首页> 外文会议>IEEE-EMBS International Conference on Biomedical and Health Informatics >A robust and adaptive decision-making algorithm for detecting brain networks using functional MRI within the spatial and frequency domain
【24h】

A robust and adaptive decision-making algorithm for detecting brain networks using functional MRI within the spatial and frequency domain

机译:一种在空间和频域内使用功能性MRI检测脑网络的强大且自适应的决策算法

获取原文

摘要

As the interest in functional connectivity continues to increase among neuroimaging researchers there becomes a greater need to develop an objective method of network identification. The current paper offers a solution to this problem by developing a robust decision making algorithm that can extract a target neural network from an array of spatial maps. We used a probabilistic independent component analysis to generate spatial maps of the Default Mode Network (DMN); however, this adaptive pipeline can be applied to any network of interest. Different template matching algorithms including: Normalized Cross-Correlation, Sum of Squared Differences and Dice Coefficient, were applied to the spatial and frequency domains of the dataset to identify the components that shared the greatest similarity to our DMN template. After identifying components within the resting state, the decision making pipeline selected the components within each method that had the highest matching scores to our DMN template. The final decision of selecting the most prototypical DMN components was made by a comparison between methods. This resulted in a DMN mask that was generated by the components chosen by our decision-making algorithm. To evaluate the accuracy of the decision-maker, a cross-correlation between each final mask and the template was measured. Results indicated that the Normalized Cross Correlation method, using both the spatial and frequency domain, and the Dice Coefficient method, generated the optimal DMN mask. This demonstrates the utility of our algorithm in providing an objective method for network extraction.
机译:随着神经影像研究人员对功能连接性的兴趣不断增加,对开发一种客观的网络识别方法的需求变得越来越大。当前的论文通过开发一种健壮的决策算法来解决这个问题,该算法可以从一系列空间地图中提取目标神经网络。我们使用概率独立分量分析来生成默认模式网络(DMN)的空间图;然而,该自适应流水线可以应用于任何感兴趣的网络。将不同的模板匹配算法(包括:归一化互相关,平方差之和和骰子系数)应用于数据集的空间和频域,以识别与我们的DMN模板共享最大相似性的组件。在确定静止状态下的组件后,决策管道会在每种方法中选择与我们的DMN模板匹配得分最高的组件。选择方法最典型的DMN组件的最终决定是通过方法之间的比较做出的。这导致了DMN掩码,该掩码是由我们的决策算法选择的组件生成的。为了评估决策者的准确性,对每个最终掩模与模板之间的互相关进行了测量。结果表明,同时使用空间和频域的归一化互相关方法以及骰子系数方法生成了最佳DMN掩码。这证明了我们算法在提供客观的网络提取方法中的实用性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号