A brain tumor diagnosis is a complex and difficult task that requires accurate and efficient data analysis. In past years, deep learning has emerged as a promising tool for improving the accuracy of mental health diagnoses. This research article presents a review of various in-depth studies and models for mental health diagnosis and examines the performance of convolutional neural networks (CNNs), VGG16, and other deep learning models on multistate data in the brain. The results show that deep learning models can provide high accuracy and efficiency in brain tumor detection beyond imaging techniques to also discuss the clinical applications of these models, including assisting radiologists in brain diagnosis and improving patient outcomes. Overall, this work raises awareness of deep learning’s application in medicine and offers insights into the future of brain tumor research.
CITATION STYLE
Raghuvanshi, S., & Dhariwal, S. (2023). The VGG16 Method Is a Powerful Tool for Detecting Brain Tumors Using Deep Learning Techniques †. Engineering Proceedings, 59(1). https://doi.org/10.3390/engproc2023059046
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