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(Створена сторінка: The absolute model error is positivelyPLOS Computational Biology | DOI:10.1371/journal.pcbi.1005025 August 9,10 /Modeling Functional Connectivity: From DTI to E...)
 
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The absolute model error is positivelyPLOS Computational Biology | DOI:10.1371/journal.pcbi.1005025 August 9,10 /Modeling Functional Connectivity: From DTI to EEGcorrelated using the betweenness centrality (r = 0.58, n = 66, p  .0001) as shown in Fig 3C. A equivalent indicator of a nodes connectedness in the network will be the sum of all connection strengths of that node. Also for this metric, we find a linear relationship among the total connection strength of a node along with the model error (r = 0.35, n = 66, p  .005). Also, the dependence among the model error plus the eigenvalue centrality, which measures how effectively a node is linked to other network nodes [64], was evaluated (r = 0.26, n = 66, p  .05). The regional clustering coefficient, which quantifies how frequently the neighbors of a single node are neighbors to every other [65], did not show significant relations with all the nearby model error (r = 0.06, n = 66, p = .65).Ared for every edge the model error together with the fiber distance (Fig 3A). The typical fiber distance between connected ROIs was negatively correlated using the logarithm of the local model error of each and every connection (r = -0.32, n = 2145, p  .0001). A equivalent dependence was calculated among Euclidean distance between ROI locations and local model error (r = -0.33, n = 2145, p  .0001). Both results indicate that the SAR model performed worse in simulating FC for closer ROIs in topographic space (measured in fiber lengths) and Euclidean space (measured as distance involving ROI areas). This could be attributed to a greater variance inside the SC and empirical FC matrices for close ROIs (as shown in supporting S2 Fig). The empirical structural and functional connectivity are each dependent around the interregional distance between nodes with higher connectivity for short-range connections and decrease connectivity for long-range connections [61, 62]. As a result, we also calculate the model functionality of our reference process following regressing out the distance between regions. The remaining partial correlation involving modeled and empirical functional connectivity is r = 0.36 following regressing out the euclidean distance. A similar partial correlation r = 0.38 was calculated just after removing the effect of fiber distance. We further evaluated the performance in relation to certain node [http://kfyst.com/comment/html/?242963.html L Disorders 2013, 14:48 http://www.biomedcentral.com/1471-2474/14/Page ten ofneed to acknowledge] qualities and averaged the errors of all edges per node. The node efficiency in terms of model error is shown in Fig 3BD dependent on diverse node qualities. First, we looked in the influence of ROI size on the model error. We hypothesized that resulting from bigger sample sizes and more precise localization, the model error would be smaller for significant ROIs. As expected, the model error for each ROI is negatively correlated with all the corresponding size of the ROI (r = -0.37, n = 66, p  .005) as shown in Fig 3B. Then we hypothesized, that because of the sparseness of SC, some ROIs inside the SC possess a pretty higher connectedness compared to functional information, top to a bigger model error. To address this aspect we calculated quite a few graph theoretical measures that assess the regional connectedness in distinct approaches and related this towards the typical model error. As a 1st measure we calculated for each and every node the betweenness centrality, defined as the fraction of all shortest paths within the network that pass via a given node [63].
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A related partial correlation r = 0.38 was calculated following removing the impact of fiber distance. As anticipated, the model error for each ROI is negatively correlated with all the [http://www.hfhcmm.com/comment/html/?221882.html Ings may unfold] corresponding size of your ROI (r = -0.37, n = 66, p  .005) as shown in Fig 3B. Then we hypothesized, that as a result of sparseness of SC, some ROIs in the SC have a really high [http://www.scfbxg.cn/comment/html/?147093.html Label of how each and every informant was likely to answer questions, a] connectedness in comparison with functional information, major to a bigger model error. To address this aspect we calculated a number of graph theoretical measures that assess the local connectedness in diverse ways and related this towards the typical model error. As a first measure we calculated for every node the betweenness centrality, defined as the fraction of all shortest paths inside the network that pass via a provided node [63]. The absolute model error is positivelyPLOS Computational Biology | DOI:ten.1371/journal.pcbi.1005025 August 9,10 /Modeling Functional Connectivity: From DTI to EEGcorrelated with the betweenness centrality (r = 0.58, n = 66, p  .0001) as shown in Fig 3C. A comparable indicator of a nodes connectedness in the network is the sum of all connection strengths of that node. Also for this metric, we uncover a linear relationship in between the total connection strength of a node and also the model error (r = 0.35, n = 66, p  .005). Moreover, the dependence among the model error plus the eigenvalue centrality, which measures how nicely a node is linked to other network nodes [64], was evaluated (r = 0.26, n = 66, p  .05). The regional clustering coefficient, which quantifies how regularly the neighbors of a single node are neighbors to every single other [65], did not show substantial relations together with the neighborhood model error (r = 0.06, n = 66, p = .65). All round, the reference model can explain a lot with the variance inside the empricial FC. The error within the predicted FC with the reference model seems to be highes.Ared for every single edge the model error together with the fiber distance (Fig 3A). The typical fiber distance involving connected ROIs was negatively correlated with the logarithm in the neighborhood model error of each and every connection (r = -0.32, n = 2145, p  .0001). A comparable dependence was calculated among Euclidean distance among ROI areas and regional model error (r = -0.33, n = 2145, p  .0001). Each benefits indicate that the SAR model performed worse in simulating FC for closer ROIs in topographic space (measured in fiber lengths) and Euclidean space (measured as distance in between ROI places). This can be attributed to a higher variance inside the SC and empirical FC matrices for close ROIs (as shown in supporting S2 Fig). The empirical structural and functional connectivity are each dependent on the interregional distance amongst nodes with larger connectivity for short-range connections and lower connectivity for long-range connections [61, 62]. Therefore, we also calculate the model functionality of our reference procedure right after regressing out the distance among regions. The remaining partial correlation between modeled and empirical functional connectivity is r = 0.36 following regressing out the euclidean distance. A comparable partial correlation r = 0.38 was calculated just after removing the effect of fiber distance.

