Background Artificial intelligence (AI) has the potential to improve prenatal detection of congenital heart disease. We analysed the performance of the current national screening programme in detecting hypoplastic left heart syndrome (HLHS) to compare with our own AI model. Methods Current screening programme performance was calculated from local and national sources. AI models were trained using four-chamber ultrasound views of the fetal heart, using a ResNet classifier. Results Estimated current fetal screening programme sensitivity and specificity for HLHS were 94.3% and 99.985%, respectively. Depending on calibration, AI models to detect HLHS were either highly sensitive (sensitivity 100%, specificity 94.0%) or highly specific ...
Abstract Congenital malformations of the central nervous system are among the most common major cong...
[[abstract]]PURPOSE: Early confirmation or ruling out biliary atresia (BA) is essential for infants ...
Background: The accuracy of an artificial intelligence model based on echocardiography video data in...
Objective Advances in artificial intelligence (AI) have demonstrated potential to improve medical di...
There has been a recent explosion in the use of artificial intelligence (AI), which is now part of o...
INTRODUCTION: This study aims to investigate non-invasive electrocardiography as a method for the de...
Prenatal screening with ultrasound can lower neonatal mortality significantly for selected cardiac a...
International audienceABSTRACT Objective Prenatal diagnosis of a rare disease on ultrasound relies o...
Congenital heart disease (CHD) is the most common birth defect. Fetal screening ultrasound provides ...
Congenital heart disease is considered as one the most common groups of congenital malformations whi...
(1) Background: Artificial Intelligence (AI) is a modern tool with numerous applications in the medi...
Diagnosing abnormal fetal cardiac function using ultrasound is a complicated procedure which makes i...
Objectives: The aim of this study was to evaluate the agreement between visual and automatic methods...
Fetal ultrasound screening during pregnancy plays a vital role in the early detection of fetal malfo...
Objectives We study the performance of an artificial intelligence (AI) program designed to assist ra...
Abstract Congenital malformations of the central nervous system are among the most common major cong...
[[abstract]]PURPOSE: Early confirmation or ruling out biliary atresia (BA) is essential for infants ...
Background: The accuracy of an artificial intelligence model based on echocardiography video data in...
Objective Advances in artificial intelligence (AI) have demonstrated potential to improve medical di...
There has been a recent explosion in the use of artificial intelligence (AI), which is now part of o...
INTRODUCTION: This study aims to investigate non-invasive electrocardiography as a method for the de...
Prenatal screening with ultrasound can lower neonatal mortality significantly for selected cardiac a...
International audienceABSTRACT Objective Prenatal diagnosis of a rare disease on ultrasound relies o...
Congenital heart disease (CHD) is the most common birth defect. Fetal screening ultrasound provides ...
Congenital heart disease is considered as one the most common groups of congenital malformations whi...
(1) Background: Artificial Intelligence (AI) is a modern tool with numerous applications in the medi...
Diagnosing abnormal fetal cardiac function using ultrasound is a complicated procedure which makes i...
Objectives: The aim of this study was to evaluate the agreement between visual and automatic methods...
Fetal ultrasound screening during pregnancy plays a vital role in the early detection of fetal malfo...
Objectives We study the performance of an artificial intelligence (AI) program designed to assist ra...
Abstract Congenital malformations of the central nervous system are among the most common major cong...
[[abstract]]PURPOSE: Early confirmation or ruling out biliary atresia (BA) is essential for infants ...
Background: The accuracy of an artificial intelligence model based on echocardiography video data in...