Wormek A K, Ingenerf J, Orthner H F
GSF-National Research Center for Environment and Health, Medis., Institute of Medical Informatics and Health Services Research, Neuherberg, Germany.
Proc AMIA Annu Fall Symp. 1997:774-8.
In the last two years, improvement in speech recognition technology has directed the medical community's interest to porting and using such innovations in clinical systems. The acceptance of speech recognition systems in clinical domains increases with recognition speed, large medical vocabulary, high accuracy, continuous speech recognition, and speaker independence. Although some commercial speech engines approach these requirements, the greatest benefit can be achieved in adapting a speech recognizer to a specific medical application. The goals of our work are first, to develop a speech-aware core component which is able to establish connections to speech recognition engines of different vendors. This is realized in SAM. Second, with applications based on SAM we want to support the physician in his/her routine clinical care activities. Within the STAMP project (STAndardized Multimedia report generator in Pathology), we extend SAM by combining a structured data entry approach with speech recognition technology. Another speech-aware application in the field of Diabetes care is connected to a terminology server. The server delivers a controlled vocabulary which can be used for speech recognition.
在过去两年中,语音识别技术的进步促使医学界将兴趣转向在临床系统中移植和应用此类创新。临床领域对语音识别系统的接受度会随着识别速度、庞大的医学词汇量、高精度、连续语音识别以及说话人无关性而提高。尽管一些商业语音引擎接近这些要求,但通过使语音识别器适应特定医学应用能够实现最大的益处。我们工作的目标首先是开发一个语音感知核心组件,该组件能够与不同供应商的语音识别引擎建立连接。这在SAM中得以实现。其次,通过基于SAM的应用,我们希望在医生的日常临床护理活动中为其提供支持。在STAMP项目(病理学标准化多媒体报告生成器)中,我们通过将结构化数据录入方法与语音识别技术相结合来扩展SAM。糖尿病护理领域的另一个语音感知应用与一个术语服务器相连。该服务器提供可用于语音识别的受控词汇表。