Friedman C
Department of Computer Science, Queens College CUNY, USA.
Proc AMIA Symp. 2000:270-4.
Natural language processing systems (NLP) that extract clinical information from textual reports were shown to be effective for limited domains and for particular applications. Because an NLP system typically requires substantial resources to develop, it is beneficial if it is designed to be easily extendible to multiple domains and applications. This paper describes multiple extensions of an NLP system called MedLEE, which was originally developed for the domain of radiological reports of the chest, but has subsequently been extended to mammography, discharge summaries, all of radiology, electrocardiography, echocardiography, and pathology.
从文本报告中提取临床信息的自然语言处理系统(NLP)已被证明在有限领域和特定应用中是有效的。由于NLP系统通常需要大量资源来开发,因此如果将其设计为易于扩展到多个领域和应用,则会很有好处。本文描述了一个名为MedLEE的NLP系统的多种扩展,该系统最初是为胸部放射学报告领域开发的,但后来已扩展到乳腺摄影、出院小结、所有放射学、心电图、超声心动图和病理学领域。