학술논문

Effects of Image Augmentation and Dual-layer Transfer Machine Learning Architecture on Tumor Classification
Document Type
Conference
Source
Proceedings of the 2019 8th International Conference on Computing and Pattern Recognition. :282-287
Subject
Breast Tumor
Histopathology
Image Processing
Inception-V3
Machine Learning
Transfer Learning
Language
English
Abstract
Breast tumor (BT) is the second most common health problem for women. Traditional diagnosis methods can be very labor-intensive and time-consuming with the risk of making a wrong diagnosis. Computer vision and imaging processing techniques using machine learning (ML) methods are emerging to aide in clinical diagnosis. Some machine learning methods have yielded an accuracy of 85% using a single-layer classifier. In this study Inception-V3, a two-layer classifier of transfer machine learning tool was used for image processing with enhancement technologies and for the classification of breast tumor histopathological types. Results showed that image augmentation with dual-layer transfer machine learning algorithms yielded an accuracy of 95.6% in identification of breast tumor pathologic types, which was higher than previously reported methods in the literature. Different image preprocessing methods, dataset preparing methods, and classifier architectures were also studied to identify the optimal algorithm. Results showed that multiple-layer processing algorithms using color images, instead of black and white images, yielded a better accuracy in histopathological type classification.

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