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1.
Clin Radiol ; 78(12): 875-884, 2023 12.
Artigo em Inglês | MEDLINE | ID: mdl-37604738

RESUMO

With a distinctive shape and surrounding anatomical structures, the fourth ventricle is located in the posterior cranial fossa. There are various pathologies, either developmental or acquired, that can present as a characteristic deformity of the fourth ventricle. Therefore, this paper will cover the anatomy of the fourth ventricle and correlate this to the various pathologies. The aim of this review is to improve the ability of the readers to recognise the change in shape and configuration of the fourth ventricle, enabling early detection of pathologies.


Assuntos
Fossa Craniana Posterior , Quarto Ventrículo , Humanos , Quarto Ventrículo/diagnóstico por imagem , Quarto Ventrículo/patologia
2.
Int J Colorectal Dis ; 31(2): 235-45, 2016 Feb.
Artigo em Inglês | MEDLINE | ID: mdl-26490055

RESUMO

BACKGROUND: Stage IV colorectal cancer patients with unresectable metastasis who undergo elective primary tumour resection experience heterogeneous post-operative survival. We aimed to develop a scoring model for predicting post-operative survival using pre-operative variables to identify patients who are least likely to experience extended survival following the procedure. METHODS: Survival data were collected from stage IV colorectal cancer patients who had undergone elective primary tumour resection between January 1999 and December 2007. Coefficients of significant covariates from the multivariate Cox regression model were used to compute individual survival scores to classify patients into three prognostic groups. A survival function was derived for each group via Kaplan-Meier estimation. Internal validation was performed. RESULTS: Advanced age (hazard ratio, HR 1.43 (1.16-1.78)); poorly differentiated tumour (HR 2.72 (1.49-5.04)); metastasis to liver (HR 1.76 (1.33-2.33)), lung (HR 1.37 (1.10-1.71)) and bone (HR 2.08 ((1.16-3.71)); carcinomatosis (HR 1.68 (1.30-2.16)); hypoalbuminaemia (HR 1.30 (1.04-1.61) and elevated carcinoembryonic antigen levels (HR 1.89 (1.49-2.39)) significantly shorten post-operative survival. The scoring model separated patients into three prognostic groups with distinct median survival lengths of 4.8, 12.4 and 18.6 months (p < 0.0001). Internal validation revealed a concordance probability estimate of 0.65 and a time-dependent area under receiver operating curve of 0.75 at 6 months. Temporal split-sample validation implied good local generalizability to future patient populations (p < 0.0001). CONCLUSION: Predicting survival following elective primary tumour resection using pre-operative variables has been demonstrated with the scoring model developed. Model-based survival prognostication can support clinical decisions on elective primary tumour resection eligibility.


Assuntos
Neoplasias Colorretais/mortalidade , Neoplasias Colorretais/patologia , Modelos de Riscos Proporcionais , Idoso , Algoritmos , Antígeno Carcinoembrionário/sangue , Neoplasias Colorretais/sangue , Estudos de Viabilidade , Feminino , Hemoglobinas/metabolismo , Humanos , Estimativa de Kaplan-Meier , Masculino , Pessoa de Meia-Idade , Metástase Neoplásica , Estadiamento de Neoplasias , Prognóstico , Estudos Retrospectivos , Fatores de Risco , Albumina Sérica/metabolismo
3.
J Clin Pharm Ther ; 35(5): 521-6, 2010 Oct.
Artigo em Inglês | MEDLINE | ID: mdl-20831676

