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基于功能连接的功能磁共振成像图像分类。

Image categorization from functional magnetic resonance imaging using functional connectivity.

机构信息

College of Information Science and Technology, Beijing Normal University, Beijing, China.

School of Education and Psychology, University of Jinan, Jinan, China.

出版信息

J Neurosci Methods. 2018 Nov 1;309:71-80. doi: 10.1016/j.jneumeth.2018.08.021. Epub 2018 Aug 23.

Abstract

BACKGROUND

Previous studies have attempted to infer the category of objects in a stimulus image from functional magnetic resonance imaging (fMRI) data recoded during image-viewing. Most studies focus on extracting activity patterns within a given region or across multiple voxels, and utilize the relationships among voxels to decipher the category of a stimulus image. Yet, the functional connectivity (FC) patterns across regions of interest in response to image categories, and their potential contributions to category classification are largely unknown.

NEW METHOD

We investigated whole-brain FC patterns in response to 4 image category stimuli (cats, faces, houses, and vehicles) using fMRI in healthy adult volunteers, and classified FC patterns using machine learning framework (Support Vector Machine [SVM] and Random Forest). We further examined the FC robustness and the influence of the window length on FC patterns for neural decoding.

RESULTS

The average one-vs.-one classification accuracy of the two classification models were 74% within subjects and 80% between subjects, which are higher than the chance level (50%). The Random Forest results were better than SVM results, and the 48-s FC results were better than the 24-s FC results.

COMPARISON WITH EXISTING METHOD(S): We compared the classification performance of our FC patterns with two other existing methods, inter-block and intra-block, without overlapping temporal information.

CONCLUSIONS

Whole-brain FC patterns for different window lengths (24 and 48 s) can predict images categories with high accuracy. These results reveal novel mechanisms underlying the representation of categorical information in large-scale FC patterns in the human brain.

摘要

背景

先前的研究试图从观看图像过程中记录的功能磁共振成像(fMRI)数据中推断刺激图像的对象类别。大多数研究都集中于提取给定区域或多个体素内的活动模式,并利用体素之间的关系来破译刺激图像的类别。然而,针对图像类别,大脑感兴趣区域之间的功能连接(FC)模式及其对类别分类的潜在贡献在很大程度上仍是未知的。

新方法

我们使用 fMRI 技术研究了健康成年志愿者对 4 种图像类别刺激(猫、脸、房子和车)的全脑 FC 模式,并使用机器学习框架(支持向量机 [SVM]和随机森林)对 FC 模式进行分类。我们进一步研究了 FC 模式的稳健性和窗口长度对神经解码的影响。

结果

两种分类模型的平均受试者内和受试者间的一对一分类准确率分别为 74%和 80%,高于随机水平(50%)。随机森林的结果优于 SVM 的结果,48 秒 FC 的结果优于 24 秒 FC 的结果。

与现有方法的比较

我们将我们的 FC 模式的分类性能与另外两种没有重叠时间信息的现有方法(块间和块内)进行了比较。

结论

不同窗口长度(24 和 48 秒)的全脑 FC 模式可以以高精度预测图像类别。这些结果揭示了人类大脑中大规模 FC 模式下分类信息表示的新机制。

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