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Introduction to SNOMED
Guru Kini
Overview
What is SNOMED
Applications of SNOMED
Concepts, Hierarchies & Relationships
SNOMED vs. ICD9
Post Co-ordination and Pre Co-ordination
Things to consider before opting for SNOMED
This may be useful for requirement analysts, project managers or software developers
who are faced with implementing SNOMED support in the healthcare related software.
This is not a How-To guide or a detailed technical analysis of SNOMED. However, there
are several useful references in the notes and the slides for these contexts.
Apologies for the heavily bulleted slides
What is SNOMED?

Systemized NOmenclature of MEDicine
It is an organized lists of a wide variety of clinical terminology
defined with unique codes
Perhaps the most comprehensive clinical terminology in the
world
It is older than you think!
Started as early as 1965
Has had several iterations since

Currently used variant: SNOMED Clinical Terms (SNOMED CT)
Provides cross maps to various terminologies such as ICD9,
ICD10 and LOINC
Continued…
What is SNOMED? (contd.)

SNOMED covers a wide no. of medical terminologies for
Disorders and finding (what was observed)
Procedures (what was done)
Event (what happened)
Substance/Medication (what was consumed/administered)
Pretty much anything that may be used to capture Medical
data

SNOMED is designed as an Ontology
Each Concept could have relationships with other Concepts
What is an ontology?
Ontology is a formalized model for particular domain
Consists of 4 basic elements:
Individuals/Objects – an actual, concrete instance of
something that can described as a part of the ontology (viz.,
Angina, Class 1)
Classes – abstract concepts (Procedure, Disease, etc.).
Essentially a “category” for a set of Individuals
Attributes – certain properties associated with a class
Relations – define who certain classes (and objects) are
related to each other

Yes, a class diagram of a program written in an OO
programming language is a visual representation of an
ontology
Where can I find SNOMED codes?

National Library of Medicine’s UMLS is the one stop
shop for SNOMED codes
SNOMED is now freely available for use for U.S. users
It is now maintained by International Health
Terminology Standards Development Organization
(IHTSDO)
Concepts, Hierarchies &
Relationships
A “Concept” is the basic unit in SNOMED
Has a numeric representation (Concept ID), which is assigned arbitrarily
Can represent anything that may have a possible use in recording clinical
information
The same Concept could have several “Synonyms” to accommodate
variations in name. E.g., “Myocardial infarction” could also be called
“Infarction of heart” or just “Heart Attack”

All Concepts are divided in “Hierarchies”
Hierarchies do not overlap
Clinical Finding/Disorder, Procedure, Substance, etc. are all examples
There are some 20+ main hierarchies, more can be added over time

“Relationships” between Concepts can be defined
“Is a” is most common relationship
Other relationships could be defined as “Attributes” of a Concept
Example: using SNOMED
relationships

Disease
Is a type of

Disorder of body site

Is a type of

Legend
Disorder

Synonym

Body
Structure

Disorder of body
system

Is a type of

Is a type of

Disorder of
endocrine system

Disorder of foetus or
newborn

Is a type of

Is a type of

Relation

Diabetes mellitus

Is a type of

Endocrine pancreatic
structure

Found in

Neonatal disorder

Is a type of

Neonatal diabetes
mellitus

AKA

Diabetes mellitus
syndrome in
newborn infant
Top SNOMED Hierarchies
80000

70000
60000
50000
40000

74758

30000
50060

20000

41221
27623

10000

26210

23700

0
Disorder

Procedure

Finding

Organism

Body
Substance
Structure
Disorder vs. Finding
• Disorders and findings often used interchangeably
• “Finding” is a general observation or a judgment of the patient’s
physical, mental or social condition (current or historical). A finding need
not be an “abnormal” state and can be somewhat vague. E.g.:
• Patient complaints/Symptoms (e.g., cough, shivering)
• Lab result observations (e.g., Allergy Skin Test Positive)
• Social setting (e.g., Unsafe play area, Patient’s dependents)

• A “Disorder” or “Disease” is a sub-set of “Finding” concept that are
necessarily abnormal physical or mental conditions for the patient. E.g.:
• Tuberculosis
• Angina, Class I

• A Finding may be the initial diagnosis of the patient’s condition which
may lead to the discovery of a Disorder. E.g.,
• A complaint of Chest pain (Finding) may lead to a final diagnosis of
Angina, Class I (Disorder)
• Bleeding of Gums (Finding) may lead to Hematoma of gingivae (Disorder)
• Cough (Finding) may lead to Tuberculosis (Disorder)
SNOMED vs. ICD
ICD is a relatively ancient code family
Late 19th century roots
ICD9 was developed in 1970s! Even ICD10 is ~30 years old!

