Proposed Feature Selection Technique for Pattern Detection in Patients with Pneumonia Records

Jesus Orlando Gil Jauregui, Angel Gerardo Carmen Cruzatti, Miguel Angel Cano Lengua, Hugo Villaverde Medrano
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Abstract

Pneumonia in Peru is a very serious problem. Its impact in recent years has been aggravated due to the Covid-19 pandemic, generating an increase in infections and deaths without distinguishing the age range, which placed this country on the mortality list due to the pandemic. That is why this research seeks the causes of this problem and evaluates what patterns were detected between the years 2019–2022 in patients with pneumonia in Peru from data set from the Comprehensive Health Insurance (SIS). The data presented values related to age, gender, medication and other significant values to understand the disease. The results of the research were achieved by using the PCA technique where the dimensionality of the data was reduced from 28 to 4 main features (Patient’s year of health care, Age, BMI, Department). Finally, with this processed data set, the K-Means algorithm was used, where it was determined that patients in the 60 to 85 years range are the most affected by J189 pneumonia. In addition, an environmental pattern was found in J189 pneumonia. J128, resulting in a focus on patients on the Peruvian coast in places like Lima or La Libertad.
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针对肺炎患者记录模式检测提出的特征选择技术
在秘鲁,肺炎是一个非常严重的问题。近年来,Covid-19大流行加剧了这一问题的影响,导致感染和死亡人数增加,且不分年龄段,秘鲁因此被列入大流行病死亡名单。因此,本研究从综合健康保险(SIS)的数据集中寻找这一问题的原因,并评估 2019-2022 年间秘鲁肺炎患者的发病模式。数据显示了与年龄、性别、药物治疗和其他重要数值相关的数值,以便了解该疾病。通过使用 PCA 技术,数据的维度从 28 维减少到 4 个主要特征(患者的医疗年份、年龄、体重指数、科室),从而取得了研究成果。最后,使用 K-Means 算法对处理后的数据集进行分析,确定 60 至 85 岁的患者受 J189 肺炎的影响最大。此外,还发现了 J189 肺炎的环境模式。因此,J128 肺炎的重点是秘鲁利马或拉利伯塔德等沿海地区的患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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