| Literature DB >> 31346799 |
Candelaria de Haro1,2, Ana Ochagavia3,4, Josefina López-Aguilar3,4, Sol Fernandez-Gonzalo3,5, Guillem Navarra-Ventura3, Rudys Magrans3,4, Jaume Montanyà6, Lluís Blanch3,4.
Abstract
BACKGROUND: Mechanical ventilation is common in critically ill patients. This life-saving treatment can cause complications and is also associated with long-term sequelae. Patient-ventilator asynchronies are frequent but underdiagnosed, and they have been associated with worse outcomes. MAIN BODY: Asynchronies occur when ventilator assistance does not match the patient's demand. Ventilatory overassistance or underassistance translates to different types of asynchronies with different effects on patients. Underassistance can result in an excessive load on respiratory muscles, air hunger, or lung injury due to excessive tidal volumes. Overassistance can result in lower patient inspiratory drive and can lead to reverse triggering, which can also worsen lung injury. Identifying the type of asynchrony and its causes is crucial for effective treatment. Mechanical ventilation and asynchronies can affect hemodynamics. An increase in intrathoracic pressure during ventilation modifies ventricular preload and afterload of ventricles, thereby affecting cardiac output and hemodynamic status. Ineffective efforts can decrease intrathoracic pressure, but double cycling can increase it. Thus, asynchronies can lower the predictive accuracy of some hemodynamic parameters of fluid responsiveness. New research is also exploring the psychological effects of asynchronies. Anxiety and depression are common in survivors of critical illness long after discharge. Patients on mechanical ventilation feel anxiety, fear, agony, and insecurity, which can worsen in the presence of asynchronies. Asynchronies have been associated with worse overall prognosis, but the direct causal relation between poor patient-ventilator interaction and worse outcomes has yet to be clearly demonstrated. Critical care patients generate huge volumes of data that are vastly underexploited. New monitoring systems can analyze waveforms together with other inputs, helping us to detect, analyze, and even predict asynchronies. Big data approaches promise to help us understand asynchronies better and improve their diagnosis and management.Entities:
Keywords: Asynchronies; Big data; Cognitive; Critically ill; Heart lung interaction; ICU; Mechanical ventilation; Outcome; Patient-ventilator interaction; Psychological disorders
Year: 2019 PMID: 31346799 PMCID: PMC6658621 DOI: 10.1186/s40635-019-0234-5
Source DB: PubMed Journal: Intensive Care Med Exp ISSN: 2197-425X
Fig. 1Representation and description of the most common asynchronies. Ineffective efforts, double cycling, reverse triggering, and inspiratory airflow dyssynchrony are graphically represented and described together with their causes. Red arrows indicate where the asynchrony described is present
Fig. 2Inspiratory airflow dyssynchrony. Sequence of airflow and airway pressure waveforms corresponding to a same patient in the same day ventilated in assist volume control mode. Set airflow is insufficient for the patient’s needs and originated different degrees of airflow dyssynchrony or starvation. a Mild airflow dyssynchrony. b, c The progression of airflow dyssynchrony through a more severe stage. d The appearance of double cycling secondary to a huge and large inspiratory effort
Comparison of some automated methods for patient-ventilator asynchrony detection
| Type of PVA | Algorithm | Performance | |
|---|---|---|---|
| Gholami et al. (2018) [ | Cycling asynchrony (premature and delayed cycling) | ML: Random forest and Pressure and airflow signals | Se 89–97%, Sp 93–99%, Kappa index 0.9 |
ventMAP platform Adams et al. (2017) [ | Double-trigger and breath stacking | Rule-based algorithm Pressure and airflow signals Derivation cohort, | Se 94–96.7%, Sp 92–98%, Acc 92.2–97.7% (on the validation cohort) |
NeuroSync index Sinderby et al. (2013) [ | Patient-ventilator interaction classification (asynchronous, dyssynchronous or synchronous) | Rule-based timings algorithm EAdi and pressure signals | ICC 0.95 vs. Colombo et al. (2011) [ |
Better Care® system Blanch et al. (2012) [ | Ineffective efforts during expiration | Rule-based combining digital signal processing techniques and ROC curves Airflow signal Cohort 1: Cohort 2: | Se 91.5%, Sp 91.7%, PPV 80.3%, NPV 96.7%, Kappa index 0.797 (vs. the expert’s classification) Se 65.2%, Sp 99.3%, PPV 90.8%, NPV 96.5%, Kappa index 0.739 (vs. EAdi signal) |
| Gutierrez et al. (2011) [ | Index for asynchronous/no asynchronous breaths | Time-frequency analysis Airflow signals | Se 83%, Sp 83% when index < 43% for AI > 10% |
| Mulqueeny et al. (2007) [ | Ineffective triggering and double triggering | Rule-based and digital signal processing methods Airflow and pressure signals | Se 91%, Sp 97% |
PVI monitor Younes et al. (2007) [ | Ineffective efforts | Rule-based Equation of motion from pressure, airflow, and Peso signals | Se 79.7% |
Abbreviations: ML machine learning, Se sensitivity, Sp specificity, ICC intraclass correlation coefficient, Acc overall accuracy, Peso esophageal pressure, PPV positive predictive value, NPV negative predictive value, ROC receiver operating characteristics, AI asynchrony index according to the definition from Thille et al. [7]
Fig. 3Future medical trends in real-time clinical decision making for mechanically ventilated critically patients in ICU. With adequate interoperability and data storage, clinical decision support systems based on big data analytics can automatically recognize patterns in data; moreover, these systems have the ability to improve continuously by “learning” from past and new inputs. Using the cloud for big data analytics makes it easier to make predictions and better understand trends