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Understanding Medical Conversations: Rich Transcription, Confidence Scores & Information Extraction

Authors :
Laurent El Shafey
Hagen Soltau
Izhak Shafran
Mingqiu Wang
Source :
Interspeech 2021.
Publication Year :
2021
Publisher :
ISCA, 2021.

Abstract

In this paper, we describe novel components for extracting clinically relevant information from medical conversations which will be available as Google APIs. We describe a transformer-based Recurrent Neural Network Transducer (RNN-T) model tailored for long-form audio, which can produce rich transcriptions including speaker segmentation, speaker role labeling, punctuation and capitalization. On a representative test set, we compare performance of RNN-T models with different encoders, units and streaming constraints. Our transformer-based streaming model performs at about 20% WER on the ASR task, 6% WDER on the diarization task, 43% SER on periods, 52% SER on commas, 43% SER on question marks and 30% SER on capitalization. Our recognizer is paired with a confidence model that utilizes both acoustic and lexical features from the recognizer. The model performs at about 0.37 NCE. Finally, we describe a RNN-T based tagging model. The performance of the model depends on the ontologies, with F-scores of 0.90 for medications, 0.76 for symptoms, 0.75 for conditions, 0.76 for diagnosis, and 0.61 for treatments. While there is still room for improvement, our results suggest that these models are sufficiently accurate for practical applications.

Details

Database :
OpenAIRE
Journal :
Interspeech 2021
Accession number :
edsair.doi...........703359cad183b3cf452aeaee2c49554b
Full Text :
https://doi.org/10.21437/interspeech.2021-691