Systematic reviews (SRs) inform evidence-based decision making. Yet, they take over a year to complete, are prone to human error, and face challenges with reproducibility; limiting access to timely and reliable information. We developed otto-SR, an end-to-end agentic workflow using large language models (LLMs) to support and automate the SR workflow from initial search to analysis. We found that otto-SR outperformed traditional dual human workflows in SR screening (otto-SR: 96.7% sensitivity,...