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Dive into the research topics where Daniel T. Chang is active.

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Featured researches published by Daniel T. Chang.


Toxicological Sciences | 2012

A Pharmacokinetic Model of cis- and trans-Permethrin Disposition in Rats and Humans With Aggregate Exposure Application

Rogelio Tornero-Velez; Jimena L. Davis; Edward J. Scollon; James M. Starr; R. Woodrow Setzer; Michael-Rock Goldsmith; Daniel T. Chang; Jianping Xue; Valerie Zartarian; Michael J. De Vito; Michael F. Hughes

Permethrin is a broad-spectrum pyrethroid insecticide and among the most widely used insecticides in homes and crops. Managing the risks for pesticides such as permethrin depends on the ability to consider diverse exposure scenarios and their relative risks. Physiologically based pharmacokinetic models of delta methrin disposition were modified to describe permethrin kinetics in the rat and human. Unlike formulated deltamethrin which consists of a single stereoisomer, permethrin is formulated as a blend of cis- and trans-diastereomers. We assessed time courses for cis-permethrin and trans-permethrin in several tissues (brain, blood, liver, and fat) in the rat following oral administration of 1 and 10mg/kg permethrin (cis/trans: 40/60). Accurate simulation of permethrin in the rat suggests that a generic model structure is promising for modeling pyrethroids. Human in vitro data and appropriate anatomical information were used to develop a provisional model of permethrin disposition with structures for managing oral, dermal, and inhalation routes of exposure. The human permethrin model was used to evaluate dietary and residential exposures in the U.S. population as estimated by EPAs Stochastic Human Exposure and Dose Simulation model. Simulated cis- and trans-DCCA, metabolites of permethrin, were consistent with measured values in the National Health and Nutrition Examination Survey, indicating that the model holds promise for assessing population exposures and quantifying dose metrics.


Journal of Toxicology and Environmental Health-part B-critical Reviews | 2012

RECONSTRUCTING HUMAN EXPOSURES USING BIOMARKERS AND OTHER "CLUES"

Yu-Mei Tan; Jon R. Sobus; Daniel T. Chang; Rogelio Tornero-Velez; Michael R. Goldsmith; Joachim D. Pleil; Curtis C. Dary

Biomonitoring is the process by which biomarkers are measured in human tissues and specimens to evaluate exposures. Given the growing number of population-based biomonitoring surveys, there is now an escalated interest in using biomarker data to reconstruct exposures for supporting risk assessment and risk management. While detection of biomarkers is de facto evidence of exposure and absorption, biomarker data cannot be used to reconstruct exposure unless other information is available to establish the external exposure–biomarker concentration relationship. In this review, the process of using biomarker data and other information to reconstruct human exposures is examined. Information that is essential to the exposure reconstruction process includes (1) the type of biomarker based on its origin (e.g., endogenous vs. exogenous), (2) the purpose/design of the biomonitoring study (e.g., occupational monitoring), (3) exposure information (including product/chemical use scenarios and reasons for expected contact, the physicochemical properties of the chemical and nature of the residues, and likely exposure scenarios), and (4) an understanding of the biological system and mechanisms of clearance. This review also presents the use of exposure modeling, pharmacokinetic modeling, and molecular modeling to assist in integrating these various types of information.


Environmental Health Perspectives | 2015

A Workflow to Investigate Exposure and Pharmacokinetic Influences on High-Throughput in Vitro Chemical Screening Based on Adverse Outcome Pathways

Martin B. Phillips; Jeremy A. Leonard; Christopher M. Grulke; Daniel T. Chang; Stephen W. Edwards; Raina D. Brooks; Michael-Rock Goldsmith; Hisham A. El-Masri; Yu-Mei Tan