ICD is a classification whereas SNOMED is a terminology
ICD tends to be more abstract. With SNOMED the user can get a
more accurate description
ICD9 (or ICD10) tend to have a “unspecified” catch-all slot for
most disorders.

SNOMED is far more extensive than ICD9
ICD only covers disorders

SNOMED is implemented as an ontology
Any number of relationships can be defined for each concept
Continued…
SNOMED vs. ICD (contd.)

SNOMED CT – is better suited for capturing relevant data during an
encounter
Allows the user to capture the various aspects associated with a disorder (Post
Coordination)
This encourages the user to capture associated information like Severity, Body
part affected, Cause (force or substance), laterality (viz., left or right), Morphology
(form) in structured form

ICD9/10 – used in cases where data need not be very granular
Each code is very rigidly defined and does not support qualifiers
Used in Insurance billing, Morbidity recording (death cause etc.), Epidemiological
tracking (public health surveillance)
These use-cases usually can work with a general disease class

Usually, SNOMED CT is considered a good way to enter the medical
information and ICD9/10 is considered a good way to export information
SNOMED CT to ICD9/10 Conversions

Why convert?
Business requirements - e.g., your Billing Clearing house may insist on
ICD9/ICD10
Interoperability – to import CCD/CCR from other sources that use
ICD9/ICD10
Future-proofing – ICD10 may eventually be the de facto standard

SNOMED CT provides cross-mapping with ICD9 and ICD10
terminologies
Since SNOMED CT is much larger in size and because ICD9/10
primarily deal with disorders, only a portion of SNOMEC can be
mapped.
ICD9/ICD10 to SNOMED is mostly 1:1, however SNOMED to
ICD9/ICD10 may have a number of 1:Many mapping
May need user input or context based intelligence to convert
Post Coordination
Post Co-ordination: representing a medical term using two or
more SNOMED concepts. E.g., “Wound in the right hand” could
be coded in parts
Wound (Disorder)
399963005

Found in

Hand (Body
Structure)
302539009

Laterality

Right (Qualifier)
24028007

SNOMED’s ontological structure naturally lends itself to Post Coordination based capturing of data.
However, it can cause confusion as the same concept can be
represented in more than one way! E.g.
Wound in hand
(Disorder)
283059006

Laterality

Right (Qualifier)
24028007

Continued…
Post Coordination (contd.)

ICD9/10 is design to be Pre Co-ordination oriented. That
is, there is usually one unique code for a given medical
term.
It also implies that one cannot capture much of term’s
associative data using ICD9/10 itself

Some of the SNOMED “leaf” concepts are specific enough
to be used as Pre Co-ordinated terms
For any system, Pre- vs Post- arguments essentially deal
with one question: “For capturing a medical term, what do
you need more: uniqueness or granularity”?
Things to consider before implementing
SNOMED CT in your system
Familiarize yourself
Use a SNOMED CT Browser
Look at some existing SNOMED subsets (CORE, VA/KP)

Consider your use-cases
Determine which hierarchies will the system use
(Finding, Procedure, Disorder)
Determine which concepts will the system use (Create a Subset)
Determine when will your system use primitive (generic/vague) and nonprimitive (specific) concepts

Consider your conversion requirements
Look at the UMLS Metathesaurus and see if you can use that instead of
SNOMED

Allow room for updates
SNOMED CT releases updates twice a year
Your system should be able to accept the updates without going out-ofaction
References

http://protege.stanford.edu/publications/ontology_de
velopment/ontology101-noy-mcguinness.html - What
is an Ontology
http://perspectives.ahima.org/a-comparison-betweena-snomed-ct-problem-list-and-the-icd-10-cmpcs-hipaacode-sets/ - Comparing ICD10 and SNOMED CT
http://www.connectingforhealth.nhs.uk/elearning/sn
omedct/flash/ - SNOMED Intro by NHS

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An Introduction to SNOMED CT

