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May I have your guidance that if the results should mainly focus on the rank or the perb_score?
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As when trying the example in the tutorial, the results shows as below, the resistant cell type rank to be 1st, while the perb_score is lower than the sensitive cell types, which rank to be 2nd.
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Besides, is there an threshold for the perb_score, 1.01e-6 seems quite small....
Thank you very much for your guidance! Appreciate!
The rank column is an intermediate variable that reflects the sample ranks of perb_score and can be ignored. The actual ranking of cell types is represented by the top_rank% column.
The small perb_score is due to the nature of the adjacency matrix in the manifold alignment analysis, where values range from 0 to 1, and involve the computation of smallest eigenvalue of the Laplacian matrix.
When interpreting results, it should focus on the top_rank% of cell types rather than the absolute values of perb_score, as there isn't a fixed threshold suitable for every case.
Dear authors,
Thanks for your amazing tools of scRank!
May I have your guidance that if the results should mainly focus on the rank or the perb_score?
_
_
Besides, is there an threshold for the perb_score, 1.01e-6 seems quite small....
Thank you very much for your guidance! Appreciate!
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