Background Adverse outcome pathways (AOPs) link adverse effects in individuals or populations to a molecular initiating event (MIE) that can be quantified using in vitro methods. Practical application of AOPs in chemical-specific risk assessment requires incorporation of knowledge on exposure, along with absorption, distribution, metabolism, and excretion (ADME) properties of chemicals. Objectives We developed a conceptual workflow to examine exposure and ADME properties in relation to an MIE. The utility of this workflow was evaluated using a previously established AOP, acetylcholinesterase (AChE) inhibition. Methods Thirty chemicals found to inhibit human AChE in the ToxCast™ assay were examined with respect to their exposure, absorption potential, and ability to cross the blood–brain barrier (BBB). Structures of active chemicals were compared against structures of 1,029 inactive chemicals to detect possible parent compounds that might have active metabolites. Results Application of the workflow screened 10 “low-priority” chemicals of 30 active chemicals. Fifty-two of the 1,029 inactive chemicals exhibited a similarity threshold of ≥ 75% with their nearest active neighbors. Of these 52 compounds, 30 were excluded due to poor absorption or distribution. The remaining 22 compounds may inhibit AChE in vivo either directly or as a result of metabolic activation. Conclusions The incorporation of exposure and ADME properties into the conceptual workflow eliminated 10 “low-priority” chemicals that may otherwise have undergone additional, resource-consuming analyses. Our workflow also increased confidence in interpretation of in vitro results by identifying possible “false negatives.” Citation Phillips MB, Leonard JA, Grulke CM, Chang DT, Edwards SW, Brooks R, Goldsmith MR, El-Masri H, Tan YM. 2016. A workflow to investigate exposure and pharmacokinetic influences on high-throughput in vitro chemical screening based on adverse outcome pathways. Environ Health Perspect 124:53–60; http://dx.doi.org/10.1289/ehp.1409450


PLOS Computational Biology | 2016

Developing a Physiologically-Based Pharmacokinetic Model Knowledgebase in Support of Provisional Model Construction

Jingtao Lu; Michael-Rock Goldsmith; Christopher M. Grulke; Daniel T. Chang; Raina D. Brooks; Jeremy A. Leonard; Martin B. Phillips; Ethan D. Hypes; Matthew J. Fair; Rogelio Tornero-Velez; Jeffre C Johnson; Curtis C. Dary; Yu-Mei Tan

Developing physiologically-based pharmacokinetic (PBPK) models for chemicals can be resource-intensive, as neither chemical-specific parameters nor in vivo pharmacokinetic data are easily available for model construction. Previously developed, well-parameterized, and thoroughly-vetted models can be a great resource for the construction of models pertaining to new chemicals. A PBPK knowledgebase was compiled and developed from existing PBPK-related articles and used to develop new models. From 2,039 PBPK-related articles published between 1977 and 2013, 307 unique chemicals were identified for use as the basis of our knowledgebase. Keywords related to species, gender, developmental stages, and organs were analyzed from the articles within the PBPK knowledgebase. A correlation matrix of the 307 chemicals in the PBPK knowledgebase was calculated based on pharmacokinetic-relevant molecular descriptors. Chemicals in the PBPK knowledgebase were ranked based on their correlation toward ethylbenzene and gefitinib. Next, multiple chemicals were selected to represent exact matches, close analogues, or non-analogues of the target case study chemicals. Parameters, equations, or experimental data relevant to existing models for these chemicals and their analogues were used to construct new models, and model predictions were compared to observed values. This compiled knowledgebase provides a chemical structure-based approach for identifying PBPK models relevant to other chemical entities. Using suitable correlation metrics, we demonstrated that models of chemical analogues in the PBPK knowledgebase can guide the construction of PBPK models for other chemicals.


Dataset Papers in Science | 2014

DockScreen: A Database of In Silico Biomolecular Interactions to Support Computational Toxicology

Michael-Rock Goldsmith; Christopher M. Grulke; Daniel T. Chang; Thomas R. Transue; Stephen B. Little; James R. Rabinowitz; Rogelio Tornero-Velez

We have developed DockScreen, a database of in silico biomolecular interactions designed to enable rational molecular toxicological insight within a computational toxicology framework. This database is composed of chemical/target (receptor and enzyme) binding scores calculated by molecular docking of more than 1000 chemicals into 150 protein targets and contains nearly 135 thousand unique ligand/target binding scores. Obtaining this dataset was achieved using eHiTS (Simbiosys Inc.), a fragment-based molecular docking approach with an exhaustive search algorithm, on a heterogeneous distributed high-performance computing framework. The chemical landscape covered in DockScreen comprises selected environmental and therapeutic chemicals. The target landscape covered in DockScreen was selected based on the availability of high-quality crystal structures that covered the assay space of phase I ToxCast in vitro assays. This in silico data provides continuous information that establishes a means for quantitatively comparing, on a structural biophysical basis, a chemical’s profile of biomolecular interactions. The combined minimum-score chemical/target matrix is provided.


