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Knowledge management in context:
Implications for clinical pathologists
Dr Glenn Edwards
glenn.edwards@sjog.org.au
Disclosures
Former shareholder, CEO, Medical Director of Pacific Knowledge Systems
Ad hoc Abbott Diagnostics consultancy
Uluru ’93
• Key issues
– Most evidence for process outcomes
– Remaining challenges
• Demonstrate impact on outcomes, cost, users
• Means to augment uptake and effectiveness
• Integration into workflow
• Deployment across diverse settings
• Transformation role
• “Broad penetration of CDSS will require aggressively seeking a
better understanding of what the right information is and
when and how it should be delivered to the right person..”
Impact of CDSS: 2012 systematic review
(Bright et al Ann Int Med 2012;157(1):29)
Runciman et al MJA 197 (2) · 16 July 2012
BNP use /1000 patients / PCT
Still extremely low use
in many areas:
•Excess costs
•Poor patient
experience
•Failure to adopt
innovation
Map from Atlas of Variation
UK standards for authorisation and reportingUK standards for authorisation and reporting
• Comment on all reports: 5%
• 42% no policy
• 31% consider highlighting “abnormals” to
constitute an interpretation of the result
Prinsloo P. & Gray T. Ann Clin Biochem 2003;40:149-55
8
How would you interpret theseHow would you interpret these
results?results?
39 year old female
Cholesterol 5.1 mmol/L
Triglyceride 3.5 mmol/L *
HDL cholesterol 0.9 mmol/L *
LDL cholesterol 2.6 mmol/L
“Canned” text comments
• LDL calculation formula
• Assay methods
• Interpretation
– “Common causes of hyperlipidaemia include…”
• Advice
– “See www.cvdcheck.org.au to calculate risk…”
Context-specific opinion
“Dyslipidaemic pattern. Note previous results
indicating poorly controlled diabetes mellitus,
which likely accounts for the lipid disorder.
Suggest review glycaemic control (HbA1c to
follow) and check urine ACR, which is now
overdue. Monitor lipid response to intensified
management. Note current statin therapy may
be insufficient.”
Tools to manage context
• Conventional LIS rules/middleware
• Expert systems
– Rules
– Case-based rules
• Ripple down rules
• Artificial intelligence
– Machine learning
– Other ?
Familial Hypercholesterolaemia
Maternal grandmother
-South African
-died at age 50
Aunt
-died at age 50
(heart attack)
Aunt
-died at age 60 (heart
attack) high
cholesterol
Uncle
-died at age 50
(heart attack)
-died at age 50
(heart attack)
-had a bypass
-by age 38
2x bypasses
2x heart attacks
-died age 40
2x bypasses
Heart attack
-by age 48
4x bypasses
-age 26
High cholesterol
-age 28
High cholesterol
-by age 46
High cholesterol
3x bypasses
Ms. D (38)
High
cholesterol
(9.2 mmol/L)
High
cholesterol
DNA testing at PathWest,
RPH, mutation detected
Impact of Pathologists’ advice on LDL
cholesterol levels
Bell DA et al Clin Chim Acta 2013;422:21-25
Interpretative
comment
Control Significance
Number of individuals 96 100
Repeat LDL-cholesterol
Number (%)
63
(71%)
70
(70%)
NS
Mean reduction in LDL-
cholesterol (mmol/L)
3.0 2.3 p<0.005
Specialist referral
(whole group)
4
(4%)
1
(1%)
p=0.20
Specifically suggesting
referral in interpretative
comment.
3
26 individuals
(11.5%)
1
(1%)
p<0.05
Impact of context-sensitive interventions
Prospective case control study
• Context-specific intervention to improve specialist
referral for at-risk patients
• Significant benefit
– Controls 8/96 (8%) vs Cases 24/135 (18%) were referred
following pathologist advice
• First prospective case-control study to demonstrate
a positive benefit of pathologist report interpretation
R. Bender et al Pathology 2016;48(5):463
Incremental knowledge acquisition
Rules built per day
0
10
20
30
40
50
60
13/10/2009
27/10/2009
10/11/2009
24/11/2009
8/12/2009
22/12/2009
5/01/2010
19/01/2010
2/02/2010
16/02/2010
2/03/2010
16/03/2010
30/03/2010
13/04/2010
27/04/2010
Auto-validation
Eugenio H. Zabaleta, Ph.D.
