化学
分配系数
分布(数学)
立体化学
色谱法
数学
数学分析
作者
Igor V. Tetko,Gennadiy Poda
摘要
Evaluation of the ALOGPS, ACD Labs LogD, and PALLAS PrologD suites to calculate the log D distribution coefficient resulted in high root-mean-squared error (RMSE) of 1.0−1.5 log for two in-house Pfizer's log D data sets of 17 861 and 640 compounds. Inaccuracy in log P prediction was the limiting factor for the overall log D estimation by these algorithms. The self-learning feature of the ALOGPS (LIBRARY mode) remarkably improved the accuracy in log D prediction, and an rmse of 0.64−0.65 was calculated for both data sets.
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