Biomarkers in Toxicology | 2014

Biomarkers in computational toxicology

Yu-Mei Tan; Daniel T. Chang; Martin B. Phillips; Stephen W. Edwards; Christopher M. Grulke; Michael-Rock Goldsmith; Jon R. Sobus; Rory B. Conolly; Rogelio Tornero-Velez; Curtis C. Dary

Biomarkers are a means to evaluate chemical exposure and/or the subsequent impacts on toxicity pathways that lead to adverse health outcomes. Computational toxicology can integrate biomarker data with knowledge of exposure, chemistry, biology, pharmacokinetics, toxicology, and epidemiology to inform the linkages among exposure, susceptibility, and human health. This chapter provides an overview of four computational modeling approaches and their applications for interpreting biomarker data. Exposure models integrate the microenvironmental concentrations with human activity data to estimate intake doses. Dosimetry models incorporate mechanistic biological information to link intake doses to biomarkers. Biologically plausible models describe normal and xenobiotic-perturbed behaviors that can be distinguished using biomarkers. Cheminformatics-based models provide rapid assessments to inform future biomarker studies. Together, these modeling approaches allow for comprehensive investigations of biomarker data to link between exposures and disease.


Environmental Science & Technology | 2016

Evaluating the Impact of Uncertainties in Clearance and Exposure When Prioritizing Chemicals Screened in High-Throughput Assays

Jeremy A. Leonard; Ashley Sobel Leonard; Daniel T. Chang; Stephen W. Edwards; Jingtao Lu; Steven Scholle; Phillip Key; Maxwell Winter; Kristin Isaacs; Yu-Mei Tan

The toxicity-testing paradigm has evolved to include high-throughput (HT) methods for addressing the increasing need to screen hundreds to thousands of chemicals rapidly. Approaches that involve in vitro screening assays, in silico predictions of exposure concentrations, and pharmacokinetic (PK) characteristics provide the foundation for HT risk prioritization. Underlying uncertainties in predicted exposure concentrations or PK behaviors can significantly influence the prioritization of chemicals, though the impact of such influences is unclear. In the current study, a framework was developed to incorporate absorbed doses, PK properties, and in vitro dose-response data into a PK/pharmacodynamic (PD) model to allow for placement of chemicals into discrete priority bins. Literature-reported or predicted values for clearance rates and absorbed doses were used in the PK/PD model to evaluate the impact of their uncertainties on chemical prioritization. Scenarios using predicted absorbed doses resulted in a larger number of bin misassignments than those scenarios using predicted clearance rates, when comparing to bin placement using literature-reported values. Sensitivity of parameters on the model output of toxicological activity was examined across possible ranges for those parameters to provide insight into how uncertainty in their predicted values might impact uncertainty in activity.


Access Science | 2014

Biomarkers: key to exposure reconstruction

Yu-Mei Tan; Martin B. Phillips; Jon R. Sobus; Daniel T. Chang; Michael R. Goldsmith

The goal of environmental health science is to understand the interplay between the environment and …


Access Science | 2014

Data-mining and informatics approaches for environmental contaminants

Daniel T. Chang; Michael-Rock Goldsmith; Arantxa Fraile Rodríguez; Christopher M. Grulke; Peter P. Egeghy; Jade Mitchell-Blackwood

New and emerging environmental contaminants are chemicals that have not been previously detected or …


Access Science | 2014

Personal chemical exposure informatics

Michael-Rock Goldsmith; Christopher M. Grulke; Daniel T. Chang; Arantxa Fraile Rodriguez; Raina D. Brooks; Curtis C. Dary; Daniel A. Vallero

Chemical exposure science is the study of human contact with chemicals (from manufacturing facilitie…

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Christopher M. Grulke

United States Environmental Protection Agency

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Yu-Mei Tan

Research Triangle Park

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Curtis C. Dary

United States Environmental Protection Agency

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Martin B. Phillips

United States Environmental Protection Agency

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Jeremy A. Leonard

Oak Ridge Institute for Science and Education

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Jon R. Sobus

United States Environmental Protection Agency

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Stephen W. Edwards

United States Environmental Protection Agency

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