Population Health News

Researchers Develop Machine-Learning System to Detect Public Health Threats

Researchers have developed an automated machine-learning system that can provide 'pre-syndromic' public health surveillance to identify new or rare disease clusters.

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By Shania Kennedy

- Researchers from New York University’s Machine Learning for Good Laboratory (ML4G Lab), Carnegie Mellon University, and the New York City Department of Health and Mental Hygiene (NYC DOHMH) have developed an automated machine-learning system designed to detect rare or previously unseen disease clusters.

According to the press release shared with HealthITAnalytics via email, current automated systems used to identify public health threats rely on “syndromic surveillance” to detect existing threats but can fall short of identifying new ones.

“Existing systems are good at detecting outbreaks of diseases that we already know about and are actively looking for, like flu or COVID,” said NYU Professor Daniel B. Neill, PhD, director of the ML4G Lab, in the press release. “But what happens when something new and scary comes along? Pre-syndromic surveillance provides a safety net to identify emerging threats that other systems would fail to detect.”