Improvement of Automatic Glioma Brain Tumor Detection Using Deep Convolutional Neural Networks.
Ayman AltameemBasetty MallikarjunaAbdul Khader Jilani SaudagarMeenakshi SharmaRamesh Chandra PooniaPublished in: Journal of computational biology : a journal of computational molecular cell biology (2022)
This article introduces automatic brain tumor detection from a magnetic resonance image (MRI). It provides novel algorithms for extracting patches and segmentation trained with Convolutional Neural Network (CNN)'s to identify brain tumors. Further, this study provides deep learning and image segmentation with CNN algorithms. This contribution proposed two similar segmentation algorithms: one for the Higher Grade Gliomas (HGG) and the other for the Lower Grade Gliomas (LGG) for the brain tumor patients. The proposed algorithms (Intensity normalization, Patch extraction, Selecting the best patch, segmentation of HGG, and Segmentation of LGG) identify the gliomas and detect the stage of the tumor as per taking the MRI as input and segmented tumor from the MRIs and elaborated the four algorithms to detect HGG, and segmentation to detect the LGG works with CNN. The segmentation algorithm is compared with different existing algorithms and performs the automatic identification reasonably with high accuracy as per epochs generated with accuracy and loss curves. This article also described how transfer learning has helped extract the image and resolution of the image and increase the segmentation accuracy in the case of LGG patients.
Keyphrases
- deep learning
- convolutional neural network
- machine learning
- artificial intelligence
- end stage renal disease
- magnetic resonance
- high grade
- newly diagnosed
- chronic kidney disease
- magnetic resonance imaging
- peritoneal dialysis
- prognostic factors
- oxidative stress
- high intensity
- loop mediated isothermal amplification
- patient reported outcomes
- sensitive detection
- resistance training