Department of Pharmacy, the First Affiliated Hospital of Army Medical University (Third Military Medical University),Chongqing, China.
Department of Pharmacy, Army Medical Center, Army Medical University (Third Military Medical University),Chongqing, China.
Thromb Res. 2023 Mar;223:174-183. doi: 10.1016/j.thromres.2023.01.001. Epub 2023 Jan 6.
As a major complication of non-valvular atrial fibrillation (NVAF), left atrial appendage (LAA) thrombosis is associated with cerebral ischemic strokes, as well as high morbidity. Due to insufficient incorporation of risk factors, most current scoring methods are limited to the analysis of relationships between clinical characteristics and LAA thrombosis rather than detecting potential risk. Therefore, this study proposes a clinical data-driven machine learning method to predict LAA thrombosis of NVAF.
Patients with NVAF from January 2014 to June 2022 were enrolled from Southwest Hospital. We selected 40 variables for analysis, including demographic data, medical history records, laboratory results, and the structure of LAA. Three machine learning algorithms were adopted to construct classifiers for the prediction of LAA thrombosis risk. The most important variables related to LAA thrombosis and their influences were recognized by SHapley Addictive exPlanations method. In addition, we compared our model with CHADS2 and CHADS2-VASc scoring methods.
A total of 713 participants were recruited, including 127 patients with LAA thrombosis and 586 patients with no obvious thrombosis. The consensus models based on Random Forest and eXtreme Gradient Boosting LAA thrombosis prediction (RXTP) achieved the best accuracy of 0.865, significantly outperforming CHADS2 score and CHA2DS2-VASc score (0.757 and 0.754, respectively). The SHAP results showed that B-type natriuretic peptide, left atrial appendage width, C-reactive protein, Fibrinogen and estimated glomerular filtration rate are closely related to the risk of LAA thrombosis in nonvalvular atrial fibrillation.
The RXTP-NVAF model is the most effective model with the greatest ROC value and recall rate. The summarized risk factors obtained from SHAP enable the optimization of the treatment strategy, thereby preventing thromboembolism events and the occurrence of cardiogenic ischemic stroke.
作为非瓣膜性心房颤动(NVAF)的主要并发症,左心耳(LAA)血栓与脑缺血性中风以及高发病率有关。由于风险因素的纳入不足,大多数当前的评分方法仅限于分析临床特征与 LAA 血栓之间的关系,而不是检测潜在的风险。因此,本研究提出了一种基于临床数据的机器学习方法来预测 NVAF 的 LAA 血栓形成。
从 2014 年 1 月至 2022 年 6 月,从西南医院招募了 NVAF 患者。我们选择了 40 个变量进行分析,包括人口统计学数据、病史记录、实验室结果和 LAA 的结构。采用三种机器学习算法构建了用于预测 LAA 血栓形成风险的分类器。通过 SHapley Addictive exPlanations 方法识别与 LAA 血栓形成最相关的重要变量及其影响。此外,我们还将我们的模型与 CHADS2 和 CHADS2-VASc 评分方法进行了比较。
共纳入 713 名参与者,其中 127 名患者有 LAA 血栓形成,586 名患者无明显血栓形成。基于随机森林和极端梯度提升的共识模型(RXTP)对 LAA 血栓形成的预测具有最佳的准确性(0.865),明显优于 CHADS2 评分和 CHA2DS2-VASc 评分(0.757 和 0.754)。SHAP 结果表明,B 型利钠肽、左心耳宽度、C 反应蛋白、纤维蛋白原和估计肾小球滤过率与非瓣膜性心房颤动患者的 LAA 血栓形成风险密切相关。
RXTP-NVAF 模型是最有效的模型,具有最大的 ROC 值和召回率。从 SHAP 中总结得到的风险因素可以优化治疗策略,从而预防血栓栓塞事件和心源性缺血性中风的发生。