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Optimization Instability in Autonomous Agentic Workflows for Clinical Symptom Detection

arXiv:2602.16037v1h-index: 6Has Code
Originality Incremental advance
AI Analysis

This addresses a critical failure mode in autonomous AI systems for low-prevalence clinical classification tasks, though it is incremental in proposing a stabilization method.

The paper investigated optimization instability in autonomous agentic workflows for clinical symptom detection, where continued autonomous improvement degraded classifier performance, particularly at low prevalence; with a selector agent intervention, the system outperformed expert-curated lexicons by up to 331% in F1 score.

Autonomous agentic workflows that iteratively refine their own behavior hold considerable promise, yet their failure modes remain poorly characterized. We investigate optimization instability, a phenomenon in which continued autonomous improvement paradoxically degrades classifier performance, using Pythia, an open-source framework for automated prompt optimization. Evaluating three clinical symptoms with varying prevalence (shortness of breath at 23%, chest pain at 12%, and Long COVID brain fog at 3%), we observed that validation sensitivity oscillated between 1.0 and 0.0 across iterations, with severity inversely proportional to class prevalence. At 3% prevalence, the system achieved 95% accuracy while detecting zero positive cases, a failure mode obscured by standard evaluation metrics. We evaluated two interventions: a guiding agent that actively redirected optimization, amplifying overfitting rather than correcting it, and a selector agent that retrospectively identified the best-performing iteration successfully prevented catastrophic failure. With selector agent oversight, the system outperformed expert-curated lexicons on brain fog detection by 331% (F1) and chest pain by 7%, despite requiring only a single natural language term as input. These findings characterize a critical failure mode of autonomous AI systems and demonstrate that retrospective selection outperforms active intervention for stabilization in low-prevalence classification tasks.

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