Enhancing Cancer Diagnosis with Advanced Vision Transformers and Hybrid Deep Learning Models
Sabitha P, Lokesh Kumar K , Jagadeesh P , Varun K
Department of Computer Science and Engineering
SRM Institute of Science and Technology, Ramapuram, Chennai.
Abstract: The accurate and prompt diagnosis of cancer alongside other deadly diseases is crucial for achieving early stage diagnosis and subsequently, improved long term survival rates. Along with these benefits, patients get the additional perk of being treated in a lesser invasive manner, which is less physically taxing considering how intricate the procedure can be. It is important to note that AI powered diagnostics systems have shown great promise when used in conjunction with medicine and still undergo rigorous research in hybrid deep learning frameworks for computerized medical imaging alongside techniques like Convolutional Neural Networks and Vision Transformers. The aim of the current project is to combining VITs and CNNs in order to create a more reliable, robust and effective hybrid deep learning model that processes images in order to more accurately diagnose cancer. Such models suffer from these intricate issues with patterns such as defaults in classifying eye images, scooped-eye images, and face images being over-scooped.The core contribution of this study lies in the development of advanced techniques for enhanced precision in diagnosing cancer through the application of hybrid architectures as well as the integrated AI techniques, expanding on the legacy of AI powered driven systems. Along these lines, my reconnaissance of the problem is that distinct from VITs and CNNs which confirm the enhanced performance of hybrid models for complex problems, there has been an insufficiency in researching inner workings of the models and diagnosing challenging tasks alongside images of intricate patterns buddy dolly optics 3d snap-focus lenses.As discussed previously, initial steps to effectively guarantee advanced survival chances alongside treatments need an accurate and early detection of cancer, ultimately proving beneficial in prolonging a person’s life.
Keywords: Cancer Diagnosis, Vision Transformers, Deep Learning, Hybrid Models, Medical Imaging.