使用堆叠集成模型诊断发展中国家头颈癌

Folake Akinbohun, A. Akinbohun, A. Daniel, Oghenerukevwe Elohor Ojajuni
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引用次数: 0

摘要

头颈癌(HNC)是指细胞生长异常。由于几个因素,HNC的发病率正在上升。由于缺乏专家,经常出现延误呈报可导致生命损失(死亡)的情况,特别是在非洲。这些挑战促使开发了一种用于诊断HNC的堆叠集成模型,以促进及时转诊。收集的数据由1473个实例组成,具有18个特征。使用信息增益来选择重要特征,并为基础学习器部署了三种监督学习算法:决策树(C4.5), k近邻和Naïve贝叶斯。将基础学习器的预测组合并传递给元学习器:Logistic模型树(LMT)。结果表明,叠加lmt2的信息增益法的增益率为95.11%。结果表明,与基础学习器的结果相比,叠加式MLR的信息增益都能产生更高的准确率。因此,该叠加模型可用于医疗系统中HNC的诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of Head and Neck Cancer in Developing Countries Using a Stacked Ensemble Model
Head and neck cancers (HNC) are indicated when cells grow abnormally.  The incidence of HNC is on the increase owing to several factors. There is often late presentation that can result in loss of lives (mortality) especially in Africa due to paucity of specialists. These challenges prompted the development of a stacked ensemble model for diagnosis of HNC to facilitate prompt referral.  The data were collected which consists of 1473 instances with 18 features.   Information Gain was used for selecting important features and three supervised learning algorithms were deployed for the base learners: Decision Tree (C4.5), K-Nearest Neighbors and Naïve Bayes. The predictions of the base learners were combined and passed to meta learners: Logistic Model Tree (LMT). The result showed that Information Gain method with stacked LMTwas 95.11%. It was deduced that both Information Gain with stacked MLR produced higher accuracy that the base learners’ results. Hence, this stacked model can be used for diagnosis of HNC in healthcare systems.
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