Homomorphic encryption on deep learning in accurate prediction of brain tumour
Abstract
The brain is the most complicated organ that manages every bodily function as well
including intellect, memory, emotion, taste, motor skills, vision, respiration, temperature,
and appetite. Any type of disease or damage can obstruct the function of the
brain and can change the daily lifestyle of a person in an instant or gradually. One
of those diseases is a brain tumor, which is hard to detect as serious symptoms start
to develop in the later stages of the disease. There are mainly non-cancerous and
cancerous brain tumors To make it easier to detect brain tumors we have used the
existing Neural Network model to identify tumors. Our objective is to keep patient
data confidential as medical institutions are not willing to share patient information
due to patients’ rights. And so we have integrated our own Homomorphic encryption
so that existing NN models can work and detect tumors from encrypted image
datasets. Different Deep Learning and Neural Network techniques can enhance the
tumor identification process. In our paper, we have built our custom-made Partial
Homomorphic Encryption (PHE) which is based on Paillier Cryptosystem to encrypt
the medical data and then used pre-built Neural Networks models (VGG16,
VGG19, ResNet50) have been chosen to execute on the data-set consisting of encrypted
images of different types of tumors. We have taken the characteristics from
the encrypted photos of these brain tumors and extracted them using a pre-trained
deep CNN model. First, we have used different Machine Learning algorithms and
neural networks in deep learning to classify the images into two categories. Then,
we compared the accuracy of various models to identify which algorithm performs
the best. For our research, we have created a combined dataset by collecting images
of the diseases mentioned above from different sources and applying data augmentation
to them. Using our proposed model we can safely and securely read encrypted
medical image data via our Partial Homomorphic Encryption method while being
efficient enough to be used on a mass scale in the medical industry.