预测无抗凝剂 CRRT 的凝血风险。

IF 2.2 3区 医学 Q3 HEMATOLOGY
Liang Liu, Dashuang Liu, Ting He, Bo Liang, Jinghong Zhao
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引用次数: 0

摘要

简介连续性肾脏替代疗法(CRRT)是一种长期连续的体外血液净化疗法,用于替代受损的肾功能。通常情况下,CRRT 治疗需要常规抗凝,但对于有出血风险和对枸橼酸钠有禁忌症的患者来说,无抗凝剂透析治疗是必要的。然而,这种方法会增加 CRRT 回路凝血的风险,导致治疗中断和资源消耗增加。在这项研究中,我们利用人工智能机器学习方法,根据 CRRT 治疗前的指标预测 CRRT 循环凝血的风险:我们回顾性分析了 2022 年 10 月至 2023 年 10 月期间接受无抗凝剂 CRRT 的 212 例患者。根据 24 小时内 CRRT 循环凝血情况将患者分为高风险组和低风险组。我们采用了八种机器学习方法来预测回路凝血的风险。模型的性能使用接收者操作特征曲线下面积(AUC)进行评估。采用 5 倍交叉验证来验证机器学习模型。特征重要性图和SHAP图用于解释模型的性能和关键驱动因素:我们确定了 88 名患者(41.51%)在 CRRT 24 小时内存在回路凝血的高风险。我们的机器学习模型显示出卓越的预测性能,集合学习(EL)的AUC为0.863(95% CI 0.860 - 0.868),优于单个算法。随机森林(RF)是最好的单算法模型,AUC 为 0.819(95% CI 0.814 - 0.823)。SHAP汇总图和特征重要性图显示,最重要的前三个特征是血小板、FF和甘油三酯:我们利用机器学习创建了一个模型,用于预测无抗凝剂 CRRT 治疗期间发生回路凝血的风险。我们的模型表现良好(AUC 0.863),并能识别血小板、滤过分数和甘油三酯等关键因素。这有助于临床医生制定个性化的治疗策略,以降低回路凝血风险,从而提高患者预后并降低医疗费用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coagulation Risk Predicting in Anticoagulant-Free Continuous Renal Replacement Therapy.

Introduction: Continuous renal replacement therapy (CRRT) is a prolonged continuous extracorporeal blood purification therapy to replace impaired renal function. Typically, CRRT therapy requires routine anticoagulation, but for patients at risk of bleeding and with contraindications to sodium citrate, anticoagulant-free dialysis therapy is necessary. However, this approach increases the risk of CRRT circuit coagulation, leading to treatment interruption and increased resource consumption. In this study, we utilized artificial intelligence machine learning methods to predict the risk of CRRT circuit coagulation based on pre-CRRT treatment metrics.

Methods: We retrospectively analyzed 212 patients who underwent anticoagulant-free CRRT from October 2022 to October 2023. Patients were categorized into high-risk and low-risk groups based on CRRT circuit coagulation within 24 h. We employed eight machine learning methods to predict the risk of circuit coagulation. The performance of the model was evaluated using the area under the curve (AUC) of the receiver operating characteristic. 5-fold cross-validation was used to validate the machine learning models. Feature importance and SHAP plots were used to interpret the model's performance and key drivers.

Results: We identified 88 patients (41.51%) at high risk of circuit coagulation within 24 h of CRRT. Our machine learning models showed excellent predictive performance, with ensemble learning achieving an AUC of 0.863 (95% CI: 0.860-0.868), outperforming individual algorithms. Random forest was the best single-algorithm model, with an AUC of 0.819 (95% CI: 0.814-0.823). The top three features identified as most important by the SHAP summary plot and feature importance graph are platelet, filtration fraction (FF), and triglycerides.

Conclusion: We created a model using machine learning to predict the risk of circuit coagulation during anticoagulant-free CRRT therapy. Our model performs well (AUC 0.863) and identifies key factors like platelets, FF, and triglycerides. This facilitates the development of personalized treatment strategies by clinicians aimed at reducing circuit coagulation risk, thereby enhancing patient outcomes and reducing healthcare expenses.

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来源期刊
Blood Purification
Blood Purification 医学-泌尿学与肾脏学
CiteScore
5.80
自引率
3.30%
发文量
69
审稿时长
6-12 weeks
期刊介绍: Practical information on hemodialysis, hemofiltration, peritoneal dialysis and apheresis is featured in this journal. Recognizing the critical importance of equipment and procedures, particular emphasis has been placed on reports, drawn from a wide range of fields, describing technical advances and improvements in methodology. Papers reflect the search for cost-effective solutions which increase not only patient survival but also patient comfort and disease improvement through prevention or correction of undesirable effects. Advances in vascular access and blood anticoagulation, problems associated with exposure of blood to foreign surfaces and acute-care nephrology, including continuous therapies, also receive attention. Nephrologists, internists, intensivists and hospital staff involved in dialysis, apheresis and immunoadsorption for acute and chronic solid organ failure will find this journal useful and informative. ''Blood Purification'' also serves as a platform for multidisciplinary experiences involving nephrologists, cardiologists and critical care physicians in order to expand the level of interaction between different disciplines and specialities.
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