Analysis of Pediatric Respiratory Disease Trends Using the 2016 KIDs' Inpatient Database

Pub Date : 2023-07-24 DOI:10.4018/ijhisi.326800
Shilpa Balan, Shailja Pandit
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Abstract

Many infants and young children worldwide have been affected by chronic respiratory conditions. In this paper, the authors performed an exploratory and predictive analysis of the 2016 KID data set to examine respiratory disease trends among children. They applied the multiple linear regression and random forest regression methods to build a predictive model for the length of stay (LOS) for children with respiratory problems. The tree approach implemented using random forest is found to be a better approach for predicting the length of stay (LOS). In addition, they performed an exploratory analysis of significant fields from the data set. From the analysis, it is found that the winter season has the highest number of inpatient admissions of children having chronic respiratory illnesses. Further, it is found that newborns and infants are more prone to respiratory diseases, with bronchitis being the leading cause of respiratory diseases among children.
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利用2016年儿童住院患者数据库分析儿童呼吸系统疾病趋势
全世界有许多婴幼儿受到慢性呼吸系统疾病的影响。在本文中,作者对2016年KID数据集进行了探索性和预测性分析,以检查儿童呼吸道疾病的趋势。他们应用多元线性回归和随机森林回归方法建立了呼吸系统疾病患儿住院时间(LOS)的预测模型。使用随机森林实现的树方法是预测逗留时间(LOS)的较好方法。此外,他们对数据集中的重要字段进行了探索性分析。从分析中发现,冬季是慢性呼吸系统疾病儿童住院人数最多的季节。此外,还发现新生儿和婴儿更容易患呼吸道疾病,支气管炎是儿童呼吸道疾病的主要原因。
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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