AUTOMATED MEDICAL REPORT FORMATTING SYSTEM

Systems, methods, and computer-readable non-transitory storage medium in which a statistical machine translation model for formatting medical reports is trained in a learning phase using bitexts and in a tuning phase using manually transcribed dictations. Bitexts are generated from automated speech...

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Hauptverfasser: Edwards, Erik, Finley, Greg, Miller, Mark, Salloum, Wael, Suendermann-Oeft, David
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creator Edwards, Erik
Finley, Greg
Miller, Mark
Salloum, Wael
Suendermann-Oeft, David
description Systems, methods, and computer-readable non-transitory storage medium in which a statistical machine translation model for formatting medical reports is trained in a learning phase using bitexts and in a tuning phase using manually transcribed dictations. Bitexts are generated from automated speech recognition dictations and corresponding formatted reports, using a series of steps including identifying matches and edits between the dictations and their corresponding reports using dynamic programming, merging matches with adjacent edits, calculating a confidence score, identifying acceptable matches, edits, and merged edits, grouping adjacent acceptable matches, edits, and merged edits, and generating a plurality of bitexts each having a predetermined maximum word count (e.g., 100 words), preferably with a predetermined overlap (e.g., two thirds) with another bitext. During the tuning phase, the system is trained by iteratively translating manually transcribed dictations and adjusting the relative model weights until best performance on error rate criteria (e.g., WER and CDER).
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subjects ACOUSTICS
CALCULATING
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
MUSICAL INSTRUMENTS
PHYSICS
SPEECH ANALYSIS OR SYNTHESIS
SPEECH OR AUDIO CODING OR DECODING
SPEECH OR VOICE PROCESSING
SPEECH RECOGNITION
title AUTOMATED MEDICAL REPORT FORMATTING SYSTEM
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