The automated Interstitial Lung Diseases (ILDs) classification technique is essential for assisting clinicians during the diagnosis process. Detecting and classifying ILDs patterns is a challenging problem. This paper introduces an end-to-end deep convolution neural network (CNN) for classifying ILDs patterns. The proposed model comprises four convolutional layers with different kernel sizes and Rectified Linear Unit (ReLU) activation function, followed by batch normalization and max-pooling with a size equal to the final feature map size well as four dense layers. We used the ADAM optimizer to minimize categorical cross-entropy. A dataset consisting of 21328 image patches of 128 CT scans with five classes is taken to train and assess the proposed model. A comparison study showed that the presented model outperformed pre-trained CNNs and five-fold cross-validation on the same dataset. For ILDs pattern classification, the proposed approach achieved the accuracy scores of 99.09% and the average F score of 97.9%, outperforming three pre-trained CNNs. These outcomes show that the proposed model is relatively state-of-the-art in precision, recall, f score, and accuracy.
翻译:诊断过程中,诊断过程中对临床医生的协助至关重要的自动间歇性肺病分类技术。检测和分类内转性肺病模式是一个具有挑战性的问题。本文件介绍一个端到端深卷神经网络(CNN),对内转性肺病模式进行分类。拟议模型包括四个具有不同内核大小和校正线性线性单元激活功能的卷叠层,随后是批次正常化和最大集合,其尺寸相当于最终地貌地图大小和四个稠密层。我们使用ADAM优化器尽量减少绝对交叉性。我们使用由21328个图像补丁组成的一组,共分五类的128个CT扫描来训练和评估拟议的模型。一项比较研究表明,所展示的模型超越了预先受过训练的CNN和同一数据集的五倍交叉校验功能。对于ILDs模式的分类,拟议方法达到了99.09 %的准确分数和97.9%的平均F分,比三个受过训练的CNN的分数。这些结果显示,拟议的分数是相对的精确度。