Author/Authors :
Duggento, Andrea Department of Biomedicine and Prevention - University of Rome Tor Vergata - Rome, Italy , Aiello, Marco Naples, Italy , Cavaliere, Carlo Naples, Italy , Cascella, Giuseppe L Bari, Italy , Cascella, Davide Bari, Italy , Conte, Giovanni Bari, Italy , Guerrisi, Maria Department of Biomedicine and Prevention - University of Rome Tor Vergata - Rome, Italy , Toschi, Nicola Department of Biomedicine and Prevention - University of Rome Tor Vergata - Rome, Italy
Abstract :
Breast cancer is one of the most common cancers in women, with more than 1,300,000 cases and 450,000 deaths each year
worldwide. In this context, recent studies showed that early breast cancer detection, along with suitable treatment, could
significantly reduce breast cancer death rates in the long term. X-ray mammography is still the instrument of choice in breast
cancer screening. In this context, the false-positive and false-negative rates commonly achieved by radiologists are extremely
arduous to estimate and control although some authors have estimated figures of up to 20% of total diagnoses or more. The
introduction of novel artificial intelligence (AI) technologies applied to the diagnosis and, possibly, prognosis of breast cancer
could revolutionize the current status of the management of the breast cancer patient by assisting the radiologist in clinical image
interpretation. Lately, a breakthrough in the AI field has been brought about by the introduction of deep learning techniques in
general and of convolutional neural networks in particular. Such techniques require no a priori feature space definition from the
operator and are able to achieve classification performances which can even surpass human experts. In this paper, we design and
validate an ad hoc CNN architecture specialized in breast lesion classification from imaging data only. We explore a total of 260
model architectures in a train-validation-test split in order to propose a model selection criterion which can pose the emphasis on
reducing false negatives while still retaining acceptable accuracy. We achieve an area under the receiver operatic characteristics
curve of 0.785 (accuracy 71.19%) on the test set, demonstrating how an ad hoc random initialization architecture can and should
be fine tuned to a specific problem, especially in biomedical applications.
Keywords :
Deep , Mammographic , Discriminating , X-ray