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SHARPn Data Normalization November 18, 2013

SHARPn Data Normalization

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SHARPn Data Normalization. November 18, 2013. Data-driven Healthcare. Big Data . Analytics. Domain Pragmatics. Research. Practice. Experts. Knowledge. A framework for clinical data reuse. Production Systems. Production Databases. Replicate. Replicate. Query. Data Analytics - PowerPoint PPT Presentation

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Page 1: SHARPn  Data Normalization

SHARPn Data Normalization

November 18, 2013

Page 2: SHARPn  Data Normalization

Data-driven Healthcare

Big Data

Knowledge

Research Pr

actic

e

Analytics

Domain Pragmatics

Experts

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A framework for clinical data reuse

Replicate Replicate

Query

Production Systems

Production Databases

Enterprise Repository/Data Warehouse

Workgroup Datamarts

Query Query

Workflow or goal specific

Data AnalyticsNLP and Data Normalization

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SHARPn Data Normalization

Goals– To conduct the science for realizing semantic

interoperability and integration of diverse data sources

– To develop tools and resources enabling the generation of normalized EMR data for portable and scalable secondary uses

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Data Normalization

Information Models

Target Value Sets

Raw EMR Data

Tooling

Normalized EMR Data

Normalization Targets

Normalization Process

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Normalization Targets

Clinical Element Models– Based on Intermountain Healthcare/GE

Healthcare’s detailed clinical modelsTerminology/value sets associated with

the models– Using standards where possible

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Normalization Process

Configuration of Model (Syntactic) and Terminology (Semantic) Mapping

UIMA Pipeline to transform raw EMR data to normalized EMR data based on mappings

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Four Subprojects

Clinical Information Modeling Value Sets Management End-to-End Pipeline Normalized Data Representation and

Store

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Secondary Use Clinical Element Models

GenericStatement GenericComponent

Core CEMs

SecondaryUse CEMs

Links

AdministrativeGender, …Severity, Status

Embracing the fact that data may not be able to be normalized and enabling bottom-up and top-down

http://www.clinicalelement.com

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Status of Secondary Use CEMs

Model specification is finalCEM Browser is in productionManuscript is in preparation

Future:Secondary Use CEMs and CEM Browser will be maintained through Clinical Information Modeling Initiative (CIMI)

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SecondaryUseNotedDrug – Output (1/2)

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SecondaryUseNotedDrug – Output (2/2)

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NLP in data normalization

A large amount of clinical information is in clinical narratives, NLP is a critical component in data normalization

cTAKES has been wrapped into the data normalization pipeline to normalize data in clinical narratives

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End-to-end DN framework

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Data Normalization version 2

http://sourceforge.net/p/sharpn/datan/code/HEAD/tree/

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DN activities after SHARPn (1) – Clinical Information Model Initiatives

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DN activities after SHARPn (2) – Open Health Natural Language Processing

(OHNLP)

Use of the Data Normalization information model as the base to define a Common Type System to capture basic clinical information models

Use of the Data Normalization pipeline to improve interoperability of various clinical information models

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DN activities after SHARPn (3) – Clinical decision support and phenotyping

The use of NLP and Big Data for Late Binding Data Normalization

Practical implementation of Late Binding Data Normalization and Drools for real-time clinical decision support