AI-Driven-Clinical-Surveillance
Health15/12/2020 9:50:00 PM

White paper: AI-driven clinical surveillance accurately identifies patient risk and informs objective care decisions

Hospital leaders are acutely aware that one of their biggest unmet challenges is optimizing the use of high-intensity care settings to most effectively manage high-risk patients. AI-based risk models are becoming a key tool to support care teams making real-time decisions about patient status and the ideal level of care.

Hospital researchers have not ignored the challenge of identifying decompensating patients early. Numerous studies have shown that early identification of deteriorating patients in hospital units outside of critical care can improve mortality rates and clinical outcomes—and reduce costs.

Download this white paper: AI-driven clinical surveillance accurately identifies patient risk and informs objective care decisions to learn more about these studies and evidence that supports the strong need for AI-driven early warning systems.

Access the white paper

Itay Klaz
Medical Director
Dr. Itay Klaz is responsible for directing clinical efforts toward the development, implementation and support of Wolters Kluwer Sepsis Surveillance software solution.