Abstract

There are many research studies in the field of breast cancer prediction, but it has been observed that the time taken for prediction needs to be reduced. The problem in the existing research is space consumption by graphical content. The proposed research is supposed to minimize the prediction time and space consumption. In this paper, research has focused on the study of existing breast cancer research and techniques and eliminating their limitation. It has been observed that when the number of datasets increases, every comparison makes a huge gap in size and comparison time. This research proposes a methodology for breast cancer prediction using an edge-based CNN (convolutional neural network) algorithm. The elimination of useless content from the graphical image before applying CNN has reduced the time consumption along with space consumption. The edge detection mechanism would retail only edges from the image sample in order to detect the pattern to predict breast cancer. The proposed work is supposed to implement the proposed methodology. A comparison of the proposed methodology and algorithm with the existing algorithm is made during simulation. The proposed work is found to be more efficient compared to the existing techniques used in breast cancer prediction. The utilization of proposed in the work area of medical science is supposed to enhance the capability in case of CNN at the time of decision-making. The proposed work is supposed to be more accurate compared to the existing works. It has been observed that the proposed work is fourteen to fifteen percent more accurate. It is taking 9/4 times less space and 1.0849004/0.178971 times less time compared to the general CNN model. Accuracy might vary as per size of the image and alteration performed in dataset of the image.

Highlights

  • Results and Discussion e dataset of Benign, In Situ, and Invasive is stored in the relevant directory. en sample taken from the patient is stored for breast cancer prediction. ese samples are compared to stored samples in order to predict cancer considering features extracted from the present dataset using a convolution neural network mechanism [27]. e size of the dataset is taken along with the comparison time

  • The percentage of matching in order to consider the accuracy is taken. en the edge detection mechanism is applied over the same dataset in order to eliminate the use of information from the graphical dataset. is results in a reduction in the size of dataset images. e image of fresh samples is processed by an edge detection mechanism. en the convolution neural network mechanism is applied over the dataset. en dataset size, time of operation, and matching percentage are taken

  • Dataset of benign, in situ, and invasive has been taken from the patient. e data are stored for breast cancer prediction

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Summary

Introduction

1. Introduction ere are several research studies on breast cancer detection [1]. Such research studies are beneficial to capture the symptoms of breast cancer in patients. Research is considering CNN-dependent graphical processing to perform prediction of breast cancer [5]. It has been seen that breast cancer begins from ducts, which transfer the milk to the nipple. Such kind of cancer is referred to as ductal cancer. Mathematical Problems in Engineering starts from the cells of the lobules Examiner could check whether the cancer cells are inside or outside the milk ducts.

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