M.A.G.I.C. Framework for mHealth Development: Applying Game Design Principles
by James Broussard·Updated 3mo ago
669.3 KB1files
Available on 1 platform
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Description
James Broussard authored a paper outlining the M.A.G.I.C. framework for mHealth development, which synthesizes 20 game design lessons from 'Magic: The Gathering'. The framework's key components—Mesmerization, Audience-centeredness, Goal-orientation, Individualization, and Community-drivenness—are proposed to enhance digital health interventions. The 669.3 KB PDF document was last updated on April 10, 2026.
Use Cases
Designing engaging mHealth interventions based on the Mesmerization principle.
Creating user-centered digital therapeutics based on the Audience-centeredness principle.
Developing goal-oriented wellness applications based on the Goal-orientation principle.
Building customizable health apps based on the Individualization principle.
Fostering supportive user communities in digital health based on the Community-drivenness principle.
Strengths
Framework is derived from 20 specific lessons compiled by the head designer of 'Magic: The Gathering'.
Document is licensed under CC-BY-4.0, allowing for open sharing and adaptation.
File size is 669.3 KB, indicating a concise and focused document.
Limitations
Description metadata is limited; actual data quality requires manual inspection after download.
Column-level documentation is absent; field semantics must be inferred after download.
The dataset is a conceptual framework paper, not a traditional data file with rows and columns.
Provenance
Source
James Broussard via figshare
Collection Method
Synthesis of published game design principles into a conceptual framework.
Time Range
Publication date is not specified; last platform update was 2026-04-10.
Freshness
Last updated 2026-04-10 05:57:55; freshness should be verified.
Geography
Global, as the framework is not geographically specific.
The file is a PDF containing a conceptual framework, not a structured dataset for direct computational analysis.