A Systems Thinking Approach to Designing Clinical Models and Healthcare Services
Abstract
:1. Introduction
1.1. The Changing Needs of Patients: From Treating Acute to Chronic Conditions
1.2. The Current Healthcare Delivery System and Challenges of Conventional Clinical Modeling
1.3. Paper Contribution—Systems Thinking Approach to Tackle Current Clinical Modeling Challenges
1.4. Paper Outline
2. Systems Thinking Approach to Modeling Healthcare Delivery
2.1. Domains Applying Systems Thinking to the Health Field
2.2. Systems Thinking for Healthcare Delivery
2.2.1. System Function
2.2.2. System Form
2.2.3. System Concept
3. Designing Clinical Models Using Systems Thinking and Systems Methodology: An Illustrative Example
3.1. Clinical Model of Behavioral Health Integration into Primary Care
3.2. Methodology for Developing the System Model
3.3. Description of the System Model
3.3.1. System Function
3.3.2. System Form
3.3.3. System Concept
4. Discussion
4.1. Potential Advantages of Systems Thinking Based Modeling
4.2. Limitations of a Systems Thinking Approach in Healthcare Delivery
5. Conclusions and Future Directions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
MD | Medicine Doctor (Doctor of Medicine) |
BH | Behavioral Health |
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Challenge 1: Designed based on single-diagnosis. Generally, not applicable to patients with multiple conditions, |
Challenge 2: Described at a high-level of abstraction with a focus on human personnel, |
Challenge 3: Described using text-based toolkits with minimal visuals, |
Challenge 4: Described with expected paths; qualitatively describes the system and may be biased, and |
Challenge 5: Described with minimal to no specificity of implementation-level details. |
Advantage 1: Designed based on specified needs rather than a specific diagnosis, |
Advantage 2: Described at multiple levels and scales, |
Advantage 3: Described visually, |
Advantage 4: Described with comprehensive paths; consequently, quantitatively describing the system, and |
Advantage 5: Described in multi-level detail, providing a detailed multi-level implementation description. |
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Khayal, I.S. A Systems Thinking Approach to Designing Clinical Models and Healthcare Services. Systems 2019, 7, 18. https://doi.org/10.3390/systems7010018
Khayal IS. A Systems Thinking Approach to Designing Clinical Models and Healthcare Services. Systems. 2019; 7(1):18. https://doi.org/10.3390/systems7010018
Chicago/Turabian StyleKhayal, Inas S. 2019. "A Systems Thinking Approach to Designing Clinical Models and Healthcare Services" Systems 7, no. 1: 18. https://doi.org/10.3390/systems7010018