date: 2023-12-27 DOI:10.1007/s10877-023-01112-3
Ji Che, Bo Yang, Yan Xie, Lei Wang, Ying Chang, Jianguo Han, Hui Zhang
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引用次数: 0

摘要

心脏主动脉手术是一项极其复杂的手术,术中往往需要大量输血。目前,无法在术前准确估计术中输血量。因此,在本研究中,为了确定主动脉手术中术中输血的临床精确用血量,我们建立了一个基于机器学习算法的预测模型。我们对 2018 年 1 月至 2022 年 9 月期间在北京安贞医院接受主动脉手术的 4285 例患者进行了回顾性分析。最终,3654 名患者被纳入研究,其中 2557 人被纳入训练集,1097 人被纳入测试集。通过利用 13 种当前主流模型和大规模心脏主动脉手术数据集,我们建立了一种新型机器学习模型,用于准确预测术中红细胞输注量。根据模型识别出的输血相关风险因素,我们还确定了影响结果的相关变量。结果显示,决策树模型最适合预测主动脉手术中的输血量。其中,表现最好的极随机森林模型的平均绝对误差为 1.17 U,而 R2 值为 0.50。对主动脉手术术中输血的进一步研究发现,红细胞、估计手术时间、体重、性别、红细胞计数和 D-二聚体是六个最重要的风险因素。随后分析了这些因素对相关患者术中输血量的影响,以及预测的保护性阈值。本研究中的新型心脏主动脉手术术中输血预测模型可有效帮助临床医生准确计算输血量,实现血液资源的有效利用。此外,我们还利用可解释性技术揭示了关键风险因素对术中输血量的影响,为医生提供及时有效的干预措施提供了重要参考。同时,还能实现术中用血的个性化和精准化。
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A precise blood transfusion evaluation model for aortic surgery: a single-center retrospective study.

Cardiac aortic surgery is an extremely complicated procedure that often requires large volume blood transfusions during the operation. Currently, it is not possible to accurately estimate the intraoperative blood transfusion volume before surgery. Therefore, in this study, to determine the clinically precise usage of blood for intraoperative blood transfusions during aortic surgery, we established a predictive model based on machine learning algorithms. We performed a retrospective analysis on 4,285 patients who received aortic surgery in Beijing Anzhen Hospital between January 2018 and September 2022. Ultimately, 3,654 patients were included in the study, including 2,557 in the training set and 1,097 in the testing set. By utilizing 13 current mainstream models and a large-scale cardiac aortic surgery dataset, we built a novel machine learning model for accurately predicting intraoperative red blood cell transfusion volume. Based on the transfusion-related risk factors that the model identified, we also established the relevant variables that affected the results. The results revealed that decision tree models were the most suitable for predicting the blood transfusion volume during aortic surgery. In particular, the mean absolute error for the best-performing extremely randomized forest model was 1.17 U, while the R2 value was 0.50. Further exploration into intraoperative blood transfusion during aortic surgery identified erythrocytes, estimated operation duration, body weight, sex, red blood cell count, and D-dimer as the six most significant risk factors. These factors were subsequently analyzed for their influence on intraoperative blood transfusion volume in relevant patients, as well as the protective threshold for prediction. The novel intraoperative blood transfusion prediction model for cardiac aorta surgery in this study effectively assists clinicians in accurately calculating blood transfusion volumes and achieving effective utilization of blood resources. Furthermore, we utilize interpretability technology to reveal the influence of critical risk factors on intraoperative blood transfusion volume, which provides an important reference for physicians to provide timely and effective interventions. It also enables personalized and precise intraoperative blood usage.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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