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CAC with Natural Language Processing (NLP) Solves ICD-10 Conundrum

CAC with Natural Language Processing (NLP) Solves ICD-10 Conundrum. James M. Maisel, MD Chairman, ZyDoc jmaisel@zydoc.com. Paradigm Shift toward Data-Centric Health Care. ICD-10 Conundrum. Challenges Greater documentation needs Training requirements for 155,000 ICD-10 codes

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CAC with Natural Language Processing (NLP) Solves ICD-10 Conundrum

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  1. CAC with Natural Language Processing (NLP) Solves ICD-10 Conundrum James M. Maisel, MD Chairman, ZyDoc jmaisel@zydoc.com

  2. Paradigm Shift toward Data-Centric Health Care

  3. ICD-10 Conundrum • Challenges • Greater documentation needs • Training requirements for 155,000 ICD-10 codes • Temporary loss in productivity • Dual data storage systems during implementation • Boon • Increased reimbursements • >POA, >SOI • Bust • Denials 3

  4. Increasing Incentives for producing richer documentation • Precision of ICD-10, which necessitates detailed documentation • Value-based medicine requirements • Incentives for reporting severity of illness (SOI), present on arrival (POA), PQRS, etc • Fraud & abuse detection tools getting stronger (esMD) • RAC audits 4

  5. The ICD-10 Challenge How to select the correct fracture from a drop-down menu? S82.51Displaced fracture of medial malleolus of right tibia S82.51XA…… initial encounter for closed fracture S82.51XB…… initial encounter for open fracture type I or II S82.51XC…… initial encounter for open fracture type IIIA, IIIB, or IIIC S82.51XD…… subsequent encounter for closed fracture with routine healing S82.51XE…… subsequent encounter for open fracture type I or II with routine healing S82.51XF…… subsequent encounter for open fracture type IIIA, IIIB, or IIIC with routine healing S82.51XG…… subsequent encounter for closed fracture with delayed healing S82.51XH…… subsequent encounter for open fracture type I or II with delayed healing S82.51XJ…… subsequent encounter for open fracture type IIIA, IIIB, or IIIC with delayed healing S82.51XK…… subsequent encounter for closed fracture with nonunion S82.51XM…… subsequent encounter for open fracture type I or II with nonunion S82.51XN…… subsequent encounter for open fracture type IIIA, IIIB, or IIIC with nonunion S82.51XP…… subsequent encounter for closed fracture with malunion S82.51XQ…… subsequent encounter for open fracture type I or II with malunion S82.51XR…… subsequent encounter for open fracture type IIIA, IIIB, or IIIC with malunion S82.51XS…… sequela 5

  6. Problem: No additional time to produce richer documentation Dictation & Natural Language Processing Produce richer documentation with more structured data in same amount of time 6

  7. NLP as a part of a Billing Solution • Empowers better documentation with dictation allowing full charge capture • Faster, more accurate, more reliable, more thorough than manual coding alone • Works for both in-patient and ambulatory records for all specialties • ICD-10 capability • Effective educational platform 7

  8. Natural Language ProcessingGenerates structured datafrom unstructured text 8

  9. 9 June 14, 2012 Presented by James Maisel, MD 2012 NJHIMA Annual Meeting 9

  10. EHR Paradigm Dictation  Transcription  Auto Coding  Import to EHR Current Paradigm Physician Enters Data in EHR 10 minutes 2 minutes 10

  11. ICD-10 Extraction from Text with NLP 11

  12. Billing Needs • Thorough coding supports maximal billing • Coder productivity • Appropriate coding for correct reimbursement • Traceable coding • Reproducible coding • RAC Audit Risk reduction 12

  13. Reducing RAC Audit Risk • FUTURE: Government will audit ALL records using Natural Language Processing (esMD program) • Natural Language Processing reduces audit risk • Thorough coding supports more appropriate billing • Reproducible coding from source text • Verifiable coding 13

  14. How NLP Can Help (1 of 4) • Documentation Improvement • Apply NLP to current documentation •  Identify deficiencies in documentation (omissions, lack of specificity) •  Educate caregivers •  Dictation captures more data than standard EHR entry for POA, SOI, $, quality measures, meaningful use, PQRS, reporting, analytics, and better care 14

  15. How NLP Can Help (2 of 4) • Coder Productivity • Apply NLP to narrative or semi-structured documentation •  Enable approximately 20% increase in productivity •  Reduced coding-related overtime payments •  Decreased costs to collect and days in accounts receivable •  Improved coder job satisfaction 15

  16. How NLP Can Help (3 of 4) • Coder Training • Code single documents in ICD-9 and ICD-10 •  Enable trainees to learn or be tested 16

  17. How NLP Can Help (4 of 4) • EHR Preparation • Generate ICD-10 codes from legacy EHR data •  Enable clinical and financial analysis straddling October 2014 17

  18. Secondary Data Use Medical Knowledge Management 18 Data automatically extracted from documentation process Empower more individuals New applications and capabilities Better measurement and outcomes Better outcomes at lower cost

  19. Secondary Use: Risk Reduction 19

  20. Thank You James M. Maisel, MD Founder and Chairman ZyDoc MediSapien Natural Language Processing Medical Transcription Clinical Data 20

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