If you look at the materials and methods of (https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5449402/) this paper, they have suggested using any three tools from each method (sequence homology-based methods, supervised learning methods, protein sequence and structure-based methods and consensus-based methods) to find the deleterious SNP. How do I choose the three best tools for each method?
Great list. Don't forget the Variant Effect Predictor (Coding/Protein, mostly), SnpEff (variety of fields), and DeepSea (Non-coding/Regulatory).
Thank you, Kevin Blighe. So now I can choose randomly any tool from each category in this list or should the choice be based on any criteria for best tools?
You could take a look through each and try to make your choices that way.
Take a look at the material under 'further reading'. For example, in the UK, the clinical genetics regulatory body recommends certain tools over others.
what tools would you recommend to asses the effect of variants on ligand binding ?Schrodinger maestro seems good but it's a paid software.
Sounds more like quantum chemistry ... ? Take a look at Spartan molecular modelling, although, you will require a powerful computer to accurately predict the effects. Could also look at the link that I posted under Protein modelling (from amino acid sequence)