AI Meets Genomics: Predictive Oncology Breakthrough Coincides with Regeneron's $256M 23andMe Acquisition

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Predictive Oncology Inc.
Predictive Oncology Inc.

Company Leverages More Than Twenty Years of Drug Response Data Derived from Massive Biobank of Live Cell Tumor Samples

PITTSBURGH, May 22, 2025 (GLOBE NEWSWIRE) -- Predictive Oncology Inc. (NASDAQ: POAI) moves to leverage its vast biobank of more than 150,000 heterogenous live cell tumor samples and drug response data to aggressively pursue novel drug discovery, biomarker discovery and drug repurposing using AI and machine learning.

Earlier this week, Regeneron Pharmaceuticals announced its acquisition of 23andMe for $256 million, marking a strategic step in the industry-wide shift toward data-driven drug discovery. The move highlights the enduring value of 23andMe’s vast genomic database and its proven track record in therapeutic development partnerships.

23andMe houses one of the world’s largest and most comprehensive longitudinal genomic datasets, with many customers having consented to ongoing health tracking. This unique trove of real-world health data offers powerful insights into disease progression, treatment efficacy, and patient stratification—making it a highly valuable resource for precision drug development.

A testament to this value is 23andMe’s previous $300 million partnership with GlaxoSmithKline (GSK) in 2018, which was later extended in an all-cash deal. The continuation signaled strong confidence in the utility of 23andMe’s data to inform drug discovery efforts and guide clinical decisions.

With this acquisition, Regeneron is expected to integrate 23andMe’s consumer genomic and health data into its own R&D pipeline. The company aims to strengthen its capabilities in areas such as target identification, biomarker discovery, and clinical trial optimization, aligning with a broader trend across the biopharma landscape: the convergence of artificial intelligence, real-world data, and predictive analytics to improve therapeutic outcomes.

At the forefront of this transformation stands Predictive Oncology.

“We recently achieved a major milestone in AI-enabled cancer drug discovery,” said Raymond Vennare, Chairman and Chief Executive Officer of Predictive Oncology. “Using compounds sourced from the Natural Products Discovery Core at the University of Michigan, we successfully developed predictive tumor response models for 21 previously untested molecules. These models are targeted at some of the most common cancer types, including breast, colon, and ovarian cancers.

“What makes this advancement particularly significant is that these compounds had no prior response data—making this a clear demonstration of AI’s ability not just to enhance but to lead in early-stage drug discovery. Predictive Oncology’s proprietary active machine learning platform was able to model tumor response across diverse cancer types using insights derived from its biobank of over 150,000 tumor samples spanning 137 cancer indications.”