Data Warehousing and EMIS Web Dr Kambiz Boomla & Ryan Meikle September 2012.
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Transcript of Data Warehousing and EMIS Web Dr Kambiz Boomla & Ryan Meikle September 2012.
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Data Warehousing and EMIS Web
Dr Kambiz Boomla & Ryan MeikleSeptember 2012
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Background
3 CCGs, City & Hackney, Tower Hamlets, Newham with Waltham Forest to join cluster soon
Trust mergers Homerton Foundation Trust in Hackney Barts and the London, Newham University Hospital
and Whipps Cross all merging to form Barts Health Wider Commissioning Support Services and
Cluster that includes outer east London, and North Central London – mirrors local configuration of National Commissioning Board
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SUSData
District Nursing
Health visiting
Speech & Language
Physiotherapy
Learning Disabilities
Occupational Therapy
Prim Care Psychology
School Nursing
Foot Health
Child Health
Continence Service
Wound Care
Specialist nurses•Diabetes
•Heart Failure•Stroke
•Respiratory
Clinical Assessment
Service•Dermatology
•Musculoskeletal•Urology
The Patient
PBC
Community matrons
A&E Front End
GP Out of Hours x2
Diabetes Centre
Care of the Elderly
Minor Surgery
Lablinks
Xray
Social Services eSAP ?
Walk-in Centres
A&E
Urgent Care
Secondary care
Community Services
Stroke Service
EMIS Access
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Enhanced Services and Dashboards CCGs need dashboards
To performance manage our enhanced services Track integrate care pathways Monitor secondary care
Dashboards need to contain both primary and secondary care metrics, and even social care
Creates complex information governance issues
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Networks are the basis for Primary Care Investment Plan Tower Hamlets commencing on ambitious primary
care investment plan as part of being an Integrated Care Pilot.
£12m investment annually raising Tower Hamlets from near the bottom to the top for primary care spend
Similar programmes in Hackney and Newham Integrated care with such an ambitious investment
programme needs integrated IT Mergers offer a unique opportunity to provide full
integration between EMIS Web and Cerner
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6
5
The 36 Tower Hamlets practices and the 8 LAP boundaries
*
123
4
5
6
8 Health E1
9
10 Albion
LAP 2. Spitalfields and Banglatown, Bethnal Green South 8
9
10
7
LAP 1. Weavers, Bethnal Green North, Mile End and Globe Town
1 Strouts Pl
2 Bethnal Green
3 Pollard Row
4 Blithehale
7 XX place*
5 Mission
6 Globe Town
1112
15
13
16
14
11 Shah Jalal
12 Tower
13
LAP 3. Whitechapel, St. Duncan’s and Stepney Green
14
Spitalfields
Varma
Stepney 17
18
19 Shah 22 St. Stephen’s
LAP 5. Bow West, Bow East
20 Tredegar
21 Harley Grove
23 Amin
19
24
2122
20
23
24 Rana
25St Paul’sWay
26StroudleyWalk
LAP 6. Mile End East, Bromley by Bow
27 Nischal
25
2627
28
29
30
31
32
28 Limehouse 30 Chrisp St
LAP 7. Limehouse, East India Lansbury
29 Selvan 31All Saints
32 Aberfeldy
33 Barkantine 35 Island Health
LAP 8. Millwall, Blackwall and Cubitt town
34 Docklands 36 Island Med Ctr33
34
35
36
17St Katherine’s Dock
18 Wapping
LAP 4. St. Katharine’s and Wapping, Shadwell
16 Jubilee St
15 East One
Pop: 28,956
Pop: 23,868
Pop: 38,529
Pop: 33,948
Pop: 27,692
Pop: 25,549
Pop: 36,433
Pop: 30,034
7’Bromleyby Bow
* Estimated registered population, calculated as ½ of Bromley-by-Bow and XX place combined listSource::http://www.towerhamlets.gov.uk/data/in-your-ward; Allocation practice to LAP as per Team Analysis (Aug 2008); Number of patients per
practice based on LDP data (Jan 2009)
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Combining secondary and primary care in one dashboard Two main purposes
To produce combined data source dashboards To enable collection and exploitation of data to support the pro-active
targeting of effective health interventions, partially through improved commissioning but also by being able to better identify and address individual needs
To provide clinical data from combined sources to directly support patient care Providing timely and accurate info on which to base clinical decision
making Improving the co-ordination between different healthcare providers Facilitate better patient care by sharing patient information between
healthcare providers
These two main purposes require different information governance frameworks
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Data flowsThese are the organisations where data sharing/flow could result in patient
benefit
Data Controller
• Community Health
Data Controller
• General Practice
Data Controller
• Acute Hospital
Data Controller
Data Controller
Data Processor eg NCEL
Commissioning Support Services
• Mental Health Data
• Social Services Data
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There will be three principle types of data flow, although the lawful basis for processing differs in the second between health and social care Data Controllers. These will be sequenced to minimise the data in each flow and from each provider, as shown below.
