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REGIONAL AND NATIONAL
ACTION PLANS DEVELOPMENT
PP Meeting Vrnjačka Banja, 21.10.2021
KEY IDENTIFIED
PROBLEMS/CHALLENGES
2
TS PILLARS
1. Operational on Social and medical care
2. Digitalization
3. Economic and Financial
4. Governance and Policies
5. The SI4CARE Community: Observatory and Forum
3
TS PILLARS
1. Operational on Social and medical care
1. Outpatient clinic model
2. Monitoring elderly through ICT technologies
3. Caring from remote: rehabilitation-physical activity; nutrition; healthy ageing &
planning
4. Data collection for the improvement of medical services
5. Caring for patients with dementia
2. Digitalization
3. Economic and Financial
4. Governance and Policies
5. The SI4CARE Community: Observatory and Forum
4
TS PILLARS
1. Operational on Social and medical care
2. Digitalization
1. Building a basic digital infrastructure with the aim of developing and promoting
a digitalization ecosystem
2. Outlining the management framework which cultivates digitalization
3. Ensuring Digitalization Implementation Quality
4. Knowledge Transfer (education; training; awareness...)
5. Fields of future research
3. Economic and Financial
4. Governance and Policies
5. The SI4CARE Community: Observatory and Forum
5
TS PILLARS
1. Operational on Social and medical care
2. Digitalization
3. Economic and Financial
1. Efficient combination of the existing societal resources of the long-term care
services for older adults with declining functional capacities in urban and rural
areas
2. Economic model of social value creation by social innovations: Social Return on
Investments in smart social infrastructure (SROI) in urban and rural areas
3. Financial Model for financing development of Social Infrastructure – Making telecare
fair and just for all: phase 1 - public-private partnerships for development of smart
social infrastructure for older adults in urban and rural areas
4. Financial Model for services - Making telecare fair and just for all: phase 2 - Public
insurance for digitally supported integrated long-term care
4. Governance and Policies
5. The SI4CARE Community: Observatory and Forum
6
Economic Finacial
Model Integration
TS PILLARS
4. Governance and Policies
1. Development of Governance Model & Policies based on the hierarchical structures of
functional regions and their optimal delineation based on the impact of GIS tools in order
to synchronize levels of care and transfer of knowledge to other ADRION regions.
2. Optimal policies for the supply of housing in functional regions especially in rural areas in
case of the proposed changes in legislation
3. Optimal policies for the provision of LTC facilities in functional regions in case of the
proposed changes in legislation. Transfer of knowledge to other ADRION regions.
4. Optimal policies for the provision of human resources and their training in functional
regions.
5. To finance the long-term care (LTC) ecosystem to support governance and policy based on
consisted data platforms by considering legislation on categorisation, norms and care
standards as the constraints and goals in the investment policies and governance of the
hierarchical system of LTC.
6. Supporting policies mitigating differences of adequacy of care between urban and rural areas, influenced by
the spatial dispersion of older adults. Based on a DS model and a model of smart silver village development to
mitigate the differences between urban and rural areas
7. Diffusion of policy and governance models in order to structure a hierarchical spatial projection of the LTC
needs to meet the demand based on specific database structure and models.
7
TS PILLARS
1. Operational on Social and medical care
2. Digitalization
3. Economic and Financial
4. Governance and Policies
5. The SI4CARE Community: Observatory and Forum
1. The SI4CARE Observatory: setting and constitution
2. The forum (Form of Forum for PAs, ICT, Experts/Practicians;
Planning and organization)
3. TS Adoption and dissemination
4. Knowledge transfer
8
MIXED ACTIONS COVERED
BY TS
• Research
• Management
• Investment
• Marketing
• Education
• Training
• ICT
• Governance
• Observation
• Digitalization.
9
WORKSHOP SECTION
Note 1:
• The main goal is to discuss and to investigate whether the identified pillars
represent real problems / challenges recognized in each region/country.
Note 2:
• In order to obtain valid answers, it is crucial to answer the questions from your
regional/national perspective, and not from institutional or pilot perspective.
10
KEY DISCUSSION POINT 1
Which are the main problems identified in your
region/country?
11
KEY DISCUSSION POINT 2
Which pillars are the identified problems related to?
12
KEY DISCUSSION POINT 3
Which actions related to the identified pillars do you propose
for your region/country?
13
THANK YOU!
