Title: The DNA of Technology for Chronic Disease Management
1The DNA of Technology forChronic Disease
Management
- David J. Morin CEO and Co-Founder
- Cielo MedSolutions LLC
2What I Will Cover
- Elements to consider when evaluating technology
for chronic disease management
3The Goal of Technology
- A lot has been said about technology and chronic
disease management (CDM) /quality improvement
(QI) - But the goal isnt the implementation of
technologies per se - It is high-quality, patient-centered care
- The technology is the catalyst it is what you
can organize around and through which you can
enable change
4On the Road to QI
- If improved quality of care is your journey,
think of
- Your technology as your vehicle (the enabler)
- Your care data as the vehicles dashboard (what
you are managing) - CDM/QI programs as a road map (how you get there)
5Technical Components
- Disease management can be enabled through tools
like - Electronic health records
- Disease registries
- Clinical decision support
- Through functionality like
- Care reminders at the point of care
- Population management functionality to reach due
patients - Performance feedback reports to monitor care
delivery - Patient education reports
- But, you need the right underlying elements
within the technology for success
6The Technology DNA
- Correct and complete information.
- For all your patients and patient problems
- Collected, presented and delivered effectively.
- Giving everyone the right information and tools
to drive care improvement (including the
patient) - Easily implemented, adoptable in bites.
- And adaptable to future needs.
7Correct and Complete Information
- Phillips and Klinkman1 say your data must answer
- Who has ________ ? disease registries
- the basis for point-of-care decision support and
quality assessment - Who gets ________ ? the probability of specific
diagnoses from common presenting symptoms - basic clinical epidemiology in primary care
- requires episodes of care
- What is the context in which the care is
provided? - competing demands, social problems, patient goals
and priorities - multimorbidity
- What happened out there?
- track care across settings primary to specialty
care, office to hospital
8A Data Model
- Phillips and Klinkman refer to a primary care
information model simple building blocks to
capture complex reality1
9Correct and Complete Information
- Make sure your data is telling you whats really
going on - Administrative diagnosis data has issues when
used for clinical documentation and decision
support - 50 inaccuracy in administrative data (Jollis, et
al, 1993)2 - 43 inaccuracy in administrative data (Peabody,
Medical Care, 2004)3 - Billing and reimbursement coding mindset
restricts improvement activities (Langley J.,
Beasley C. 2007)4 - ICD-9 limited in fit for primary care
- 45 of presenting problems dont fit (White,
1969)5 - ICD-9-CM captures considerably less than half of
the information considered important (Chute, C.
1995)6 - Lack of documentation regarding severity
10Correct and CompleteInformation
- ICD-10
- 155,000 terms still not 100 coverage
- SNOMED-CT
- Over 344,000 concepts too much?
- ICPC - International Classification of Primary
Care - 95 fit to primary care with specificity
- Symptom and social problem diagnoses
- ENCODE
- 10,000 primary care clinical terms
- Chronic, acute, family history, social problem,
symptom - Mapped to ICD-9, ICD-10, ICPC
11Correct and Complete Information
- Capture all patient problems
- Manage to the patient, not to the disease
- Be organized by patient not disease, but
responsive to disease populations (Austin, 2007)
7 - Registry of the Day not a really good idea
- Expensive, time-consuming, slows benefit
- Results in silos of data (this is not your goal)
- Capture both billable and non-billable diagnoses
- Know the source of the data
- attribution, administrative or self-reported
12Correct and Complete Information
- Know where the patient is relative to the care
they need - must have context
- a response to a reminder for an evidence-based
guideline is, in many cases, not a binary
response (Y/N) - you aint done till youre done
13Correct and Complete Information
- Examples
- Colorectal cancer screening many times the
first occurrence of this reminder leads to a
discussion on the options on this screening.
Patient usually goes home to decide and screen is
ordered after a 2nd discussion. - Reminder is flagged discussed on first visit,
ordered on second visit. Only when the
screening is completed is guideline considered
done. - A1C evaluation usually the patient is given a
lab requisition to have blood drawn and tested at
a later date. - Reminder is flagged ordered on first visit.
Only when a result from the test is returned is
guideline considered done.
14Collected, Presented and Delivered Effectively
- All patient encounters must utilize the
technology - If not all-patient, will not become routine in
care delivery, adoption will suffer - Presenting information has to be simple and fit
into the existing workflow - Shellhase (2003)8 found that 75 of physicians
using an EHR ignored or did not observe flashing
reminders for preventive services - How many clicks and/or screens to get to the info
you need?
