Accurate segmentation for medical images is important for clinical diagnosis. Existing automatic segmentation methods are mainly based on fully supervised learning and have an extremely high demand for precise annotations, which are very costly and time-consuming to obtain. To address this problem, we proposed an automatic CT segmentation method based on weakly supervised learning, by which one could train an accurate segmentation model only with weak annotations in the form of bounding boxes. The proposed method is composed of two steps: 1) generating pseudo masks with bounding box annotations by k-means clustering, and 2) iteratively training a 3D U-Net convolutional neural network as a segmentation model. Some data pre-processing methods are used to improve performance. The method was validated on four datasets containing three types of organs with a total of 627 CT volumes. For liver, spleen and kidney segmentation, it achieved an accuracy of 95.19%, 92.11%, and 91.45%, respectively. Experimental results demonstrate that our method is accurate, efficient, and suitable for clinical use.
翻译:医疗图象的准确分解对于临床诊断很重要; 现有的自动分解方法主要基于充分监督的学习,对精确说明的需求极高,而准确说明的需求量非常昂贵,而且需要花费大量的时间才能获得。 为了解决这个问题,我们提议了一种基于薄弱监督的学习的自动CT分解方法,通过这种方法,人们可以训练精确的分解模型,但只有捆绑盒形式的说明很弱。 提议的方法由两步组成:1) 产生假面罩,用K- means群集的捆绑盒说明,2) 迭代培训一个3D U-Net神经网络作为分解模型。一些数据预处理方法用来改进性能。该方法在包含三种类型器官的总共627 CT体积的四套数据集上得到验证。对于肝脏、脾脏和肾脏分解,其精度分别为95.19%、92.11%和91.45%。 实验结果表明,我们的方法准确、高效和适合临床使用。