MycPermCheck predicts potential to permeate the Mycobacterium tuberculosis cell membrane based on physicochemical properties. Due to the lack of reliable experimental datapoints, the authors defined the training set using molecules that are active against M.tb (MIC < 10 uM) (therefore, permeable) and have a molecular weight of <500 Dalton
eos8d8a
mycpermcheck
Compound
Single
Classification
Probability
Float
Single
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