Hunt Globally: Wide Search AI Agents for Drug Asset Scouting in Investing, Business Development, and Competitive Intelligence
Vlad Vinogradov, Alisa Vinogradova, Luba Greenwood, Ilya Yasny, Dmitry Kobyzev, Shoman Kasbekar, Kong Nguyen, Dmitrii Radkevich, Roman Doronin, Andrey Doronichev

TL;DR
This paper introduces a benchmarking methodology and a specialized AI agent for comprehensive, multilingual drug asset scouting, significantly outperforming existing models in recall and precision.
Contribution
It presents a novel benchmarking approach and a tuned self-learning AI agent that achieves high recall in multilingual, heterogeneous drug asset discovery tasks.
Findings
Bioptic Agent achieves 79.7% F1 score, outperforming existing models.
Performance improves with increased compute, indicating scalability.
Constructed a challenging, real-world benchmark with expert-derived queries.
Abstract
Bio-pharmaceutical innovation has shifted: many new drug assets now originate outside the United States and are disclosed primarily via regional, non-English channels. Recent data suggests over 85% of patent filings originate outside the U.S., with China accounting for nearly half of the global total; a growing share of scholarly output is also non-U.S. Industry estimates put China at 30% of global drug development, spanning 1,200+ novel candidates. In this high-stakes environment, failing to surface "under-the-radar" assets creates multi-billion-dollar risk for investors and business development teams, making asset scouting a coverage-critical competition where speed and completeness drive value. Yet today's Deep Research AI agents still lag human experts in achieving high-recall discovery across heterogeneous, multilingual sources without hallucinations. We propose a benchmarking…
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