Department of Radiology, Baiturrahmah University, By pass km 15 Aie Pacah, Padang, West Sumatra 25172, Indonesia; Department of Physics, Institut Teknologi Bandung, Jl. Ganesa No. 10, Bandung, West Java 40132, Indonesia.
Department of Physics, Institut Teknologi Bandung, Jl. Ganesa No. 10, Bandung, West Java 40132, Indonesia.
Phys Med. 2020 Oct;78:201-208. doi: 10.1016/j.ejmp.2020.09.007. Epub 2020 Oct 8.
The classification of urinary stones is important prior to treatment because the treatments depend on three types of urinary stones, i.e., calcium, uric acid, and mixture stones. We have developed an automatic approach for the classification of urinary stones into the three types based on microcomputed tomography (micro-CT) images using a convolutional neural network (CNN).
Thirty urinary stones from different patients were scanned in vitro using micro-CT (pixel size: 14.96 μm; slice thickness: 15 μm); a total of 2,430 images (micro-CT slices) were produced. The slices (227 × 227 pixels) were classified into the three categories based on their energy dispersive X-ray (EDX) spectra obtained via scanning electron microscopy (SEM). The images of urinary stones from each category were divided into three parts; 66%, 17%, and 17% of the dataset were assigned to the training, validation, and test datasets, respectively. The CNN model with 15 layers was assessed based on validation accuracy for the optimization of hyperparameters such as batch size, learning rate, and number of epochs with different optimizers. Then, the model with the optimized hyperparameters was evaluated for the test dataset to obtain classification accuracy and error.
The validation accuracy of the developed approach with CNN with optimized hyperparameters was 0.9852. The trained CNN model achieved a test accuracy of 0.9959 with a classification error of 1.2%.
The proposed automated CNN-based approach could successfully classify urinary stones into three types, namely calcium, uric acid, and mixture stones, using micro-CT images.
在治疗前对尿石进行分类很重要,因为治疗方法取决于三种类型的尿石,即钙石、尿酸石和混合结石。我们已经开发了一种基于卷积神经网络(CNN)的自动方法,用于根据微计算机断层扫描(micro-CT)图像将尿石分为三种类型。
对来自不同患者的 30 个尿石进行体外 micro-CT 扫描(像素大小:14.96μm;切片厚度:15μm);共产生 2430 张图像(micro-CT 切片)。根据扫描电子显微镜(SEM)获得的能量色散 X 射线(EDX)光谱,将切片(227×227 像素)分为三类。每个类别的尿石图像分为三部分;数据集的 66%、17%和 17%分别分配给训练集、验证集和测试集。根据验证准确性评估具有 15 层的 CNN 模型,以优化超参数,如批大小、学习率和不同优化器的 epoch 数。然后,使用优化后的超参数对测试数据集进行评估,以获得分类准确性和误差。
具有优化超参数的 CNN 开发方法的验证准确性为 0.9852。经过训练的 CNN 模型在测试集上的准确率为 0.9959,分类误差为 1.2%。
提出的基于自动 CNN 的方法可以使用 micro-CT 图像成功地将尿石分为三种类型,即钙石、尿酸石和混合结石。