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Featured researches published by Heng-Yi Wu.


PLOS ONE | 2015

Extraction of pharmacokinetic evidence of drug-drug interactions from the literature.

Artemy Kolchinsky; Anália Lourenço; Heng-Yi Wu; Lang Li; Luis Mateus Rocha

Drug-drug interaction (DDI) is a major cause of morbidity and mortality and a subject of intense scientific interest. Biomedical literature mining can aid DDI research by extracting evidence for large numbers of potential interactions from published literature and clinical databases. Though DDI is investigated in domains ranging in scale from intracellular biochemistry to human populations, literature mining has not been used to extract specific types of experimental evidence, which are reported differently for distinct experimental goals. We focus on pharmacokinetic evidence for DDI, essential for identifying causal mechanisms of putative interactions and as input for further pharmacological and pharmacoepidemiology investigations. We used manually curated corpora of PubMed abstracts and annotated sentences to evaluate the efficacy of literature mining on two tasks: first, identifying PubMed abstracts containing pharmacokinetic evidence of DDIs; second, extracting sentences containing such evidence from abstracts. We implemented a text mining pipeline and evaluated it using several linear classifiers and a variety of feature transforms. The most important textual features in the abstract and sentence classification tasks were analyzed. We also investigated the performance benefits of using features derived from PubMed metadata fields, various publicly available named entity recognizers, and pharmacokinetic dictionaries. Several classifiers performed very well in distinguishing relevant and irrelevant abstracts (reaching F1≈0.93, MCC≈0.74, iAUC≈0.99) and sentences (F1≈0.76, MCC≈0.65, iAUC≈0.83). We found that word bigram features were important for achieving optimal classifier performance and that features derived from Medical Subject Headings (MeSH) terms significantly improved abstract classification. We also found that some drug-related named entity recognition tools and dictionaries led to slight but significant improvements, especially in classification of evidence sentences. Based on our thorough analysis of classifiers and feature transforms and the high classification performance achieved, we demonstrate that literature mining can aid DDI discovery by supporting automatic extraction of specific types of experimental evidence.


BMC Bioinformatics | 2013

An integrated pharmacokinetics ontology and corpus for text mining

Heng-Yi Wu; Shreyas Karnik; Abhinita Subhadarshini; Zhiping Wang; Santosh Philips; Xu Han; Chien Wei Chiang; Lei Liu; Malaz Boustani; Luis Mateus Rocha; Sara K. Quinney; David A. Flockhart; Lang Li

BackgroundDrug pharmacokinetics parameters, drug interaction parameters, and pharmacogenetics data have been unevenly collected in different databases and published extensively in the literature. Without appropriate pharmacokinetics ontology and a well annotated pharmacokinetics corpus, it will be difficult to develop text mining tools for pharmacokinetics data collection from the literature and pharmacokinetics data integration from multiple databases.DescriptionA comprehensive pharmacokinetics ontology was constructed. It can annotate all aspects of in vitro pharmacokinetics experiments and in vivo pharmacokinetics studies. It covers all drug metabolism and transportation enzymes. Using our pharmacokinetics ontology, a PK-corpus was constructed to present four classes of pharmacokinetics abstracts: in vivo pharmacokinetics studies, in vivo pharmacogenetic studies, in vivo drug interaction studies, and in vitro drug interaction studies. A novel hierarchical three level annotation scheme was proposed and implemented to tag key terms, drug interaction sentences, and drug interaction pairs. The utility of the pharmacokinetics ontology was demonstrated by annotating three pharmacokinetics studies; and the utility of the PK-corpus was demonstrated by a drug interaction extraction text mining analysis.ConclusionsThe pharmacokinetics ontology annotates both in vitro pharmacokinetics experiments and in vivo pharmacokinetics studies. The PK-corpus is a highly valuable resource for the text mining of pharmacokinetics parameters and drug interactions.


CPT: Pharmacometrics & Systems Pharmacology | 2015

Graphic Mining of High-Order Drug Interactions and Their Directional Effects on Myopathy Using Electronic Medical Records

Lei Du; Chakraborty A; Chien Wei Chiang; Cheng L; Sara K. Quinney; Heng-Yi Wu; Pengyue Zhang; Lang Li; Li Shen

We propose to study a novel pharmacovigilance problem for mining directional effects of high‐order drug interactions on an adverse drug event (ADE). Our goal is to estimate each individual risk of adding a new drug to an existing drug combination. In this proof‐of‐concept study, we analyzed a large electronic medical records database and extracted myopathy‐relevant case control drug co‐occurrence data. We applied frequent itemset mining to discover frequent drug combinations within the extracted data, evaluated directional drug interactions related to these combinations, and identified directional drug interactions with large effect sizes. Furthermore, we developed a novel visualization method to organize multiple directional drug interaction effects depicted as a tree, to generate an intuitive graphical and visual representation of our data‐mining results. This translational bioinformatics approach yields promising results, adds valuable and complementary information to the existing pharmacovigilance literature, and has the potential to impact clinical practice.


CPT: Pharmacometrics & Systems Pharmacology | 2015

A Mixture Dose–Response Model for Identifying High-Dimensional Drug Interaction Effects on Myopathy Using Electronic Medical Record Databases

Pengyue Zhang; Lei Du; Lei Wang; Liu M; Cheng L; Chien Wei Chiang; Heng-Yi Wu; Sara K. Quinney; Li Shen; Lang Li

Interactions between multiple drugs may yield excessive risk of adverse effects. This increased risk is not uniform for all combinations, although some combinations may have constant adverse effect risks. We developed a statistical model using medical record data to identify drug combinations that induce myopathy risk. Such combinations are revealed using a novel mixture model, comprised of a constant risk model and a dose–response risk model. The dose represents the number of drug combinations. Using an empirical Bayes estimation method, we successfully identified high‐dimensional (two to six) drug combinations that are associated with excessive myopathy risk at significantly low local false‐discovery rates. From the curve of a dose–response model and high‐dimensional drug interaction data, we observed that myopathy risk increases as the drug interaction dimension increases. This is the first time that such a dose–response relationship for high‐dimensional drug interactions was observed and extracted from the medical record database.


BioMed Research International | 2015

How to Choose In Vitro Systems to Predict In Vivo Drug Clearance: A System Pharmacology Perspective

Lei Wang; Chien Wei Chiang; Hong Liang; Heng-Yi Wu; Weixing Feng; Sara K. Quinney; Jin Li; Lang Li

The use of in vitro metabolism data to predict human clearance has become more significant in the current prediction of large scale drug clearance for all the drugs. The relevant information (in vitro metabolism data and in vivo human clearance values) of thirty-five drugs that satisfied the entry criteria of probe drugs was collated from the literature. Then the performance of different in vitro systems including Escherichia coli system, yeast system, lymphoblastoid system and baculovirus system is compared after in vitro-in vivo extrapolation. Baculovirus system, which can provide most of the data, has almost equal accuracy as the other systems in predicting clearance. And in most cases, baculovirus system has the smaller CV in scaling factors. Therefore, the baculovirus system can be recognized as the suitable system for the large scale drug clearance prediction.


Statistics in Medicine | 2018

Mixture drug-count response model for the high-dimensional drug combinatory effect on myopathy

Xueying Wang; Pengyue Zhang; Chien Wei Chiang; Heng-Yi Wu; Li Shen; Xia Ning; Donglin Zeng; Lei Wang; Sara K. