Detection of Biological Tissue Anomalies Using Low-Frequency Electromagnetic Fields
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Date
2025-07-09
Authors
Advisor
Ramahi, Omar
Journal Title
Journal ISSN
Volume Title
Publisher
University of Waterloo
Abstract
This PhD thesis presents a novel biomedical imaging modality—proposed and developed
for the first time—for the detection of breast cancer using low-frequency electromagnetic
(EM) fields. The core principle stems from the fact that the penetration depth
of EM waves into biological tissues is inversely proportional to their operating frequency.
Unlike conventional high-frequency imaging techniques, this approach leverages sub-GHz
frequencies (hundreds of MHz), which offer significantly deeper tissue penetration, making
them particularly suitable for imaging dense breast tissues (BI-RADS categories C and D),
where conventional X-ray mammography fails.
Operating at low frequencies introduces critical challenges in designing radio-frequency
(RF) components that are compact, human-compatible, and suitable for clinical deployment.
To address this, a novel low-frequency metasurface-based film antenna—conceptually
analogous to traditional X-ray films—has been developed. This metasurface sensor effectively
captures scattered EM fields after interaction with biological tissues, enabling
high-fidelity imaging while operating within a non-ionizing and biologically safe frequency
range.
The proposed system is cost-effective and portable, with strong potential for widespread
deployment in low-resource settings where access to magnetic resonance imaging (MRI) is
limited. Unlike MRI, which is expensive and not readily available, or ultrasound, which
is prone to operator-dependent errors, this technique enables consistent and repeatable
screening.
Also, this work investigates the impact of various EM sources on image resolution and
contrast. It is shown that magnetically enhanced sources significantly improve field-tissue
interaction, thereby increasing sensitivity to early-stage tumorous anomalies. Advanced
post-processing algorithms, including differentiation techniques and both supervised and
unsupervised machine learning models, were implemented to enhance image quality and
minimize diagnostic errors, further improving the system’s diagnostic performance.
The methodology has been rigorously validated through both numerical simulations and
experimental studies. Multiple iterations of the transmitter antennas and metasurface sensors
have been developed, optimized, and evaluated throughout the course of the research.
The final system demonstrates high accuracy in detecting early-stage abnormalities.
Moreover, this thesis introduces a new low-frequency tomography method, also for the
first time, that reconstructs images of internal tissues by modeling the X-ray-like behavior
of localized, electrically small transmitters and receivers. A novel mathematical framework
has been proposed and implemented using Radon transform techniques, enabling accurate
spatial reconstruction of the object under test.
Description
Keywords
low-frequency electromagnetic fields, microwave imaging, breast cancer detection, metasurface antenna, biomedical imaging, electromagnetic tomography, electrically small antennas