Analysis of Skin Cancer and Patient Healthcare Using Data Mining Techniques.
N ArivazhaganM A MukunthanD SundaranarayanaA ShankarS Vinoth KumarR KesavanSaravanan ChandrasekaranM Shyamala DeviK MaithiliU Barakkath NishaTewodros Getinet AbebePublished in: Computational intelligence and neuroscience (2022)
Skin cancer is the uncontrolled growth of irregular cancer cells in the human-skin's outer layer. Skin cells commonly grow in an uneven pattern on exposed skin surfaces. The majority of melanomas, aside from this variety, form in areas that are rarely exposed to sunlight. Harmful sunlight, which results in a mutation in the DNA and irreparable DNA damage, is the primary cause of skin cancer. This demonstrates a close connection between skin cancer and molecular biology and genetics. Males and females both experience the same incidence rate. Avoiding revelation to ultraviolet (UV) emissions can lower the risk rate. This needed to be known about in order to be prevented from happening. To identify skin cancer, an improved image analysis technique was put forth in this work. The skin alterations are routinely monitored by this proposed skin cancer categorization approach. Therefore, early detection of suspicious skin changes can aid in the early discovery of skin cancer, increasing the likelihood of a favourable outcome. Due to the blessing of diagnostic technology and recent advancements in cancer treatment, the survival rate of patients with skin cancer has grown. The strategy for detecting skin cancer using image processing technologies is presented in this paper. The system receives the image of the skin lesion as an input and analyses it using cutting-edge image processing methods to determine whether skin cancer is present. The Lesion Image Analysis Tools use texture, size, and shape assessment for image segmentation and feature phases to check for various cancer criteria including asymmetries, borders, pigment, and diameter. The image is classified as Normal skin and a lesion caused by skin cancer using the derived feature parameters.
Keyphrases
- skin cancer
- deep learning
- healthcare
- dna damage
- soft tissue
- wound healing
- machine learning
- oxidative stress
- case report
- small molecule
- magnetic resonance imaging
- risk assessment
- heavy metals
- single molecule
- risk factors
- artificial intelligence
- signaling pathway
- optical coherence tomography
- candida albicans
- social media
- biofilm formation
- health insurance
- cystic fibrosis