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Machine Learning-Based Multimodel Computing for Medical Imaging for Classification and Detection of Alzheimer Disease

机译:基于机器学习的医学成像多模型计算在阿尔茨海默病分类检测中的应用

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Alzheimer is a disease that causes the brain to deteriorate over time. It starts off mild, but over the course of time, it becomes increasingly more severe. Alzheimer's disease causes damage to brain cells as well as the death of those cells. Memory in humans is especially susceptible to this. Memory loss is the first indication of Alzheimer's disease, but as the disease progresses and more brain cells die, additional symptoms arise. Medical image processing entails developing a visual portrayal of the inside of a body using a range of imaging technologies in order to discover and cure problems. This paper presents machine learning-based multimodel computing for medical imaging for classification and detection of Alzheimer disease. Images are acquired first. MRI images contain noise and contrast problem. Images are preprocessed using CLAHE algorithm. It improves image quality. CLAHE is better to other methods in its capacity to enhance the look of mammography in minute places. A white background makes the lesions more obvious to the naked eye. In spite of the fact that this method makes it simpler to differentiate between signal and noise, the images still include a significant amount of graininess. Images are segmented using the k-means algorithm. This results in the segmentation of images and identification of region of interest. Useful features are extracted using PCA algorithm. Finally, images are classified using machine learning algorithms. ? 2022 Fatemah H. Alghamedy et al.
机译:阿尔茨海默病是一种导致大脑随着时间的推移而恶化的疾病。它开始时是轻微的,但随着时间的推移,它变得越来越严重。阿尔茨海默病会对脑细胞造成损害以及这些细胞的死亡。人类的记忆特别容易受到此影响。记忆力减退是阿尔茨海默病的第一个迹象,但随着疾病的进展和更多的脑细胞死亡,会出现其他症状。医学图像处理需要使用一系列成像技术对身体内部进行视觉描绘,以发现和解决问题。本文介绍了基于机器学习的医学成像多模型计算,用于阿尔茨海默病的分类和检测。首先采集图像。MRI图像包含噪声和对比度问题。使用CLAHE算法对图像进行预处理。它提高了图像质量。CLAHE比其他方法更好,因为它能够增强乳房X光检查在微小位置的外观。白色背景使病变肉眼更明显。尽管这种方法使区分信号和噪声变得更加简单,但图像仍然包含大量的颗粒感。使用 k 均值算法分割图像。这导致了图像的分割和感兴趣区域的识别。使用PCA算法提取有用的特征。最后,使用机器学习算法对图像进行分类。?2022 法特玛 H.Alghamedy 等人。

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