Carneiro, GA., Silva KM., Chaves BN., Mendonça GN., Cremonesi AS. PAIPS - Unifying In Silico Tools to Empower Structural Biology Research and Education. 2026
Below are the references used to describe each of the programs discussed in the article 'PAIPS - Unifying In Silico Tools to Empower Structural Biology Research and Education', as well as those available on this website.
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