Over the years, the Invariant Scattering Transform (IST) technique has become popular for medical image analysis, including using wavelet transform computation using Convolutional Neural Networks (CNN) to capture patterns' scale and orientation in the input signal. IST aims to be invariant to transformations that are common in medical images, such as translation, rotation, scaling, and deformation, used to improve the performance in medical imaging applications such as segmentation, classification, and registration, which can be integrated into machine learning algorithms for disease detection, diagnosis, and treatment planning. Additionally, combining IST with deep learning approaches has the potential to leverage their strengths and enhance medical image analysis outcomes. This study provides an overview of IST in medical imaging by considering the types of IST, their application, limitations, and potential scopes for future researchers and practitioners.
翻译:多年来,不变散射变换(IST)技术已经在医学图像分析中变得流行,包括使用卷积神经网络(CNN)进行小波变换计算以捕捉输入信号中的模式的比例和方向。IST旨在对医学图像中常见的变换(如平移、旋转、缩放和变形)具有不变性,用于提高医学成像应用,如分割、分类和配准的性能,可以与机器学习算法相结合,用于疾病检测、诊断和治疗规划。此外,将IST与深度学习方法相结合有潜力发挥它们的优势并增强医学图像分析结果。本研究综述了IST在医学成像中的应用,包括IST类型、应用、局限性和未来研究和实践的潜在范围。