HIT Consultant October 17, 2024
Fred Pennic

With healthcare data breaches on the rise and concerns about patient privacy escalating, the role of AI in anomaly detection is becoming increasingly critical. To address these challenges and improve patient data security, AI-driven anomaly detection is emerging as a critical solution. To gain deeper insights into this evolving landscape, we recently sat down with Sarah Danielson, Sr. Director of Healthcare Strategy and Advisory at Trace3 to discuss how AI-driven anomaly detection can help protect patient data and improve accuracy.

How do traditional anomaly detection methods fail to keep up with the volume and complexity of healthcare data and what impact do false positives have on the healthcare industry?

Sarah Danielson, Sr Director, Strategy & Advisory, Health Solutions Group...

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Topics: AI (Artificial Intelligence), Healthcare System, Interview / Q&A, Privacy / Security, Technology, Trends
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