Jeffrey G Klann1, Peter Szolovits. 1. Medical Informatics, Regenstrief Institute, Indianapolis, IN 46202, USA. jklann@regenstrief.org
Abstract
BACKGROUND: Capturing accurate and machine-interpretable primary data from clinical encounters is a challenging task, yet critical to the integrity of the practice of medicine. We explore the intriguing possibility that technology can help accurately capture structured data from the clinical encounter using a combination of automated speech recognition (ASR) systems and tools for extraction of clinical meaning from narrative medical text. Our goal is to produce a displayed evolving encounter note, visible and editable (using speech) during the encounter. RESULTS: This is very ambitious, and so far we have taken only the most preliminary steps. We report a simple proof-of-concept system and the design of the more comprehensive one we are building, discussing both the engineering design and challenges encountered. Without a formal evaluation, we were encouraged by our initial results. The proof-of-concept, despite a few false positives, correctly recognized the proper category of single-and multi-word phrases in uncorrected ASR output. The more comprehensive system captures and transcribes speech and stores alternative phrase interpretations in an XML-based format used by a text-engineering framework. It does not yet use the framework to perform the language processing present in the proof-of-concept. CONCLUSION: The work here encouraged us that the goal is reachable, so we conclude with proposed next steps.Some challenging steps include acquiring a corpus of doctor-patient conversations, exploring a workable microphone setup, performing user interface research, and developing a multi-speaker version of our tools.
BACKGROUND: Capturing accurate and machine-interpretable primary data from clinical encounters is a challenging task, yet critical to the integrity of the practice of medicine. We explore the intriguing possibility that technology can help accurately capture structured data from the clinical encounter using a combination of automated speech recognition (ASR) systems and tools for extraction of clinical meaning from narrative medical text. Our goal is to produce a displayed evolving encounter note, visible and editable (using speech) during the encounter. RESULTS: This is very ambitious, and so far we have taken only the most preliminary steps. We report a simple proof-of-concept system and the design of the more comprehensive one we are building, discussing both the engineering design and challenges encountered. Without a formal evaluation, we were encouraged by our initial results. The proof-of-concept, despite a few false positives, correctly recognized the proper category of single-and multi-word phrases in uncorrected ASR output. The more comprehensive system captures and transcribes speech and stores alternative phrase interpretations in an XML-based format used by a text-engineering framework. It does not yet use the framework to perform the language processing present in the proof-of-concept. CONCLUSION: The work here encouraged us that the goal is reachable, so we conclude with proposed next steps.Some challenging steps include acquiring a corpus of doctor-patient conversations, exploring a workable microphone setup, performing user interface research, and developing a multi-speaker version of our tools.
Authors: D F Rosenthal; J M Bos; R A Sokolowski; J B Mayo; K A Quigley; R A Powell; M M Teel Journal: J Am Med Inform Assoc Date: 1997 Nov-Dec Impact factor: 4.497
Authors: Ahmet Baki Kocaballi; Enrico Coiera; Huong Ly Tong; Sarah J White; Juan C Quiroz; Fahimeh Rezazadegan; Simon Willcock; Liliana Laranjo Journal: J Am Med Inform Assoc Date: 2019-10-01 Impact factor: 4.497
Authors: Jixuan Wang; Jingbo Yang; Haochi Zhang; Helen Lu; Marta Skreta; Mia Husić; Aryan Arbabi; Nicole Sultanum; Michael Brudno Journal: NPJ Digit Med Date: 2022-01-27
Authors: Juan C Quiroz; Liliana Laranjo; Ahmet Baki Kocaballi; Shlomo Berkovsky; Dana Rezazadegan; Enrico Coiera Journal: NPJ Digit Med Date: 2019-11-22