  • 2. Overview What is SNOMED Applications of SNOMED Concepts, Hierarchies & Relationships SNOMED vs. ICD9 Post Co-ordination and Pre Co-ordination Things to consider before opting for SNOMED This may be useful for requirement analysts, project managers or software developers who are faced with implementing SNOMED support in the healthcare related software. This is not a How-To guide or a detailed technical analysis of SNOMED. However, there are several useful references in the notes and the slides for these contexts. Apologies for the heavily bulleted slides
  • 3. What is SNOMED? Systemized NOmenclature of MEDicine It is an organized lists of a wide variety of clinical terminology defined with unique codes Perhaps the most comprehensive clinical terminology in the world It is older than you think! Started as early as 1965 Has had several iterations since Currently used variant: SNOMED Clinical Terms (SNOMED CT) Provides cross maps to various terminologies such as ICD9, ICD10 and LOINC Continued…
  • 4. What is SNOMED? (contd.) SNOMED covers a wide no. of medical terminologies for Disorders and finding (what was observed) Procedures (what was done) Event (what happened) Substance/Medication (what was consumed/administered) Pretty much anything that may be used to capture Medical data SNOMED is designed as an Ontology Each Concept could have relationships with other Concepts
  • 5. What is an ontology? Ontology is a formalized model for particular domain Consists of 4 basic elements: Individuals/Objects – an actual, concrete instance of something that can described as a part of the ontology (viz., Angina, Class 1) Classes – abstract concepts (Procedure, Disease, etc.). Essentially a “category” for a set of Individuals Attributes – certain properties associated with a class Relations – define who certain classes (and objects) are related to each other Yes, a class diagram of a program written in an OO programming language is a visual representation of an ontology
  • 6. Where can I find SNOMED codes? National Library of Medicine’s UMLS is the one stop shop for SNOMED codes SNOMED is now freely available for use for U.S. users It is now maintained by International Health Terminology Standards Development Organization (IHTSDO)
  • 7. Concepts, Hierarchies & Relationships A “Concept” is the basic unit in SNOMED Has a numeric representation (Concept ID), which is assigned arbitrarily Can represent anything that may have a possible use in recording clinical information The same Concept could have several “Synonyms” to accommodate variations in name. E.g., “Myocardial infarction” could also be called “Infarction of heart” or just “Heart Attack” All Concepts are divided in “Hierarchies” Hierarchies do not overlap Clinical Finding/Disorder, Procedure, Substance, etc. are all examples There are some 20+ main hierarchies, more can be added over time “Relationships” between Concepts can be defined “Is a” is most common relationship Other relationships could be defined as “Attributes” of a Concept
  • 8. Example: using SNOMED relationships Disease Is a type of Disorder of body site Is a type of Legend Disorder Synonym Body Structure Disorder of body system Is a type of Is a type of Disorder of endocrine system Disorder of foetus or newborn Is a type of Is a type of Relation Diabetes mellitus Is a type of Endocrine pancreatic structure Found in Neonatal disorder Is a type of Neonatal diabetes mellitus AKA Diabetes mellitus syndrome in newborn infant
  • 10. Disorder vs. Finding • Disorders and findings often used interchangeably • “Finding” is a general observation or a judgment of the patient’s physical, mental or social condition (current or historical). A finding need not be an “abnormal” state and can be somewhat vague. E.g.: • Patient complaints/Symptoms (e.g., cough, shivering) • Lab result observations (e.g., Allergy Skin Test Positive) • Social setting (e.g., Unsafe play area, Patient’s dependents) • A “Disorder” or “Disease” is a sub-set of “Finding” concept that are necessarily abnormal physical or mental conditions for the patient. E.g.: • Tuberculosis • Angina, Class I • A Finding may be the initial diagnosis of the patient’s condition which may lead to the discovery of a Disorder. E.g., • A complaint of Chest pain (Finding) may lead to a final diagnosis of Angina, Class I (Disorder) • Bleeding of Gums (Finding) may lead to Hematoma of gingivae (Disorder) • Cough (Finding) may lead to Tuberculosis (Disorder)
  • 11. SNOMED vs. ICD ICD is a relatively ancient code family Late 19th century roots ICD9 was developed in 1970s! Even ICD10 is ~30 years old! ICD is a classification whereas SNOMED is a terminology ICD tends to be more abstract. With SNOMED the user can get a more accurate description ICD9 (or ICD10) tend to have a “unspecified” catch-all slot for most disorders. SNOMED is far more extensive than ICD9 ICD only covers disorders SNOMED is implemented as an ontology Any number of relationships can be defined for each concept Continued…
  • 12. SNOMED vs. ICD (contd.) SNOMED CT – is better suited for capturing relevant data during an encounter Allows the user to capture the various aspects associated with a disorder (Post Coordination) This encourages the user to capture associated information like Severity, Body part affected, Cause (force or substance), laterality (viz., left or right), Morphology (form) in structured form ICD9/10 – used in cases where data need not be very granular Each code is very rigidly defined and does not support qualifiers Used in Insurance billing, Morbidity recording (death cause etc.), Epidemiological tracking (public health surveillance) These use-cases usually can work with a general disease class Usually, SNOMED CT is considered a good way to enter the medical information and ICD9/10 is considered a good way to export information
  • 13. SNOMED CT to ICD9/10 Conversions Why convert? Business requirements - e.g., your Billing Clearing house may insist on ICD9/ICD10 Interoperability – to import CCD/CCR from other sources that use ICD9/ICD10 Future-proofing – ICD10 may eventually be the de facto standard SNOMED CT provides cross-mapping with ICD9 and ICD10 terminologies Since SNOMED CT is much larger in size and because ICD9/10 primarily deal with disorders, only a portion of SNOMEC can be mapped. ICD9/ICD10 to SNOMED is mostly 1:1, however SNOMED to ICD9/ICD10 may have a number of 1:Many mapping May need user input or context based intelligence to convert
  • 14. Post Coordination Post Co-ordination: representing a medical term using two or more SNOMED concepts. E.g., “Wound in the right hand” could be coded in parts Wound (Disorder) 399963005 Found in Hand (Body Structure) 302539009 Laterality Right (Qualifier) 24028007 SNOMED’s ontological structure naturally lends itself to Post Coordination based capturing of data. However, it can cause confusion as the same concept can be represented in more than one way! E.g. Wound in hand (Disorder) 283059006 Laterality Right (Qualifier) 24028007 Continued…
  • 15. Post Coordination (contd.) ICD9/10 is design to be Pre Co-ordination oriented. That is, there is usually one unique code for a given medical term. It also implies that one cannot capture much of term’s associative data using ICD9/10 itself Some of the SNOMED “leaf” concepts are specific enough to be used as Pre Co-ordinated terms For any system, Pre- vs Post- arguments essentially deal with one question: “For capturing a medical term, what do you need more: uniqueness or granularity”?
  • 16. Things to consider before implementing SNOMED CT in your system Familiarize yourself Use a SNOMED CT Browser Look at some existing SNOMED subsets (CORE, VA/KP) Consider your use-cases Determine which hierarchies will the system use (Finding, Procedure, Disorder) Determine which concepts will the system use (Create a Subset) Determine when will your system use primitive (generic/vague) and nonprimitive (specific) concepts Consider your conversion requirements Look at the UMLS Metathesaurus and see if you can use that instead of SNOMED Allow room for updates SNOMED CT releases updates twice a year Your system should be able to accept the updates without going out-ofaction
  • 17. References http://protege.stanford.edu/publications/ontology_de velopment/ontology101-noy-mcguinness.html - What is an Ontology http://perspectives.ahima.org/a-comparison-betweena-snomed-ct-problem-list-and-the-icd-10-cmpcs-hipaacode-sets/ - Comparing ICD10 and SNOMED CT http://www.connectingforhealth.nhs.uk/elearning/sn omedct/flash/ - SNOMED Intro by NHS

