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CodaMetrix Autonomous Coding 2023 CodaMetrix Autonomous Coding 2023
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CodaMetrix Autonomous Coding 2023
Reducing Manual Coding Volumes through Automation and Machine Learning

author - Mac Boyter
Mac Boyter
author - Braden Taylor
Braden Taylor
April 7, 2023 | Read Time: 1  minute

Energy around autonomous coding solutions continues to rise as healthcare organizations pursue opportunities to enhance revenue cycle performance and ease staffing shortages. The CodaMetrix autonomous coding solution—referred to as CMX—is a multispecialty coding platform that utilizes AI and machine learning to relieve manual coding processes and enhance coding quality. Current specialty areas include radiology, pathology, GI special procedures, and inpatient professional. This report explores the experience of CodaMetrix customers and their satisfaction with the solution.

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Key Findings:

  1. CodaMetrix Autonomous Coding Customer Experience: An Initial Look
  2. Points to Ponder
  3. CodaMetrix: Company Profile at a Glance
  4. Solution Technical Specifications (provided by CodaMetrix)
author - Robert Ellis
Project Manager
Robert Ellis
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This material is copyrighted. Any organization gaining unauthorized access to this report will be liable to compensate KLAS for the full retail price. Please see the KLAS DATA USE POLICY for information regarding use of this report. © 2024 KLAS Research, LLC. All Rights Reserved. NOTE: Performance scores may change significantly when including newly interviewed provider organizations, especially when added to a smaller sample size like in emerging markets with a small number of live clients. The findings presented are not meant to be conclusive data for an entire client base.