利用机器学习检测大脑年龄的智能系统

Ahamed Yasir. H, S. Anu Priya
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摘要

由于脑老化是导致每年死亡人数上升的重要原因,因此检测脑老化在医学领域至关重要。脑老化是一个普遍存在的健康问题,其特点是死亡率高、发生范围广。目前正在针对这一问题开展广泛的研究工作,磁共振成像(MRI)已成为识别和跟踪脑老化进程的重要工具。核磁共振成像扫描可详细了解老化过程,与其他方法相比,其结果更为理想。在本文中,我们提出了一种利用核磁共振成像扫描图像检测大脑老化的创新方法。该方法包括几个关键步骤,首先是图像预处理,应用中值滤波器提高图像质量。随后,利用数学形态学操作的分割技术分离出表明大脑老化的区域。然后对识别出的老化区域计算面积、周长和偏心率等几何特征。我们的方法最终采用了迭代卷积神经网络(CNN)分类器。该分类器可根据提取的特征区分老化(恶性)和正常(良性)脑区。为了进一步提高分类的准确性,我们采用了人工神经网络(ANN)作为基准方法,并引入了优化卷积神经网络(OCNN),这是我们研究中提出的一种新算法。通过严格的实验和评估,我们比较了 ANN 和 OCNN 的性能,分析了它们各自的准确度。我们的研究结果清楚地表明,OCNN 优于传统的 ANN,在从核磁共振扫描中检测大脑老化方面具有更高的准确性和有效性。这凸显了先进神经网络架构在医学图像分析和诊断领域的革命性潜力。总之,本文利用最先进的图像处理技术和创新的神经网络算法,提出了一种利用磁共振成像扫描图像检测脑老化的稳健方法。通过提高脑老化检测的准确性和效率,我们的研究极大地促进了旨在减轻这一普遍健康问题的不利影响的持续努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart System to Detect Brain Age Using Machine Learning
Detecting brain ageing is of paramount importance in the medical field due to its significant contribution to the rising number of deaths each year. Brain ageing stands out as a prevalent health concern, characterized by a high mortality rate and widespread occurrence. Extensive research endeavors are underway to address this issue, with Magnetic Resonance Imaging (MRI) emerging as a pivotal tool for identifying and tracking the progression of brain ageing. MRI scans offer detailed insights into the ageing process, facilitating superior outcomes compared to alternative methodologies. In our paper, we propose an innovative approach for detecting brain ageing using MRI scanned images. The methodology encompasses several crucial steps, beginning with image preprocessing, where the application of a median filter enhances image quality. Subsequently, segmentation techniques employing mathematical morphological operations isolate regions indicative of brain ageing. Geometric features such as area, perimeter, and eccentricity are then computed for the identified ageing regions. The culmination of our approach involves the utilization of an Iterative Convolutional Neural Network (CNN) classifier. This classifier distinguishes between ageingous (malignant) and normal (benign) brain regions based on the extracted features. To further enhance the accuracy of our classification, we employ both Artificial Neural Network (ANN) as a baseline method and introduce the Optimistic Convolutional Neural Network (OCNN), a novel algorithm proposed in our research. Through rigorous experimentation and evaluation, we compare the performance of ANN and OCNN, analyzing their respective accuracies. Our findings unequivocally demonstrate that the OCNN outperforms the traditional ANN, offering superior accuracy and efficacy in detecting brain ageing from MRI scans. This underscores the potential of advanced neural network architectures in revolutionizing medical image analysis and diagnosis. In conclusion, paper presents a robust methodology for detecting brain ageing using MRI scanned images, leveraging state-of-the-art image processing techniques and innovative neural network algorithms. By enhancing the accuracy and efficiency of brain ageing detection, our research contributes significantly to the ongoing efforts aimed at mitigating the adverse impacts of this pervasive health issue.
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