15Collected, Presented and Delivered Effectively
- Inaccurate or untimely information will lead to
frustration and adoption will suffer - Examples with regards to reminders
- Prompt for A1C, but patient had already been
given lab req. - Prompt for pap smear, but it is not due for six
months - Lack of comorbidity data, wrong evidence-based
guideline presented (like diabetes and renal
disease vs. diabetes) - Prompt for mammogram, but mammogram already
delivered
16Collected, Presented and Delivered Effectively
- Care reminders must take into account the correct
variables - Examples include
17Delivering Actionable Data to Improve Care
- Just reporting a score, good
- Reporting such that you can increase your score
(and increase quality), priceless - You must have at your fingertips timely,
accurate, actionable and forward-looking data to
continually drive improvement across the
population - A care report should help you to DO something
18Want This Type of Report?
19How About This Type of Report?
20Or This Type of Report?
21Reporting
- A good reporting module should
- be the front windshield, not the rearview
mirror - give you access to your data
- allow you to monitor the population but action
the individual - provide an easy way to modify and configure
- enable analysis differently than how data is
collected - data collection to the guideline reporting to
the quality program
22Giving the Entire Care Team the Right Tools to
Drive Improvement
- Physician-directed primary care team managing
patient care - Your technology should support a Team Sport
concept - Everyone in a practice has a role in improving
care quality - Everyone in a practice should have tools to
improve care quality - Reporting and actionable data provides that
- Some examples
- Pre-visit planning
- Patient outreach
- Data sharing
23Giving the Patient Simple and Effective Tools to
Participate
- Patient Health Summary/Care Plan
- Individualized document showing patients status
on key indicators and needs - List of future needed services with dates
- In simple language, no guess work
- Personal Health Record (PHR) patients
electronic file of health data - This sounds easy, but in reality is tough to fit
into workflow - Which PHR will you support? - Over 100 efforts
underway to build a PHR - How are you going to access it?
- Do you want outside devices plugged into your
network? - What if it isnt simple to get the information?
- Can you trust the information it? - Whats the
source?
24Adaptable to Future Needs
- Dont implement technology to support todays
needs, implement technology to support both
todays and tomorrows needs - All-problem, all-patient registry as new
quality programs emerge, an all-problem,
all-patient registry supports them on-the-fly - Use of a simple data model a database that is
easy to understand and query is one that is easy
to write reports against. A database with 100s
of tables is very difficult to use for report
writing (and very expensive)
25Adaptable to Future Needs
- Support of data sharing standards your
technology must be able to both send and receive
data to other systems and entities - Table-based versus programming-based decision
support engine adoption of new guidelines can
be done in a matter of hours
26Adoptable in Bites
- Keep it simple! (aka dumb it down)
- Go after this in a phased approach
- Start with something simple that will provide a
win and is easily implemented - Rollout new pieces in phases
- Make sure all stakeholders have buy-in and a
voice in design and rollout - Keep each phase manageable, well-defined and
focused - Over-communicate and get at fears right away
27In Summary
- Technology is a tool to help with your chronic
disease management/quality improvement program - When evaluating technology, focus on its DNA as
much as usability and features - Keep things simple, easy and effective
- Ensure you are buying for both today and the
future - It will work! It will improve care delivery! It
will have a positive return on investment!
28References
- 1 Phillips R, Klinkman M. Health IT to Support
the Patient-Centered Medical Home
www.ncvhs.hhs.gov/071127p1.pdf - 2 Jollis JG, Ancukiewicz M, DeLong ER, Pryor DB,
Muhlbaier LH, Mark DB. Discordance of Databases
Designed for Claims Payout versus Clinical
Information Systems Implications for Outcomes
Research Ann Intern Med. 1993 Oct
15119(8)844-50. - 3 Peabody JW, Luck J, Jain S, Bertenthal D,
Glassman P. Assessing the Accuracy of
Administrative Data in Health Information
Systems Med Care. 2004 Nov42(11)1066-72. - 4 Langley J, Beasley C. Health Information
Technology for Improving Quality of Care in
Primary Care Settings. Preparted by the
Institute for Healthcare Improvement for the
National Opinion Research Center under contract
No. 290-04-0016. AHRQ Publication 07-0079-EF.
Rockville, MD Agency for Healthcare Research and
Quality. July 2007 - http//healthit.ahrq.gov/portal/server.pt/gateway/
PTARGS_0_1248_661809_0_0_18/AHRQ_HIT_Primary_Care_
July07.pdf
29References
- 5 White K. Improved Medical Care Statistics and
the Health Services System Public Health Reports
Vol. 82, No. 10, October 1967 - 6 Chute C. Moving Toward International
Standards in Primary Care Informatics.
www.ahrq.gov/research/pcinform/dept3.htm
November 1995 - 7 Austin B. A Tour of the Model Clinical
Information Systems and Decision Support. Dec
10 2007. www.improvingchroniccare.org/downloads/re
designing_chronic_illness_care__the_ccm.ppt - 8 Schellhase KG, Koepsell TD, Norris TE.
Providers' reactions to an automated health
maintenance reminder system incorporated into the
patient's electronic medical record J Am Board
Fam Pract. 2003 Jul-Aug16(4)350-1.