Title: Clinical Decision Support Systems: Current Trends, Emerging Paradigms
1Clinical Decision Support Systems Current
Trends, Emerging Paradigms
- Leong Tze Yun, PhD
- Medical Computing Laboratory
- School of Computing
- National University of Singapore
2What is Clinical Decision Support?
- To provide the right information, in the right
format, to the right person, at the right place,
and at the right time to improve health care
decisions and outcomes - To facilitate decisions about risk, diagnosis,
therapy, and follow-up in patient care - Clinical practice is clinical decision making!
3Clinical Decision Support Systems
The input Experts domain knowledge, Information
from literature, databases
The output Clear Insights, Smart
choices, Better outcomes
The engine Networked, distributed
systems Advanced modeling and analysis
tools Multiple interfaces GUIs, system
interfaces, web interfaces
4Common Tools and Applications
- Clinical workflow tools
- Document templates
- Data and imaging reports and dashboards
- Computerized alerts and reminders
- Risk indices
- Diagnostic advices and critiques
- Clinical guidelines
5Current Trends
- Global mandate on reducing errors, improving
quality, and lowering cost in health care - Reports from Institute of Medicine (1999, 2001)
- 58th World Health Assembly (WHA) eHealth
Resolution (2005) - Toward personalized medicine
- Integrating clinical, imaging, genomic,
molecular, socio-economic information to improve
healthcare outcomes - Clinical decision support (CDS)
- No longer a why question, but how to put into
practice? - Major global CDS initiatives
- US, Asian, Australian, European initiatives
6Some US Initiatives
- Biomedical informatics for clinical decision
support A vision for the 21st century (2004) - National Institute of Health Bioengineering
Consortium and Biomedical Information Science and
Technology Initiative Consortium (NIH
BECON/BISTIC) Symposium - CDS Implementers Workbook (2004, 2005)
- Healthcare Information and Management Systems
Society - A Roadmap for National Action on CDS (2006)
- American Medical Informatics Association
7Some Global Initiatives
- Singapore Innovative Healthcare IT Strategic
Plans - Electronic medical records exchange (2003 - )
- Innovation in health care IT (2006 - )
- Hong Kong eHealth Consortium
- IT in private practice report (2007)
- E-Health Forum (2006)
- Asia Pacific Medical Informatics Association
- Decision Support working group to develop action
plan in 2007 - Australian National Institute of Clinical Studies
strategic plan 2005-2008 - Electronic decision support systems action
planning report 2004 - The European Union e-Health initiative i2010
8Common Issues
- How to avoid re-inventing the wheel?
- How to get all stakeholders healthcare
institutions, researchers, industries to work
together? - How to develop or deploy all the relevant
technologies and applications for supporting
important clinical decisions? - How to demonstrate feasibility with small-scale
pilot projects that can generalize or port to
other settings?
9Changing Views
- Previously - technology centric view
- How to solve a technical problem accurately?
- Now socio-technical view
- How to support a clinicians workflow tasks
efficiently? - Emerging patient centric view
- How to manage a patients conditions and
preferences cost-effectively? -
10Key Idea
- Clinical decision support must
cost-effectively address
patients conditions and preferences, clinicians
workflow, and technical
challenges
11Emerging Paradigms
- National and regional infrastructure
- Interoperable standards
- Sharable tools and interfaces
- Regulatory and evaluation protocols
- Broad-based education and training
- Solution based technology architecture
- Open source working alongside proprietary systems
- Advanced computational and communication
technologies - Clinical, research, and industrial collaboration
12Open Source in Health Care
- Open health care standards
- HL7, DICOM, etc.
- Working groups, consortiums and active projects
- AMIA and IMIA Open Source Working Groups
- The Linux Mednews, Openclinical
- EMRs, clinical research, trials, imaging, master
patient index - Potential business models
- Goulde, M., Brown, E. Open Source Software A
Primer for Health Care Leaders. Report by
Forrester Research. Mar 2006. - Weinberg, B. Opinion Open-source can stretch IT
health care dollars. Computerworld Software.
