IF 2.7 4区 医学 Q3 NEUROSCIENCES
S Amudaria, S Joseph Jawhar
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引用次数: 0

摘要

亨廷顿氏病(Huntington's disease,HD)是一种慢性神经退行性疾病,会导致认知能力下降、运动障碍和精神症状。然而,现有的亨廷顿病检测方法在有限的注释数据集面前举步维艰,限制了其泛化性能。这项研究工作提出了一种新型的 MIMI-ONET 方法,用于利用增强型多模态脑磁共振成像图像对 HD 进行初级检测。二维静态小波变换(2DSWT)将核磁共振图像分解为不同频率的小波子带。这些子带通过合约伸展自适应直方图均衡化(CSAHE)和多尺度自适应视网膜成像(MSAR)进行增强,减少无关失真。拟议的 MIMI-ONET 引入了 Hepta 生成对抗网络 (Hepta-GAN),根据 Hepta 方位角(45°、90°、135°、180°、225°、270°、315°)生成不同的无噪声高清图像。Hepta-GAN 结合了仿射估计模块 (AEM),利用扩张卷积层提取多尺度特征,从而高效生成高清图像。此外,Hepta-GAN 采用蝴蝶优化(BO)算法进行归一化处理,通过平衡参数提高增强性能。最后,将生成的图像交给深度神经网络(DNN),对正常控制(NC)、成人发病高清(AHD)和青少年高清(JHD)病例进行分类。用精确度、特异性、f1 分数、召回率、准确度、PSNR 和 MSE 评估了所提出的 MIMI-ONET 的能力。从实验结果来看,基于收集到的图像-高清数据集,所提出的 MIMI-ONET 的准确率达到 98.85%,PSNR 值达到 48.05。对于 3DCNN、KNN、FCN、RNN 和 ML 框架,所提出的 MIMI-ONET 分别提高了 9.96%、1.85%、5.91%、13.80% 和 13.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MIMI-ONET: Multi-Modal image augmentation via Butterfly Optimized neural network for Huntington DiseaseDetection.

Huntington's disease (HD) is a chronic neurodegenerative ailment that affects cognitive decline, motor impairment, and psychiatric symptoms. However, the existing HD detection methods are struggle with limited annotated datasets that restricts their generalization performance. This research work proposes a novel MIMI-ONET for primary detection of HD using augmented multi-modal brain MRI images. The two-dimensional stationary wavelet transform (2DSWT) decomposes the MRI images into different frequency wavelet sub-bands. These sub-bands are enhanced with Contract Stretching Adaptive Histogram Equalization (CSAHE) and Multi-scale Adaptive Retinex (MSAR) by reducing the irrelevant distortions. The proposed MIMI-ONET introduces a Hepta Generative Adversarial Network (Hepta-GAN) to generates different noise-free HD images based on hepta azimuth angles (45°, 90°, 135°, 180°, 225°, 270°, 315°). Hepta-GAN incorporates Affine Estimation Module (AEM) to extract the multi-scale features using dilated convolutional layers for efficient HD image generation. Moreover, Hepta-GAN is normalized with Butterfly Optimization (BO) algorithm for enhancing augmentation performance by balancing the parameters. Finally, the generated images are given to Deep neural network (DNN) for the classification of normal control (NC), Adult-Onset HD (AHD) and Juvenile HD (JHD) cases. The ability of the proposed MIMI-ONET is evaluated with precision, specificity, f1 score, recall, and accuracy, PSNR and MSE. From the experimental results, the proposed MIMI-ONET attains the accuracy of 98.85% and reaches PSNR value of 48.05 based on the gathered Image-HD dataset. The proposed MIMI-ONET increases the overall accuracy of 9.96%, 1.85%, 5.91%, 13.80% and 13.5% for 3DCNN, KNN, FCN, RNN and ML framework respectively.

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来源期刊
Brain Research
Brain Research 医学-神经科学
CiteScore
5.90
自引率
3.40%
发文量
268
审稿时长
47 days
期刊介绍: An international multidisciplinary journal devoted to fundamental research in the brain sciences. Brain Research publishes papers reporting interdisciplinary investigations of nervous system structure and function that are of general interest to the international community of neuroscientists. As is evident from the journals name, its scope is broad, ranging from cellular and molecular studies through systems neuroscience, cognition and disease. Invited reviews are also published; suggestions for and inquiries about potential reviews are welcomed. With the appearance of the final issue of the 2011 subscription, Vol. 67/1-2 (24 June 2011), Brain Research Reviews has ceased publication as a distinct journal separate from Brain Research. Review articles accepted for Brain Research are now published in that journal.
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