Accurate segmentation of the liver is a prerequisite for the diagnosis of disease. Automated segmentation is an important application of computer-aided detection and diagnosis of liver disease. In recent years, automated processing of medical images has gained breakthroughs. However, the low contrast of abdominal scan CT images and the complexity of liver morphology make accurate automatic segmentation challenging. In this paper, we propose RA V-Net, which is an improved medical image automatic segmentation model based on U-Net. It has the following three main innovations. CofRes Module (Composite Original Feature Residual Module) is proposed. With more complex convolution layers and skip connections to make it obtain a higher level of image feature extraction capability and prevent gradient disappearance or explosion. AR Module (Attention Recovery Module) is proposed to reduce the computational effort of the model. In addition, the spatial features between the data pixels of the encoding and decoding modules are sensed by adjusting the channels and LSTM convolution. Finally, the image features are effectively retained. CA Module (Channel Attention Module) is introduced, which used to extract relevant channels with dependencies and strengthen them by matrix dot product, while weakening irrelevant channels without dependencies. The purpose of channel attention is achieved. The attention mechanism provided by LSTM convolution and CA Module are strong guarantees for the performance of the neural network. The accuracy of U-Net network: 0.9862, precision: 0.9118, DSC: 0.8547, JSC: 0.82. The evaluation metrics of RA V-Net, accuracy: 0.9968, precision: 0.9597, DSC: 0.9654, JSC: 0.9414. The most representative metric for the segmentation effect is DSC, which improves 0.1107 over U-Net, and JSC improves 0.1214.
翻译:肝脏的精密分解是诊断疾病的先决条件。 自动分解是计算机辅助肝脏疾病检测和诊断的一个重要应用。 近年来, 医疗图像的自动处理取得了突破。 但是, 腹部扫描CT图像与肝色变异的复杂性之间的对比较低, 使得模型的计算工作变得精确的自动分解具有挑战性。 在本文中, 我们提议 RA V- Net, 这是基于 U- Net 的改进医学图像自动分解模型。 它有以下三大主要创新。 提出了 CofRes 模块( Complosite 原地貌残余模块 ) 。 在更复杂的交错层和连接中, 使其获得更高水平的图像提取能力, 防止梯度消失或爆炸。 ARMUM( 注意恢复模块) 将降低模型的计算能力。 此外, 以UVVV- Net Net 和 解析模块之间的空间特征通过调整渠道和 LS- 0. 0. 0. 12 模板的图像特征被有效保留 : CA Bulding (C 注意度模块) 的精度模块, 用于获取相关渠道: 尾部的注意力的注意力。