September 26, 2006 - Open Research Collaboration programs and
conferences - IBM, US universities - Open Research
Collaboration Principle, 2006 - The Linux Foundation Healthcare Day, 2006, AMIA
OS Workshop 2007
13CDS Technology Continuum
Basic
Advanced
Information Access
Guided Choices
Knowledge- Based Prompting
Understanding Clinical
Practice
Passive Visualization
Passive Choices
Active Messages
Todays Technology
Reference HIMSS 2001
14New Enabling Technologies
- Hybrid techniques to support analytic tasks
- Data mining, diagnosis, prediction, optimization,
discrimination - Modeling and analytic models, machine learning
techniques - New modeling, analytic, and learning algorithms
- Probabilistic graphical networks
- Natural language processing
- Image-based reasoning
- Emerging general technological platforms
- Mobile and ubiquitous computing
- Business intelligence systems
- User modeling
- Systematic evaluation approaches
- Technical, legal, ethical issues
15Opportunities and Promises
- Global mandate to improve quality and reduce cost
- Clinical decision support is a necessity, not a
myth! - Emergence of interoperable standards and open
collaboration models - Introduce next-generation decision support
capabilities based on common infrastructure and
open collaboration - Development of integrative, evidence-adaptive
CDSSs - Mobile and other communication technologies to
support practice of cost-effective,
evidence-based medicine - New modeling, analytic, and learning technologies
incrementally incorporated to enhance
effectiveness
16The Ultimate Goal!
- The very concept of a decision support system
itself will fade away, as intelligent assistants
that can enhance the judgment of healthcare
workers blend into the infrastructure of
healthcare delivery. - Automated decision support will take place with
every practitioners routine access to clinical
data in a manner that is unobtrusive,
transparent, and tailored to the specific patient
situation. - Source Musen et al. Clinical Decision Support
Systems, in Shortliffe and Cimino, eds.,
Biomedical Informatics, 3rd ed., Springer, 2006
17Thank you!
- Contact information
- leongty_at_comp.nus.edu.sg
-
18References
- (2004). "Electronic decision support systems
action planning report." National Institute of
Clinical Studies. Retrieved January 2007, From
http//www.nicsl.com.au/asp/index.asp?pagemateria
ls/materials_subject_articlecid5212id409. - (2005). "Biomedical Informatics for Clinical
Decision Support A Vision for he 21st Century."
NIH BECON/BISTIC Symposium (BB2004) Symposium
Final Report. Retrieved 2007, From
http//www.becon.nih.gov/symposia_2004/becon2004_f
inal_report.pdf. - (2005). "World Health Organization eHealth
Resolution." 58th World Health Assembly,
Resolution 28. From http//www.who.int/gb/ee_wha58
.html. - Berlin, A., M. Sorani, et al. (2006). "A
taxonomic description of computer-based clinical
decision support systems." J.of Biomedical
Informatics 39(6) 656-667. - Goulde, M. and E. Brown. (2006). "Open Source
Software A Primer for Health Care Leaders.
Report by Forrester Research." California
Healthcare Foundation. From http//www.chcf.org/to
pics/view.cfm?itemID119091.
19References
- Musen, M. A., Y. Shahar, et al. (2006). Clinical
Decision-Support Systems. Biomedical Informatics
Computer Applications in Health Care and
Biomedicine. Shortliffe Edward H. and James J.
Cimino, Springer 698-736. - NEDST (2003). Electronic decision support for
Australias health sector. Canberra, Australian
Government Department of Health and Ageing.
Retrieved January 2007, From http//www.health.gov
.au/ - Osheroff, J. A., E. A. P. M, et al. (2005).
Improving Outcomes with Clinical Decision
Support, HIMSS..From http//www.himss.org - Osheroff, J. A., J. M. Teich, et al. (2006). "A
Roadmap for National Action on Clinical Decision
Support." American Medical Informatics
Association. Retrieved 27 January, 2007, From
http//www.amia.org/inside/initiatives/cds/. - Weinberg, B. (2006). "Opinion Open-source can
stretch IT health care dollars." Computerworld
Software. Retrieved 30 January, 2007, From
http//www.computerworld.com/action/article.do?com
mandviewArticleBasicarticleId9003597pageNumber
1 - Leong, T. Y., K. Kaiser and S. Miksch, "Free and
open source enabling technologies for
patient-centric, guideline-based clinical
decision support A survey". Methods of
information in Medicine, 46, no. Suppl 1 (IMIA
Yearbook of Medical Informatics) (2007) 74-86.
