On 2018 Jan 21, Peter Rogan commented:
The results reported in Table S1 of the different bioinformatic methods were difficult for us to assess. For example, why were there no bioinformatic analyses for c.426+415_4780dup(insGATCGCAGTGA)? Our analysis includes this mutation. Model cutoffs for these bioinformatic methods are defined arbitrarily because they are based on underlying datasets with unpublished or unknown content; furthermore, the binding site models are not easily reproduced, in part because they are not actually based on binding site affinities (Rogan PK, 2013).
The details of the methods and source data we use to derive our information weight matrices and the matrices themselves are available (Rogan PK, 2003). The information contents of splice recognition sites or exons are expressed in units of bits, which have been formally proven to be related to binding site affinity through the second law of thermodynamics (Schneider TD, 1997, Rogan PK, 1998). In fact, relative entropy used by maxEntscan, violates the triangle inequality which is a fundamental requirement of the second law (Schneider TD, 1999). These articles demonstrate the cutoff for true binding sites is very close to the theoretical minimum of zero bits (Delta G = 0). We have also demonstrated this thermodynamic threshold holds for other types of binding sites (Lu R, 2017).
Our pipeline for NGS data analysis has been validated extensively (Shirley BC, 2013, Viner C, 2014, Dorman SN, 2014, Caminsky NG, 2016, Mucaki EJ, 2016, Yang XR, 2017, Dos Santos ES, 2017). The URL of the MutationForecaster pipeline is given in the document linked to our previous PubMed Commons post .
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