基于融合分形特征向量的机器学习分类框架用于阿尔茨海默病诊断。

IF 2.7 4区 医学 Q3 NEUROSCIENCES
Sixiang Sun, Can Cui, Yuanyuan Li, Yingjian Meng, Wenxiang Pan, Dongyan Li
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引用次数: 0

摘要

阿尔茨海默病(AD)深刻影响脑组织和网络结构。分析这些网络的拓扑特性有助于了解疾病的进展。大多数研究集中在单尺度脑网络,但很少涉及多尺度脑网络。在本研究中,应用重整组方法将AD患者和认知正常(CN)的灰质脑网络重新缩放为三个尺度:原始,一次重整和两次重整网络。基于这些网络在不同尺度上的分形特性,提出了一种基于分形和重整化群的阿尔茨海默病分类新框架。我们整合了不同尺度的分形度量来创建融合的特征向量,作为用于诊断阿尔茨海默病的分类框架的输入。实验结果表明,CN和AD的原始网络和一次重归一化的网络都具有分形特性。当使用融合特征向量(包括原始网络和一次重归一化网络的平均连接率)时,分类框架表现最好。利用平均连接率的融合特征向量,一维卷积神经网络模型的准确率为92.59%,F1分数为91.19%。与使用平均度、平均路径长度和聚类系数的特征融合的结果相比,这标志着准确率提高了大约10%,F1分数提高了5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine learning classification framework using fused fractal property feature vectors for Alzheimer's disease diagnosis.

Alzheimer's disease (AD) profoundly affects brain tissue and network structures. Analyzing the topological properties of these networks helps to understand the progression of the disease. Most studies focus on single-scale brain networks, but few address multiscale brain networks. In this study, the renormalization group approach was applied to rescale the gray matter brain networks of AD patients and cognitively normal (CN) into three scales: the original, once-renormalized, and twice-renormalized networks. Based on the fractal property of these networks at different scales, a novel framework for classifying Alzheimer's disease using fractal and renormalization group was proposed. We integrated the fractal metrics across different scales to create fused feature vectors, which served as inputs for the classification framework aimed at diagnosing Alzheimer's disease. The experimental result indicates that the original and once-renormalized networks of both CN and AD exhibit the fractal property. The classification framework performed best when using the fused feature vector, including the average connection ratio of the original and once-renormalized networks. Using the fused feature vector of the average connection ratio, the One-Dimensional Convolution Neural Network model achieved an accuracy of 92.59% and an F1 score of 91.19%. This marks an improvement of approximately 10% in accuracy and 5% in F1 score compared to results using feature fusion of the average degree, average path length, and clustering coefficient.

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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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