A Model-Driven Engineering Approach to AI-Powered Healthcare Platforms
- URL: http://arxiv.org/abs/2510.09308v1
- Date: Fri, 10 Oct 2025 12:00:12 GMT
- Title: A Model-Driven Engineering Approach to AI-Powered Healthcare Platforms
- Authors: Mira Raheem, Amal Elgammal, Michael Papazoglou, Bernd Krämer, Neamat El-Tazi,
- Abstract summary: We introduce a model driven engineering (MDE) framework designed specifically for healthcare AI.<n>The framework relies on formal metamodels, domain-specific languages, and automated transformations to move from high level specifications to running software.<n>We evaluate this approach in a multi center cancer immunotherapy study.
- Score: 0.03262230127283451
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Artificial intelligence (AI) has the potential to transform healthcare by supporting more accurate diagnoses and personalized treatments. However, its adoption in practice remains constrained by fragmented data sources, strict privacy rules, and the technical complexity of building reliable clinical systems. To address these challenges, we introduce a model driven engineering (MDE) framework designed specifically for healthcare AI. The framework relies on formal metamodels, domain-specific languages (DSLs), and automated transformations to move from high level specifications to running software. At its core is the Medical Interoperability Language (MILA), a graphical DSL that enables clinicians and data scientists to define queries and machine learning pipelines using shared ontologies. When combined with a federated learning architecture, MILA allows institutions to collaborate without exchanging raw patient data, ensuring semantic consistency across sites while preserving privacy. We evaluate this approach in a multi center cancer immunotherapy study. The generated pipelines delivered strong predictive performance, with support vector machines achieving up to 98.5 percent and 98.3 percent accuracy in key tasks, while substantially reducing manual coding effort. These findings suggest that MDE principles metamodeling, semantic integration, and automated code generation can provide a practical path toward interoperable, reproducible, and trustworthy digital health platforms.
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