
This study applies a deep learning (DL) model, previously trained on images from a tertiary center, to fetal ultrasound images during the second-trimester anomaly scan in a low-risk population. The DL model outperforms initial clinical assessment, achieving higher sensitivity in detecting congenital heart defects (CHD). It performs well on community-acquired images, even on lesions it had not encountered before.
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