Efficient feature extraction using light-weight CNN attention-based deep learning architectures for ultrasound fetal plane classification.

Journal: Physical and engineering sciences in medicine
Published Date:

Abstract

Ultrasound fetal imaging is beneficial to support prenatal development because it is affordable and non-intrusive. Nevertheless, fetal plane classification (FPC) remains challenging and time-consuming for obstetricians since it depends on nuanced clinical aspects, which increases the difficulty in identifying relevant features of the fetal anatomy. Thus, to assist with its accurate feature extraction, a lightweight artificial intelligence architecture leveraging convolutional neural networks and attention mechanisms is proposed to classify the largest benchmark ultrasound dataset. The approach fine-tunes from lightweight EfficientNet feature extraction backbones pre-trained on the ImageNet1k. to classify key fetal planes such as the brain, femur, thorax, cervix, and abdomen. Our methodology incorporates the attention mechanism to refine features and 3-layer perceptrons for classification, achieving superior performance with the highest Top-1 accuracy of 96.25%, Top-2 accuracy of 99.80% and F1-Score of 0.9576. Importantly, the model has 40x fewer trainable parameters than existing benchmark ensemble or transformer pipelines, facilitating easy deployment on edge devices to help clinical practitioners with real-time FPC. The findings are also interpreted using GradCAM to carry out clinical correlation to aid doctors with diagnostics and improve treatment plans for expectant mothers.

Authors

  • Arrun Sivasubramanian
    Amrita School of Artificial Intelligence, Coimbatore, Amrita Vishwa Vidyapeetham, India. Electronic address: arrun.sivasubramanian@gmail.com.
  • Divya Sasidharan
    Amrita School of Artificial Intelligence, Amrita Vishwa Vidyapeetham, Coimbatore, India.
  • V Sowmya
    Amrita School of Artificial Intelligence, Amrita Vishwa Vidyapeetham, Coimbatore, India. v_sowmya@cb.amrita.edu.
  • Vinayakumar Ravi
    Center for Artificial IntelligencePrince Mohammad Bin Fahd University Khobar 31952 Saudi Arabia.

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