MedCentral Health System, OH
Validation of knowledge-based
systems
Canned comments:
Simple knowledge models
IF Triglyceride is HIGH
AND HDL is LOW
AND LDL-C < 2.5
THEN “Common causes of dyslipidaemic pattern include….”
Rules: 1
Conditions: 3
Validation: Straightforward
Value: Low
Validation trade-off
• Conventional KBS : pre-implementation testing and
validation.
– Presumes final, complete knowledge base
– Reliant on knowledge engineers and formal, resource-
intensive methods
• Context-specific KBS (Rippledown)
– Early deployment and incremental knowledge acquisition
– Accelerated buy-in and uptake
– Pathologist validation provides ongoing exposure to
thousands of valid, real-world cases
– Far more extensive validation than formal methods
– No formal validation methodology
Free text analysis in clinical
decision support systems
Free text analysis in CDS
D. Sittig et al J Biomed Inform 2008;41:387
•Free text (Challenge #9 of “10 grand challenges”)
•> 50% of key information resides in the free text
portions of the EHR
•We need methods for accessing and reasoning with
free text
•=> enable more specific CDS interventions
– highly tailored alerts and reminders,
– even condition-specific or patient specific order sets
Natural Language Processing
• Named Entity Recogniser (NER)
– Eg: Mayo system (cTAKES) J Am Med Inform Assoc
2010;17:507)
• Issues
– Conflicts
– Training sets
– Informality of language (eg Web vs journalistic articles)
– Situated context
• NER + RDR wrapper
– Improves Web document analysis
Situated context
• What is the meaning of this:
“Diabetes check”
• Context 1
–HbA1c used for monitoring known diabetes
• Context 2
–New reimbursement item:
–HbA1c used for diagnosis of diabetes
CLN August 2014
Value
• What do stakeholders want?
– Doctors, Patients, Community
– Payers
• Current model is not sustainable
– Reactive
– Raw test results
• We need to demonstrate, and articulate, the value of
pathology (clinical, financial)
And..
• Design and build Pathology 2.0
St John et al Clinical Biochemistry 2015;48:823
A call for a value based approach to laboratory medicine funding
Knowledge management in context:
Implications for clinical pathologists
Dr Glenn Edwards
glenn.edwards@sjog.org.au

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Knowledge management in context: Implications for clinical pathologists by Dr Glenn Edwards

  • 1. Knowledge management in context: Implications for clinical pathologists Dr Glenn Edwards glenn.edwards@sjog.org.au Disclosures Former shareholder, CEO, Medical Director of Pacific Knowledge Systems Ad hoc Abbott Diagnostics consultancy
  • 3. • Key issues – Most evidence for process outcomes – Remaining challenges • Demonstrate impact on outcomes, cost, users • Means to augment uptake and effectiveness • Integration into workflow • Deployment across diverse settings • Transformation role • “Broad penetration of CDSS will require aggressively seeking a better understanding of what the right information is and when and how it should be delivered to the right person..” Impact of CDSS: 2012 systematic review (Bright et al Ann Int Med 2012;157(1):29)
  • 4. Runciman et al MJA 197 (2) · 16 July 2012
  • 5. BNP use /1000 patients / PCT Still extremely low use in many areas: •Excess costs •Poor patient experience •Failure to adopt innovation Map from Atlas of Variation
  • 6.
  • 7. UK standards for authorisation and reportingUK standards for authorisation and reporting • Comment on all reports: 5% • 42% no policy • 31% consider highlighting “abnormals” to constitute an interpretation of the result Prinsloo P. & Gray T. Ann Clin Biochem 2003;40:149-55
  • 8. 8 How would you interpret theseHow would you interpret these results?results? 39 year old female Cholesterol 5.1 mmol/L Triglyceride 3.5 mmol/L * HDL cholesterol 0.9 mmol/L * LDL cholesterol 2.6 mmol/L
  • 9. “Canned” text comments • LDL calculation formula • Assay methods • Interpretation – “Common causes of hyperlipidaemia include…” • Advice – “See www.cvdcheck.org.au to calculate risk…”
  • 10. Context-specific opinion “Dyslipidaemic pattern. Note previous results indicating poorly controlled diabetes mellitus, which likely accounts for the lipid disorder. Suggest review glycaemic control (HbA1c to follow) and check urine ACR, which is now overdue. Monitor lipid response to intensified management. Note current statin therapy may be insufficient.”
  • 11. Tools to manage context • Conventional LIS rules/middleware • Expert systems – Rules – Case-based rules • Ripple down rules • Artificial intelligence – Machine learning – Other ?
