Hi
I'm trying to use dMaSIF for interaction prediction between proteins (taking a target and finding the best binder in a large collection of potential binders)
At the moment, I process both binder and target molecule identically with dMaSIF up to the convolutional step and export the outputs "xxxx_predfeatures_emb1.npy" and "predcoords.npy" for both proteins.
According to the paper, these features of both binding partners should be passed through a separate convolutional network, allowing the network to find complementary (instead of similar) regions. Unfortunately I was not able to find the code doing that. Could you point me to the right section in the dMaSIF code?
Thanks so much to all contributors
DavidGraber
Hi
I'm trying to use dMaSIF for interaction prediction between proteins (taking a target and finding the best binder in a large collection of potential binders)
At the moment, I process both binder and target molecule identically with dMaSIF up to the convolutional step and export the outputs "xxxx_predfeatures_emb1.npy" and "predcoords.npy" for both proteins.
According to the paper, these features of both binding partners should be passed through a separate convolutional network, allowing the network to find complementary (instead of similar) regions. Unfortunately I was not able to find the code doing that. Could you point me to the right section in the dMaSIF code?
Thanks so much to all contributors
DavidGraber