20A Case Study
21Project ResEasy
- Experimental platform to support best practices
in chronic and acute disease and care management - Open source workflow management, outcome
analysis, guideline implementation - Public-private collaboration initiative pilot
toward cost-effective health care in Singapore
and the region - Asthma and acute respiratory distress syndrome
management (ARDS) - Funded by the Infocomm Development Authority
(IDA) and The Enterprise Challenge (TEC) in
Singapore - Partners include public and private hospitals,
university, and engineering companies
22Our Trial Framework
Pathology Information System
Clinical Information System
Paper Forms
Participating Site 1
Encrypted Disk
Participating Site 2
Participating Site n
Internal Review Board
Certification Authority
Trusted Third Party
Internal Review Board
Encrypted Disk
Hospital
Cluster-wide EMR system
Health Care group
Pathology Information System
Clinical Information System
Paper Forms
23Trial Settings and Tasks
- ResEasy Asthma
- Singapore National Asthma Program
- Main pilot site National University Hospital
- Process management and guideline implementation
- Risk factor identification
- Information protection
- ResEasy ARDS
- Gleneagles Hospital ICU
- Process management
- Alert generation
- Clinical guideline
- Video streaming and information protection
24Asthma Workflow Management
Retrieve todays records from PC to PDA
Go to clinic with PDA, update old records/create
new records
Integrate updated records on PDA with database on
PC
workflow
Information flow
25Asthma Portable Electronic Forms
26Asthma Action Plan and Asthma Control Test (ACT)
27Outcome Analysis in Asthma
- Objectives
- Outcome prediction
- Control indication
- Cost-effectiveness analysis
- Resource planning
- Outcome measures
- Asthma under control (control indicators)
- Unscheduled physician visits for nebulization
- Emergency department visits
- Hospitalization
28ARDS Management System
29(No Transcript)
30NIH BECON/BISTIC Symposium
- Theme
- Biomedical informatics for clinical decision
support A vision for the 21st century - Establish
- Scientific vision of the future where healthcare
information technologies may be more fully
deployed in the clinical workflow to deliver
efficiency and outcomes - Areas addressed
- Heterogeneous data collection methods
- Data management (databases and digital libraries)
- Enabling technologies (modeling, software tools,
techniques) - Translational informatics
Source BECON 2004 Final Report (2/05)
31Meeting recommendations
- Establish clinical data collection strategies
- Harmonize data acquisition across biosensors
- Support development and evaluation of
translational informatics tools - Adopt software engineering approaches
- Provide mechanisms and regulatory approval of
software tools - Foster public private partnerships
- Implement demonstration projects
Source BECON 2004 Final Report (2/05)
32Some Technical Recommendations
- Software Tools for Modeling, Data Analysis, Data
Integration, and Workflow - Support training and development of new curricula
to facilitate adoption and best practice
application of information technology in clinical
research and care. - Previous directions have focused on data vs.
tools vs. research vs. practice, rather than a
more holistic approach. - Biologists/bioengineers/computer scientists and
doctors need to function as true peers. - Focus has been on very large scale data, but
ultimate impact is measured in terms of clinical
decisions. - Adopt a solution architectures approach
(problem-driven view of entire complex of
tools/data /computation needed to solve similar
type of problems, including validation
requirements)
Source BECON 2004 Final Report (2/05)
33CDS Implementers Workbook
- Main topics
- Identifying Stakeholders and Goals
- Cataloging Available Information Systems
- Selecting and Specifying CDS Interventions
- Specifying and Validating the Details, and
Building the Interventions - Putting Interventions into Action
- Measuring Results and Refining the Program
- Standards Pertinent to CDS
- Medico-legal Considerations with CDS
- Pilot Site Selection
- Additional Statistics and Reports for Evaluating
Alerts - Source
- Osheroff, J. A., Pifer, E. A., Teich, J. M.,
Sittig, D. F., and Jenders, R. A. Improving
Outcomes with Clinical Decision Support, HIMSS,
2005.
34Roadmap for National Action on CDS
- Enhanced health and health care through CDS
Three Pillars - Best knowledge available when needed
- Represent clinical knowledge and CDS
interventions in standardized formats - Collect, organize, and distribute clinical
knowledge and CDS interventions - High adoption and effective use
- Address policy/legal/financial barriers and
create additional support enablers - Improve clinical adoption and usage of CDS
interventions - Continuous improvement of knowledge and CDS
methods - Assess and refine the national experience with
CDS - Advance care-guiding knowledge
- Source
- Osheroff, J. A., Pifer, E. A., Teich, J. M.,
Middleton, B. F., Steen, E. B., Wright, A., and
Detmer, D. E. A Roadmap for National Action on
Clinical Decision Support, AMIA, June 13, 2006.
