Tang Huadong, Mayersohn Michael
Department of Pharmaceutical Sciences, College of Pharmacy, The University of Arizona, Tucson, 85721, USA.
J Pharm Sci. 2006 Aug;95(8):1783-99. doi: 10.1002/jps.20481.
Allometrically scaled data sets (138 compounds) used for predicting human clearance were obtained from the literature. Our analyses of these data have led to four observations. (1) The current data do not provide strong evidence that systemic clearance (CL(s); n = 102) is more predictable than apparent oral clearance (CL(po); n = 24), but caution needs to be applied because of potential CL(po) prediction error caused by differences in bioavailability across species. (2) CL(s) of proteins (n = 10) can be more accurately predicted than that of non-protein chemicals (n = 102). (3) CL(s) is more predictable for compounds eliminated by renal or biliary excretion (n = 33) than by metabolism (n = 57). (4) CL(s) predictability for hepatically eliminated compounds followed the order: high CL (n = 11) > intermediate CL (n = 17) > low CL (n = 29). All examples of large vertical allometry (% error of prediction greater than 1000%) occurred only when predicting human CL(s) of drugs having very low CL(s). A qualitative analysis revealed the application of two potential rules for predicting the occurrence of large vertical allometry: (1) ratio of unbound fraction of drug in plasma (f(u)) between rats and humans greater than 5; (2) C logP greater than 2. Metabolic elimination could also serve as an additional indicator for expecting large vertical allometry.
用于预测人体清除率的异速生长标度数据集(138种化合物)取自文献。我们对这些数据的分析得出了四点观察结果。(1)目前的数据并未提供有力证据表明全身清除率(CL(s);n = 102)比表观口服清除率(CL(po);n = 24)更具可预测性,但由于不同物种间生物利用度的差异可能导致CL(po)预测误差,因此需要谨慎对待。(2)蛋白质的CL(s)(n = 10)比非蛋白质化学物质的CL(s)(n = 102)更能准确预测。(3)通过肾排泄或胆汁排泄消除的化合物(n = 33)的CL(s)比通过代谢消除的化合物(n = 57)更具可预测性。(4)肝消除化合物的CL(s)可预测性顺序为:高CL(n = 11)>中CL(n = 17)>低CL(n = 29)。所有大垂直异速生长的例子(预测误差百分比大于1000%)仅在预测CL(s)非常低的药物的人体CL(s)时出现。定性分析揭示了预测大垂直异速生长发生的两条潜在规则:(1)大鼠和人血浆中药物未结合分数(f(u))之比大于5;(2)C logP大于2。代谢消除也可作为预测大垂直异速生长的一个额外指标。