Camyla: Scaling Autonomous Research in Medical Image Segmentation
Yifan Gao, Haoyue Li, Feng Yuan, Xin Gao, Weiran Huang, Xiaosong Wang

TL;DR
Camyla is an autonomous system that conducts medical image segmentation research, generating proposals, experiments, and manuscripts without human input, and outperforms existing automated methods on a comprehensive benchmark.
Contribution
The paper introduces Camyla, a novel autonomous research system that integrates multiple mechanisms to perform scalable, long-term medical image segmentation research without human intervention.
Findings
Camyla produced over 2,700 model implementations and 40 manuscripts.
It surpassed the best existing models on 18-22 of 31 datasets.
Camyla outperformed AutoML and NAS baselines in segmentation quality.
Abstract
We present Camyla, a system for fully autonomous research within the scientific domain of medical image segmentation. Camyla transforms raw datasets into literature-grounded research proposals, executable experiments, and complete manuscripts without human intervention. Autonomous experimentation over long horizons poses three interrelated challenges: search effort drifts toward unpromising directions, knowledge from earlier trials degrades as context accumulates, and recovery from failures collapses into repetitive incremental fixes. To address these challenges, the system combines three coupled mechanisms: Quality-Weighted Branch Exploration for allocating effort across competing proposals, Layered Reflective Memory for retaining and compressing cross-trial knowledge at multiple granularities, and Divergent Diagnostic Feedback for diversifying recovery after underperforming trials.…
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