35EU e-Health Initiative
- Part of the eEurope strategy toward better
access, quality and effectiveness of care - Sets out roadmap for greater use of technologies,
new services and systems, toward objective of a
European e-Health Area - Identifies practical steps to facilitate
communication through - Developing interoperable electronic health
records, standard patient identifiers and health
cards, and high speed Internet access - Continuing collaboration with National Competence
Centers - Consulting relevant stakeholders through a public
consultation as well as meetings and workshops - Calls on member states to develop national and
regional e-Health strategies
Reference European Union Information Society
e-Health website
36From Research to Practice
- From research to practice
- Targeted e-Health research funding of 1000
million - Emergence of new e-Health industry with potential
to be the third largest industry in the health
sector with a turnover of 11 billion - By 2010 it is expected to account for 5 of the
total health budget of the European Union's
Member States. - Frost Sullivan market research report (Aug
2006) - Clinical decision support is a nascent market
with strong growth - Clinical Decision Support Systems markets in
Europe earned revenue of 238.5 million in 2005
and estimates this to reach 430.7 million in
2012 - Development of robust CDSSs key to increase
adoption in Europe - Website http//www.healthcare.frost.com
Reference European Union Information Society
e-Health website
37Hong Kong eHealth Consortium
- Response to call in 58th WHA eHealth resolution
- A public-private partnership created after the
SARS and H5N1 outbreaks in 2003 - Key initiatives
- Data sharing and standardization
- Education and capacity building
- eHealth Forum
- Lays foundation for future sharing of healthcare
information - Envisions and defines road map for the future
- Enhances communication between public private
sectors.
38Australian National Institute of Clinical Studies
strategic plan
- The national electronic decision support
taskforce report (NEDST, 2003) - Electronic decision support systems action
planning report 2004 - Presented to Australian Health Information
Council's Electronic Decision Support Steering
Committee, the national body overseeing the
implementation of the EDSS Taskforces'
recommendations.
39Literature-Based Evidence
- Randomized trials, systematic reviews, guidelines
- Constitutes only small fraction of research
literature - Study design and reporting problems abundant
- Electronic resources mostly not
machine-interpretable - The Cochrane Library, Best Evidence, Clinical
Evidence, etc. - Emerging machine-interpretable knowledge bases
- The Trial Bank, genomic information databases,
etc. - Need advanced free-text understanding techniques
40Practice-Based Evidence
- Local databases and data warehouses from
- registries and repositories, health information
systems, electronic medical records, laboratory
systems, etc. - Complements and supplements general,
literature-based evidence - Required for risk and outcome analysis and
practice guideline development - Improve process and intervention designs
41Research-Based Evidence
- Experimental data and results generated through
specific design and analysis - Can be sliced and diced into various formats
and categories for further processing - Complements and supplements practice-based
evidence - Required for risk and outcome analysis and
practice guideline development - Improve process and intervention designs
42Human-Directed Evidence
- Policy makers or clinicians objectives
- Patients preferences and concerns through
- direct interactions
- feedback from health-related resources, e.g.,
websites, surveys, etc. - Increase health care quality through
- Facilitating communication
- Fostering shared decision making
- Personalized care plan
- Improving clinical outcomes
43Executive Information Systems
- Target users
- Health policy makers, quality assurance managers,
hospital administrators, medical directors,
department chiefs, etc. - Functions
- Integrate information from different sources
- Keep track of internal and external changes
- Identify and monitor resource utilization
- Support risk analysis and risk management
- Objectives
- Achieve strategic vision and mission
- Gain high level perspective on
- key performance indicators
- trends in organization
44Monitoring and Control Systems
- Target users
- Clinicians, pharmacists, administrators
- Functions
- Selectively monitor clinical data continuously
- Test data against predefined criteria to send
alerts - Objectives
- Detect and prevent adverse events
- Alarming laboratory results
- Drug contraindications
- Critical care monitoring
45Risk or Outcome Prediction Systems
- Target users
- Clinicians, surgery or treatment planning teams,
health policy makers, quality assurance managers,
hospital administrators - Functions
- Perform classification and prediction of outcome
or risk with respected to specific outcome
measures, e.g., length of stay, death,
complications, based on data collected in a
population - Derive outcome predictors, staging scores or risk
