| Literature DB >> 35432588 |
Sushovan Chaudhury1, Alla Naveen Krishna2, Suneet Gupta3, K Sakthidasan Sankaran4, Samiullah Khan5, Kartik Sau6, Abhishek Raghuvanshi7, F Sammy8.
Abstract
Breast cancer is the second leading cause of death among women, behind only heart disease. However, despite the high incidence and mortality rates associated with breast cancer, it is still unclear as to what is responsible for its development in the first place. The prevention of breast cancer is not possible with any of the current available methods. Patients who are diagnosed and treated for breast cancer at an early stage have a better chance of having a successful treatment and recovery. In the field of breast cancer detection, digital mammography is widely acknowledged to be a highly effective method of detecting the disease early on. We may be able to improve early detection of breast cancer with the use of image processing techniques, thereby boosting our chances of survival and treatment success. This article discusses a breast cancer image processing and machine learning framework that was developed. The input data set for this framework is a sequence of mammography images, which are used as input data. The CLAHE approach is then utilized to improve the overall quality of the photographs by means of image processing. It is called contrast restricted adaptive histogram equalization (CLAHE), and it is an improvement on the original histogram equalization technique. This aids in the removal of noise from photographs while simultaneously improving picture quality. The segmentation of images is the next step in the framework's development. An image is divided into distinct portions at this point because the pixels are labeled at this step. This assists in the identification of objects and the delineation of boundaries. To categorize these preprocessed images, techniques such as fuzzy SVM, Bayesian classifier, and random forest are employed, among others.Entities:
Mesh:
Year: 2022 PMID: 35432588 PMCID: PMC9012610 DOI: 10.1155/2022/6841334
Source DB: PubMed Journal: Comput Math Methods Med ISSN: 1748-670X Impact factor: 2.809
Figure 1Methodology for the classification and detection of breast cancer.
Confusion matrix for breast cancer image classification.
| Parameter | RF | KNN | LS-SVM-RBF |
|---|---|---|---|
| TP | 161 | 174 | 197 |
| TN | 99 | 107 | 116 |
| FP | 32 | 23 | 4 |
| FN | 30 | 18 | 5 |
Figure 2Accuracy, specificity, sensitivity, precision, and recall of classifiers for breast disease detection.