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Predicting adverse hemodynamic events in critically ill patients

2018·23 Zitationen·Current Opinion in Critical CareOpen Access
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23

Zitationen

2

Autoren

2018

Jahr

Abstract

PURPOSE OF REVIEW: The art of predicting future hemodynamic instability in the critically ill has rapidly become a science with the advent of advanced analytical processed based on computer-driven machine learning techniques. How these methods have progressed beyond severity scoring systems to interface with decision-support is summarized. RECENT FINDINGS: Data mining of large multidimensional clinical time-series databases using a variety of machine learning tools has led to our ability to identify alert artifact and filter it from bedside alarms, display real-time risk stratification at the bedside to aid in clinical decision-making and predict the subsequent development of cardiorespiratory insufficiency hours before these events occur. This fast evolving filed is primarily limited by linkage of high-quality granular to physiologic rationale across heterogeneous clinical care domains. SUMMARY: Using advanced analytic tools to glean knowledge from clinical data streams is rapidly becoming a reality whose clinical impact potential is great.

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Themen

Sepsis Diagnosis and TreatmentHealthcare Technology and Patient MonitoringMachine Learning in Healthcare
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