Department of Electronics and Communication Engineering, Deenbandhu Chhotu Ram University of Science and Technology Murthal, Sonepat, 131039, India.
Central Scientific Instruments Organization, Council of Scientific and Industrial Research, Chandigarh, 160030, India.
Med Biol Eng Comput. 2023 Aug;61(8):2159-2195. doi: 10.1007/s11517-023-02849-4. Epub 2023 Jun 24.
Encoder-decoder-based semantic segmentation models classify image pixels into the corresponding class, such as the ROI (region of interest) or background. In the present study, simple / dilated convolution / series / directed acyclic graph (DAG)-based encoder-decoder semantic segmentation models have been implemented, i.e., SegNet (VGG16), SegNet (VGG19), U-Net, mobileNetv2, ResNet18, ResNet50, Xception and Inception networks for the segment TTUS(Thyroid Tumor Ultrasound) images. Transfer learning has been used to train these segmentation networks using original and despeckled TTUS images. The performance of the networks has been calculated using mIoU and mDC metrics. Based on the exhaustive experiments, it has been observed that ResNet50-based segmentation model obtained the best results objectively with values 0.87 for mIoU, 0.94 for mDC, and also according to radiologist opinion on shape, margin, and echogenicity characteristics of segmented lesions. It is noted that the segmentation model, namely ResNet50, provides better segmentation based on objective and subjective assessment. It may be used in the healthcare system to identify thyroid nodules accurately in real time.
基于编码器-解码器的语义分割模型将图像像素分类为相应的类别,例如 ROI(感兴趣区域)或背景。在本研究中,实现了简单/扩张卷积/串联/有向无环图(DAG)的基于编码器-解码器的语义分割模型,即 SegNet(VGG16)、SegNet(VGG19)、U-Net、mobileNetv2、ResNet18、ResNet50、Xception 和 Inception 网络,用于分割 TTUS(甲状腺肿瘤超声)图像。使用原始和去斑 TTUS 图像进行迁移学习,以训练这些分割网络。使用 mIoU 和 mDC 指标计算网络的性能。通过详尽的实验观察到,基于 ResNet50 的分割模型在客观上获得了最佳结果,mIoU 为 0.87,mDC 为 0.94,并且根据放射科医生对分割病变的形状、边缘和回声特征的意见。值得注意的是,分割模型 ResNet50 基于客观和主观评估提供了更好的分割。它可以在医疗保健系统中使用,以便实时准确地识别甲状腺结节。