stratification indices - Support risk analysis and risk management at the
bedside and in policy planning - Objectives
- Facilitate decision making in routine and complex
situations - Serve as educational and communication tools
46Clinical Diagnostic Treatment Systems
- Target users
- Clinicians, patients, students
- Functions
- Recommend diagnosis and treatment planning
- Detect adverse or specific events
- Critique care management plans
- Objectives
- Facilitate decision making in routine and complex
situations - Provide reference and confirmation information
- Support scenario analyses for better insights
- Serve as educational and communication tools
47Protocol-Based Decision Systems
- Target Users
- Clinicians, patients, administrators
- Functions
- Create, maintain, and access to disease
management and best practice guidelines from
different information sources - Transform often-ignored guidelines to dynamic
programs for - real-time patient-specific management advice
- automated recommendations, reminders, alerts, and
adjustment of device settings - Support outcomes analysis and outcomes management
- Objectives
- Promote systematic record keeping
- Support rational decision making
- Improve clinician acceptance
- Improve quality and reduce cost of care
48Rule-Based Techniques
- Knowledge structured as a set of rules
- If A1,A2,A3 then B1,B2 else C1
- Forward reasoning or data-driven reasoning
- If patients serum potassium level is below 3.0
then assert hypokalemia - If hypokalemia, then send report to hospital
staff - Backward reasoning or goal-driven reasoning
- If fever and runny nose then flu
- If temperature is higher then 36.9C, then fever
- Assert runny nose
49Model-Based Techniques
- Semantic networks or frames as knowledge
representations for diseases and processes - A set of concepts with a set of attributes
- Concept disease
- Name pneumonia
- ICD code 481
- Body part affected lung
- Standard treatment antibiotic
- Inheritance and other inferences to derive
conclusions from the concept hierarchies
50Case-Based Techniques
- Diagnosis or prediction based on similarity to
previous cases and classifications - Previous cases of patients with common cold
- C1, C2, C3
- Each with slightly different symptoms and
recommended treatments - New case D1
- With some symptoms common to C1 and C2
- With some new symptoms unseen before
- Can D1 be classified as common cold?
- If so, can the previous treatments be used?
- If not, what to do with D1?
51Neural Network Techniques
- Pattern recognition and analysis of underlying
disease dynamics - look for patterns in training sets of data
- learn the patterns
- develop the ability to classify new patterns
52Business Intelligence Systems
- Major functionalities
- Reporting
- Online analytic analysis (OLAP)
- Dashboards
- Data integration
- Data mining
- Technology categories
- Enterprise BI systems (EBIS)
- Query and reporting tools
- Advanced BI tools OLAP/statistical and
data-mining tools - BI platforms
53Probabilistic Network Systems
- Bayesian networks
- Annotated directed acyclic graphs
- Model partial causality structures with
incomplete or probabilistic information - Depict and facilitate communication on
human-oriented qualitative structures - Problem characteristics
- Diagnosis or classification
- Causal interpretation or prediction
- Multiple input multiple output
54Example
- Whether or not a person has a History of smoking
(H) has a direct influence both on - whether or not he has Bronchitis (B) and
- whether or not he has Lung cancer (L)
- Presence or absence of each of B and L has direct
influence on - whether or not he experiences Fatigue (F)
- Presence or absence of L has a direct influence
on - whether or not a Chest X-ray (C) is positive
- Assume B, L, H, F, and C are binary random
variables
55Queries
- Given that a patient has history of smoking and
has a positive chest X-ray - What are the conditional probabilities of the
person having - bronchitis, i.e., P(bh,c)?
- lung cancer, i.e., P(lh,c)?
- Direct calculation
56A Bayesian Network
57Reasoning with Bayesian Network
58Local Probabilistic Models
- Subjective probabilities
- Subjective assessment of uncertainty in terms of
probability - How to make such judgments?
- What do such judgments imply?
- Theoretical probability models
- Modeling uncertainty with theoretical probability
distributions - Theoretical probability distributions have
well-defined characteristics and useful
statistics - Learning probabilities from data
- Construct structure and probability distributions
from data - Fit theoretical probability models with data
- Model relationships with data
59Learning in Bayesian Networks
A, B, C T, T, T T, ?, F T, F, F
?, F, ? F, T, T F, ?, F
P(A)
P(B)
P(A)
P(B)
? ?
? ?
0.4 0.6
0.8 0.2
A
B
A
B
Learner
C
C
A B
P(CA,B)
P(CA,B)
A B
a b 0.1 0.9 a b 0.3 0.7 a
b 0.9 0.1 a b 0.6 0.4
a b ? ? a b ? ? a
b ? ? a b ? ?
Each ? (or ? ) denotes a parameter
60Application Areas
- Executive information systems
- Monitoring and control systems
- Risk and outcome analysis systems
- Clinical diagnostic and treatment systems
- Protocol-based decision systems