An explanation of these data flows is on the next slide
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Data flows• Scenario 1 – Risk Stratification
– We first take hospital data from the SUS (Secondary Use Services) dataset. This dataset already has s251 allowing the common law duty of confidentiality to be set aside in specific circumstances. It will then be combined with pseudonymised GP data, and then analysis then performed on the pseudonymised combined dataset. Dashboards and risk scores and commissioning information can then be made available. If we need to get back to knowing who the patients really are, because we can offer them enhanced care, then only practices will unlock the pseudonyms and refer patients appropriately . EMIS to do work here!!!
• Scenario 2 – Information sharing between health care providers– An obvious example of this is the virtual ward. Virtual ward staff including modern matrons
work most efficiently with access to patient information from all those agencies involved in their care. Information sharing in this scenario would rely on explicit patient consent for GP data, and hospital provider data is already part of the commissioning contract requirements for secondary care, and only holding this and making this available for those patients being cared for in this scenario, and not all patients.
• Scenario 3 – Similar to 2 above, but also involve social care providers. – An example of this, could be obtaining for elderly patients already receiving social care
from social services, their long term condition diagnoses to record on social services information systems. Similarly the type of care packages they are on could be provided to General Practices. Explicit patient consent would be required for data flows in each direction here. Also if health and social care data were shared in a virtual ward, explicit patient consent will be required.
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Information Governance
• This project will adopt the highest standards of information governance to ensure that patient’s rights are respected and that the confidentiality, integrity and availability of their information is maintained at all times.
• The approval of the National Information Governance Board for this has been obtained.
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Data Warehousing – why do it?• Systematic management of large amounts
of data optimised for:• Fast searches – pre-calculation of common
queries• Visual Reporting – automated tables, charts,
maps• Investigation – hypothesis testing, prediction
• Common interface to explore data regardless of source system
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Data Warehouse Architecture
1. Data Extraction
2. Warehousing
3. Solutions – dashboards, reports, risk prediction
4. User Interface
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1. Data Extraction• No “one size fits all” solution• Extract once – but use for multiple
purposes• Challenges:
• Keeping volume of data manageable• Limited options for extraction• Automating where possible
• Working with EMIS IQ to bulk extract data for dashboard reporting and patient care
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Data Warehouse Architecture
1. Data Extraction
2. Warehousing
3. Solutions – dashboards, reports, risk prediction
4. User Interface
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2. Warehousing
• Data processed into a common structure, regardless of source system
• Data cleansing and standardisation – need to be able to compare “like for like”
• Challenges:• Conflicting between systems• Data matching
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Data Warehouse Architecture
1. Data Extraction
2. Warehousing
3. Solutions – dashboards, reports, risk prediction
4. User Interface
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3. Solutions
• Need to know up front who will be the users of the system and what they will want to use it for
• Different users will have different perspectives e.g. concept of PMI
• Challenges:• Understanding what people expect from a data
warehouse – joined up data? Better reporting? • Building the model to support future requests
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Data Warehouse Architecture
1. Data Extraction
2. Warehousing
3. Solutions – dashboards, reports, risk prediction
4. User Interface
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4. User Interface
• The only part most people see (and judge)• Very large number of tools available
• Need to decide what is most important:• Immediate solutions?• Ability to customise?• All-in-one warehouse and user interface?
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Demonstration1. Using the warehouse to report SUS data
2. Using the warehouse to report EMIS data
3. Using the warehouse to explore combined GP and Acute data
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Next Steps• Use the warehouse to enhance existing
clinical dashboards• Provision of risk scores to GPs• Pilot additional solutions based on data
forecasting and prediction
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Appendix: Screenshots
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I. Using the warehouse to report SUS data
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II. Using the warehouse to report EMIS data
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III. Using the warehouse to explore combined GP and Acute data
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