IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

Mobile-Aided Breast Cancer Diagnosis by Deep Convolutional Neural Networks

Mobile-Aided Breast Cancer Diagnosis by Deep Convolutional Neural Networks
View Sample PDF
Copyright: 2020
Pages: 18
Source title: MatConvNet Deep Learning and iOS Mobile App Design for Pattern Recognition: Emerging Research and Opportunities
Source Author(s)/Editor(s): Jiann-Ming Wu (National Dong Hwa University, Taiwan)and Chao-Yuan Tien (National Dong Hwa University, Taiwan)
DOI: 10.4018/978-1-7998-1554-9.ch006

Purchase

View Mobile-Aided Breast Cancer Diagnosis by Deep Convolutional Neural Networks on the publisher's website for pricing and purchasing information.

Abstract

After verifying the capability of deep learning for basic image recognition, this chapter further extends image recognition to App-aided breast cancer diagnosis. Human cancer has been considered as the most important health problem. For medical image recognition of breast cancer, the presented approach is no longer the same as the traditional. It needs no axioms for distinguishing malignant and benign tumors, and no hand-crafted textural descriptors for feature extraction. The goal is to develop a mobile-aided diagnosis system of directly processing raw medical images. It automatically extracts features and learn filters of a deep CNN subject to labelled medical images in advance. This chapter presents a CNN architecture for diagnosing breast cancer images, illustrating effectiveness of problem solving by designing classifiers, respectively diagnosing lobular carcinoma breast cancer against phyllodes tumor and papillary carcinoma against adenosis. The performances of two classifiers for breast cancers diagnosis are separately summarized by the testing accuracy rates of 94.9% and 87.3%.

Related Content

Julián Sierra-Pérez, Joham Alvarez-Montoya. © 2020. 40 pages.
Feyzan Saruhan-Ozdag, Derya Yiltas-Kaplan, Tolga Ensari. © 2020. 18 pages.
Leonardo Juan Ramirez Lopez, Gabriel Alberto Puerta Aponte. © 2020. 25 pages.
Jersson X. Leon-Medina, Maribel Anaya Vejar, Diego A. Tibaduiza. © 2020. 25 pages.
Richard Isaac Abuabara, Felipe Díaz-Sánchez, Juliana Arevalo Herrera, Isabel Amigo. © 2020. 22 pages.
Pragathi Penikalapati, A. Nagaraja Rao. © 2020. 19 pages.
Nancy E. Ochoa Guevara, Andres Esteban Puerto Lara, Nelson F. Rosas Jimenez, Wilmar Calderón Torres, Laura M. Grisales García, Ángela M. Sánchez Ramos, Omar R. Moreno Cubides. © 2020. 30 pages.
Body Bottom