Clinical AI for Avoidable Patient Harm

Jvion

Jvion reduces avoidable costs & utilization by identifying and modifying patient risk and outcomes.

Jvion's unique clinical AI platform powers a robust set of solutions that help provider organizations identify patients on the cusp of becoming high-risk for a multitude of clinical events and what can be done to change their trajectory.  The Jvion CORE™ enables clinical staff and care teams to focus attention, resources, and individualized interventions on patients whose outcomes can be improved. Unlike traditional AI and predictive analytic solutions that merely identify high-risk patients and cause alarm fatigue, Jvion pinpoints patients on a risk trajectory, determines if specific patients’ trajectories can be changed, and if so, provides patient-specific recommendations. The core uses unique Eigen-based mathematics, a universal data set of more 30 million patients, and inferences built from relevant correlations between clinical events and social determinants of health, to identify hidden patient risk and the right course of action to take against that risk. The Jvion CORE—can be quickly applied to a multitude of clinical events including but not limited to:  Sepsis, Re-admissions, Falls, Avoidable ER Visits, Hospice & Palliative Care, Behavioral Health, Population Health and more. Recognized by KLAS, Frost & Sullivan, IDC and Blackbook as a leader in the clinical AI space,  Jvion has proven effective in clinical settings for over a decade, with hospitals reporting average reductions of 30% in avoidable harm incidents and avoidable cost savings of $6.3 million a year.
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