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A machine learning approach to predict intravenous immunoglobulin resistance in Kawasaki disease patients: A study based on a Southeast China population

机译:川崎病患者预测静脉内免疫球蛋白抗性的机器学习方法:基于中国东南人口的研究

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Kawasaki disease is the leading cause of pediatric acquired heart disease. Coronary artery abnormalities are the main complication of Kawasaki disease. Kawasaki disease patients with intravenous immunoglobulin resistance are at a greater risk of developing coronary artery abnormalities. Several scoring models have been established to predict resistance to intravenous immunoglobulin, but clinicians usually do not apply those models in patients because of their poor performance. To find a better model, we retrospectively collected data including 753 observations and 82 variables. A total of 644 observations were included in the analysis, and 124 of the patients observed were intravenous immunoglobulin resistant (19.25%). We considered 7 different linear and nonlinear machine learning algorithms, including logistic regression (L1 and L1 regularized), decision tree, random forest, AdaBoost, gradient boosting machine (GBM), and lightGBM, to predict the class of intravenous immunoglobulin resistance (binary classification). Data from patients who were discharged before Sep 2018 were included in the training set (n = 497), while all the data collected after 9/1/2018 were included in the test set (n = 147). We used the area under the ROC curve, accuracy, sensitivity, and specificity to evaluate the performances of each model. The gradient GBM had the best performance (area under the ROC curve 0.7423, accuracy 0.8844, sensitivity 0.3043, specificity 0.9919). Additionally, the feature importance was evaluated with SHapley Additive exPlanation (SHAP) values, and the clinical utility was assessed with decision curve analysis. We also compared our model with the Kobayashi score, Egami score, Formosa score and Kawamura score. Our machine learning model outperformed all of the aforementioned four scoring models. Our study demonstrates a novel and robust machine learning method to predict intravenous immunoglobulin resistance in Kawasaki disease patients. We believe this approach could be implemented in an electronic health record system as a form of clinical decision support in the near future.
机译:川崎病是儿科患有心脏病的主要原因。冠状动脉异常是川崎病的主要复杂性。 Kawasaki病患者静脉内免疫球蛋白抗性患者患冠状动脉异常的风险更大。已经建立了几种评分模型以预测对静脉内免疫球蛋白的抵抗力,但由于其性能差,临床医生通常不会在患者中应用那些模型。为了找到更好的模型,我们回顾性地收集的数据包括753个观察和82个变量。分析中共有644种观察结果,观察到124名患者是静脉内免疫球蛋白抗性(19.25%)。我们考虑了7种不同的线性和非线性机器学习算法,包括Logistic回归(L1和L1正则化),决策树,随机林,Adaboost,梯度升压机(GBM)和LightGBM,以预测静脉内免疫球蛋白抵抗(二进制分类) )。 2018年9月之前出院的患者的数据包括在培训集(n = 497)中,而9/1/2018之后收集的所有数据都包含在测试集(n = 147)中。我们使用了ROC曲线,准确性,灵敏度和特异性的区域来评估每个模型的性能。梯度GBM具有最佳性能(ROC曲线下面积0.7423,精度为0.8844,灵敏度0.3043,特异性0.9919)。此外,通过福利添加剂解释(Shap)值评估该特征重要性,并通过判定曲线分析评估临床实用程序。我们还将我们的模型与Kobayashi得分,Egami评分,福尔摩沙分数和Kawamura得分进行了比较。我们的机器学习模型表现出所有上述四种评分模型。我们的研究表明了一种新颖且强大的机器学习方法,可预测川崎病患者的静脉内免疫球蛋白抗性。我们认为,这种方法可以在电子健康记录系统中作为一种在不久的将来的临床决策支持形式实施。

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