TY - JOUR TI - An efficient end-to-end deep neural network for interstitial lung disease recognition and classification AB - 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% that outperforms three pre-trained CNNs. These outcomes show that the proposed model is relatively state-of-the-art in precision, recall, f score, and accuracy. AU - JENY, Afsana Ahsan AU - JUNAYED, Masum Shah AU - ISLAM, Md Baharul AU - SHAH, AFM Shahen AU - AHMED, Ikhtiar DO - 10.55730/1300-0632.3846 PY - 2022 JO - Turkish Journal of Electrical Engineering and Computer Sciences VL - 30 IS - 4 SN - 1300-0632 SP - 1235 EP - 1250 DB - TRDizin UR - http://search/yayin/detay/533996 ER -