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Microwave Brain Lesion Detection and Localization Using Classification Algorithms

H. Şahintürk et al · Sociedade Brasileira de Microondas e Optoeletrônica e Sociedade Brasileira de Eletromagnetismo · 2025

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Abstract Recently, many machine learning techniques have been presented to detect brain lesions or determine brain lesion types using microwave data. However, there are limited studies analyzing the location of the lesions through machine learning approaches, despite the critical importance of lesion localization for treatment. This paper contributes to the literature on microwave brain lesion localization by comparing several machine learning algorithms rather than proposing a single algorithm. In the proposed approach, lesions of varying sizes and locations are randomly embedded into realistic 2D brain models. The brain models are divided into four regions, each representing the possible location of the lesion. Subsequently, training and test datasets are generated by computing the electromagnetic fields scattered from healthy brains and brains with lesions via the Method of Moments. Each sample in the datasets is labeled as healthy, region 1, region 2, region 3, or region 4 according to the presence and location of the lesion. Finally, we developed models using various classifiers and compared their effectiveness. Among these, the models trained with stochastic gradient descent classifier, ridge classifier, and logistic regression demonstrated notable accuracy (91%, 82%, and 77%, respectively) for both detection and localization of lesions.

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APA 7

al, H. Ş. E. (2025). Microwave Brain Lesion Detection and Localization Using Classification Algorithms. https://doi.org/10.1590/2179-10742025v24i2290842

MLA

al, H. Şahintürk et. "Microwave Brain Lesion Detection and Localization Using Classification Algorithms." 2025. https://doi.org/10.1590/2179-10742025v24i2290842.

Chicago

al, H. Şahintürk et. 2025. "Microwave Brain Lesion Detection and Localization Using Classification Algorithms.". https://doi.org/10.1590/2179-10742025v24i2290842.

Harvard

al, H. Ş. E. 2025, Microwave Brain Lesion Detection and Localization Using Classification Algorithms, Sociedade Brasileira de Microondas e Optoeletrônica e Sociedade Brasileira de Eletromagnetismo, available at: https://doi.org/10.1590/2179-10742025v24i2290842 [Accessed 2 Jul. 2026].

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Título
Microwave Brain Lesion Detection and Localization Using Classification Algorithms
Autor / colaboradores
H. Şahintürk et al
Editorial
Sociedade Brasileira de Microondas e Optoeletrônica e Sociedade Brasileira de Eletromagnetismo
Año de publicación
2025
ISSN
2179-1074
ISSN
2179-1074
Idioma
eng

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