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Automated Medical Diagnosis from Clinical Data

机译:根据临床数据自动进行医学诊断

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A significant portion of the world population does not have access to proper healthcare. The key factor for healthcare's success is the physician's expertise. In this paper, we examine if that expertise can be modeled as an information corpus, a flavor of Big Data and extracted using text mining techniques, particularly using the Vector Space Model, to perform diagnosis. Using cloud and mobile technologies, medical diagnosis can then be made available everywhere there is Internet connectivity, reducing costs, increasing coverage and improving quality of life. The key to the possibility of performing medical diagnosis using an information retrieval approach is the data. This paper therefore focuses on the suitability of the dataset for automating diagnosis using text mining. We use various text mining tools relevant to the Vector Space Model to perform operations on the data to see if meaningful conclusions can be drawn from it. We present some of our observations from the experiments conducted and conclude with future directions.
机译:世界上很大一部分人口无法获得适当的医疗保健。医疗保健成功的关键因素是医师的专业知识。在本文中,我们检查了该专业知识是否可以建模为信息语料库,大数据风格,并使用文本挖掘技术(尤其是使用向量空间模型)提取以进行诊断。使用云和移动技术,然后可以在任何具有Internet连接的地方进行医疗诊断,从而降低成本,增加覆盖范围并改善生活质量。使用信息检索方法进行医学诊断的可能性的关键是数据。因此,本文着重于使用文本挖掘进行自动诊断的数据集的适用性。我们使用与向量空间模型相关的各种文本挖掘工具对数据执行操作,以查看是否可以从中得出有意义的结论。我们介绍了我们从实验中得出的一些观察结果,并对未来的发展方向进行了总结。

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