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. 2022 Jul 3;25(8):104713. doi: 10.1016/j.isci.2022.104713

Table 3.

Articles published using AI to improve fetus body monitoring: objective, backbone methods, optimization, fetal age, and AI tasks

Study Objective Backbone Methods/Framework Optimization/Extractor methods Fetal age AI tasks
Fetal Part Structures

(Maraci et al., 2015) To identify the fetal skull, heart and abdomen from ultrasound images SVM as the classifier Gaussian Mixture Model (GMM)
Fisher Vector (FV)
26th week classification
(Liu et al., 2021) To segment the seven key structures of the neonatal hip joint Neonatal Hip Bone Segmentation Network (NHBSNet) Feature Extraction Module
Enhanced Dual Attention Module (EDAM)
Two-Class Feature Fusion Module (2-Class FFM)
Coordinate Convolution Output Head (CCOH)
16 - 25 weeks. segmentation
(Rahmatullah et al., 2014) To segment organs head, femur, and humerus in ultrasound images using multilayer super pixel images features Simple Linear Iterative Clustering (SLIC)
Random forest
Unary pixel shape feature
image moment
N/A segmentation
(Weerasinghe et al., 2021) To automate kidney segmentation using fully convolutional neural networks. FCNN: U-Net & UNET++ N/A 20 to 40 weeks segmentation
(Burgos-Artizzu et al., 2020) To evaluate the maturity of current Deep Learning classification techniques for their application in a real maternal-fetal clinical environment CNN DenseNet-169 N/A 18 to 40 weeks classification
(Cai et al., 2020) To use the learnt visual attention maps to guide standard plane detection on all three standard biometry planes: ACP, HCP and FLP. Temporal SonoEyeNet (TSEN)
Temporal attention module: Convolutional LSTM
Video classification module: Recurrent Neural Networks (RNNs)+
CNN feature extractor: VGG-16 N/A classification
(Ryou et al., 2019) To support first trimester fetal assessment of multiple fetal anatomies including both visualization and the measurements from a single 3D ultrasound scan Multi-Task Fully Convolutional Network (FCN)
U-Net
N/A 11 to 14 weeks Segmentation Classification
(Sridar et al., 2019) To automatically classify 14 different fetal structures in 2D fetal ultrasound images by fusing information from both cropped regions of fetal structures and the whole image support vector machine (SVM)+ Decision fusion Fine-tuning AlexNet CNN 18 to 20 weeks Classification
(Chen et al., 2017) To automatic identification of different standard planes from US images T-RNN framework:
LSTM
Features extracted using J-CNN classifier 18 to 40 weeks Classification
(Cai et al., 2018) To classify abdominal fetal ultrasound video frames into standard AC planes or background M-SEN architecture
Discriminator CNN
Generator CNN N/A Classification
(Gao and Noble, 2019) To detect multiple fetal structures in free-hand ultrasound CNN
Attention Gated LSTM
Class Activation Mapping (CAM) 28 to 40 weeks classification
(Yaqub et al., 2015) To extract features from regions inside the images where meaningful structures exist. Guided Random Forests Probabilistic Boosting Tree (PBT) 18 to 22 weeks Classification
(Chen et al., 2015) To detect standard planes from US videos T-RNN
LSTM (Transferred RNN)
Spatio-Semporal Feature
J-CNN
18 to 40 weeks Classification

Anatomical Structures

(Yang et al., 2019) To propose the first and fully automatic framework in the field to simultaneously segment fetus, gestational sac and placenta, 3D FCN + RNN hierarchical deep supervision mechanism (HiDS) BiLSTM module denoted as FB-nHiDS 10 - 14 weeks Segmentation
(Looney et al., 2021) To segment the placenta, amniotic fluid, and fetus. FCNN N/A 11 - 19 weeks Segmentation
(Li et al., 2017) To segment the amniotic fluid and fetal tissues in fetal US images The encoder-decoder network based on VGG16 N/A 22ND weeks Segmentation
(Ryou et al., 2016) To localize the fetus and extract the best fetal biometry planes for the head and abdomen from first trimester 3D fetal US images CNN Structured Random Forests 11 - 13 weeks Classification
(Toussaint et al., 2018) To detect and localize fetal anatomical regions in 2D US images ResNet18 Soft Proposal Layer (SP) 22 - 32 weeks Classification
(Ravishankar et al., 2016) To reliably estimate abdominal circumference CNN + Gradient Boosting Machine (GBM) Histogram of Oriented Gradient (HoG) 15 - 40 weeks Classification
(Wee et al., 2010) To detect and recognize the fetal NT based on 2D ultrasound images by using artificial neural network techniques. Artificial Neural Network (ANN) Multilayer Perceptron (MLP) Network
Bidirectional Iterations Forward Propagations Method (BIFP)
N/A Classification
(Liu et al., 2019) To detect NT region U-Net NT Segmentation
PCA NT Thickness Measurement
VGG16 NT Region Detection 4 - 12 weeks Segmentation

Growth disease

(Bagi and Shreedhara, 2014) To propose the biometric measurement and classification of IUGR, using OpenGL concepts for extracting the feature values and ANN model is designed for diagnosis and classification ANN
Radial Basis Function (RBF)
OpenGL 12–40
Weeks
Classification
(Selvathi and Chandralekha, 2021) To find the region of interest (ROI) of the fetal biometric and organ region in the US image DCNN AlexNet N/A 16 -27 weeks Classification
(Rawat et al., 2016) To detect fetal abnormality in 2D US images ANN + Multilayered perceptron neural networks (MLPNN) Gradient vector flow (GVF)
Median Filtering
14 - 40 weeks Classification segmentation
(Gadagkar and Shreedhara, 2014) To develop a computer-aided diagnosis and classification tool for extracting ultrasound sonographic features and classify IUGR fetuses ANN Two-Step Splitting Method (TSSM) for Reaction-Diffusion (RD) 12–40
Weeks
Classification segmentation
(Andriani and Mardhiyah, 2019) To develop an automatic classification algorithm on the US examination result using Convolutional Neural Network in Blighted Ovum detection CNN N/A N/A Classification
(Yekdast, 2019) To propose an intelligent system based on combination of ConvNet and PSO for Down syndrome diagnosis. CNN Particle Swarm Optimization (PSO) N/A Classification
(Maraci et al., 2020) To automatically detect and measure the transcerebellar diameter (TCD) in the fetal brain, which enables the estimation of fetal gestational age (GA) CNN FCN N/A 16- - 26 weeks Classification segmentation
(Chen et al., 2020a) To accurately estimate the gestational age from the fetal lung region of US images. U-NET N/A 24 - 40 weeks Classification segmentation
(Prieto et al., 2021) To classify, segment, and measure several fetal structures for the purpose of GA estimation U-NET
RESTNET
Residual UNET (RUNET) 16th weeks Classification segmentation
(Maysanjaya et al., 2014) To measure the accuracy of Learning Vector Quantization (LVQ) to classify the gender of the fetus in the US image" ANN Learning Vector Quantization (LVQ)
Moment invariants
N/A Classification