Javascript must be enabled to continue!
Automated Evaluation for Pericardial Effusion and Cardiac Tamponade with Echocardiographic Artificial Intelligence
View through CrossRef
AbstractBackgroundTimely and accurate detection of pericardial effusion and assessment cardiac tamponade remain challenging and highly operator dependent.ObjectivesArtificial intelligence has advanced many echocardiographic assessments, and we aimed to develop and validate a deep learning model to automate the assessment of pericardial effusion severity and cardiac tamponade from echocardiogram videos.MethodsWe developed a deep learning model (EchoNet-Pericardium) using temporal-spatial convolutional neural networks to automate pericardial effusion severity grading and tamponade detection from echocardiography videos. The model was trained using a retrospective dataset of 1,427,660 videos from 85,380 echocardiograms at Cedars-Sinai Medical Center (CSMC) to predict PE severity and cardiac tamponade across individual echocardiographic views and an ensemble approach combining predictions from five standard views. External validation was performed on 33,310 videos from 1,806 echocardiograms from Stanford Healthcare (SHC).ResultsIn the held out CSMC test set, EchoNet-Pericardium achieved an AUC of 0.900 (95% CI: 0.884– 0.916) for detecting moderate or larger pericardial effusion, 0.942 (95% CI: 0.917–0.964) for large pericardial effusion, and 0.955 (95% CI: 0.939–0.968) for cardiac tamponade. In the SHC external validation cohort, the model achieved AUCs of 0.869 (95% CI: 0.794–0.933) for moderate or larger pericardial effusion, 0.959 (95% CI: 0.945–0.972) for large pericardial effusion, and 0.966 (95% CI: 0.906–0.995) for cardiac tamponade. Subgroup analysis demonstrated consistent performance across ages, sexes, left ventricular ejection fraction, and atrial fibrillation statuses.ConclusionsOur deep learning-based framework accurately grades pericardial effusion severity and detects cardiac tamponade from echocardiograms, demonstrating consistent performance and generalizability across different cohorts. This automated tool has the potential to enhance clinical decision-making by reducing operator dependence and expediting diagnosis.
Cold Spring Harbor Laboratory
Title: Automated Evaluation for Pericardial Effusion and Cardiac Tamponade with Echocardiographic Artificial Intelligence
Description:
AbstractBackgroundTimely and accurate detection of pericardial effusion and assessment cardiac tamponade remain challenging and highly operator dependent.
ObjectivesArtificial intelligence has advanced many echocardiographic assessments, and we aimed to develop and validate a deep learning model to automate the assessment of pericardial effusion severity and cardiac tamponade from echocardiogram videos.
MethodsWe developed a deep learning model (EchoNet-Pericardium) using temporal-spatial convolutional neural networks to automate pericardial effusion severity grading and tamponade detection from echocardiography videos.
The model was trained using a retrospective dataset of 1,427,660 videos from 85,380 echocardiograms at Cedars-Sinai Medical Center (CSMC) to predict PE severity and cardiac tamponade across individual echocardiographic views and an ensemble approach combining predictions from five standard views.
External validation was performed on 33,310 videos from 1,806 echocardiograms from Stanford Healthcare (SHC).
ResultsIn the held out CSMC test set, EchoNet-Pericardium achieved an AUC of 0.
900 (95% CI: 0.
884– 0.
916) for detecting moderate or larger pericardial effusion, 0.
942 (95% CI: 0.
917–0.
964) for large pericardial effusion, and 0.
955 (95% CI: 0.
939–0.
968) for cardiac tamponade.
In the SHC external validation cohort, the model achieved AUCs of 0.
869 (95% CI: 0.
794–0.
933) for moderate or larger pericardial effusion, 0.
959 (95% CI: 0.
945–0.
972) for large pericardial effusion, and 0.
966 (95% CI: 0.
906–0.
995) for cardiac tamponade.
Subgroup analysis demonstrated consistent performance across ages, sexes, left ventricular ejection fraction, and atrial fibrillation statuses.
ConclusionsOur deep learning-based framework accurately grades pericardial effusion severity and detects cardiac tamponade from echocardiograms, demonstrating consistent performance and generalizability across different cohorts.
This automated tool has the potential to enhance clinical decision-making by reducing operator dependence and expediting diagnosis.
Related Results
Pericardial effusion and its relationship to age, sex, causes and degrees
Pericardial effusion and its relationship to age, sex, causes and degrees
Abstract
Introduction
Pericardial effusion is one of the most important and dangerous cardiac manifestations that may lead to death. This study aims to study the characteri...
Pericardial tamponade during ventriculoperitoneal shunt placement : a case report (Preprint)
Pericardial tamponade during ventriculoperitoneal shunt placement : a case report (Preprint)
BACKGROUND
Intraoperative tamponade is a serious emergency, which can lead to cardiac arrest and death if not diagnosed in time. Lateral ventricular periton...
Transudative Tuberculous Pleural Effusion Mimicking Massive Pericardial Effusion: A Case Report
Transudative Tuberculous Pleural Effusion Mimicking Massive Pericardial Effusion: A Case Report
The presentation of a patient with a pleural effusion can range from an incidental finding to a serious condition, which can lead to being hemodynamically compromised. Here, we dis...
Cardiac Tamponade and Different Modes of Artifical Ventilation
Cardiac Tamponade and Different Modes of Artifical Ventilation
Cardiac tamponade after open‐heart surgery often occurs in a situation when the patient is still mechanically ventilated and needs circulatory support with catecholamines. To evalu...
Massive intractable pericardial effusion in a patient with systemic lupus erythematosus treated successfully with pericardial fenestration alone
Massive intractable pericardial effusion in a patient with systemic lupus erythematosus treated successfully with pericardial fenestration alone
Systemic lupus erythematosus (SLE) is often complicated by pericarditis with effusion, which generally responds well to glucocorticoid. We report herein a Japanese patient with SLE...
e0567 Early diagnosis and rescue pericardiocentesis for acute cardiac tamponade during radiofrequency ablation for arrhythmias, Is fluoroscopy enough?
e0567 Early diagnosis and rescue pericardiocentesis for acute cardiac tamponade during radiofrequency ablation for arrhythmias, Is fluoroscopy enough?
Background
With the number of complex catheter ablation procedures increasing, procedure-related acute cardiac tamponade is encountered more frequently in the car...
Pericardial effusion in children at tertiary national referral hospital, Addis Ababa, Ethiopia: a 7-year institution based review
Pericardial effusion in children at tertiary national referral hospital, Addis Ababa, Ethiopia: a 7-year institution based review
AbstractBackgroundPericardial effusion (PE) is a rare yet an important cause of child mortality due to collection of excess fluid in pericardial space. The study aimed to describe ...
Malignant pericardial effusion complicated by cardiac tamponade under atezolizumab
Malignant pericardial effusion complicated by cardiac tamponade under atezolizumab
Immune-related adverse events including cardiac toxicity are increasingly described in patients receiving immune checkpoint inhibitors. We described a malignant pericardial effusio...


