Literature DB >> 32478525

Direct Comparison of Total Clearance Prediction: Computational Machine Learning Model versus Bottom-Up Approach Using In Vitro Assay.

Yohei Kosugi1, Natalie Hosea1.   

Abstract

The in vitro-in vivo extrapolation (IVIVE) approach for predicting total plasma clearance (CLtot) has been widely used to rank order compounds early in discovery. More recently, a computational machine learning approach utilizing physicochemical descriptors and fingerprints calculated from chemical structure information has emerged, enabling virtual predictions even earlier in discovery. Previously, this approach focused more on in vitro intrinsic clearance (CLint) prediction. Herein, we directly compare these two approaches for predicting CLtot in rats. A structurally diverse set of 1114 compounds with known in vivo CLtot, in vitro CLint, and plasma protein binding was used as the basis for this evaluation. The machine learning models were assessed by validation approaches using the time- and cluster-split training and test sets, and five-fold cross validation. Assessed by five-fold validation, the random forest regression (RF) and radial basis function (RBF) models demonstrated better prediction performance in eight attempted machine learning models. The CLtot values predicted by the RF and RBF models were within two-fold of the observed values for 67.7 and 71.9% of cluster-split test set compounds, respectively, while the predictivity was worse in the time-split dataset. The predictivity of both models tended to be improved by incorporating in vitro parameters, unbound fraction in plasma (fu,p), and CLint. CLtot prediction utilizing in vitro CLint and the well-stirred model, correcting for the fraction unbound in blood, was substantially worse compared to machine learning approaches for the same cluster-split test set. The reason that CLtot is underestimated by IVIVE is not fully explained by considering the calculated microsomal unbound fraction (cfu,mic), extended clearance classification system (ECCS), and omitting high clearance compounds in excess of hepatic blood flow. The analysis suggests that in silico machine learning models may have the power to reduce reliance on or replace in vitro and in vivo studies for chemical structure optimization in early drug discovery.

Entities:  

Keywords:  QSAR; blood-to-plasma concentration ratio; bottom-up approach; clearance prediction; in silico; in vitro-in vivo extrapolation; machine learning; microsome binding; physiological model; well-stirred model

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Year:  2020        PMID: 32478525     DOI: 10.1021/acs.molpharmaceut.9b01294

Source DB:  PubMed          Journal:  Mol Pharm        ISSN: 1543-8384            Impact factor:   4.939


  4 in total

1.  Novel QSAR Approach for a Regression Model of Clearance That Combines DeepSnap-Deep Learning and Conventional Machine Learning.

Authors:  Hideaki Mamada; Yukihiro Nomura; Yoshihiro Uesawa
Journal:  ACS Omega       Date:  2022-05-11

2.  Direct Comparison of the Prediction of the Unbound Brain-to-Plasma Partitioning Utilizing Machine Learning Approach and Mechanistic Neuropharmacokinetic Model.

Authors:  Yohei Kosugi; Kunihiko Mizuno; Cipriano Santos; Sho Sato; Natalie Hosea; Michael Zientek
Journal:  AAPS J       Date:  2021-05-18       Impact factor: 4.009

3.  Predicting Total Drug Clearance and Volumes of Distribution Using the Machine Learning-Mediated Multimodal Method through the Imputation of Various Nonclinical Data.

Authors:  Hiroaki Iwata; Tatsuru Matsuo; Hideaki Mamada; Takahisa Motomura; Mayumi Matsushita; Takeshi Fujiwara; Kazuya Maeda; Koichi Handa
Journal:  J Chem Inf Model       Date:  2022-08-22       Impact factor: 6.162

4.  Development and Biological Characterization of a Novel Selective TrkA Agonist with Neuroprotective Properties against Amyloid Toxicity.

Authors:  Thanasis Rogdakis; Despoina Charou; Alessia Latorrata; Eleni Papadimitriou; Alexandros Tsengenes; Christina Athanasiou; Marianna Papadopoulou; Constantina Chalikiopoulou; Theodora Katsila; Isbaal Ramos; Kyriakos C Prousis; Rebecca C Wade; Kyriaki Sidiropoulou; Theodora Calogeropoulou; Achille Gravanis; Ioannis Charalampopoulos
Journal:  Biomedicines       Date:  2022-03-06
  4 in total

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