Similarity Analysis of Hospitalization using Crowding Distance

Yong-Gyu Jung, Y. Choi, B. Cha
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Abstract

With the growing use of big data and data mining, it serves to understand how such techniques can be used to understand various relationships in the healthcare field. This study uses hierarchical methods of data analysis to explore similarities in hospitalization across several New York state counties. The study utilized methods of measuring crowding distance of data for age-specific hospitalization period. Crowding distance is defined as the longest distance, or least similarity, between urban cities. It is expected that the city of Clinton have the greatest distance, while Albany the other cities are closer because they are connected by the shortest distance to each step. Similarities were stronger across hospital stays categorized by age. Hierarchical clustering can be applied to predict the similarity of data across the 10 cities of hospitalization with the measurement of crowding distance. In order to enhance the performance of hierarchical clustering, comparison can be made across congestion distance when crowding distance is applied first through the application of converting text to an attribute vector. Measurements of similarity between two objects are dependent on the measurement method used in clustering but is distinguished from the similarity of the distance; where the smaller the distance value the more similar two things are to one other. By applying this specific technique, it is found that the distance between crowding is reduced consistently in relationship to similarity between the data increases to enhance the performance of the experiments through the application of special techniques. Furthermore, through the similarity by city hospitalization period, when the construction of hospital wards in cities, by referring to results of experiments, or predict possible will land to the extent of the size of the hospital facilities hospital stay is expected to be useful in efficiently managing the patient in a similar area.
基于拥挤距离的住院相似性分析
随着大数据和数据挖掘的使用越来越多,它有助于理解如何使用这些技术来理解医疗保健领域的各种关系。本研究使用分层数据分析方法来探索纽约州几个县住院治疗的相似性。本研究采用不同年龄住院期数据的拥挤距离测量方法。拥挤距离被定义为城市之间最长的距离,或最小的相似性。预计克林顿市有最大的距离,而奥尔巴尼和其他城市更近,因为它们以最短的距离连接到每个台阶。在按年龄分类的住院期间,相似性更强。分层聚类方法可以通过拥挤距离的度量来预测10个城市住院数据的相似性。为了提高分层聚类的性能,可以通过将文本转换为属性向量的方法,在首先应用拥挤距离时,跨拥堵距离进行比较。两个对象之间的相似性度量依赖于聚类中使用的度量方法,但与距离的相似性有所区别;距离值越小,两件事就越相似。通过应用这一特定技术,发现拥挤之间的距离持续减少,数据之间的相似性增加,通过应用特殊技术来提高实验的性能。进一步,通过各城市住院期的相似性,在各城市医院病房建设时,通过参考实验结果,或预测可能会落地的医院设施规模的程度,预计将有助于对相似地区的患者进行有效管理。
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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