模糊k近邻法在儿童发热疾病分类中的应用

R. Putra, S. Mulyati
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引用次数: 6

摘要

发烧或发热是体温高于平均水平的一种情况。这可能是由于病毒或细菌感染的身体。此外,发烧是登革热、伤寒、腹泻、肠胃炎、麻疹、肺炎、咽炎和支气管炎等疾病的主要症状。这些疾病有相似的症状,因此很难区分。事实上,疾病的症状通常记录在医疗记录文件中。为了便于诊断,可以对医疗记录进行分类。将某些特征划分为若干类的技术称为分类。分类可以对文本数据进行分类,然后将文本数据转换为数字数据,从而使分类过程产生结果。模糊k近邻是一种分类技术,它测量训练数据和测试数据之间的距离,然后将它们放入模糊集。本研究建立了基于病历文本的儿童发热疾病模糊k近邻分类系统。测试结果表明,该分类系统在登革热和肺炎数据中的准确率为83.3%,训练数据和测试数据的对比为80:20,K值为10,M值为2。因此,可以得出模糊k近邻分类系统可以作为儿童发热疾病分类的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Childhood Diseases with Fever Using Fuzzy K-Nearest Neighbor Method
Fever or pyrexia is a condition when the body temperature rises above the average. This may occur due to viral or bacterial infection of the body. In addition, fever is the main symptom of diseases such as dengue fever, typhoid fever, diarrhea, gastroenteritis, measles, pneumonia, pharyngitis, and bronchitis. These diseases have similar symptoms, causing difficulty to distinguish them. In fact, the symptoms of diseases are usually recorded in a medical record document.Medical records can be categorized in order to ease diagnosis. The technique to categorize based on certain characteristics to several classes is called classification. Classification can categorize textual data which are first converted into numerical data so that the classification process can generate results. Fuzzy K-Nearest Neighbor is one classification technique that measures the distance between training and testing data, which then put them into a fuzzy set. This study developed a classification system for childhood diseases with fever using Fuzzy K-Nearest Neighbor based on textual medical record documents.The test results of the classification system showed an accuracy of 83.3% in the dengue fever and pneumonia data with a comparison of training and testing data of 80: 20, K value of 10, and M value of 2. Thus, it can be concluded that Fuzzy K-Nearest Neighbor classification system can be used as a solution to the classification of childhood diseases with fever.
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