  • 12. Familial Hypercholesterolaemia Maternal grandmother -South African -died at age 50 Aunt -died at age 50 (heart attack) Aunt -died at age 60 (heart attack) high cholesterol Uncle -died at age 50 (heart attack) -died at age 50 (heart attack) -had a bypass -by age 38 2x bypasses 2x heart attacks -died age 40 2x bypasses Heart attack -by age 48 4x bypasses -age 26 High cholesterol -age 28 High cholesterol -by age 46 High cholesterol 3x bypasses Ms. D (38) High cholesterol (9.2 mmol/L) High cholesterol DNA testing at PathWest, RPH, mutation detected
  • 13. Impact of Pathologists’ advice on LDL cholesterol levels Bell DA et al Clin Chim Acta 2013;422:21-25 Interpretative comment Control Significance Number of individuals 96 100 Repeat LDL-cholesterol Number (%) 63 (71%) 70 (70%) NS Mean reduction in LDL- cholesterol (mmol/L) 3.0 2.3 p<0.005 Specialist referral (whole group) 4 (4%) 1 (1%) p=0.20 Specifically suggesting referral in interpretative comment. 3 26 individuals (11.5%) 1 (1%) p<0.05
  • 14. Impact of context-sensitive interventions Prospective case control study • Context-specific intervention to improve specialist referral for at-risk patients • Significant benefit – Controls 8/96 (8%) vs Cases 24/135 (18%) were referred following pathologist advice • First prospective case-control study to demonstrate a positive benefit of pathologist report interpretation R. Bender et al Pathology 2016;48(5):463
  • 15. Incremental knowledge acquisition Rules built per day 0 10 20 30 40 50 60 13/10/2009 27/10/2009 10/11/2009 24/11/2009 8/12/2009 22/12/2009 5/01/2010 19/01/2010 2/02/2010 16/02/2010 2/03/2010 16/03/2010 30/03/2010 13/04/2010 27/04/2010
  • 17. Eugenio H. Zabaleta, Ph.D. MedCentral Health System, OH
  • 18.
  • 19.
  • 21. Canned comments: Simple knowledge models IF Triglyceride is HIGH AND HDL is LOW AND LDL-C < 2.5 THEN “Common causes of dyslipidaemic pattern include….” Rules: 1 Conditions: 3 Validation: Straightforward Value: Low
  • 22.
  • 23. Validation trade-off • Conventional KBS : pre-implementation testing and validation. – Presumes final, complete knowledge base – Reliant on knowledge engineers and formal, resource- intensive methods • Context-specific KBS (Rippledown) – Early deployment and incremental knowledge acquisition – Accelerated buy-in and uptake – Pathologist validation provides ongoing exposure to thousands of valid, real-world cases – Far more extensive validation than formal methods – No formal validation methodology
  • 24. Free text analysis in clinical decision support systems
  • 25. Free text analysis in CDS D. Sittig et al J Biomed Inform 2008;41:387 •Free text (Challenge #9 of “10 grand challenges”) •> 50% of key information resides in the free text portions of the EHR •We need methods for accessing and reasoning with free text •=> enable more specific CDS interventions – highly tailored alerts and reminders, – even condition-specific or patient specific order sets
  • 26.
  • 27. Natural Language Processing • Named Entity Recogniser (NER) – Eg: Mayo system (cTAKES) J Am Med Inform Assoc 2010;17:507) • Issues – Conflicts – Training sets – Informality of language (eg Web vs journalistic articles) – Situated context • NER + RDR wrapper – Improves Web document analysis
  • 28. Situated context • What is the meaning of this: “Diabetes check” • Context 1 –HbA1c used for monitoring known diabetes • Context 2 –New reimbursement item: –HbA1c used for diagnosis of diabetes
  • 30. Value • What do stakeholders want? – Doctors, Patients, Community – Payers • Current model is not sustainable – Reactive – Raw test results • We need to demonstrate, and articulate, the value of pathology (clinical, financial) And.. • Design and build Pathology 2.0 St John et al Clinical Biochemistry 2015;48:823 A call for a value based approach to laboratory medicine funding
  • 31. Knowledge management in context: Implications for clinical pathologists Dr Glenn Edwards glenn.edwards@sjog.org.au

Notes de l'éditeur

  1. One point to make – data from Rick Jones, Map from Atlas of Variation: Same source of data with repeat measures allows uptake of innovation to be monitored and displayed goegraphically.