Trustworthy Clinical Decision Support Using Meta-Predicates and Domain-Specific Languages
Michael Bouzinier, Sergey Trifonov, Michael Chumack, Eugenia Lvova, Dmitry Etin

TL;DR
This paper introduces meta-predicates and a domain-specific language to ensure clinical decision rules are epistemologically appropriate and auditable, addressing regulatory requirements in healthcare AI.
Contribution
It presents a novel framework using meta-predicates and an epistemological type system to validate decision rules before deployment, enhancing auditability and correctness.
Findings
Meta-predicates catch epistemological errors pre-deployment.
Reformulation of decision trees enables per-variant audit trails.
Framework demonstrated on genomics data with 5.6 million variants.
Abstract
\textbf{Background:} Regulatory frameworks for AI in healthcare, including the EU AI Act and FDA guidance on AI/ML-based medical devices, require clinical decision support to demonstrate not only accuracy but auditability. Existing formal languages for clinical logic validate syntactic and structural correctness but not whether decision rules use epistemologically appropriate evidence. \textbf{Methods:} Drawing on design-by-contract principles, we introduce meta-predicates -- predicates about predicates -- for asserting epistemological constraints on clinical decision rules expressed in a DSL. An epistemological type system classifies annotations along four dimensions: purpose, knowledge domain, scale, and method of acquisition. Meta-predicates assert which evidence types are permissible in any given rule. The framework is instantiated in AnFiSA, an open-source platform for genetic…
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