We present an integrated methodology for detecting, segmenting and classifying breast masses from mammograms with minimal user intervention. This is a long standing problem due to low signal-to-noise ratio in the visualisation of breast masses, combined with their large variability in terms of shape, size, appearance and location. We break the problem down into three stages: mass detection, mass segmentation, and mass classification. For the detection, we propose a cascade of deep learning methods to select hypotheses that are refined based on Bayesian optimisation. For the segmentation, we propose the use of deep structured output learning that is subsequently refined by a level set method. Finally, for the classification, we propose the u...
This thesis explores the current deep learning (DL) approaches to computer aided diagnosis (CAD) of ...
The segmentation of masses from mammogram is a challenging problem because of their variability in t...
In this paper, we explore the use of deep convolution and deep belief networks as potential function...
We present an integrated methodology for detecting, segmenting and classifying breast masses from ma...
The classification of breast masses from mammograms into benign or malignant has been commonly addre...
Breast cancer is considered to be one of the major contemporary problems affecting the lives of thou...
Breast cancer has become one of the most concerning cancers that are well known for its high inciden...
In this paper, we present a novel method for the segmentation of breast masses from mammograms explo...
Mass detection from mammograms plays a crucial role as a pre-processing stage for mass segmentation ...
In this chapter, we show two discoveries learned from the application of deep learning methods to th...
We describe an automated methodology for the analysis of unregistered cranio-caudal (CC) and medio-l...
The technologies for detecting and classifying breast cancer (CAD) have improved, however there are ...
Prompt diagnosis of benign and malignant breast masses is essential for early breast cancer screenin...
Breast cancer claims 11,400 lives on average every year in the UK, making it one of the deadliest di...
This thesis explores the current deep learning (DL) approaches to computer aided diagnosis (CAD) of ...
The segmentation of masses from mammogram is a challenging problem because of their variability in t...
In this paper, we explore the use of deep convolution and deep belief networks as potential function...
We present an integrated methodology for detecting, segmenting and classifying breast masses from ma...
The classification of breast masses from mammograms into benign or malignant has been commonly addre...
Breast cancer is considered to be one of the major contemporary problems affecting the lives of thou...
Breast cancer has become one of the most concerning cancers that are well known for its high inciden...
In this paper, we present a novel method for the segmentation of breast masses from mammograms explo...
Mass detection from mammograms plays a crucial role as a pre-processing stage for mass segmentation ...
In this chapter, we show two discoveries learned from the application of deep learning methods to th...
We describe an automated methodology for the analysis of unregistered cranio-caudal (CC) and medio-l...
The technologies for detecting and classifying breast cancer (CAD) have improved, however there are ...
Prompt diagnosis of benign and malignant breast masses is essential for early breast cancer screenin...
Breast cancer claims 11,400 lives on average every year in the UK, making it one of the deadliest di...
This thesis explores the current deep learning (DL) approaches to computer aided diagnosis (CAD) of ...
The segmentation of masses from mammogram is a challenging problem because of their variability in t...
In this paper, we explore the use of deep convolution and deep belief networks as potential function...