He Songping, Li Xiangxi, Zhao Zunyuan, Li Bin, Tan Xin, Guo Hui, Chen Yanyan, Lu Xia
Digital Manufacturing Equipment National Engineering Research Center, Huazhong University of Science and Technology, Wuhan, China.
National NC System Engineering Research Center, Huazhong University of Science and Technology, Wuhan, China.
Digit Health. 2024 Oct 21;10:20552076241288107. doi: 10.1177/20552076241288107. eCollection 2024 Jan-Dec.
Abnormal white blood cell count after kidney transplantation is an important adverse clinical outcome. The abnormal white blood cell count in patients after surgery may be caused by the use of immunosuppressive agents and other factors. A lower white blood cell count than normal will greatly increase the probability of adverse outcomes such as infection and reduce the success rate of surgery.
To establish a machine learning prediction model of leukocyte drop to abnormal level after kidney transplantation, and provide reference for clinical treatment.
A total of 546 kidney transplant patients were selected as the study subjects. The time correlation feature of the ratio of the duration time of each variable to the total time in different intervals was innovatively introduced. Least absolute shrinkage and selection operator algorithm was used for correlation analysis of 85 candidate variables, and the top 20 variables were retained in the end. Eight machine learning algorithms, including Logistic-L1, Logistic-L2, support vector machine, decision tree, random forest, multilayer perceptron, extreme gradient boosting and light gradient boosting machine, were used for the five-fold cross-validation on all data sets, and the algorithm with the best performance was selected as the final prediction algorithm based on the average area under the curve.
As the final prediction model, the accuracy, sensitivity, specificity and area under the curve values of the multilayer perceptron model in test set were 71.34%, 61.18%, 82.28% and 77.30%, respectively. The most important factors affecting leukopenia after surgery were the proportion of time of lymphocyte less than normal, blood group AB, gender, and platelet CV.
The multilayer perceptron model explored in this study shows significant potential in predicting abnormal white blood cell counts after kidney transplantation. This model can help stratify risk following transplantation, subject to external and/or prospective validation.
肾移植后白细胞计数异常是一项重要的不良临床结局。术后患者白细胞计数异常可能由免疫抑制剂的使用等因素引起。白细胞计数低于正常水平会大大增加感染等不良结局的概率,并降低手术成功率。
建立肾移植后白细胞降至异常水平的机器学习预测模型,为临床治疗提供参考。
选取546例肾移植患者作为研究对象。创新性地引入了不同区间内各变量持续时间与总时间之比的时间相关特征。采用最小绝对收缩和选择算子算法对85个候选变量进行相关性分析,最终保留前20个变量。使用包括逻辑回归-L1、逻辑回归-L2、支持向量机、决策树、随机森林、多层感知器、极限梯度提升和轻梯度提升机在内的8种机器学习算法对所有数据集进行五折交叉验证,并根据平均曲线下面积选择性能最佳的算法作为最终预测算法。
作为最终预测模型,多层感知器模型在测试集中的准确率、灵敏度、特异度和曲线下面积值分别为71.34%、61.18%、82.28%和77.30%。影响术后白细胞减少的最重要因素是淋巴细胞低于正常水平的时间比例、AB血型、性别和血小板变异系数。
本研究探索的多层感知器模型在预测肾移植后白细胞计数异常方面显示出显著潜力。该模型有助于对移植后的风险进行分层,但需外部和/或前瞻性验证。