Using machine learning to identify individuals at risk for intimate partner violence

Using machine learning to identify individuals at risk for intimate partner violence

AI News - General 7 min read

About this article

Researchers at Mass General Brigham have developed a series of artificial intelligence (AI) tools that uses machine learning to identify individuals who may be at risk for intimate partner violence (IPV) using information from their electronic medical records (EMRs).

Exploring the nanoscale: How AFM is transforming cosmetic science Alexander Dulebo Discover how Bruker is helping drive innovation in cosmetic science through advanced AFM techniques.

Originally published on March 30, 2026. Curated by AI News.

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