Prediction of episode of hemodynamic instability using an electrocardiogram based analytic: a retrospective cohort study

Author:

Benson Bryce,Belle Ashwin,Lee Sooin,Bassin Benjamin S.,Medlin Richard P.,Sjoding Michael W.,Ward Kevin R.

Abstract

Abstract Background Predicting the onset of hemodynamic instability before it occurs remains a sought-after goal in acute and critical care medicine. Technologies that allow for this may assist clinicians in preventing episodes of hemodynamic instability (EHI). We tested a novel noninvasive technology, the Analytic for Hemodynamic Instability-Predictive Indicator (AHI-PI), which analyzes a single lead of electrocardiogram (ECG) and extracts heart rate variability and morphologic waveform features to predict an EHI prior to its occurrence. Methods Retrospective cohort study at a quaternary care academic health system using data from hospitalized adult patients between August 2019 and April 2020 undergoing continuous ECG monitoring with intermittent noninvasive blood pressure (NIBP) or with continuous intraarterial pressure (IAP) monitoring. Results AHI-PI’s low and high-risk indications were compared with the presence of EHI in the future as indicated by vital signs (heart rate > 100 beats/min with a systolic blood pressure < 90 mmHg or a mean arterial blood pressure of < 70 mmHg). 4,633 patients were analyzed (3,961 undergoing NIBP monitoring, 672 with continuous IAP monitoring). 692 patients had an EHI (380 undergoing NIBP, 312 undergoing IAP). For IAP patients, the sensitivity and specificity of AHI-PI to predict EHI was 89.7% and 78.3% with a positive and negative predictive value of 33.7% and 98.4% respectively. For NIBP patients, AHI-PI had a sensitivity and specificity of 86.3% and 80.5% with a positive and negative predictive value of 11.7% and 99.5% respectively. Both groups performed with an AUC of 0.87. AHI-PI predicted EHI in both groups with a median lead time of 1.1 h (average lead time of 3.7 h for IAP group, 2.9 h for NIBP group). Conclusions AHI-PI predicted EHIs with high sensitivity and specificity and within clinically significant time windows that may allow for intervention. Performance was similar in patients undergoing NIBP and IAP monitoring.

Publisher

Springer Science and Business Media LLC

Subject

Anesthesiology and Pain Medicine

Reference37 articles.

1. Kause J, Smith G, Prytherch D, et al. A comparison of antecedents to cardiac arrests, deaths and emergency intensive care admissions in Australia and New Zealand, and the United Kingdom–the ACADEMIA study. Resuscitation. 2004;62(3):275–82. https://doi.org/10.1016/j.resuscitation.2004.05.016.[publishedOnlineFirst:2004/08/25].

2. Johnston MJ, Arora S, King D, et al. A systematic review to identify the factors that affect failure to rescue and escalation of care in surgery. Surgery. 2015;157(4):752–63. https://doi.org/10.1016/j.surg.2014.10.017.[publishedOnlineFirst:2015/03/22].

3. Mitchell IA, McKay H, Van Leuvan C, et al. A prospective controlled trial of the effect of a multi-faceted intervention on early recognition and intervention in deteriorating hospital patients. Resuscitation. 2010;81(6):658–66. https://doi.org/10.1016/j.resuscitation.2010.03.001.[publishedOnlineFirst:2010/04/10].

4. Green M, Lander H, Snyder A, et al. Comparison of the Between the Flags calling criteria to the MEWS, NEWS and the electronic Cardiac Arrest Risk Triage (eCART) score for the identification of deteriorating ward patients. Resuscitation. 2018;123:86–91. https://doi.org/10.1016/j.resuscitation.2017.10.028.[publishedOnlineFirst:2017/11/25].

5. Cummings BC, Ansari S, Motyka JR, et al. Predicting intensive care transfers and other unforeseen events: analytic model validation study and comparison to existing methods. JMIR Med Inform. 2021;9(4):e25066. https://doi.org/10.2196/25066.[published Online First: 2021/04/06].

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