放射数据记录中的文本挖掘:一种无监督神经网络方法

W. Claster, S. Shanmuganathan, N. Ghotbi
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引用次数: 4

摘要

数字化医疗记录的快速增长为将100字节的数据合并为可以为我们提供新知识的信息提供了新的机会。这样发现的知识可以在许多方面帮助医疗从业者,例如从许多可能的选择中选择最佳的诊断工具。我们分析了2004年在长崎大学医院接受CT扫描的儿童的放射科记录。我们使用自组织地图(SOM),一种基于无监督神经网络的文本挖掘技术进行分析。这种方法可以识别病历叙述中的关键词,从而有助于减少临床医生提出的不必要的CT请求。这一点很重要,因为尽管医疗放射程序具有宝贵的诊断能力,但过度使用这种程序对儿童的健康构成重大风险
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text Mining in Radiological Data Records: An Unsupervised Neural Network Approach
The rapid growth in digitalized medical records presents new opportunities for coalescing terra bytes of data into information that could provide us with new knowledge. The knowledge discovered as such could assist medical practitioners in a myriad of ways, for example in selecting the optimal diagnostic tool from among many possible choices. We analyzed the radiology department records of children who had undergone a CT scanning procedure at Nagasaki University Hospital in the year 2004. We employed self organizing maps (SOM), an unsupervised neural network based text-mining technique for the analysis. This approach led to the identification of keywords within the narratives accompanying the medical records that could contribute to reduction of unnecessary CT requests by clinicians. This is important because overuse of medical radiation poses significant health risks to children in spite of the invaluable diagnostic capacity of such procedures
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