论文标题

GWO-FI:一种新型的机器学习框架,通过将灰狼优化器和频繁的物品组结合起来,以诊断和调查院内死亡率和住院时间的有效因素

GWO-FI: A novel machine learning framework by combining Gray Wolf Optimizer and Frequent Itemsets to diagnose and investigate effective factors on In-Hospital Mortality and Length of Stay among Kermanshahian Cardiovascular Disease patients

论文作者

Yavari, Ali, Janjani, Parisa, Motavaseli, Sayeh, Weysi, Seyran, Siabani, Soraya, Rouzbahani, Mohammad

论文摘要

对患者结局的调查和分析,包括院内死亡率和住院时间,对于协助临床医生在住院开始时确定患者的结果以及协助医院分配资源至关重要。本文提出了一种基于将众所周知的灰狼算法与通过关联规则挖掘算法提取的频繁的项目相结合的方法。首先,原始特征与判别提取的频繁项目结合使用。然后选择这些功能的最佳子集,并使用灰狼算法调整了使用的分类算法的参数。使用由伊朗的Imam Ali Kermanshah医院的2816名患者组成的真实数据集评估了该框架。该研究的发现表明,低射血分数,老年,CPK值高和肌酐水平高是患者死亡率的主要因素。还提取了与医院死亡率和住院时间有关的一些重要而有趣的规则。此外,使用SVM分类器在医院诊断的拟议框架的准确性,灵敏度,特异性和AUROC分别为0.9961、0.9477、0.9992和0.9734。根据框架的发现,将频繁的项目添加为功能可大大提高分类精度。

Investigation and analysis of patient outcomes, including in-hospital mortality and length of stay, are crucial for assisting clinicians in determining a patient's result at the outset of their hospitalization and for assisting hospitals in allocating their resources. This paper proposes an approach based on combining the well-known gray wolf algorithm with frequent items extracted by association rule mining algorithms. First, original features are combined with the discriminative extracted frequent items. The best subset of these features is then chosen, and the parameters of the used classification algorithms are also adjusted, using the gray wolf algorithm. This framework was evaluated using a real dataset made up of 2816 patients from the Imam Ali Kermanshah Hospital in Iran. The study's findings indicate that low Ejection Fraction, old age, high CPK values, and high Creatinine levels are the main contributors to patients' mortality. Several significant and interesting rules related to mortality in hospitals and length of stay have also been extracted and presented. Additionally, the accuracy, sensitivity, specificity, and auroc of the proposed framework for the diagnosis of mortality in the hospital using the SVM classifier were 0.9961, 0.9477, 0.9992, and 0.9734, respectively. According to the framework's findings, adding frequent items as features considerably improves classification accuracy.

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