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广义矩阵学习向量量化在神经成像中的应用。

An application of generalized matrix learning vector quantization in neuroimaging.

作者信息

van Veen Rick, Gurvits Vita, Kogan Rosalie V, Meles Sanne K, de Vries Gert-Jan, Renken Remco J, Rodriguez-Oroz Maria C, Rodriguez-Rojas Rafael, Arnaldi Dario, Raffa Stefano, de Jong Bauke M, Leenders Klaus L, Biehl Michael

机构信息

Bernoulli Institute for Mathematics, Computer Science and Artificial Intelligence, University of Groningen, the Netherlands.

Department of Nuclear Medicine & Molecular Imaging, University Medical Center Groningen, the Netherlands.

出版信息

Comput Methods Programs Biomed. 2020 Dec;197:105708. doi: 10.1016/j.cmpb.2020.105708. Epub 2020 Aug 22.

Abstract

BACKGROUND AND OBJECTIVE

Neurodegenerative diseases like Parkinson's disease often take several years before they can be diagnosed reliably based on clinical grounds. Imaging techniques such as MRI are used to detect anatomical (structural) pathological changes. However, these kinds of changes are usually seen only late in the development. The measurement of functional brain activity by means of [F]fluorodeoxyglucose positron emission tomography (FDG-PET) can provide useful information, but its interpretation is more difficult. The scaled sub-profile model principal component analysis (SSM/PCA) was shown to provide more useful information than other statistical techniques. Our objective is to improve the performance further by combining SSM/PCA and prototype-based generalized matrix learning vector quantization (GMLVQ).

METHODS

We apply a combination of SSM/PCA and GMLVQ as a classifier. In order to demonstrate the combination's validity, we analyze FDG-PET data of Parkinson's disease (PD) patients collected at three different neuroimaging centers in Europe. We determine the diagnostic performance by performing a ten times repeated ten fold cross validation. Additionally, discriminant visualizations of the data are included. The prototypes and relevance of GMLVQ are transformed back to the original voxel space by exploiting the linearity of SSM/PCA. The resulting prototypes and relevance profiles have then been assessed by three neurologists.

RESULTS

One important finding is that discriminative visualization can help to identify disease-related properties as well as differences which are due to center-specific factors. Secondly, the neurologist assessed the interpretability of the method and confirmed that prototypes are similar to known activity profiles of PD patients.

CONCLUSION

We have shown that the presented combination of SSM/PCA and GMLVQ can provide useful means to assess and better understand characteristic differences in FDG-PET data from PD patients and HCs. Based on the assessments by medical experts and the results of our computational analysis we conclude that the first steps towards a diagnostic support system have been taken successfully.

摘要

背景与目的

像帕金森病这样的神经退行性疾病通常需要数年时间才能基于临床依据可靠诊断。诸如磁共振成像(MRI)等成像技术用于检测解剖学(结构)病理变化。然而,这类变化通常仅在疾病发展后期才会出现。通过[F]氟脱氧葡萄糖正电子发射断层扫描(FDG-PET)测量脑功能活动可提供有用信息,但其解读更为困难。结果表明,缩放子轮廓模型主成分分析(SSM/PCA)比其他统计技术能提供更多有用信息。我们的目标是通过将SSM/PCA与基于原型的广义矩阵学习向量量化(GMLVQ)相结合来进一步提高性能。

方法

我们将SSM/PCA和GMLVQ相结合作为分类器。为证明该组合的有效性,我们分析了在欧洲三个不同神经影像中心收集的帕金森病(PD)患者的FDG-PET数据。我们通过进行十次重复的十折交叉验证来确定诊断性能。此外,还包括对数据的判别性可视化。利用SSM/PCA的线性特性,将GMLVQ的原型和相关性转换回原始体素空间。然后由三位神经科医生对所得的原型和相关性概况进行评估。

结果

一个重要发现是,判别性可视化有助于识别与疾病相关的特性以及由中心特定因素导致的差异。其次,神经科医生评估了该方法的可解释性,并确认原型与PD患者已知的活动概况相似。

结论

我们已经表明,所提出的SSM/PCA和GMLVQ的组合可为评估和更好地理解PD患者与健康对照者(HCs)的FDG-PET数据中的特征差异提供有用手段。基于医学专家的评估和我们的计算分析结果,我们得出结论,已经成功迈出了建立诊断支持系统的第一步。

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