14

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9_SI4CARE_Workshop TS to AP.pdf

  • 1. REGIONAL AND NATIONAL ACTION PLANS DEVELOPMENT PP Meeting Vrnjačka Banja, 21.10.2021
  • 3. TS PILLARS 1. Operational on Social and medical care 2. Digitalization 3. Economic and Financial 4. Governance and Policies 5. The SI4CARE Community: Observatory and Forum 3
  • 4. TS PILLARS 1. Operational on Social and medical care 1. Outpatient clinic model 2. Monitoring elderly through ICT technologies 3. Caring from remote: rehabilitation-physical activity; nutrition; healthy ageing & planning 4. Data collection for the improvement of medical services 5. Caring for patients with dementia 2. Digitalization 3. Economic and Financial 4. Governance and Policies 5. The SI4CARE Community: Observatory and Forum 4
  • 5. TS PILLARS 1. Operational on Social and medical care 2. Digitalization 1. Building a basic digital infrastructure with the aim of developing and promoting a digitalization ecosystem 2. Outlining the management framework which cultivates digitalization 3. Ensuring Digitalization Implementation Quality 4. Knowledge Transfer (education; training; awareness...) 5. Fields of future research 3. Economic and Financial 4. Governance and Policies 5. The SI4CARE Community: Observatory and Forum 5
  • 6. TS PILLARS 1. Operational on Social and medical care 2. Digitalization 3. Economic and Financial 1. Efficient combination of the existing societal resources of the long-term care services for older adults with declining functional capacities in urban and rural areas 2. Economic model of social value creation by social innovations: Social Return on Investments in smart social infrastructure (SROI) in urban and rural areas 3. Financial Model for financing development of Social Infrastructure – Making telecare fair and just for all: phase 1 - public-private partnerships for development of smart social infrastructure for older adults in urban and rural areas 4. Financial Model for services - Making telecare fair and just for all: phase 2 - Public insurance for digitally supported integrated long-term care 4. Governance and Policies 5. The SI4CARE Community: Observatory and Forum 6 Economic Finacial Model Integration
  • 7. TS PILLARS 4. Governance and Policies 1. Development of Governance Model & Policies based on the hierarchical structures of functional regions and their optimal delineation based on the impact of GIS tools in order to synchronize levels of care and transfer of knowledge to other ADRION regions. 2. Optimal policies for the supply of housing in functional regions especially in rural areas in case of the proposed changes in legislation 3. Optimal policies for the provision of LTC facilities in functional regions in case of the proposed changes in legislation. Transfer of knowledge to other ADRION regions. 4. Optimal policies for the provision of human resources and their training in functional regions. 5. To finance the long-term care (LTC) ecosystem to support governance and policy based on consisted data platforms by considering legislation on categorisation, norms and care standards as the constraints and goals in the investment policies and governance of the hierarchical system of LTC. 6. Supporting policies mitigating differences of adequacy of care between urban and rural areas, influenced by the spatial dispersion of older adults. Based on a DS model and a model of smart silver village development to mitigate the differences between urban and rural areas 7. Diffusion of policy and governance models in order to structure a hierarchical spatial projection of the LTC needs to meet the demand based on specific database structure and models. 7
  • 8. TS PILLARS 1. Operational on Social and medical care 2. Digitalization 3. Economic and Financial 4. Governance and Policies 5. The SI4CARE Community: Observatory and Forum 1. The SI4CARE Observatory: setting and constitution 2. The forum (Form of Forum for PAs, ICT, Experts/Practicians; Planning and organization) 3. TS Adoption and dissemination 4. Knowledge transfer 8
  • 9. MIXED ACTIONS COVERED BY TS • Research • Management • Investment • Marketing • Education • Training • ICT • Governance • Observation • Digitalization. 9
  • 10. WORKSHOP SECTION Note 1: • The main goal is to discuss and to investigate whether the identified pillars represent real problems / challenges recognized in each region/country. Note 2: • In order to obtain valid answers, it is crucial to answer the questions from your regional/national perspective, and not from institutional or pilot perspective. 10
  • 11. KEY DISCUSSION POINT 1 Which are the main problems identified in your region/country? 11
  • 12. KEY DISCUSSION POINT 2 Which pillars are the identified problems related to? 12
  • 13. KEY DISCUSSION POINT 3 Which actions related to the identified pillars do you propose for your region/country? 13