RESUMO

BACKGROUND: Vorinostat (suberoylanilide hydroxamic acid) is the first histone deacetylase inhibitor approved by US FDA for use in oncology. However, as a hydrophobic acid, its limited aqueous solubility poses a problem for parenteral delivery. Such limited solubility may also affect its oral bioavailability. OBJECTIVE: The aim of this study was to evaluate whether cyclodextrins (CDs), common excipients used in pharmaceutical industry, could increase the aqueous solubility of vorinostat. METHODS: The actual aqueous solubility of vorinostat was investigated by phase-solubility method. Molecular simulation was employed to predict the interaction energy and preferred orientation of vorinostat in CD cavities. RESULTS: Phase-solubility studies indicated that the solubility of vorinostat (7·24×10(-1) mm) was substantially increased when complexed with various CDs, in the following order: randomly methylated-ß-cyclodextrin (RM-ß-CD)>hydroxypropyl-ß-cyclodextrin (HP-ß-CD)>α-cyclodextrin>hydroxypropyl-α-cyclodextrin>Hydroxypropyl-γ-cyclodextrin>γ-cyclodextrin. RM-ß-CD 300 mm increased vorinostat solubility to 70·8 mm, almost two orders of magnitude higher than the baseline solubility. Such findings were in good agreement with the results obtained from molecular simulation. CONCLUSION: CDs, particularly RM-ß-CD and HP-ß-CD, increased vorinostat's solubility. Future studies could be focused on the application of HP-ß-CD in parenteral delivery of vorinostat or using RM-ß-CD as an oral absorption enhancer. Molecular simulation appeared to be a useful tool for the selection of appropriate CD as excipient for drug delivery.


Assuntos
Ciclodextrinas/química , Inibidores de Histona Desacetilases/administração & dosagem , Ácidos Hidroxâmicos/administração & dosagem , Ácidos Hidroxâmicos/química , beta-Ciclodextrinas/química , 2-Hidroxipropil-beta-Ciclodextrina , Absorção , Administração Oral , Disponibilidade Biológica , Fenômenos Químicos , Excipientes/química , Inibidores de Histona Desacetilases/química , Infusões Intravenosas , Modelos Moleculares , Solubilidade/efeitos dos fármacos , Vorinostat
4.
Mini Rev Med Chem ; 7(11): 1097-107, 2007 Nov.
Artigo em Inglês | MEDLINE | ID: mdl-18045213

RESUMO

Quantitative structure-activity relationship (QSAR) and quantitative structure-property relationship (QSPR) models have been extensively used for predicting compounds of specific pharmacodynamic, pharmacokinetic, or toxicological property from structure-derived physicochemical and structural features. These models can be developed by using various regression methods including conventional approaches (multiple linear regression and partial least squares) and more recently explored genetic (genetic function approximation) and machine learning (k-nearest neighbour, neural networks, and support vector regression) approaches. This article describes the algorithms of these methods, evaluates their advantages and disadvantages, and discusses the application potential of the recently explored methods. Freely available online and commercial software for these regression methods and the areas of their applications are also presented.


Assuntos
Farmacocinética , Farmacologia , Relação Quantitativa Estrutura-Atividade , Toxicologia , Algoritmos , Farmacologia/métodos , Valor Preditivo dos Testes , Análise de Regressão
5.
J Pharm Sci ; 96(11): 2838-60, 2007 Nov.
Artigo em Inglês | MEDLINE | ID: mdl-17786989

RESUMO

Computational methods for predicting compounds of specific pharmacodynamic and ADMET (absorption, distribution, metabolism, excretion and toxicity) property are useful for facilitating drug discovery and evaluation. Recently, machine learning methods such as neural networks and support vector machines have been explored for predicting inhibitors, antagonists, blockers, agonists, activators and substrates of proteins related to specific therapeutic and ADMET property. These methods are particularly useful for compounds of diverse structures to complement QSAR methods, and for cases of unavailable receptor 3D structure to complement structure-based methods. A number of studies have demonstrated the potential of these methods for predicting such compounds as substrates of P-glycoprotein and cytochrome P450 CYP isoenzymes, inhibitors of protein kinases and CYP isoenzymes, and agonists of serotonin receptor and estrogen receptor. This article is intended to review the strategies, current progresses and underlying difficulties in using machine learning methods for predicting these protein binders and as potential virtual screening tools. Algorithms for proper representation of the structural and physicochemical properties of compounds are also evaluated.


Assuntos
Inteligência Artificial , Desenho de Fármacos , Proteínas/agonistas , Proteínas/antagonistas & inibidores , Preparações Farmacêuticas/química , Farmacocinética , Farmacologia , Relação Quantitativa Estrutura-Atividade
6.
J Control Release ; 120(3): 211-9, 2007 Jul 31.
Artigo em Inglês | MEDLINE | ID: mdl-17582639

RESUMO

Terpenes and terpenoids have been used as enhancers in transdermal formulations for facilitating penetration of drugs into human skin. Knowledge of the correlation between the human skin penetration effect (HSPE) and the physicochemical properties of these enhancers is important for facilitating the discovery and development of more enhancers. In this work, the HSPE of 49 terpenes and terpenoids were compared by the in vitro permeability coefficients of haloperidol (HP) through excised human skin. A first-order multiple linear regression (MLR) model was constructed to link the permeability coefficient of the drug to the lipophilicity, molecular weight, boiling point, the terpene type and the functional group of each enhancer. The Quantitative Structure-Activity Relationship (QSAR) model was derived from our data generated by using standardized experimental protocols, which include: HP in propylene glycol (PG) of 3 mg/ml as the donor solution containing 5% (w/v) of the respective terpene, the same composition and volume of receptor solution, similar human skin samples, in the same set of automated flow-through diffusion cells. The model provided a simple method to predict the enhancing effects of terpenes for drugs with physicochemical properties similar to HP. Our study suggested that an ideal terpene enhancer should possess at least one or combinations of the following properties: hydrophobic, in liquid form at room temperature, with an ester or aldehyde but not acid functional group, and is neither a triterpene nor tetraterpene. Possible mechanisms revealed by the QSAR model were discussed.


Assuntos
Relação Quantitativa Estrutura-Atividade , Absorção Cutânea/efeitos dos fármacos , Pele/efeitos dos fármacos , Terpenos/farmacologia , Terpenos/farmacocinética , Administração Cutânea , Permeabilidade da Membrana Celular/efeitos dos fármacos , Epiderme/metabolismo , Feminino , Humanos , Estrutura Molecular , Peso Molecular , Valor Preditivo dos Testes , Terpenos/química , Terpenos/classificação
7.
J Mol Graph Model ; 26(2): 505-18, 2007 Sep.
Artigo em Inglês | MEDLINE | ID: mdl-17418603

RESUMO

Factor Xa (FXa) inhibitors have been explored as anticoagulants for treatment and prevention of thrombotic diseases. Molecular docking, pharmacophore, quantitative structure-activity relationships, and support vector machines (SVM) have been used for computer prediction of FXa inhibitors. These methods achieve promising prediction accuracies of 69-80% for FXa inhibitors and 85-99% for non-inhibitors. Prediction performance, particularly for inhibitors, may be further improved by exploring methods applicable to more diverse range of compounds and by using more appropriate set of molecular descriptors. We tested the capability of several machine learning methods (C4.5 decision tree, k-nearest neighbor, probabilistic neural network, and support vector machine) by using a much more diverse set of 1098 compounds (360 inhibitors and 738 non-inhibitors) than those in other studies. A feature selection method was used for selecting molecular descriptors appropriate for distinguishing FXa inhibitors and non-inhibitors. The prediction accuracies of these methods are 89.1-97.5% for FXa inhibitors and 92.3-98.1% for non-inhibitors. In particular, compared to other studies, support vector machine gives a substantially improved accuracy of 94.6% for FXa non-inhibitors and maintains a comparable accuracy of 98.1% for inhibitors, based-on a more rigorous test with more diverse range of compounds. Our study suggests that machine learning methods such as SVM are useful for facilitating the prediction of FXa inhibitors.


Assuntos
Inteligência Artificial , Inibidores Enzimáticos/química , Inibidores do Fator Xa , Inibidores Enzimáticos/classificação , Estrutura Molecular , Relação Quantitativa Estrutura-Atividade
8.
Cardiovasc Hematol Agents Med Chem ; 5(1): 11-9, 2007 Jan.
Artigo em Inglês | MEDLINE | ID: mdl-17266544

RESUMO

Computational methods have been explored for predicting agents that produce therapeutic or adverse effects in cardiovascular and hematological systems. The quantitative structure-activity relationship (QSAR) method is the first statistical learning methods successfully used for predicting various classes of cardiovascular and hematological agents. In recent years, more sophisticated statistical learning methods have been explored for predicting cardiovascular and hematological agents particularly those of diverse structures that might not be straightforwardly modelled by single QSAR models. These methods include partial least squares, multiple linear regressions, linear discriminant analysis, k-nearest neighbour, artificial neural networks and support vector machines. Their application potential has been exhibited in the prediction of various classes of cardiovascular and hematological agents including 1, 4-dihydropyridine calcium channel antagonists, angiotensin converting enzyme inhibitors, thrombin inhibitors, AchE inhibitors, HERG potassium channel inhibitors and blockers, potassium channel openers, platelet aggregation inhibitors, protein kinase inhibitors, dopamine antagonists and torsade de pointes causing agents. This article reviews the strategies, current progresses and problems in using statistical learning methods for predicting cardiovascular and hematological agents. It also evaluates algorithms for properly representing and extracting the structural and physicochemical properties of compounds relevant to the prediction of cardiovascular and hematological agents.


Assuntos
Fármacos Cardiovasculares/farmacologia , Fármacos Hematológicos/farmacologia , Estatística como Assunto , Animais , Computadores , Humanos , Análise dos Mínimos Quadrados , Modelos Lineares , Redes Neurais de Computação , Relação Quantitativa Estrutura-Atividade
9.
Biotechnol Bioeng ; 97(2): 389-96, 2007 Jun 01.
Artigo em Inglês | MEDLINE | ID: mdl-17013940

RESUMO

Molecular descriptors represent structural and physicochemical features of compounds. They have been extensively used for developing statistical models, such as quantitative structure activity relationship (QSAR) and artificial neural networks (NN), for computer prediction of the pharmacodynamic, pharmacokinetic, or toxicological properties of compounds from their structure. While computer programs have been developed for computing molecular descriptors, there is a lack of a freely accessible one. We have developed a web-based server, MODEL (Molecular Descriptor Lab), for computing a comprehensive set of 3,778 molecular descriptors, which is significantly more than the approximately 1,600 molecular descriptors computed by other software. Our computational algorithms have been extensively tested and the computed molecular descriptors have been used in a number of published works of statistical models for predicting variety of pharmacodynamic, pharmacokinetic, and toxicological properties of compounds. Several testing studies on the computed molecular descriptors are discussed. MODEL is accessible at http://jing.cz3.nus.edu.sg/cgi-bin/model/model.cgi free of charge for academic use.


Assuntos
Biologia Computacional/métodos , Peptídeos/química , Proteínas/química , Análise de Sequência de Proteína/métodos , Aminoácidos/análise , Bases de Dados de Proteínas , Internet , Conformação Proteica , Estrutura Terciária de Proteína , Relação Quantitativa Estrutura-Atividade , Software , Interface Usuário-Computador
10.
Mol Pharmacol ; 71(1): 158-68, 2007 Jan.
Artigo em Inglês | MEDLINE | ID: mdl-17003167

RESUMO

Pregnane X receptor (PXR) regulates drug metabolism and is involved in drug-drug interactions. Prediction of PXR activators is important for evaluating drug metabolism and toxicity. Computational pharmacophore and quantitative structure-activity relationship models have been developed for predicting PXR activators. Because of the structural diversity of PXR activators, more efforts are needed for exploring methods applicable to a broader spectrum of compounds. We explored three machine learning methods (MLMs) for predicting PXR activators, which were trained and tested by using significantly higher number of compounds, 128 PXR activators (98 human) and 77 PXR non-activators, than those of previous studies. The recursive feature-selection method was used to select molecular descriptors relevant to PXR activator prediction, which are consistent with conclusions from other computational and structural studies. In a 10-fold cross-validation test, our MLM systems correctly predicted 81.2 to 84.0% of PXR activators, 80.8 to 85.0% of hPXR activators, 61.2 to 70.3% of PXR nonactivators, and 67.7 to 73.6% of hPXR nonactivators. Our systems also correctly predicted 73.3 to 86.7% of 15 newly published hPXR activators. MLMs seem to be useful for predicting PXR activators and for providing clues to physicochemical features of PXR activation.


Assuntos
Inteligência Artificial , Receptores de Esteroides/antagonistas & inibidores , Receptores de Esteroides/fisiologia , Humanos , Redes Neurais de Computação , Receptor de Pregnano X
11.
Chem Res Toxicol ; 19(8): 1030-9, 2006 Aug.
Artigo em Inglês | MEDLINE | ID: mdl-16918241

