Subject
The last decades, many computer aided detection and diagnosis (CAD) systems have been proposed to diagnose breast cancer based only on the properties of microcalcifications (MCs) - the main indicators of an early breast cancer. Recently, promising results have been achieved by using handcrafted and/or deep learning features extracted from high-resolution 3D MCs images. In this thesis (continuation of previous work already performed), The focus is: (a) to evaluate (and quantify) if using transfer learning (TL) can help to get a better performance (b) quantify and analyze the computation efficiency when using and not TL.
Kind of work
- Literature review about: (a) the medical problem the student is trying to solve, (b) deep convolutional neural networks, (c) transfer learning. - Get familiar with the dataset to be used (high resolution 3D micro-CT images). - Evaluate the deep learning model performances when using and not TL, with/without offline data augmentations. - Evaluate and analyse in depth the influence of using transfer learning to classify breast microcalcification. - Writing and presentation.
Framework of the Thesis
- https://arxiv.org/abs/2004.07882
Number of Students
1
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