Machine Learning Applications in Disease Surveillance

Ezekiel T. Ogidan, Kamil Dimililer, Yoney Kirsal-Ever
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引用次数: 2

Abstract

The semantic web provides a framework that allows data to be shared and reused across different applications and enterprises. There are a lot of data stores available all over the internet that contain extensive data and there is a wide range of possibilities when it comes to the applications and systems that can be developed with access to these data stores. One of these applications is disease surveillance. This essentially involves the collection, analysis, and interpretation of data to draw inferences regarding the outbreak and spread diseases as well as the efficiency of the preventive or control measures employed in these cases. In this paper, we would be looking at data gotten from Google Trends and showing the correlation between the amount of Google searches of a disease in a region and the cases or incidences in that region.
机器学习在疾病监测中的应用
语义网提供了一个框架,允许数据在不同的应用程序和企业之间共享和重用。互联网上有大量的数据存储,包含大量的数据,当涉及到可以通过访问这些数据存储来开发的应用程序和系统时,有很大的可能性。其中一个应用是疾病监测。这主要涉及收集、分析和解释数据,以推断疾病的爆发和传播,以及在这些情况下采取的预防或控制措施的效率。在这篇论文中,我们将研究从谷歌Trends中获得的数据,并显示一个地区某种疾病的谷歌搜索量与该地区的病例或发病率之间的相关性。
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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