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Hi,
@mapleleaf-soar and I found AI models (e.g. AtomNet #56, ACNN #287) achieve high performance on DUD-E and PDBbind data sets because they learned the bias in the data sets. REF #1008
For example:
We found ACNN model can achieve "state-of-the-art" in PDBbind data set using ligand alone.😂
Others also found the bias in DUD-E. REF #1009#1010
I believe the subsection Structure-based prediction of bioactivity need to be updated and try to work on it.
The impact of deep learning in treating disease and developing new treatments
The text was updated successfully, but these errors were encountered:
0ut0fcontrol
changed the title
update subsection: Structure-based prediction of bioactivity
Update subsection: Structure-based prediction of bioactivity
Apr 2, 2020
Thanks for the suggestions. Would you like to write a short update to this section? Discussing bias in data sets and evaluations is definitely of interest to us.
I could likely review that pull request, though I can't promise a specific timeline. If you want to make a pull request, I recommend
Hi,
@mapleleaf-soar and I found AI models (e.g. AtomNet #56, ACNN #287) achieve high performance on DUD-E and PDBbind data sets because they learned the bias in the data sets. REF #1008
For example:
Others also found the bias in DUD-E. REF #1009 #1010
I believe the subsection
Structure-based prediction of bioactivity
need to be updated and try to work on it.Any comments and suggestions are welcome!
The text was updated successfully, but these errors were encountered: