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Automated Pupillometry for Prediction of Electroencephalographic Reactivity in Critically Ill Patients: A Prospective Cohort Study.
Peluso, Lorenzo; Ferlini, Lorenzo; Talamonti, Marta; Ndieugnou Djangang, Narcisse; Gouvea Bogossian, Elisa; Menozzi, Marco; Annoni, Filippo; Macchini, Elisabetta; Legros, Benjamin; Severgnini, Paolo; Creteur, Jacques; Oddo, Mauro; Vincent, Jean-Louis; Gaspard, Nicolas; Taccone, Fabio Silvio.
Affiliation
  • Peluso L; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Ferlini L; Department of Neurology, Erasme University Hospital, Brussels, Belgium.
  • Talamonti M; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Ndieugnou Djangang N; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Gouvea Bogossian E; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Menozzi M; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Annoni F; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Macchini E; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Legros B; Department of Neurology, Erasme University Hospital, Brussels, Belgium.
  • Severgnini P; Department of Biotechnology and Life Sciences, Insubria University, Cardiac Anesthesiology and Intensive Care - ASST Sette Laghi, Varese, Italy.
  • Creteur J; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Oddo M; Critical Care Clinical Research Unit, Department of Intensive Care Medicine, CHUV-Lausanne University Hospital, Lausanne, Switzerland.
  • Vincent JL; Department of Intensive Care, Erasme University Hospital, Brussels, Belgium.
  • Gaspard N; Department of Neurology, Erasme University Hospital, Brussels, Belgium.
  • Taccone FS; Department of Neurology, Yale University Medical School, New Haven, CT, United States.
Front Neurol ; 13: 867603, 2022.
Article in En | MEDLINE | ID: mdl-35386412
ABSTRACT

Background:

Electroencephalography (EEG) is widely used to monitor critically ill patients. However, EEG interpretation requires the presence of an experienced neurophysiologist and is time-consuming. Aim of this study was to evaluate whether parameters derived from an automated pupillometer (AP) might help to assess the degree of cerebral dysfunction in critically ill patients.

Methods:

Prospective study conducted in the Department of Intensive Care of Erasme University Hospital in Brussels, Belgium. Pupillary assessments were performed using the AP in three subgroups of patients, concomitantly monitored with continuous EEG "anoxic brain injury", "Non-anoxic brain injury" and "other diseases". An independent neurologist blinded to patient's history and AP results scored the degree of encephalopathy and reactivity on EEG using a standardized scale. The mean value of Neurologic Pupil Index (NPi), pupillary size, constriction rate, constriction and dilation velocity (CV and DV) and latency for both eyes, obtained using the NPi®-200 (Neuroptics, Laguna Hills, CA, USA), were reported.

Results:

We included 214 patients (mean age 60 years, 55% male). EEG tracings were categorized as mild (n = 111, 52%), moderate (n = 65, 30%) or severe (n = 16, 8%) encephalopathy; burst-suppression (n = 19, 9%) or suppression background (n = 3, 1%); a total of 38 (18%) EEG were classified as "unreactive". We found a significant difference in all pupillometry variables among different EEG categories. Moreover, an unreactive EEG was associated with lower NPi, pupil size, pupillary reactivity, CV and DV and a higher latency than reactive recordings. Low DV (Odds ratio 0.020 [95% confidence intervals 0.002-0.163]; p < 0.01) was independently associated with an unreactive EEG, together with the use of analgesic/sedative drugs and high lactate concentrations. In particular, DV values had an area under the curve (AUC) of 0.86 [0.79-0.92; p < 0.01] to predict the presence of unreactive EEG. In subgroups analyses, AUC of DV to predict unreactive EEG was lower (0.72 [0.56-0.87]; p < 0.01) in anoxic brain injury than Non-anoxic brain injury (0.92 [0.85-1.00]; p < 0.01) and other diseases (0.96 [0.90-1.00]; p < 0.01).

Conclusions:

This study suggests that low DV measured by the AP might effectively identify an unreactive EEG background, in particular in critically ill patients without anoxic brain injury.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Etiology_studies / Observational_studies / Prognostic_studies / Risk_factors_studies Language: En Journal: Front Neurol Year: 2022 Document type: Article Affiliation country: Belgium

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Etiology_studies / Observational_studies / Prognostic_studies / Risk_factors_studies Language: En Journal: Front Neurol Year: 2022 Document type: Article Affiliation country: Belgium