Bayesian Tensor Modeling for Image-based Classification of Alzheimer's Disease.

IF 2.7 4区 医学 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Neuroinformatics Pub Date : 2024-10-01 Epub Date: 2024-06-07 DOI:10.1007/s12021-024-09669-3
Rongke Lyu, Marina Vannucci, Suprateek Kundu
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引用次数: 0

Abstract

Tensor-based representations are being increasingly used to represent complex data types such as imaging data, due to their appealing properties such as dimension reduction and the preservation of spatial information. Recently, there is a growing literature on using Bayesian scalar-on-tensor regression techniques that use tensor-based representations for high-dimensional and spatially distributed covariates to predict continuous outcomes. However surprisingly, there is limited development on corresponding Bayesian classification methods relying on tensor-valued covariates. Standard approaches that vectorize the image are not desirable due to the loss of spatial structure, and alternate methods that use extracted features from the image in the predictive model may suffer from information loss. We propose a novel data augmentation-based Bayesian classification approach relying on tensor-valued covariates, with a focus on imaging predictors. We propose two data augmentation schemes, one resulting in a support vector machine (SVM) type of classifier, and another yielding a logistic regression classifier. While both types of classifiers have been proposed independently in literature, our contribution is to extend such existing methodology to accommodate high-dimensional tensor valued predictors that involve low rank decompositions of the coefficient matrix while preserving the spatial information in the image. An efficient Markov chain Monte Carlo (MCMC) algorithm is developed for implementing these methods. Simulation studies show significant improvements in classification accuracy and parameter estimation compared to routinely used classification methods. We further illustrate our method in a neuroimaging application using cortical thickness MRI data from Alzheimer's Disease Neuroimaging Initiative, with results displaying better classification accuracy throughout several classification tasks, including classification on pairs of the three diagnostic groups: normal control, AD patients, and MCI patients; gender classification (males vs females); and cognitive performance based on high and low levels of MMSE scores.

Abstract Image

基于图像的阿尔茨海默病分类贝叶斯张量模型
基于张量的表示法因其降维和保留空间信息等吸引人的特性,正越来越多地被用于表示成像数据等复杂数据类型。最近,关于使用贝叶斯标量-张量回归技术的文献越来越多,这些技术使用基于张量的表示来表示高维和空间分布的协变量,从而预测连续结果。然而,令人惊讶的是,依赖于张量值协变量的相应贝叶斯分类方法的发展却很有限。将图像矢量化的标准方法由于会损失空间结构而不可取,而在预测模型中使用从图像中提取的特征的替代方法可能会造成信息损失。我们提出了一种新颖的基于数据增强的贝叶斯分类方法,该方法依赖于张量值协变量,重点关注成像预测因子。我们提出了两种数据增强方案,一种是支持向量机(SVM)类型的分类器,另一种是逻辑回归分类器。虽然这两种分类器都已在文献中独立提出,但我们的贡献在于扩展了现有的方法,以适应涉及系数矩阵低秩分解的高维张量值预测器,同时保留图像中的空间信息。为实现这些方法,开发了一种高效的马尔科夫链蒙特卡罗(MCMC)算法。模拟研究表明,与常规分类方法相比,我们的分类准确率和参数估计都有了显著提高。我们还利用阿尔茨海默病神经成像计划(Alzheimer's Disease Neuroimaging Initiative)提供的皮层厚度 MRI 数据,在神经成像应用中进一步说明了我们的方法,结果显示我们在多个分类任务中的分类准确性都有所提高,包括正常对照组、AD 患者和 MCI 患者三个诊断组的分类;性别分类(男性 vs 女性);以及基于 MMSE 分数高低的认知表现。
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来源期刊
Neuroinformatics
Neuroinformatics 医学-计算机:跨学科应用
CiteScore
6.00
自引率
6.70%
发文量
54
审稿时长
3 months
期刊介绍: Neuroinformatics publishes original articles and reviews with an emphasis on data structure and software tools related to analysis, modeling, integration, and sharing in all areas of neuroscience research. The editors particularly invite contributions on: (1) Theory and methodology, including discussions on ontologies, modeling approaches, database design, and meta-analyses; (2) Descriptions of developed databases and software tools, and of the methods for their distribution; (3) Relevant experimental results, such as reports accompanie by the release of massive data sets; (4) Computational simulations of models integrating and organizing complex data; and (5) Neuroengineering approaches, including hardware, robotics, and information theory studies.
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