Notas do Editor

  1. http://clinithink.com/blog/understanding-snomed-ct-the-what-and-why/ - Classification v/s terminology
  2. The SNOMED ID is just a number – one cannot deduce anything from it. ICD9 and ICD10 codes, on the other hand, can give away some hints on what do they represent. Interestingly, Relationships are also defined as SNOMED Concepts (under the “attribute” hierarchy)Through SNOMED relationships, a machine based system can pick up a large number of attributes about a Concept e.g., how is a disease transmitted, what the associated disorders, episodicity, what body parts can it effect, etc.
  3. Most systems that use SNOMED, use it to capture Disorders, Findings and Procedures. SNOMED is now the chosen code family for capturing Problems/Diagnoses in Meaningful Use Stage II complianceBody Structure is an useful list of entries as well to define the various parts of the body
  4. Example, Insurance billing or Public Health Surveillance may not need to know which of the 2 kidneys was the patient’s stone discovered. However, the physician may need to know this
  5. More information on pre- and post- coordination“Principles of Health Interoperability Hl7 and Snomed” by Tim Benson, 2nd edition, 2012. Published by Springerhttp://clinithink.com/blog/understanding-snomed-ct-the-what-and-why/ http://www.clinicalarchitecture.com/blog/clinical-architecture-healthcare-it-blog/february-2013/informatics-lingo-pre-and-post-coordinated-terms/http://www.ihtsdo.org/fileadmin/user_upload/doc/showcase/show13/SnomedCtShowcase2013_Slides24.pdf - describes usage of post-co
  6. Although more granular way of representing a medical term allows the system to capture a lot of ancillary data in a structured manner, storing, retrieving and exporting such data is not always straightforward because of the various ways in which the same term can be presented. Pre Co-ordinated concepts very uniquely identify a particular medical term, but this automatically causes the concepts to proliferate and doesn’t allow additional data to be captured.
  7. SNOMED allows you to create sub-sets of concepts that your system will be most likely will use. There are already some sub-sets pre-defined and available by various organizations. For example: http://termrequest.connectingforhealth.nhs.uk/registry/subset/view-all-subsets SNOMED CT Core Subset, created by NLM, is a list of most commonly used concepts (Findings, Procedures, Events, etc.). This serves as a good starting point for most implementations and may actually be sufficient in most cases. http://www.nlm.nih.gov/research/umls/Snomed/core_subset.html