一种基于时空分析的脊髓灰质炎疾病检测数据挖掘新方法

Suleman Khan, F. Azam, Muhammad Waseem Anwar, Yawar Rasheed, Mudassar Saleem, N. Ejaz
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摘要

小儿麻痹症是一种流行病,它可能导致瘫痪,甚至可能导致感染者死亡。在大多数情况下,脊髓灰质炎病毒的症状很轻微,因此很有可能不被注意到。本文旨在从时空的角度了解脊髓灰质炎病毒的爆发、严重程度和传播。这项研究提出了一种新的机器学习模型来预测小儿麻痹症的几率。特别是,数据集是通过从诸如美国国立卫生研究院(NIH)、医疗仓库数据库和运输日志等多个来源获取数据而开发的。然后,对给定的数据应用k均值算法预测脊髓灰质炎爆发的几率。初步研究证明,所提出的模型是朝着减轻这种致命疾病挑战迈出的重要一步。此外,它还提供了一个平台/框架,可在开发脊髓灰质炎病毒检测自动化工具时加以扩展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Data Mining Approach for Detection of Polio Disease Using Spatio-Temporal Analysis
Polio is an epidemic disease, which may lead to paralysis and may be fatal enough to cause even death of the infected person. In most of the cases, polio virus has mild symptoms, so, there is a high probability that it can remain unnoticed. This paper aims to understand the eruption, severity and spread of polio virus from a spatio-temporal point of view. This research proposed a novel machine learning model to predict the chances of polio. Particularly, data sets are developed by getting data from several sources such as NIH (National Institute of Health), databases of medical stores and transport logs. Subsequently, K-mean algorithm is applied on the given data to predict the chances of polio's breakout. The preliminary study proved that the proposed model is significant step towards mitigating the challenges of this fatal disease. Furthermore, it also provides a platform/ framework, which can be extended in the development of an automated tool for polio virus detection.
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