Skip to main content
Advertisement

< Back to Article

Fig 1.

Experimental setup.

A) Diagrammatic representation of a mouse prepared for wide-field imaging. B) Diagrammatic representation of the custom-made one-photon wide-field imaging setup along with the display screen. C) Display configuration relative to imaging the left cortex. D) Visual cortex map showing the sign of visual field representations along with areal boundaries for six visual areas used in this study.

More »

Fig 1 Expand

Table 1.

Summary of different stimuli shown to mice.

More »

Table 1 Expand

Table 2.

Number of neurons available for analysis for each Cre-line and session from the Allen Institute dataset.

More »

Table 2 Expand

Fig 2.

Pipeline for supervised classification of visual areas.

A) Block diagram for supervised classification of visual cortex. B) The pixels chosen for training the classifiers are shown as black dots. C) Result of classifying visual cortex using the supervised GMM classifier. Boundaries in black denote the ground truth.

More »

Fig 2 Expand

Table 3.

Accuracy of supervised classification on wide-field data.

The results are averaged across random initializations. The entries denote “% accuracy (± standard deviation)”.

More »

Table 3 Expand

Fig 3.

Analysis of visual cortex responses to different stimuli using supervised GMM classifiers.

A, B) The boundaries obtained by classifying all the pixels using the GMM classifier. Each color represents the visual area identified by the classifier and the black boundary within the cortex corresponds to ground truth retinotopic boundaries. The values within the bracket denote the classification accuracy. In A, the results are compared across different visual stimuli. The title of the plot indicates the visual stimuli shown to the mice. In B, the supervised classifier is verified to be consistent across different mice for natural movie stimuli. C) Results on resting state responses for two mice. D) Pixels selected for training the supervised model are limited to center x% of the radius of the visual area. This x% is mentioned as sample radius in the title of the plots in the first row of D, and the pixel used for training the supervised model is shown as black dots. The corresponding classification boundaries are shown in the second row of D, and the “ACC” values denote the accuracy.

More »

Fig 3 Expand

Table 4.

Accuracy of supervised classification on two-photon dataset.

The results are averaged across random initializations. The entries denote “% accuracy (± standard deviation)”.

More »

Table 4 Expand

Fig 4.

Confusion matrices for test data obtained using supervised classifier.

The diagonal values denote the precision (in %) of each class. Off-diagonal values denotes the false prediction rate (in %) for the predicted class given the actual class. A) Confusion matrix obtained using responses of Mouse M1 and Natural Movie stimuli. B) Confusion matrix obtained using the Cre-line Emx1-IRES and Natural Movie 3 stimuli from dataset 2. In S2 Fig, we show the confusion matrices for all the remaining data.

More »

Fig 4 Expand

Fig 5.

Pipeline for semi-supervised clustering of visual areas.

A) Block diagram of the clustering steps. B) Initial clusters that are labeled using the retinotopic map. C) Neighbors of a labeled cluster for area AM. BIC score is computed between these neighbors, and closest few are merged every iteration. D) An intermediate step in the clustering process. E) Final clustering result with accuracy (ACC).

More »

Fig 5 Expand

Table 5.

Accuracy of semi-supervised segmentation on wide-field dataset.

The results are averaged across random initializations of UBM. The entries denote “% accuracy (± standard deviation)”.

More »

Table 5 Expand

Fig 6.

Boundaries obtained by clustering visual cortex areas using the semi-supervised pipeline.

A) Boundaries derived using different visual stimuli in one mouse. Visual stimuli and accuracy (in %) are noted. B) Boundaries obtained for different mice using natural movies as stimuli. C) Boundaries obtained for different initializations of UBM for the same mouse and keeping visual stimuli unchanged. D) Boundaries derived from resting state responses.

More »

Fig 6 Expand

Fig 7.

Accuracies obtained by the supervised/semi-supervised pipeline with varying response lengths of resting state and stimulus-induced responses.

A, B) Results for Mouse M4 and M5, respectively, using the supervised approach. C, D) Results using the semi-supervised approach. E, F) Results for the two-photon dataset, using the Cre-lines Emx1-IRES and Nr5a1, respectively.

More »

Fig 7 Expand

Fig 8.

Intra-area and inter-area correlations computed on input responses and LDA features.

AD) Correlations computed from mouse M4 of wide-field dataset. EH) Correlations computed from Emx1-IRES Cre-line of two-photon dataset. The correlations are computed as averages over all unique pairs of neurons/pixels in the test data, which were not used to train the LDA projection matrix. The correlations in the two-photon dataset are computed using data pooled from different mice and multiple sessions. In S3 and S4 Figs, we present a detailed correlation analysis with information about individual mice and session. Further examples of correlations analysis are shown in S5S7 Figs.

More »

Fig 8 Expand

Fig 9.

Two-dimensional representation of the supervised LDA subspace.

A, B) LDA subspace of wide-field dataset (mouse M4). C, D) LDA subspace of two-photon dataset (Cre-line Emx1-IRES). The plots on the left (A, C) are obtained from natural movie responses and that on the right (B, D) are obtained from resting state responses.

More »

Fig 9 Expand