RESUMO

Toxicity of various compounds has been measured in many studies by their toxic effects against Tetrahymena pyriformis. Efforts have also been made to use computational quantitative structure-activity relationship (QSAR) and statistical learning methods (SLMs) for predicting Tetrahymena pyriformis toxicity (TPT) at impressive accuracies. Because of the diversity of compounds and toxicity mechanisms, it is desirable to explore additional methods and to examine if these methods are applicable to more diverse sets of compounds. We tested several SLMs (logistic regression, C4.5 decision tree, k-nearest neighbor, probabilistic neural network, support vector machines) for their capability in predicting TPT by using 1129 compounds (841 TPT and 288 non-TPT agents) which are more diverse than those in other studies. A feature selection method was used for improving prediction performance and selecting molecular descriptors responsible for distinguishing TPT and non-TPT agents. The prediction accuracies are 86.9% approximately 94.2% for TPT and 71.2% approximately 87.5% for non-TPT agents based on 5-fold cross-validation studies, which are comparable to some of earlier studies despite the use of more diverse sets of compounds. The selected molecular descriptors are consistent with those used in other studies and experimental findings. These suggest that SLMs are useful for predicting TPT potential of diverse sets of compounds and for characterizing the molecular descriptors associated with TPT.


Assuntos
Tetrahymena pyriformis/efeitos dos fármacos , Testes de Toxicidade/estatística & dados numéricos , Animais , Modelos Logísticos , Valor Preditivo dos Testes , Relação Quantitativa Estrutura-Atividade , Testes de Toxicidade/métodos
12.
Curr Top Med Chem ; 6(15): 1593-607, 2006.
Artigo em Inglês | MEDLINE | ID: mdl-16918471

RESUMO

Cytochrome P450 enzymes are responsible for phase I metabolism of the majority of drugs and xenobiotics. Identification of the substrates and inhibitors of these enzymes is important for the analysis of drug metabolism, prediction of drug-drug interactions and drug toxicity, and the design of drugs that modulate cytochrome P450 mediated metabolism. The substrates and inhibitors of these enzymes are structurally diverse. It is thus desirable to explore methods capable of predicting compounds of diverse structures without over-fitting. Support vector machine is an attractive method with these qualities, which has been employed for predicting the substrates and inhibitors of several cytochrome P450 isoenzymes as well as compounds of various other pharmacodynamic, pharmacokinetic, and toxicological properties. This article introduces the methodology, evaluates the performance, and discusses the underlying difficulties and future prospects of the application of support vector machines to in silico prediction of cytochrome P450 substrates and inhibitors.


Assuntos
Biologia Computacional , Inibidores das Enzimas do Citocromo P-450 , Sistema Enzimático do Citocromo P-450/metabolismo , Desenho de Fármacos , Inibidores Enzimáticos/química , Inibidores Enzimáticos/farmacologia , Animais , Inibidores Enzimáticos/classificação , Humanos , Especificidade por Substrato
13.
Pharmacol Rev ; 58(2): 259-79, 2006 Jun.
Artigo em Inglês | MEDLINE | ID: mdl-16714488

RESUMO

Modern drug discovery is primarily based on the search and subsequent testing of drug candidates acting on a preselected therapeutic target. Progress in genomics, protein structure, proteomics, and disease mechanisms has led to a growing interest in and effort for finding new targets and more effective exploration of existing targets. The number of reported targets of marketed and investigational drugs has significantly increased in the past 8 years. There are 1535 targets collected in the therapeutic target database compared with approximately 500 targets reported in a 1996 review. Knowledge of these targets is helpful for molecular dissection of the mechanism of action of drugs and for predicting features that guide new drug design and the search for new targets. This article summarizes the progress of target exploration and investigates the characteristics of the currently explored targets to analyze their sequence, structure, family representation, pathway association, tissue distribution, and genome location features for finding clues useful for searching for new targets. Possible "rules" to guide the search for druggable proteins and the feasibility of using a statistical learning method for predicting druggable proteins directly from their sequences are discussed.


Assuntos
Antagonistas Adrenérgicos beta/farmacologia , Inibidores de Metaloproteinases de Matriz , Inibidores de Proteases/farmacologia , Proteômica , Receptores Adrenérgicos beta/efeitos dos fármacos , Antagonistas Adrenérgicos beta/uso terapêutico , Animais , Asma/tratamento farmacológico , Asma/metabolismo , Sítios de Ligação , Bases de Dados de Proteínas , Desenho de Fármacos , Avaliação Pré-Clínica de Medicamentos , Humanos , Hipertensão/tratamento farmacológico , Hipertensão/metabolismo , Metaloproteinases da Matriz/metabolismo , Neoplasias/tratamento farmacológico , Neoplasias/enzimologia , Inibidores de Proteases/uso terapêutico , Conformação Proteica , Dobramento de Proteína , Receptores Adrenérgicos beta/química , Receptores Adrenérgicos beta/metabolismo
14.
Mini Rev Med Chem ; 6(4): 449-59, 2006 Apr.
Artigo em Inglês | MEDLINE | ID: mdl-16613581

