An ENAS Based Approach for Constructing Deep Learning Models for Breast Cancer Recognition from Ultrasound Images

05/27/2020
by   Mohammed Ahmed, et al.
0

Deep Convolutional Neural Networks (CNN) provides an "end-to-end" solution for image pattern recognition with impressive performance in many areas of application including medical imaging. Most CNN models of high performance use hand-crafted network architectures that require expertise in CNNs to utilise their potentials. In this paper, we applied the Efficient Neural Architecture Search (ENAS) method to find optimal CNN architectures for classifying breast lesions from ultrasound (US) images. Our empirical study with a dataset of 524 US images shows that the optimal models generated by using ENAS achieve an average accuracy of 89.3 Furthermore, the models are simpler in complexity and more efficient. Our study demonstrates that the ENAS approach to CNN model design is a promising direction for classifying ultrasound images of breast lesions.

READ FULL TEXT
research
08/09/2021

Explainable AI and susceptibility to adversarial attacks: a case study in classification of breast ultrasound images

Ultrasound is a non-invasive imaging modality that can be conveniently u...
research
08/31/2023

US-SFNet: A Spatial-Frequency Domain-based Multi-branch Network for Cervical Lymph Node Lesions Diagnoses in Ultrasound Images

Ultrasound imaging serves as a pivotal tool for diagnosing cervical lymp...
research
09/23/2020

Automatic Breast Lesion Classification by Joint Neural Analysis of Mammography and Ultrasound

Mammography and ultrasound are extensively used by radiologists as compl...
research
10/27/2021

Vision Transformer for Classification of Breast Ultrasound Images

Medical ultrasound (US) imaging has become a prominent modality for brea...
research
05/17/2017

Optimizing and Visualizing Deep Learning for Benign/Malignant Classification in Breast Tumors

Breast cancer has the highest incidence and second highest mortality rat...

Please sign up or login with your details

Forgot password? Click here to reset