不同机器学习方法在鼻窦疾病分类中的表现

Aya Nuseir, A. Nuseir, M. Alsmirat, M. Al-Ayyoub, Mohammed Mahdi, H. Al-Balas
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引用次数: 2

摘要

在这个项目中,在约旦阿卜杜拉国王大学医院(KAUH)的耳鼻喉科专家的帮助下,创建了一个鼻腔疾病数据集。然后使用该数据集实验不同的特征提取和选择方法以及不同的机器学习分类方法。工作可以总结如下。我们首先根据患者的病史信息选择参与的患者,这些信息是通过问卷调查从患者那里获得的。然后,我们构建了一个工具,利用图像处理技术对所选患者的CT扫描图像进行处理,从中提取有用的信息。然后,使用不同的过滤器和包装器选择方法以及各种机器学习技术对数据集中的案例进行分类。结果表明,与其他特征选择方法相比,使用所有分类器的包装器特征选择(使用PART分类器进行最佳优先搜索)的性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of Different Machine Learning Methods for Sinus Diseases Classification
In this project, a sinonasal diseases dataset is created with the help of Ear, Nose, and Throat (ENT) specialists at King Abdullah University Hospital (KAUH), Jordan. This dataset is then used to experiment with different features extraction and selection methods and different machine learning classification methods. The work can be summarized as follows. We start by selecting the participating patients according to their history information that is acquired from the patients using a questionnaire. Then, we construct a tool that employs image processing techniques to process the selected patients’ CT scan images to extract useful information from them. After that, different filters and wrapper selection methods with various machine learning techniques are utilized to classify the cases in the dataset. The results show that the performance of wrapper feature selection (using PART classifier with best first search) with all used classifiers produces better results compared with the other feature selection methods.
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