RESUMO

Computational methods for predicting compounds of specific pharmacodynamic, pharmacokinetic, or toxicological property are useful for facilitating drug discovery and drug safety evaluation. The quantitative structure-activity relationship (QSAR) and quantitative structure-property relationship (QSPR) methods are the most successfully used statistical learning methods for predicting compounds of specific property. More recently, other statistical learning methods such as neural networks and support vector machines have been explored for predicting compounds of higher structural diversity than those covered by QSAR and QSPR. These methods have shown promising potential in a number of studies. This article is intended to review the strategies, current progresses and underlying difficulties in using statistical learning methods for predicting compounds of specific property. It also evaluates algorithms commonly used for representing structural and physicochemical properties of compounds.


Assuntos
Farmacocinética , Farmacologia , Toxicologia , Relação Quantitativa Estrutura-Atividade
15.
J Mol Graph Model ; 25(3): 313-23, 2006 Nov.
Artigo em Inglês | MEDLINE | ID: mdl-16497524

RESUMO

Specific estrogen receptor (ER) agonists have been used for hormone replacement therapy, contraception, osteoporosis prevention, and prostate cancer treatment. Some ER agonists and partial-agonists induce cancer and endocrine function disruption. Methods for predicting ER agonists are useful for facilitating drug discovery and chemical safety evaluation. Structure-activity relationships and rule-based decision forest models have been derived for predicting ER binders at impressive accuracies of 87.1-97.6% for ER binders and 80.2-96.0% for ER non-binders. However, these are not designed for identifying ER agonists and they were developed from a subset of known ER binders. This work explored several statistical learning methods (support vector machines, k-nearest neighbor, probabilistic neural network and C4.5 decision tree) for predicting ER agonists from comprehensive set of known ER agonists and other compounds. The corresponding prediction systems were developed and tested by using 243 ER agonists and 463 ER non-agonists, respectively, which are significantly larger in number and structural diversity than those in previous studies. A feature selection method was used for selecting molecular descriptors responsible for distinguishing ER agonists from non-agonists, some of which are consistent with those used in other studies and the findings from X-ray crystallography data. The prediction accuracies of these methods are comparable to those of earlier studies despite the use of significantly more diverse range of compounds. SVM gives the best accuracy of 88.9% for ER agonists and 98.1% for non-agonists. Our study suggests that statistical learning methods such as SVM are potentially useful for facilitating the prediction of ER agonists and for characterizing the molecular descriptors associated with ER agonists.


Assuntos
Modelos Estatísticos , Relação Quantitativa Estrutura-Atividade , Receptores de Estrogênio/química , Previsões , Modelos Biológicos , Estrutura Molecular , Ligação Proteica , Receptores de Estrogênio/agonistas , Relação Estrutura-Atividade
16.
J Mol Graph Model ; 24(5): 383-95, 2006 Mar.
Artigo em Inglês | MEDLINE | ID: mdl-16290201

RESUMO

Quantitative structure-pharmacokinetic relationships (QSPkR) have increasingly been used for the prediction of the pharmacokinetic properties of drug leads. Several QSPkR models have been developed to predict the total clearance (CL(tot)) of a compound. These models give good prediction accuracy but they are primarily based on a limited number of related compounds which are significantly lesser in number and diversity than the 503 compounds with known CL(tot) described in the literature. It is desirable to examine whether these and other statistical learning methods can be used for predicting the CL(tot) of a more diverse set of compounds. In this work, three statistical learning methods, general regression neural network (GRNN), support vector regression (SVR) and k-nearest neighbour (KNN) were explored for modeling the CL(tot) of all of the 503 known compounds. Six different sets of molecular descriptors, DS-MIXED, DS-3DMoRSE, DS-ATS, DS-GETAWAY, DS-RDF and DS-WHIM, were evaluated for their usefulness in the prediction of CL(tot). GRNN-, SVR- and KNN-developed models have average-fold errors in the range of 1.63 to 1.96, 1.66-1.95 and 1.90-2.23, respectively. For the best GRNN-, SVR- and KNN-developed models, the percentage of compounds with predicted CL(tot) within two-fold error of actual values are in the range of 61.9-74.3% and are comparable or slightly better than those of earlier studies. QSPkR models developed by using DS-MIXED, which is a collection of constitutional, geometrical, topological and electrotopological descriptors, generally give better prediction accuracies than those developed by using other descriptor sets. These results suggest that GRNN, SVR, and their consensus model are potentially useful for predicting QSPkR properties of drug leads.


