Development and Validation of a Multi-Algorithm Analytic Platform to Detect Off-Target Mechanical Ventilation

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作者
Jason Y. Adams
Monica K. Lieng
Brooks T. Kuhn
Greg B. Rehm
Edward C. Guo
Sandra L. Taylor
Jean-Pierre Delplanque
Nicholas R. Anderson
机构
[1] Division of Pulmonary,
[2] Critical Care,undefined
[3] and Sleep Medicine,undefined
[4] University of California Davis,undefined
[5] School of Medicine,undefined
[6] University of California Davis,undefined
[7] Department of Computer Science,undefined
[8] University of California Davis,undefined
[9] Department of Public Health Sciences,undefined
[10] Division of Biostatistics,undefined
[11] University of California Davis,undefined
[12] Department of Mechanical and Aerospace Engineering,undefined
[13] University of California Davis,undefined
[14] Department of Public Health Sciences,undefined
[15] Division of Informatics,undefined
[16] University of California Davis,undefined
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摘要
Healthcare-specific analytic software is needed to process the large volumes of streaming physiologic waveform data increasingly available from life support devices such as mechanical ventilators. Detection of clinically relevant events from these data streams will advance understanding of critical illness, enable real-time clinical decision support, and improve both clinical outcomes and patient experience. We used mechanical ventilation waveform data (VWD) as a use case to address broader issues of data access and analysis including discrimination between true events and waveform artifacts. We developed an open source data acquisition platform to acquire VWD, and a modular, multi-algorithm analytic platform (ventMAP) to enable automated detection of off-target ventilation (OTV) delivery in critically-ill patients. We tested the hypothesis that use of artifact correction logic would improve the specificity of clinical event detection without compromising sensitivity. We showed that ventMAP could accurately detect harmful forms of OTV including excessive tidal volumes and common forms of patient-ventilator asynchrony, and that artifact correction significantly improved the specificity of event detection without decreasing sensitivity. Our multi-disciplinary approach has enabled automated analysis of high-volume streaming patient waveform data for clinical and translational research, and will advance the study and management of critically ill patients requiring mechanical ventilation.
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