The tool we used to design these binders is Prometheus, a protein design method that uses an inverse folding model as a reinforcement learning agent to achieve self-optimization. In our workflow, the model achieves automatic updates of parameters through "generation-evaluation-optimization" loop, gradually learning the ability to generate better binders, which greatly reduces the scale and cost of screening and experimental verification, and significantly enhances experimental success rates.
id: strong-ibis-vine

Nipah Virus Glycoprotein G
0.69
87.67
--
6.9 kDa
65
id: calm-crow-cedar

Nipah Virus Glycoprotein G
0.66
88.59
--
6.9 kDa
65
id: wild-orca-ruby

Nipah Virus Glycoprotein G
0.61
88.41
--
6.8 kDa
65
id: amber-lynx-flint

Nipah Virus Glycoprotein G
0.50
88.45
--
6.8 kDa
65
id: rough-cat-birch

Nipah Virus Glycoprotein G
0.48
88.94
--
6.8 kDa
65
id: amber-tiger-ember

Nipah Virus Glycoprotein G
0.47
87.99
--
6.9 kDa
65
id: lunar-crow-topaz

Nipah Virus Glycoprotein G
0.46
87.94
--
7.0 kDa
65
id: swift-heron-ember

Nipah Virus Glycoprotein G
0.30
89.20
--
6.4 kDa
58
id: solid-wolf-frost

Nipah Virus Glycoprotein G
0.13
88.14
--
6.4 kDa
58
id: bright-bison-ruby

Nipah Virus Glycoprotein G
0.10
87.97
--
6.3 kDa
58