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Below are the parameters I use for the prior segmentation:
n_clusters = 3 # Number of clusters to use for cell type segmentation. Default: 4
prior_segmentation_confidence = 0.96 # Confidence of the prior segmentation. Default: 0.2
iters = 4000 # Number of iterations for the cell segmentation algorithm. Default: 500
n_cells_init = 300 # Initial number of cells
I thought I would be getting all the cell centers given I set the confidence to 0.96 and with such a higher number of iterations. Are there any other advice to improve the baysor result?
Thank you.
The text was updated successfully, but these errors were encountered:
This image is the output of a CellPose trained model, where each nuclei is labeled by a unique integer, with background denoting 0. Hence, we would expect Baysor to be able to put a "red dot" on each of these nuclei. However, there are only three "red dots" here, far from expected outcome.
We have 16 FOVs and this was one of them. I wonder if the fact that them being tissue data made it more difficult. As Baysor seemed to have worked well on a cell cultured image set.
Good day,
Below are the parameters I use for the prior segmentation:
I thought I would be getting all the cell centers given I set the confidence to 0.96 and with such a higher number of iterations. Are there any other advice to improve the baysor result?
Thank you.
The text was updated successfully, but these errors were encountered: