Publication Type : Conference Proceedings
Publisher : IEEE
Source : Second International Conference on Networks, Multimedia and Information Technology (NMITCON)
Url : https://ieeexplore.ieee.org/document/10699196
Campus : Chennai
School : School of Engineering
Year : 2024
Abstract : Skin illnesses encompass a wide range of problems that affect the skin and can have significant effects on an individual’s general health and well-being. The skin is a complex organ that affects not only physical protection but also mental well-being and general quality of life. The frequency of skin disorders, which manifest as redness, itching, discoloration, blisters, and rashes, highlights the need for prompt identification and treatment in a variety of demographic contexts. Dermatologists are essential to the diagnosis and treatment procedures since they are specialists in the medical treatment of the skin. Although earlier identification of certain disorders can greatly improve outcomes, the complexity of dermatology makes it difficult to effectively detect certain conditions at an early stage. The complicated nature of the diagnostic process results from the frequent need for intensive testing, which takes a long time. Furthermore, the subjectivity presents in dermatological diagnoses—which is shaped by the unique experiences and knowledge of practitioners—introduces heterogeneity that may compromise the validity of the findings. In order to improve the accuracy and effectiveness of illness identification in dermatology, this research introduces a unique deep learning technique. The technology’s astounding 98 percent accuracy rate points to a potential advance in early intervention, opening the door to more potent therapies and, eventually, better patient outcomes. Beyond its direct consequences for dermatology, this study shows how artificial intelligence is revolutionizing the medical industry and is a major step toward utilizing cutting-edge technologies to support healthcare operations. A future where skin diseases are quickly and precisely recognized for the best possible patient care is promised by the promise of improved diagnostics and customized therapies as we negotiate the junction of technology and healthcare.
Cite this Research Publication : Priyanka Saraf, P R Tharaniesh,Soumyendra Singh, Skin Disease Detection using Convolutional Neural Network,Second International Conference on Networks, Multimedia and Information Technology (NMITCON),2024.