1. Modelling level I Axillary Lymph Nodes depth for Microwave Imaging.
- Author
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Godinho, Daniela M., Silva, Carolina, Baleia, Cláudia, Felício, João M., Castela, Tiago, Silva, Nuno A., Orvalho, M. Lurdes, Fernandes, Carlos A., and Conceição, Raquel C.
- Abstract
Patient-specific information on the depth of Axillary Lymph Nodes (ALNs) is important for the development of new diagnostic imaging technologies, e.g. Microwave Imaging (MWI), aiming to assess the diagnosis of ALNs during breast cancer staging. Studies about ALNs depth have been presented for treatment planning, but they lack information on sample size and usability of the data to infer the depth of ALNs. The aim of this study was to create a mathematical model that can be used to predict a depth interval where level I ALNs are likely to be located. We extracted biometric features of 98 patients who underwent breast Magnetic Resonance Imaging (MRI) to train two types of regression models. We then tested different combination of features to predict ALNs depth and found the best predictor. The final prediction models were then implemented in an algorithm used for MWI and tested with anthropomorphic phantoms of the axillary region. Body Mass Index (BMI) was the feature with best performance to predict ALNs depth with coefficient of determination (R
2 ) ranging from 0.49 to 0.55 and Root Mean Squared Error (RMSE) ranging from 0.68 to 0.91 cm. The proposed model showed satisfactory results in microwave images of patients with different BMIs. The presented results contribute to the development of reconstruction algorithms for new imaging technologies and to the assessment of ALNs in other medical applications. • Estimating patient-specific information on the depth of Axillary Lymph Nodes (ALNs). • Treatment planning and new imaging modalities can be improved with ALN depth. • Mathematical model created with biometric features from Magnetic Resonance Imaging. • Prediction of an interval of depth where ALNs are likely to be located. • Validation of the usefulness of the model for a Microwave Imaging application. [ABSTRACT FROM AUTHOR]- Published
- 2022
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