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Abhishek Kumar Saxena, Khushi Gupta, Nikita Srivastava, Shatakshi Chaurasia,
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- Assistant Professor & HOD, Student, Student, Student Department of IT, Bansal Institute of Engineering & Technology, Sitapur Road, Lucknow, Department of IT, Bansal Institute of Engineering & Technology, Sitapur Road, Lucknow, Department of IT, Bansal Institute of Engineering & Technology, Sitapur Road, Lucknow, Department of IT, Bansal Institute of Engineering & Technology, Sitapur Road, Lucknow Uttar Pradesh, Uttar Pradesh, Uttar Pradesh, Uttar Pradesh India, India, India, India
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Abstract
nSkin cancer ranks among the most prevalent types of cancer globally and poses significant risks when left untreated. Skin cancer arises when abnormal cells proliferate uncontrollably in the skin. This uncontrolled growth can be triggered by genetic mutations, exposure to ultraviolet (UV) radiation from the sun or artificial sources like tanning beds, or various other factors. In this, the early detection of cancer plays a crucial role in treatment and reducing death rates. For early Detection, an automated and robust system is required to minimize the efforts, time, money and death rate. In recent years, advancements in artificial intelligence, particularly deep learning, and machine learning have shown promising results in various medical applications, including skin cancer detection. This research paper presents an automated skin cancer detection system based on deep learning and machine learning techniques. In this, both Machine learning and Deep learning techniques are used for early detection of skin cancer. The proposed system utilizes convolutional neural networks (CNNs) to analysing dermoscopic images and accurately classify skin lesions as benign or malignant. By leveraging a large dataset of images, from which the model learns to identify complex patterns and features which indicate different types of skin cancer. Additionally, the paper discusses the potential implications of deploying such a system in clinical settings, including improving diagnostic accuracy, reducing workload for healthcare professionals, and facilitating timely interventions for patients. This study investigates the creation of an automated skin cancer detection system utilizing the latest advancements in deep learning techniques.
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Keywords: Skin cancer detection, Convolutional neural networks (CNNs), Dermoscopic images, medical applications, Healthcare automation, Deep learning.
n[if 424 equals=”Regular Issue”][This article belongs to Research & Reviews: A Journal of Medicine(rrjom)]
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References
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- Mehwish Dildar, Akram S, Irfan M, Hikmat Ullah Khan, Ramzan M, Abdur Rehman Mahmood, et al. Skin Cancer Detection: A Review Using Deep Learning Techniques. International journal of environmental research and public health/International journal of environmental research and public health. 2021 May 20;18(10):5479–9. Available from: https://www.ncbi.nlm.nih.gov/ pmc/articles/PMC8160886/
- Monika, M. & Vignesh, N. & Kumari, Usha & Kumar, M.N.V.S.S. & Lydia, Laxmi. (2020). Skin cancer detection and classification using machine learning. Materials Today: Proceedings. 10.1016/j.matpr.2020.07.366. https://www.researchgate.net/publication/343673685_Skin_cancer_detection_and_classification_using_machine_learning/link/5f8d28b3299bf1b53e32558a/download?_tp=eyJjb250ZXh0Ijp7ImZpcnN0UGFnZSI6InB1YmxpY2F0aW9uIiwicGFnZSI6InB1YmxpY2F0aW9uIn19,
- Bhuvaneshwari C, Manjunathan A. Advanced gesture recognition system using long-term recurrent convolution network. Materials today: proceedings. 2020 Jan 1; 21:731-3,
- Fu’adah YN, Pratiwi NC, Pramudito MA, Ibrahim N. Convolutional neural network (CNN) for automatic skin cancer classification system. InIOP conference series: materials science and engineering 2020 Dec 1 (Vol. 982, No. 1, p. 012005). IOP Publishing.,
- Clinic C. Skin Cancer: Symptoms, Types & Treatment. Cleveland Clinic. 2021.Available from: https://my.clevelandclinic.org/health/diseases/15818-skin-cancer,
- Azadeh, A., Ghazal, A., & Ataei, M. (2023). Skin cancer detection and classification using machine learning. Sensors, 23(11), 1911. https://www.mdpi.com/2075-4418/13/11/1911,
- National Cancer Institute (2022). Skin cancer research. Retrieved from https://www.cancer.gov/ types/skin/research,
- Wong, K. H., Wang, Y., & Cheng, L. (2023). Skin cancer detection and classification using machine learning. Journal of Skin Cancer, 2023, 1-8. https://www.hindawi.com/journals/jsc/,
- University of Waterloo (n.d.). Skin cancer detection. Vision & Image Processing Lab. Retrieved from https://uwaterloo.ca/vision-image-processing-lab/research-demos/skin-cancer-detection,
- Sathyabama Institute of Science and Technology (2021). Skin cancer detection and classification using machine learning. Retrieved from https://sist.sathyabama.ac.in/sist_naac/documents/ 3.4/b.e-ece-batchno-181.pdf,
- Mall S, Srivastava A, Mazumdar BD, Mishra M, Bangare SL, Deepak A. Implementation of machine learning techniques for disease diagnosis. Materials Today: Proceedings. 2022 Jan 1; 51:2198-201.,
- Jutzi TB, Krieghoff-Henning EI, Holland-Letz T, Utikal JS, Hauschild A, Schadendorf D, Sondermann W, Fröhling S, Hekler A, Schmitt M, Maron RC. Artificial intelligence in skin cancer diagnostics: the patients’ perspective. Frontiers in medicine. 2020 Jun 2; 7:233,
- Smith CH, Anstey AV, Barker JN, Burden AD, Chalmers RJ, Chandler D, Finlay AY, Grifitths CE, Jackson K, McHugh NJ, McKenna KE. British Association of Dermatologists guidelines for use of biological interventions in psoriasis 2005. British Journal of Dermatology. 2005 Sep 1;153(3): 486-97,
- Nazeer Hussain Khan, Mir M, Qian L, Baloch M, Khan A, Asim Ur Rehman, et al. Skin cancer biology and barriers to treatment: Recent applications of polymeric micro/nanostructures. Journal of Advanced Research. 2022 Feb 1; 36:223–47. Available from: https://www.sciencedirect.com/science/article/pii/S2090123221001235,
- Linares MA, Zakaria A, Nizran P. Skin cancer. Prim Care. 2015 Dec 1;42(4):645-59,
- Gloster Jr HM, Neal K. Skin cancer in skin of color. Journal of the American Academy of Dermatology. 2006 Nov 1;55(5):741-60.,
- Armstrong BK, Kricker A. Skin cancer. Dermatologic Clinics. 1995 Jul 1;13(3):583-94.
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Volume | 14 | |
[if 424 equals=”Regular Issue”]Issue[/if 424][if 424 equals=”Special Issue”]Special Issue[/if 424] [if 424 equals=”Conference”][/if 424] | 02 | |
Received | June 7, 2024 | |
Accepted | June 26, 2024 | |
Published | August 22, 2024 |
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