2023
DOI: 10.1038/s41746-023-00932-6
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Deep learning system improved detection efficacy of fetal intracranial malformations in a randomized controlled trial

Meifang Lin,
Qian Zhou,
Ting Lei
et al.

Abstract: Congenital malformations of the central nervous system are among the most common major congenital malformations. Deep learning systems have come to the fore in prenatal diagnosis of congenital malformation, but the impact of deep learning-assisted detection of congenital intracranial malformations from fetal neurosonographic images has not been evaluated. Here we report a three-way crossover, randomized control trial (Trial Registration: ChiCTR2100048233) that assesses the efficacy of a deep learning system, t… Show more

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“…Other studies have reached similar conclusions. For example, a randomized controlled trial investigating the detection of congenital intracranial malformation compared three modes of workflow: clinician alone, clinician and AI system working concurrently, and clinician followed by an AI system 38 . The AI system improved the detection of brain anomalies and the concurrent mode was the most efficient assisted workflow.…”
mentioning
confidence: 99%
“…Other studies have reached similar conclusions. For example, a randomized controlled trial investigating the detection of congenital intracranial malformation compared three modes of workflow: clinician alone, clinician and AI system working concurrently, and clinician followed by an AI system 38 . The AI system improved the detection of brain anomalies and the concurrent mode was the most efficient assisted workflow.…”
mentioning
confidence: 99%