Three-dimensional imaging based on radio frequency that exploits the contrast in dielectric properties of tissues may be used as a low-cost, non-invasive and non-ionizing methodology for breast cancer detection. This paper demonstrates the use of various supervised machine learning algorithms in classification of breast tissues into less-dense fatty and dense fibroglandular or malignant classes from the measured scattered electric field data obtained through antennas placed around the breast tissue. A comparison on the performance of these algorithms are also presented. Such a classification step may be followed by a quantitative non-linear optimization scheme to obtain a more precise reconstruction of the tissue profile
Abstract—Current microwave breast cancer imaging algo-rithms focus primarily on generating an image,...
Abstract—A comparative analysis of an imaging method based on a multi-frequency Multiple Signal Clas...
Currently, breast cancer often requires invasive biopsies for diagnosis, motivating researchers to d...
Three-dimensional imaging based on radio frequency that exploits the contrast in dielectric properti...
In recent years, new technologies focused on dielectric principles have been developed for medical a...
Abstract—In this work we examine, for the first time, the use of classification algorithms for early...
Abstract—In this work we examine, for the first time, the use of classification algorithms for early...
Breast lesion detection employing state of the art microwave systems provide a safe, non-ionizing te...
In this paper, challenges of combining machine learning techniques with near-field microwave probes ...
Abstract In this paper, a novel technique for detecting female breast anomalous tissues is presented...
Microwave breast imaging is being investigated by research groups worldwide for its promising applic...
Breast cancer diagnosis using radar-based medical MicroWave Imaging (MWI) has been studied in recent...
The considerable overlap in the dielectric properties of benign and malignant tissue at microwave fr...
Microwave imaging is an efficient diagnostic modality for non-invasively visualizing dielectric cont...
In this paper, we propose a method for discriminating between malignant and benign breast tumors, by...
Abstract—Current microwave breast cancer imaging algo-rithms focus primarily on generating an image,...
Abstract—A comparative analysis of an imaging method based on a multi-frequency Multiple Signal Clas...
Currently, breast cancer often requires invasive biopsies for diagnosis, motivating researchers to d...
Three-dimensional imaging based on radio frequency that exploits the contrast in dielectric properti...
In recent years, new technologies focused on dielectric principles have been developed for medical a...
Abstract—In this work we examine, for the first time, the use of classification algorithms for early...
Abstract—In this work we examine, for the first time, the use of classification algorithms for early...
Breast lesion detection employing state of the art microwave systems provide a safe, non-ionizing te...
In this paper, challenges of combining machine learning techniques with near-field microwave probes ...
Abstract In this paper, a novel technique for detecting female breast anomalous tissues is presented...
Microwave breast imaging is being investigated by research groups worldwide for its promising applic...
Breast cancer diagnosis using radar-based medical MicroWave Imaging (MWI) has been studied in recent...
The considerable overlap in the dielectric properties of benign and malignant tissue at microwave fr...
Microwave imaging is an efficient diagnostic modality for non-invasively visualizing dielectric cont...
In this paper, we propose a method for discriminating between malignant and benign breast tumors, by...
Abstract—Current microwave breast cancer imaging algo-rithms focus primarily on generating an image,...
Abstract—A comparative analysis of an imaging method based on a multi-frequency Multiple Signal Clas...
Currently, breast cancer often requires invasive biopsies for diagnosis, motivating researchers to d...