Deep learning algorithms rely on digital pathology to classify tissue tumors, where the whole tissue slides are digitized and imaged. The produced multi-resolution whole slide images (MWSIs) are with high resolution that may range from about 100,000 to 200,000 pixels. MWSIs are often stored in a multi-resolution configuration to simplify the processing of images, navigation, and efficient exposition. This work develops a network for classifying MWS Is that require high memory employing a deep neural Inception-v3 architecture. This work employs the MWS Is from Camelyon 16, which is around 451 GB in size of Challenge dataset from two independent sources including 400 MWS Is as a total of lymph nodes. The training dataset contains 111 MWS Is of tumor tissue and lymph nodes and 159 WSIs of normal lymph nodes. The developed model uses sample-based processing to train extensive MWS Is employing the MATLAB platform. The model introduces transfer learning techniques with an Inception-v3-based architecture to categorize separate samples as a tumor or normal. Therefore, the main aim here is to achieve two-classes binary segmentation containing nor-mal and tumor. This includes creating a new fully connected layer for the Inception-v3 architecture with two classes and compensating new layers instead of the original final fully-connected layers. The results obtained demonstrated that the heatmap visualization can recognize the boundary coordinates of ground truth as sketchy Region Of Interest (ROI), where the green boundary rep-resents the normal regions and the tumor area with red boundaries. The proposed Inception v3 Convolutional Neural Network (CNN) architecture can achieve more than 92.8 % accuracy for such MWSIs dataset to categorize brain tumors into normal and tumor tissue
CITATION STYLE
Mahmood, A. A., Sadeq, S., Aljanabi, Y. I., & Sabry, A. H. (2023). DEVELOPING A CONVOLUTIONAL NEURAL NETWORK FOR CLASSIFYING TUMOR IMAGES USING INCEPTION V3. Eastern-European Journal of Enterprise Technologies, 3(9(123)), 86–93. https://doi.org/10.15587/1729-4061.2023.281227
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