Assuntos
Preparações Farmacêuticas/metabolismo , Farmacocinética , Relação Quantitativa Estrutura-Atividade , Adulto , Algoritmos , Alopurinol/farmacocinética , Antipirina/análogos & derivados , Antipirina/farmacocinética , Carbidopa/farmacocinética , Clorfeniramina/farmacologia , Fendilina/farmacocinética , Humanos , Masculino , Valor Preditivo dos Testes , Quinazolinas/farmacocinética , Reprodutibilidade dos Testes , Estatística como Assunto , Tiofenos/farmacocinética , Tocainide/farmacocinética
17.
J Chem Inf Model ; 45(4): 982-92, 2005.
Artigo em Inglês | MEDLINE | ID: mdl-16045292

RESUMO

Statistical learning methods have been used in developing filters for predicting inhibitors of two P450 isoenzymes, CYP3A4 and CYP2D6. This work explores the use of different statistical learning methods for predicting inhibitors of these enzymes and an additional P450 enzyme, CYP2C9, and the substrates of the three P450 isoenzymes. Two consensus support vector machine (CSVM) methods, "positive majority" (PM-CSVM) and "positive probability" (PP-CSVM), were used in this work. These methods were first tested for the prediction of inhibitors of CYP3A4 and CYP2D6 by using a significantly higher number of inhibitors and noninhibitors than that used in earlier studies. They were then applied to the prediction of inhibitors of CYP2C9 and substrates of the three enzymes. Both methods predict inhibitors of CYP3A4 and CYP2D6 at a similar level of accuracy as those of earlier studies. For classification of inhibitors of CYP2C9, the best CSVM method gives an accuracy of 88.9% for inhibitors and 96.3% for noninhibitors. The accuracies for classification of substrates and nonsubstrates of CYP3A4, CYP2D6, and CYP2C9 are 98.2 and 90.9%, 96.6 and 94.4%, and 85.7 and 98.8%, respectively. Both CSVM methods are potentially useful as filters for predicting inhibitors and substrates of P450 isoenzymes. These methods generally give better accuracies than single SVM classification systems, and the performance of the PP-CSVM method is slightly better than that of the PM-CSVM method.


Assuntos
Hidrocarboneto de Aril Hidroxilases/antagonistas & inibidores , Simulação por Computador , Inibidores do Citocromo P-450 CYP2D6 , Inibidores das Enzimas do Citocromo P-450 , Inibidores Enzimáticos/química , Inibidores Enzimáticos/farmacologia , Algoritmos , Inteligência Artificial , Citocromo P-450 CYP2C9 , Citocromo P-450 CYP3A , Valor Preditivo dos Testes , Especificidade por Substrato
18.
Chem Res Toxicol ; 18(6): 1071-80, 2005 Jun.
Artigo em Inglês | MEDLINE | ID: mdl-15962942

RESUMO

Various toxicological profiles, such as genotoxic potential, need to be studied in drug discovery processes and submitted to the drug regulatory authorities for drug safety evaluation. As part of the effort for developing low cost and efficient adverse drug reaction testing tools, several statistical learning methods have been used for developing genotoxicity prediction systems with an accuracy of up to 73.8% for genotoxic (GT+) and 92.8% for nongenotoxic (GT-) agents. These systems have been developed and tested by using less than 400 known GT+ and GT- agents, which is significantly less in number and diversity than the 860 GT+ and GT- agents known at present. There is a need to examine if a similar level of accuracy can be achieved for the more diverse set of molecules and to evaluate other statistical learning methods not yet applied to genotoxicity prediction. This work is intended for testing several statistical learning methods by using 860 GT+ and GT- agents, which include support vector machines (SVM), probabilistic neural network (PNN), k-nearest neighbor (k-NN), and C4.5 decision tree (DT). A feature selection method, recursive feature elimination, is used for selecting molecular descriptors relevant to genotoxicity study. The overall accuracies of SVM, k-NN, and PNN are comparable to and those of DT lower than the results from earlier studies, with SVM giving the highest accuracies of 77.8% for GT+ and 92.7% for GT- agents. Our study suggests that statistical learning methods, particularly SVM, k-NN, and PNN, are useful for facilitating the prediction of genotoxic potential of a diverse set of molecules.


