2023
DOI: 10.3389/fmed.2023.1330218
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Automated deep bottleneck residual 82-layered architecture with Bayesian optimization for the classification of brain and common maternal fetal ultrasound planes

Fatima Rauf,
Muhammad Attique Khan,
Ali Kashif Bashir
et al.

Abstract: Despite a worldwide decline in maternal mortality over the past two decades, a significant gap persists between low- and high-income countries, with 94% of maternal mortality concentrated in low and middle-income nations. Ultrasound serves as a prevalent diagnostic tool in prenatal care for monitoring fetal growth and development. Nevertheless, acquiring standard fetal ultrasound planes with accurate anatomical structures proves challenging and time-intensive, even for skilled sonographers. Therefore, for dete… Show more

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Cited by 10 publications
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“…Several ML techniques and pattern analyses are gradually used by the researcher to predict diseases associated with AD. Various neuroimaging modalities, such as MRI and PET, have been extensively used in AD as these can provide additional brain structure information to train the model for automatically predicting the disease [10] - [11]. Implementing ML techniques in AD diagnosis has shown promising results and is currently a significant area of research.…”
Section: Introductionmentioning
confidence: 99%
“…Several ML techniques and pattern analyses are gradually used by the researcher to predict diseases associated with AD. Various neuroimaging modalities, such as MRI and PET, have been extensively used in AD as these can provide additional brain structure information to train the model for automatically predicting the disease [10] - [11]. Implementing ML techniques in AD diagnosis has shown promising results and is currently a significant area of research.…”
Section: Introductionmentioning
confidence: 99%