NeFut Logo NeFut
Admin Login

[CS.AI] Auditable Rule Discovery LLM Pipeline Across 68 Physiological Corpora

Published at: 2026-07-10 22:00 Last updated: 2026-07-13 08:25
#algorithm #Machine Learning #Open Source

Abstract

Open physiological corpora are heterogeneous: they use different sensors, labels, sampling rates, recording settings, and clinical endpoints. They can support detector design, but they do not directly specify which detector rules should be built for a new contactless monitoring platform. We report a controlled four-analyst large-language-model (LLM) workflow for converting 68 public physiological corpora, screened for commercial-use compatibility, into an auditable library of candidate rule shapes for prospective validation.

Four independent commercial LLM families read the corpus documentation under a controlled prompt and produced 695 candidate rule markers (top-markers). Deduplication retained 649 rule records; a threshold-bounds audit then flagged 51 sanity violations for clamping or curator review. Cross-corpus consolidation produced 436 unique rule shapes. Gate-tagging against two hard invariants, native target-hardware channel availability and no multi-night per-patient personalization, identified 94 build-now detector components across four detector-family buckets. The pipeline does not produce a validated clinical detector. It produces an auditable engineering cascade in which analyst disagreement, threshold checks, curator review, and automated continuous-integration (CI) checks route literature-derived rules toward prospective hardware validation.

Blogger's Review: The multi-analyst LLM pipeline presented in this paper offers an innovative approach to generating auditable detection rules by integrating various public physiological datasets. This method not only enhances the efficiency of dataset utilization but also provides a feasible validation pathway for future clinical applications, carrying significant practical implications. The transparency and auditability of this approach will contribute to improving research quality in the field of physiological monitoring.

Original Source: https://arxiv.org/abs/2607.06802

[h] Back to Home