Mammography using low-frequency electromagnetic fields with deep learning

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作者
Hamid Akbari-Chelaresi
Dawood Alsaedi
Seyed Hossein Mirjahanmardi
Mohamed El Badawe
Ali M. Albishi
Vahid Nayyeri
Omar M. Ramahi
机构
[1] University of Waterloo,Department of Electrical and Computer Engineering
[2] Taif University,Department of Electrical Engineering
[3] Stanford University,Department of Medical Physics
[4] Soundskrit Inc.,Electrical Engineering Department
[5] King Saud University,School of Advanced Technologies
[6] Iran University of Science and Technology,undefined
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In this paper, a novel technique for detecting female breast anomalous tissues is presented and validated through numerical simulations. The technique, to a high degree, resembles X-ray mammography; however, instead of using X-rays for obtaining images of the breast, low-frequency electromagnetic fields are leveraged. To capture breast impressions, a metasurface, which can be thought of as analogous to X-rays film, has been employed. To achieve deep and sufficient penetration within the breast tissues, the source of excitation is a simple narrow-band dipole antenna operating at 200 MHz. The metasurface is designed to operate at the same frequency. The detection mechanism is based on comparing the impressions obtained from the breast under examination to the reference case (healthy breasts) using machine learning techniques. Using this system, not only would it be possible to detect tumors (benign or malignant), but one can also determine the location and size of the tumors. Remarkably, deep learning models were found to achieve very high classification accuracy.
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