A research on prediction of bat-borne disease infection through segmentation using diffusion-weighted MR imaging in deep-machine learning approach

2021 
Abstract The theme of this study is to provide a detailed description of its recent improvements in image segmentation and lesion classification in disease prognosis. Previous studies have shown that gray-white matter hyperintensities (GWMH) is one of the hallmarks of Nipah encephalitis, which sometimes occurs during the incubation period. Predicting this type of inflammation is a challenging task because it involves some unknown medical risk factors. A typical Magnetic Resonance Imaging (MRIs) is the best non-invasive system to analyze the anatomical structure of the brain. In-depth analysis of the defined pathological structure from isolated MR imaging leads to a reduction in the processing time of the prognostic model. Modern learning techniques such as Machine Learning, Computer Vision, and Deep Learning are the most promising techniques for determining the optimal outcome, computer can able to learn and extract useful information from historical data using various algorithms. Disease prognosis based on deep learning is sophisticated, so it can handle a variety of difficult tasks including image processing, classification, and feature extraction, noise and object detection. Diffusion-weighted imaging (DWI) in MRIs is a clinical prototype that can be used to diagnose brain abnormalities and to evaluate the microscopic architectural and molecular function of human organs or tissues. In this study, we summarize the results of diagnosing Nipah encephalitis using some publicly available brain encephalitis and encephalopathy databases.
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