Recognizing Brain Tumors Using Adaptive Noise Filtering and Statistical Features.
Mehwish RasheedMuhammad Waseem IqbalArfan JaffarMuhammad Usman AshrafKhalid Ali AlmarhabiAhmed Mohammed AlghamdiAdel Aboud BahaddadPublished in: Diagnostics (Basel, Switzerland) (2023)
The human brain, primarily composed of white blood cells, is centered on the neurological system. Incorrectly positioned cells in the immune system, blood vessels, endocrine, glial, axon, and other cancer-causing tissues, can assemble to create a brain tumor. It is currently impossible to find cancer physically and make a diagnosis. The tumor can be found and recognized using the MRI-programmed division method. It takes a powerful segmentation technique to produce accurate output. This study examines a brain MRI scan and uses a technique to obtain a more precise image of the tumor-affected area. The critical aspects of the proposed method are the utilization of noisy MRI brain images, anisotropic noise removal filtering, segmentation with an SVM classifier, and isolation of the adjacent region from the normal morphological processes. Accurate brain MRI imaging is the primary goal of this strategy. The divided section of the cancer is placed on the actual image of a particular culture, but that is by no means the last step. The tumor is located by categorizing the pixel brightness in the filtered image. According to test findings, the SVM could partition data with 98% accuracy.
Keyphrases
- deep learning
- papillary thyroid
- contrast enhanced
- magnetic resonance imaging
- induced apoptosis
- squamous cell
- convolutional neural network
- resting state
- high resolution
- white matter
- diffusion weighted imaging
- functional connectivity
- computed tomography
- gene expression
- cell cycle arrest
- air pollution
- cerebral ischemia
- endoplasmic reticulum stress
- cell proliferation
- young adults
- electronic health record
- spinal cord injury
- optical coherence tomography
- multiple sclerosis