Predicting local invasive recurrence of DCIS
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Aggressive forms of treatment such as radiotherapy bring about great discomfort to women diagnosed with breast cancer. There is a great concern that large numbers of women diagnosed with Ductal Carcinoma In-Situ (DCIS) are overrated and therefore do not gain any health benefits from such treatment. Identifying women who are at risk of recurring is...
Computer-aided diagnosis for MRI screening of the Breast in high risk women
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Breast MRI is currently the imaging modality with the highest sensitivity for detecting breast cancer in high risk women and and plays a significant role for evaluating the extent of disease in newly diagnosed breast cancer. Computer-aided diagnosis (CAD) has been proposed for breast MRI as a tool to standardize evaluation, to automate time consuming analysis, and...
Breast Segmentation
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We have developed an image segmentation pipeline based on UNets to identify breast tissue and to seperate it into firbroglandular and fat components. People Anne Martel Grey Kuling Publications Kuling, Grey; Belinda, Curpen; Martel, Anne L.: Accurate estimation of density and background parenchymal enhancement in breast MRI using deep regression and transformers. In: Li, Hui;...