Assuntos
Técnicas de Apoio para a Decisão , Avaliação Pré-Clínica de Medicamentos/métodos , Efeitos Colaterais e Reações Adversas Relacionados a Medicamentos , Mutagênicos/classificação , Mutagênicos/toxicidade , Preparações Farmacêuticas/classificação , Relação Quantitativa Estrutura-Atividade , Biologia Computacional , Reprodutibilidade dos Testes
19.
Drug News Perspect ; 18(2): 109-27, 2005 Mar.
Artigo em Inglês | MEDLINE | ID: mdl-15883620

RESUMO

Lead discovery against a preselected therapeutic target is a key component in modern drug development. Continuous effort and increasing interest has been directed at the search for new targets, which has led to the identification of a growing number of them. Data from the therapeutic target database, at http://bidd.nus.edu.sg/group/cjttd/ttd.asp, show that, as of July 2004, the number of documented targets of marketed and investigational drugs has reached 1,174 distinct proteins (including subtypes) and 27 nucleic acids, 239 of which are targets of the marketed drugs. Analysis of these targets, particularly those of recently approved drugs and patented investigational agents, provide useful hints about general trends of target exploration and current focus in drug discovery for the treatment of high impact diseases needing effective or more treatment options.


Assuntos
Aprovação de Drogas , Sistemas de Liberação de Medicamentos , Genômica/tendências , Patentes como Assunto , Bases de Dados Factuais , Aprovação de Drogas/estatística & dados numéricos , Sistemas de Liberação de Medicamentos/classificação , Sistemas de Liberação de Medicamentos/estatística & dados numéricos , Sistemas de Liberação de Medicamentos/tendências , Humanos , Estados Unidos , United States Food and Drug Administration
20.
J Pharm Sci ; 94(1): 153-68, 2005 Jan.
Artigo em Inglês | MEDLINE | ID: mdl-15761939

RESUMO

Quantitative Structure-Pharmacokinetic Relationships (QSPkR) have increasingly been used for developing models for the prediction of the pharmacokinetic properties of drug leads. QSPkR models are primarily developed by means of statistical methods such as multiple linear regression (MLR). These methods often explore a linear relationship between the pharmacokinetic property of interest and the structural and physicochemical properties of the studied compounds, which are not applicable to those agents with nonlinear relationships. Hence, statistical methods capable of modeling nonlinear relationships need to be developed. In this work, a relatively new kind of nonlinear method, general regression neural network (GRNN), was explored for modeling three drug distribution properties based on diverse sets of drugs. The three properties are blood-brain barrier penetration, binding to human serum albumin, and milk-plasma distribution. The prediction capability of GRNN-developed models was compared to those developed using MLR and a nonlinear multilayer feedforward neural network (MLFN) method. For blood-brain barrier penetration, the computed r(2) and MSE values of the GRNN-, MLR-, and MLFN-developed models are 0.701 and 0.130, 0.649 and 0.154, and 0.662 and 0.147, respectively, by using an independent validation set. The corresponding values for human serum albumin binding are 0.851 and 0.041, 0.770 and 0.079, and 0.749 and 0.089, respectively, and that for milk-plasma distribution are 0.677 and 0.206, 0.224 and 0.647, and 0.201 and 0.587, respectively. These suggest that GRNN is potentially useful for predicting QSPkR properties of chemical agents.


Assuntos
Preparações Farmacêuticas/metabolismo , Farmacocinética , Algoritmos , Animais , Barreira Hematoencefálica , Humanos , Leite/química , Leite/metabolismo , Rede Nervosa , Ligação Proteica , Relação Quantitativa Estrutura-Atividade , Análise de Regressão , Albumina Sérica/metabolismo , Relação Estrutura-Atividade
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