2004
DOI: 10.1017/s0317167100003759
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A Mathematical Model for Prediction of Drug Molecule Diffusion Across the Blood-Brain Barrier

Abstract: 520A robust numerical algorithm to computationally predict the ability of drug molecules to cross the blood-brain barrier (BBB) is of relevance to basic neuroscience and to the pharmacology of drug design. [1][2][3][4] A molecule can cross the BBB by either active transport or passive diffusion; 4 passive diffusion remains the most important method for the greatest structural diversity of drug molecules. The two most widely recognized principal physical properties that influence passive diffusion across the BB… Show more

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Cited by 10 publications
(6 citation statements)
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“…There are 220 MOE 2D descriptors for each compound. However, during pre-processing we removed 30 descriptors with near zero variation and 6 descriptors that were linear combinations of others, leaving 184 descriptors for model building. bbb2 contains blood–brain barrier categories (“crossing” or “not crossing”) for 80 compounds from Burns andWeaver [14]. There are 45 compounds categorised as “crossing” and 35 compounds as “not crossing”.…”
Section: Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…There are 220 MOE 2D descriptors for each compound. However, during pre-processing we removed 30 descriptors with near zero variation and 6 descriptors that were linear combinations of others, leaving 184 descriptors for model building. bbb2 contains blood–brain barrier categories (“crossing” or “not crossing”) for 80 compounds from Burns andWeaver [14]. There are 45 compounds categorised as “crossing” and 35 compounds as “not crossing”.…”
Section: Methodsmentioning
confidence: 99%
“…bbb2 contains blood–brain barrier categories (“crossing” or “not crossing”) for 80 compounds from Burns andWeaver [14]. There are 45 compounds categorised as “crossing” and 35 compounds as “not crossing”.…”
Section: Methodsmentioning
confidence: 99%
“…Molecular weight (MW), topological polar surface area (TPSA), log P , log D , pKa, hydrogen bond donor (HBD), carbon/heteroatom ratio (C:Hetero), first kappa shaped index (Kier1), second kappa shaped index (Kier2), third kappa shaped index (Kier3), atom connectivity index (chi1), carbon connectivity index (chi1_C), hydrogen bond acceptor (HBA), hydrogen bond number (HBN = HBD + HBA), number of rotational bonds (RB), square of log P ((log P ) 2 ), , MWHBN , number of aromatic rings (Aro_R), number of heavy atoms (HA), van der Waals volume (vdw_V), area of van der Waals surface (vdw_A) were analyzed descriptors. The descriptors , MWHBN were chosen based upon simple linear regression literature studies, based upon brain-uptake index (BUI). These descriptors were calculated using Molecular Operating Environment (MOE) and ChemAxon (CA) software. The physiochemical property space for each descriptor is mapped for the CNS and non-CNS drugs data sets, and an equation (cutoffs, linear or polynomial) was fitted as a boundary for CNS and non-CNS drug space.…”
Section: Methodsmentioning
confidence: 99%
“…Sun 42 developed the predictive models for partition coefficient, aqueous solubility, blood brain barrier permeability, and human intestinal absorption using the Partial Least Squares (PLS) approach. Burns 43 and Weaver developed a MLR based BBB permeability model using 14 theoretically derived biophysical descriptors based on topological and hydrogen bonding properties of the molecules. Yap 9 and Chen generated Quantitative Structure-Pharmacokinetic Relationships (QSPkR) for BBB permeability, human serum albumin binding, and milk-plasma distribution by using general regression neural network, multilayer feedforward neural network, and MLR.…”
Section: Introductionmentioning
confidence: 99%