A Novel Text Data Mining Method Based on Neural Network and its Application

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Abstract:

Data mining aims to excavate new knowledge from existing information. When it comes to test mining, a better way is to take the context into account In this study we present text mining procedures based on a neural network framework in order to identify indicative factors in the form of keywords within the medical record narratives. These keywords and their weight/value suggest an innovative way for justifying a CT scan request. Our purpose is to extend the reach of diagnosis beyond traditional processing of clinical data towards an efficient utilization of the narratives in medical records.

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Advanced Materials Research (Volumes 1049-1050)

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1637-1640

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October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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