Correction to CSAR Benchmark Exercise of 2010: Selection of the Protein–Ligand Complexes
نویسندگان
چکیده
For clarity, the Pearson R and R are given in Table 1 below for all the theoretical cases posed. It corrects the correlation coefficients in Figure 3 and in the discussion of signal over noise in the “Strengths and Weaknesses” section. It should be noted that our use of R is based on squaring the Pearson value, not based on a calculation of the coefficient of determination (also called R). The coefficient of determination measures the one-to-one correspondence between two values, requiring a slope of 1 and an intercept at 0 rather than leastsquares-fit values.
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