Abstract

To build large collections of medical terms from semi-structured information sources (e.g. tables, lists, etc.) and encyclopedia sites on the web. The terms are classified into the three semantic categories, Medical Problems, Medications, and Medical Tests, which were used in i2b2 challenge tasks. We developed two systems, one for Chinese and another for English terms. The two systems share the same methodology and use the same software with minimum language dependent parts. We produced large collections of terms by exploiting billions of semi-structured information sources and encyclopedia sites on the Web. The standard performance metric of recall (R) is extended to three different types of Recall to take the surface variability of terms into consideration. They are Surface Recall (), Object Recall (), and Surface Head recall (). We use two test sets for Chinese. For English, we use a collection of terms in the 2010 i2b2 text. Two collections of terms, one for English and the other for Chinese, have been created. The terms in these collections are classified as either of Medical Problems, Medications, or Medical Tests in the i2b2 challenge tasks. The English collection contains 49,249 (Problems), 89,591 (Medications) and 25,107 (Tests) terms, while the Chinese one contains 66,780 (Problems), 101,025 (Medications), and 15,032 (Tests) terms. The proposed method of constructing a large collection of medical terms is both efficient and effective, and, most of all, independent of language. The collections will be made publicly available.

Highlights

  • Building large collections of medical terms [1±4] is of great importance as it is the first essential step for medical text processing

  • While sophisticated algorithms have been developed for medical record processing, a lack of a large collection of terms that occur in actual medical reports is one of the major obstacles for these algorithms being deployed in the real world

  • We describe how we have built large collections of terms that can be used as sharable resources by the community of medical record processing

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Summary

Introduction

Building large collections of medical terms [1±4] is of great importance as it is the first essential step for medical text processing (such as named-entity recognition, relation extraction, etc). While sophisticated algorithms have been developed for medical record processing, a lack of a large collection of terms that occur in actual medical reports is one of the major obstacles for these algorithms being deployed in the real world. As for Chinese [9±12], even such collections of formal medical terms are still poor in content, compared with those for English. We describe how we have built large collections of terms that can be used as sharable resources by the community of medical record processing. Our work can contribute to medical record processing in local languages, which has become increasingly important

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