Abstract

Breast tumor ranks fourth among various cancers in terms of mortality rate in Taiwan, and it is also the most commonly prevalent cancer in females. Early detection of any malignant lesions can increase the survival rate and also decline the mortality rate through current advanced medical therapies. Acoustic radiation force impulse (ARFI) is a new imaging technique for distinguishing breast lesions in the early stage based on localized tissue displacement, which is quantitated by virtual touch tissue imaging (VTI). Digital ARFI-VTI is an initial breast imaging modality and appears to be more effective in women aged >30 years. Therefore, image enhancement process is a key technique to enhance a low-contrast image in a region of interest (ROI) for visualizing texture details and morphological features. In this study, two-dimensional (2D) fractional-order convolution, as a 2D sliding filter window (eight filters are selected), is applied to enhance ARFI-VTI images for an accurate extrapolation of lesions in an ROI. Then, the maximum pooling is performed to reduce the dimensions of the feature patterns from 32×32 to 16×16 size. A multilayer machine vision classifier, as a generalized regression neural network (GRNN), is then used to screen subjects with benign or malignant tumors. With a 10fold cross-validation, promising results such as mean recall (%), mean precision (%), mean accuracy (%), and mean F1 score of 92.92±3.43%, 80.42±6.45%, 87.78±2.17%, and 0.8615±0.0495, respectively, are achieved for quantifying the performance of the proposed classifier. Breast tumors visualized on ARFI-VTI images can be useful as digitalized images for rapid screening of malignant from benign lesions by the proposed machine vision classifier.

Highlights

  • Breast cancer is the most frequent cancer in females and affects about 2.1 million women each year worldwide; it accounts for the highest number of breast cancer-related deaths

  • The Acoustic radiation force impulse (ARFI)-virtual touch tissue imaging (VTI) images were collected from 80 subjects, and they were divided into two subsets of trained images for training the multilayer machine vision classifier in the learning stage and untrained images for evaluating the classifier with cross-validation in the recalling stage

  • Its process could enhance the visibility of lesion structures in an region of interest (ROI) for further image segmentation, feature extraction, and classification applications

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Summary

Introduction

Breast cancer is the most frequent cancer in females and affects about 2.1 million women each year worldwide; it accounts for the highest number of breast cancer-related deaths. According to the Ministry of Health and Welfare in Taiwan, cancer ranked the first in terms of its mortality rate on the list of the top 10 causes of death in 2018. Breast cancer in females ranks the fourth in terms of its mortality rate among various cancers, and it is the most commonly prevalent cancer in females and the leading cause of death ranking the first among females females aged between 45 and 69 years [1], [2]. Current medical techniques have helped in advancing the diagnosis and treatment of breast cancer.

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