计算机网络阅读报告,计算机网络报告模板.doc

尽管语音识别技术在医疗保健中取得进步,但并未完全替代医疗转录员。前端和后端语音识别可用于医疗文档过程,然而,软件的局限性、医生工作方式的改变需求及大量训练时间是主要挑战。医疗转录员的角色更多地被重新分配而非淘汰。

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计算机网络报告模板

PAGE 12

《计算机网络》

报告

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Speech recognition

History

One of the most notable domains for the commercial application of speech recognition in the United States has been health care and in particular the work of the \o "Medical transcription" medical transcriptionist . According to industry experts, at its inception, speech recognition (SR) was sold as a way to completely eliminate transcription rather than make the transcription process more efficient, hence it was not accepted. It was also the case that SR at that time was often technically deficient. Additionally, to be used effectively, it required changes to the ways physicians worked and documented clinical encounters, which many if not all were reluctant to do. The biggest limitation to speech recognition automating transcription, however, is seen as the software. The nature of narrative dictation is highly interpretive and often requires judgment that may be provided by a real human but not yet by an automated system. Another limitation has been the extensive amount of time required by the user and/or system provider to train the software.

A distinction in ASR is often made between "artificial syntax systems" which are usually domain-specific and "natural language processing" which is usually language-specific. Each of these types of application presents its own particular goals and challenges.

Applications

Health care

In the \o "Health care" health care domain, even in the wake of improving speech recognition technologies, medical transcriptionists (MTs) have not yet become obsolete. Many experts in the field anticipate that with increased use of speech recognition technology, the services provided may be redistributed rather than replaced.

Speech recognition can be implemented in front-end or back-end of the medical documentation process.

Front-End SR is where the provider dictates into a speech-recognition engine,

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