Patient safety remains a paramount concern in healthcare systems, where incident narratives provide rich, unstructured evidence for identifying root causes and enhancing learning mechanisms. This conceptual manuscript introduces a novel framework for extracting root-cause themes from patient safety narratives, transforming them into structured evidence to support adaptive learning systems. Drawing on theoretical foundations in natural language processing, systems thinking, and healthcare informatics, the proposed architecture orchestrates narrative data through layered processing to uncover latent themes and propagate insights across clinical environments. By emphasizing interpretive formulas for risk propagation, decision confidence, and governance load, the framework addresses gaps in traditional analysis methods, fostering resilient healthcare infrastructures without relying on empirical data or model training. Key components include a unique layered structure for theme extraction and bidirectional feedback topologies to integrate evidence into learning cycles. The discussion explores implications for clinical deployment, data modality integration, and ethical governance, highlighting how this approach can theoretically mitigate systemic vulnerabilities. Ultimately, this work advocates for a shift toward narrative-driven, evidence-structured intelligence in patient safety, promoting proactive theme-based interventions in dynamic healthcare settings.