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Jose Salinas

Showing results (21-30 of 89) with videos related to

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Shock (Augusta, Ga.)|April 15, 2014
Utility of vital signs, heart rate variability and complexity, and machine learning for identifying the need for lifesaving interventions in trauma patientsNehemiah T Liu, John B Holcomb, Charles E Wade, et al.
Shock (Augusta, Ga.)|June 3, 2009
Rapid prediction of trauma patient survival by analysis of heart rate complexity: impact of reducing data set sizeAndriy I Batchinsky, Jose Salinas, Tom Kuusela, et al.
IEEE Transactions on Bio-Medical Engineering|July 8, 2021
Mathematical Modeling, In-Human Evaluation and Analysis of Volume Kinetics and Kidney Function After Burn Injury and ResuscitationGhazal ArabiDarrehDor, Ali Tivay, Chris Meador, et al.
Journal of Medical Engineering & Technology|June 20, 2015
Data quality of a wearable vital signs monitor in the pre-hospital and emergency departments for enhancing prediction of needs for life-saving interventions in trauma patientsNehemiah T Liu, John B Holcomb, Charles E Wade, et al.
Dimensions of Critical Care Nursing : DCCN|December 14, 2011
Clinician satisfaction with computer decision support in the intensive care unitElizabeth A Mann, David A Allen, Maria L Serio-Melvin, et al.
Conference Proceedings : ... Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual Conference|October 20, 2007
A comparison of real-time performance of signal processing algorithms for minimum latency detection of hypovolemic StatesEmil Jovanov, Paul Cox, J Philip Saul, et al.
Journal of Burn Care & Research : Official Publication of the American Burn Association|August 22, 2014
One burn, one standardMichael Giretzlehner, Herbert L Haller, Lee D Faucher, et al.
Bioengineering (Basel, Switzerland)|February 23, 2024
Toward Smart, Automated Junctional Tourniquets-AI Models to Interpret Vessel Occlusion at Physiological Pressure PointsGuy Avital, Sofia I Hernandez Torres, Zechariah J Knowlton, et al.
Burns : Journal of the International Society for Burn Injuries|November 15, 2020
Mathematical model of volume kinetics and renal function after burn injury and resuscitationGhazal Arabidarrehdor, Ali Tivay, Ramin Bighamian, et al.
Critical Care Medicine|March 26, 2009
Hematocrit causes the most significant error in point of care glucometersElizabeth A Mann, Heather F Pidcoke, Jose Salinas, et al.
Pageof 9

Showing results (21-30 of 89) with videos related to

Sort By:
Pageof 9
Shock (Augusta, Ga.)|April 15, 2014
Utility of vital signs, heart rate variability and complexity, and machine learning for identifying the need for lifesaving interventions in trauma patientsNehemiah T Liu, John B Holcomb, Charles E Wade, et al.
Shock (Augusta, Ga.)|June 3, 2009
Rapid prediction of trauma patient survival by analysis of heart rate complexity: impact of reducing data set sizeAndriy I Batchinsky, Jose Salinas, Tom Kuusela, et al.
IEEE Transactions on Bio-Medical Engineering|July 8, 2021
Mathematical Modeling, In-Human Evaluation and Analysis of Volume Kinetics and Kidney Function After Burn Injury and ResuscitationGhazal ArabiDarrehDor, Ali Tivay, Chris Meador, et al.
Journal of Medical Engineering & Technology|June 20, 2015
Data quality of a wearable vital signs monitor in the pre-hospital and emergency departments for enhancing prediction of needs for life-saving interventions in trauma patientsNehemiah T Liu, John B Holcomb, Charles E Wade, et al.
Dimensions of Critical Care Nursing : DCCN|December 14, 2011
Clinician satisfaction with computer decision support in the intensive care unitElizabeth A Mann, David A Allen, Maria L Serio-Melvin, et al.
Conference Proceedings : ... Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual Conference|October 20, 2007
A comparison of real-time performance of signal processing algorithms for minimum latency detection of hypovolemic StatesEmil Jovanov, Paul Cox, J Philip Saul, et al.
Journal of Burn Care & Research : Official Publication of the American Burn Association|August 22, 2014
One burn, one standardMichael Giretzlehner, Herbert L Haller, Lee D Faucher, et al.
Bioengineering (Basel, Switzerland)|February 23, 2024
Toward Smart, Automated Junctional Tourniquets-AI Models to Interpret Vessel Occlusion at Physiological Pressure PointsGuy Avital, Sofia I Hernandez Torres, Zechariah J Knowlton, et al.
Burns : Journal of the International Society for Burn Injuries|November 15, 2020
Mathematical model of volume kinetics and renal function after burn injury and resuscitationGhazal Arabidarrehdor, Ali Tivay, Ramin Bighamian, et al.
Critical Care Medicine|March 26, 2009
Hematocrit causes the most significant error in point of care glucometersElizabeth A Mann, Heather F Pidcoke, Jose Salinas, et al.
Pageof 9