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Technologies for Enhancing Clinical Information Systems

Technologies for Enhancing Clinical Information Systems. Professor Jon Patrick Health Information Technology Research Unit School of Information Technologies University of Sydney. Our Strategic Objectives. Deliver NLP Enhancement Technologies for intelligent support and processing.

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Technologies for Enhancing Clinical Information Systems

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  1. Technologies for Enhancing Clinical Information Systems Professor Jon Patrick Health Information Technology Research Unit School of Information Technologies University of Sydney

  2. Our Strategic Objectives • Deliver NLP Enhancement Technologies for intelligent support and processing. • Build generic, compact, customisable Clinical ISs to enhance existing clinical processes. • Position Natural Language Processing as the base technology for processing the EMR “all clinical measurement eventually becomes language” Health IT Laboratory The University of Sydney

  3. Our HIT Activities • 60+ Projects in 3 Years • Language Analysis of clinical texts • Data Analysis of the EHR • Converting clinical narratives to SNOMED CT • Mapping other coding systems to SNOMED CT • Generating ICU subset of SNOMED CT • Building Clinical Information Systems - WeBCIS • Rescuing data from abandoned and decaying ISs - OMNI-LAB, HOS-LAB, CARDS, BS, HOSREP. • Partners: RPAH, SEALS, NCCH, SWAHS, Children’s Westmead, SWAPS, and more Health IT Laboratory The University of Sydney

  4. Enhancement TechnologiesActive Projects • Ward Rounds Information Systems • Clinical Data Analytics Language • Structured Reporting - Pathology+ Imaging • Handovers Information System • Generative Clinical Information Management System (GCIMS) Health IT Laboratory The University of Sydney

  5. 1. Ward Rounds Information System (WRIS) • Needs • Make an extract of the current medical measurements into a pro forma report • Assess the patient at the bedside • Determine next course of action • Record those actions in the medical record • Complete an analysis of the narrative content for indexing Health IT Laboratory The University of Sydney

  6. Health IT Laboratory The University of Sydney

  7. Health IT Laboratory The University of Sydney

  8. Health IT Laboratory The University of Sydney

  9. Needs for ImprovementRetrospective Analysis of ICU Notes • ICU corpus of 44 million words • Derived all SNOMED codes • Inferred SCT subset - 2700 concepts cover 96% of usage - 20,000 for 100% • Use for spell checking in an automatic processor • Aim to improve quality of medical documentation to enhance automatic processing for other purposes e.g. DSS • Future - prospective studies to understand the effect on support for patient care and safety Health IT Laboratory The University of Sydney

  10. Use of SCT Encoding of Clinical Notes • Indexing notes for SNOMED codes enables: • Operational Information Retrieval • Research Information Retrieval • Data Analytics • Audit of Care • Clinician training for stable terminology • Extension to Customisable Handovers ISs Health IT Laboratory The University of Sydney

  11. 2. A Clinical Data Analytics Language - CliniDALPrinciples • It can express all questions that are answerable from the database including from narrative content • It can compute all questions that can be expressed • It is transportable across all Clinical ISs Health IT Laboratory The University of Sydney

  12. Clinical Data Analytics Language (CliniDAL) - Practicals • Need for general purpose Information Extraction • Over aggregated data • Constrained by many variables • Over the text notes in the patient record • From a wide range of Information Systems • Using a wide range of health dialects Health IT Laboratory The University of Sydney

  13. CDAL Request - Basic Structure • Nominates • Terminolgy/Ontology/Classications • Physical Databases • Statistical Variable or Expression of key interest • Patient Grouping • Medical Expressions • Time constraints • Location Constraints • {Using <SNOMED>} in {<ICU-db>} Find <AVG (Stay)> of <men under 40>+ {with <3rd degree burns to the left hand treated with amoxycillin>} {<during the last 2 years>} from {<postcodes 2300-2999>} Health IT Laboratory The University of Sydney

  14. Screenshot of a CDAL query: ARDS SNIFFER: Find all patients’ medical record number (and the number of records retrieved) for patients with age > 16, [AND] arterial blood gas analysis (PaO2 / FiO2) < 300 AND Tidal Volume Peak Pressures (Paw) > 35 OR Delivered tidal volume (Vt) > 8mL IN the GICU (over the last year). Note that: PaO2 / FiO2 = PF Ratio; Paw = PIP; Delivered Vt = Vt Expired Health IT Laboratory The University of Sydney

  15. Accessible attributes in ICU-CDAL - CareVue • Chart_events (total): 786 • Chart_events (numeric): 734 • Chart_events (categorical):52 • Medication_events: 52 • Patient_events: 6 • Lab_events: 63 • Group_events (total): 74 • Sedation: 8 • Inotropes: 14 • Antibiotics: 46 • Thromboebolic_prophylaxis: 6 • Total: Health IT Laboratory The University of Sydney

  16. 3. Structured Reporting Pathology & Radiology • Populate a structured report by information extraction from a narrative report • SRs exist of breast, colorectal, and skin cancer and are in development for others • Need to verify design against actual reports • Need to convert historical reports for research • Adds efficiency and completeness to reports • Minimises call backs on reports • Pilot funded by the QUPP (DoHA) Health IT Laboratory The University of Sydney

  17. Health IT Laboratory The University of Sydney

  18. Health IT Laboratory The University of Sydney

  19. Health IT Laboratory The University of Sydney

  20. 4. Handovers ET • Generated from an underlying IT infrastructure • Can be readily varied and regenerated at will • Particular structure for each staff role • Extracts from the legacy IS Health IT Laboratory The University of Sydney

  21. Handovers Screenshots User Interface 2 Functions: generating new report and retrieving existing report 4 templates 3 report types 3 report output formats 21 Enhancing Technologies for Clinical Information Systems

  22. Screenshots Handovers report: general purpose 19 attributes and 5 progress notes Around 4mins to generate this report 22 Enhancing Technologies for Clinical Information Systems

  23. Screenshots Handovers report for Doctors 14 attributes and 5 progress notes Around 3Mins and 37 Secs to generate this report 23 Enhancing Technologies for Clinical Information Systems

  24. Screenshots Handovers report for Nursing 23 attributes and 1 progress notes Around 5Mins and 38 Secs to generate this report 24 Enhancing Technologies for Clinical Information Systems

  25. Screenshots Handovers report for Pharmacists 17 attributes and 4 progress notes Around 3mins and 9Secs to generate this report 25 Enhancing Technologies for Clinical Information Systems

  26. Proposed Developments • Expand WRIS into a Handovers system • Make CDAL more portable • Expand CDAL’s Hypothesis testing capacity • Expand the language processing in both systems • Continue developing the GCIMS model • Add workflow to GCIMS • ICRAIS - Intensive Care Real-time Audit IS • Compact Nursing ISs using NIC & NOC • Information Exchange fetching and delivering information from all hospital ISs Health IT Laboratory The University of Sydney

  27. 5. Generative information Management systems (GCIMS) • Allow each department to specify its own Clinical IS in a forms description language • Link each data item in the CIS to a unique concepts code e.g. SNOMED • Supply a universal & comprehensive retrieval language • Supply a workflow engine Health IT Laboratory The University of Sydney

  28. Features of Enhancement Technologies • Compact Customisable ISs • None is mission critical, but all give • High productivity, • Enhanced patient safety and outcomes, and • Unheralded access to data especially text • Bolt on technologies • Tailored and managed to suit a local clinical needs • Removable at any time to allow return to original processes • Can fetch and deliver from other systems Health IT Laboratory The University of Sydney

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