Hu Jiao, Liu Yi, Heidari Ali Asghar, Bano Yasmeen, Ibrohimov Alisherjon, Liang Guoxi, Chen Huiling, Chen Xumin, Zaguia Atef, Turabieh Hamza
Department of Computer Science and Artificial Intelligence, Wenzhou University, Wenzhou, 325035, China.
Department of Nephrology, The First Affiliated Hospital of Wenzhou Medical University, China.
Comput Biol Med. 2022 Jan;140:105054. doi: 10.1016/j.compbiomed.2021.105054. Epub 2021 Nov 19.
Patients on hemodialysis (HD) are known to be at an increased risk of mortality. Hypoalbuminemia is one of the most important risk factors of death in HD patients, and is an independent risk factor for all-cause mortality that is associated with cardiac death, infection, and Protein-Energy Wasting (PEW). It is a clinical challenge to elevate serum albumin level. In addition, predicting trends in serum albumin level is effective for personalized treatment of hypoalbuminemia. In this study, we analyzed a total of 3069 records collected from 314 HD patients using a machine learning method that is based on an improved binary mutant quantum grey wolf optimizer (MQGWO) combined with Fuzzy K-Nearest Neighbor (FKNN). The performance of the proposed MQGWO method was evaluated using a series of experiments including global optimization experiments, feature selection experiments on open data sets, and prediction experiments on an HD dataset. The experimental results showed that the most critical relevant indicators such as age, presence or absence of diabetes, dialysis vintage, and baseline albumin can be identified by feature selection. Remarkably, the accuracy and the specificity of the method were 98.39% and 96.77%, respectively, demonstrating that this model has great potential to be used for detecting serum albumin level trends in HD patients.
已知接受血液透析(HD)的患者死亡风险会增加。低白蛋白血症是HD患者最重要的死亡风险因素之一,并且是全因死亡率的独立风险因素,与心脏死亡、感染和蛋白质能量消耗(PEW)相关。提高血清白蛋白水平是一项临床挑战。此外,预测血清白蛋白水平的趋势对于低白蛋白血症的个性化治疗是有效的。在本研究中,我们使用基于改进的二进制变异量子灰狼优化器(MQGWO)与模糊K近邻(FKNN)相结合的机器学习方法,分析了从314例HD患者收集的总共3069条记录。使用一系列实验对所提出的MQGWO方法的性能进行了评估,包括全局优化实验、开放数据集上的特征选择实验以及HD数据集上的预测实验。实验结果表明,通过特征选择可以识别出年龄、是否患有糖尿病、透析龄和基线白蛋白等最关键的相关指标。值得注意的是,该方法的准确率和特异性分别为98.39%和96.77%,表明该模型具有用于检测HD患者血清白蛋白水平趋势的巨大潜力。