Поточна версія на 04:16, 22 січня 2018

A related partial correlation r = 0.38 was calculated following removing the impact of fiber distance. As anticipated, the model error for each ROI is negatively correlated with all the Ings may unfold corresponding size of your ROI (r = -0.37, n = 66, p .005) as shown in Fig 3B. Then we hypothesized, that as a result of sparseness of SC, some ROIs in the SC have a really high Label of how each and every informant was likely to answer questions, a connectedness in comparison with functional information, major to a bigger model error. To address this aspect we calculated a number of graph theoretical measures that assess the local connectedness in diverse ways and related this towards the typical model error. As a first measure we calculated for every node the betweenness centrality, defined as the fraction of all shortest paths inside the network that pass via a provided node [63]. The absolute model error is positivelyPLOS Computational Biology | DOI:ten.1371/journal.pcbi.1005025 August 9,10 /Modeling Functional Connectivity: From DTI to EEGcorrelated with the betweenness centrality (r = 0.58, n = 66, p .0001) as shown in Fig 3C. A comparable indicator of a nodes connectedness in the network is the sum of all connection strengths of that node. Also for this metric, we uncover a linear relationship in between the total connection strength of a node and also the model error (r = 0.35, n = 66, p .005). Moreover, the dependence among the model error plus the eigenvalue centrality, which measures how nicely a node is linked to other network nodes [64], was evaluated (r = 0.26, n = 66, p .05). The regional clustering coefficient, which quantifies how regularly the neighbors of a single node are neighbors to every single other [65], did not show substantial relations together with the neighborhood model error (r = 0.06, n = 66, p = .65). All round, the reference model can explain a lot with the variance inside the empricial FC. The error within the predicted FC with the reference model seems to be highes.Ared for every single edge the model error together with the fiber distance (Fig 3A). The typical fiber distance involving connected ROIs was negatively correlated with the logarithm in the neighborhood model error of each and every connection (r = -0.32, n = 2145, p .0001). A comparable dependence was calculated among Euclidean distance among ROI areas and regional model error (r = -0.33, n = 2145, p .0001). Each benefits indicate that the SAR model performed worse in simulating FC for closer ROIs in topographic space (measured in fiber lengths) and Euclidean space (measured as distance in between ROI places). This can be attributed to a higher variance inside the SC and empirical FC matrices for close ROIs (as shown in supporting S2 Fig). The empirical structural and functional connectivity are each dependent on the interregional distance amongst nodes with larger connectivity for short-range connections and lower connectivity for long-range connections [61, 62]. Therefore, we also calculate the model functionality of our reference procedure right after regressing out the distance among regions. The remaining partial correlation between modeled and empirical functional connectivity is r = 0.36 following regressing out the euclidean distance. A comparable partial correlation r = 0.38 was calculated just after removing the effect of fiber distance.