National Center for Computational Toxicology, U.S. EPA, Research Triangle Park, North Carolina, United States of America.
Oak Ridge Institute for Science and Education, Oak Ridge, Tennessee, United States of America.
PLoS One. 2019 May 28;14(5):e0217564. doi: 10.1371/journal.pone.0217564. eCollection 2019.
Linking in vitro bioactivity and in vivo toxicity on a dose basis enables the use of high-throughput in vitro assays as an alternative to traditional animal studies. In this study, we evaluated assumptions in the use of a high-throughput, physiologically based toxicokinetic (PBTK) model to relate in vitro bioactivity and rat in vivo toxicity data. The fraction unbound in plasma (fup) and intrinsic hepatic clearance (Clint) were measured for rats (for 67 and 77 chemicals, respectively), combined with fup and Clint literature data for 97 chemicals, and incorporated in the PBTK model. Of these chemicals, 84 had corresponding in vitro ToxCast bioactivity data and in vivo toxicity data. For each possible comparison of in vitro and in vivo endpoint, the concordance between the in vivo and in vitro data was evaluated by a regression analysis. For a base set of assumptions, the PBTK results were more frequently better associated than either the results from a "random" model parameterization or direct comparison of the "untransformed" values of AC50 and dose (performed best in 51%, 28%, and 21% of cases, respectively). We also investigated several assumptions in the application of PBTK for IVIVE, including clearance and internal dose selection. One of the better assumptions sets-restrictive clearance and comparing free in vivo venous plasma concentration with free in vitro concentration-outperformed the random and untransformed results in 71% of the in vitro-in vivo endpoint comparisons. These results demonstrate that applying PBTK improves our ability to observe the association between in vitro bioactivity and in vivo toxicity data in general. This suggests that potency values from in vitro screening should be transformed using in vitro-in vivo extrapolation (IVIVE) to build potentially better machine learning and other statistical models for predicting in vivo toxicity in humans.
基于剂量的体外生物活性与体内毒性关联可使高通量体外检测成为传统动物研究的替代方法。本研究评估了使用高通量、基于生理学的毒代动力学(PBTK)模型将体外生物活性与大鼠体内毒性数据关联的假设。分别测量了大鼠的血浆未结合分数(fup)和内在肝清除率(Clint)(分别为 67 种和 77 种化学物质),并结合了 97 种化学物质的 fup 和 Clint 文献数据,将其纳入 PBTK 模型。这些化学物质中,有 84 种具有相应的体外 ToxCast 生物活性数据和体内毒性数据。对于体外和体内终点的每一种可能比较,通过回归分析评估体内和体外数据之间的一致性。对于一组基本假设,PBTK 结果比随机模型参数化或直接比较未转换的 AC50 和剂量值(分别在 51%、28%和 21%的情况下表现最佳)更频繁地与体内数据相关。我们还研究了 PBTK 在 IVIVE 中的应用中的几种假设,包括清除率和内部剂量选择。其中一个较好的假设集——限制清除率,并将体内静脉血浆游离浓度与体外游离浓度进行比较——在 71%的体外-体内终点比较中优于随机和未转换的结果。这些结果表明,应用 PBTK 可以提高我们观察体外生物活性和体内毒性数据之间关联的能力。这表明,从体外筛选获得的效力值应通过体外-体内外推(IVIVE)进行转换,以构建用于预测人类体内毒性的潜在更好的机器学习和其他统计模型。