Introduction We developed a new neuroprognostication method for cardiac arrest (CA) using the relative volume of the most dominant cluster of low apparent diffusion coefficient (ADC) voxels and tested its performance in a multicenter setting. Methods Adult (>15 years) out-of-hospital CA patients from three different facilities who underwent an MRI 12 h after resuscitation were retrospectively analyzed. Patients with unknown long-term prognosis or poor baseline neurologic function were excluded. Average ADCs (mean and median), LADCV (relative volume of low-ADC voxels) and DC-LADCV (relative volume of most dominant cluster of low-ADC voxels) were extracted using different thresholds between 400 and 800 × 10−6 mm2 s−1 at 10 × 10−6 mm2...
The data presented in this article are related to our research article entitled ‘Neurophysiological ...
RationaleNeurocognitive outcome after out-of-hospital cardiac arrest (OHCA) is often poor, even when...
peer reviewedObjectives: We hypothesize that the combined use of MRI cortical thickness measurement ...
OBJECTIVE: To test the prognostic value of brain MRI in addition to clinical and electrophysiologic ...
International audienceBACKGROUND: Prognostication in comatose survivors of cardiac arrest is a major...
BACKGROUND: Prognostication in comatose survivors of cardiac arrest is a major clinical challenge. T...
PURPOSE: The aim of this study is to compare a qualitative and a quantitative assessment of brain di...
Background: Despite application of the multimodal European Resuscitation Council and European Societ...
Post-resuscitation guidelines recommend a multimodal algorithm for outcome prediction after cardiac ...
Coma after cardiac arrest (CA) is an important cause of admission to the ICU. Prognosis of post-CA c...
Objective: To test whether 1) quantitative analysis of EEG reactivity (EEG-R) using machine learning...
Purpose: To assess the performance of a 4-step algorithm for neurological prognostication after card...
peer reviewedBackground: Prediction of neurological outcome after cardiac arrest is a major challeng...
Coma after cardiac arrest (CA) is an important cause of admission to the ICU. Prognosis of post-CA c...
Abstract Background This study aimed to investigate the association between ultra-early (within 6 h ...
The data presented in this article are related to our research article entitled ‘Neurophysiological ...
RationaleNeurocognitive outcome after out-of-hospital cardiac arrest (OHCA) is often poor, even when...
peer reviewedObjectives: We hypothesize that the combined use of MRI cortical thickness measurement ...
OBJECTIVE: To test the prognostic value of brain MRI in addition to clinical and electrophysiologic ...
International audienceBACKGROUND: Prognostication in comatose survivors of cardiac arrest is a major...
BACKGROUND: Prognostication in comatose survivors of cardiac arrest is a major clinical challenge. T...
PURPOSE: The aim of this study is to compare a qualitative and a quantitative assessment of brain di...
Background: Despite application of the multimodal European Resuscitation Council and European Societ...
Post-resuscitation guidelines recommend a multimodal algorithm for outcome prediction after cardiac ...
Coma after cardiac arrest (CA) is an important cause of admission to the ICU. Prognosis of post-CA c...
Objective: To test whether 1) quantitative analysis of EEG reactivity (EEG-R) using machine learning...
Purpose: To assess the performance of a 4-step algorithm for neurological prognostication after card...
peer reviewedBackground: Prediction of neurological outcome after cardiac arrest is a major challeng...
Coma after cardiac arrest (CA) is an important cause of admission to the ICU. Prognosis of post-CA c...
Abstract Background This study aimed to investigate the association between ultra-early (within 6 h ...
The data presented in this article are related to our research article entitled ‘Neurophysiological ...
RationaleNeurocognitive outcome after out-of-hospital cardiac arrest (OHCA) is often poor, even when...
peer reviewedObjectives: We hypothesize that the combined use of MRI cortical thickness measurement ...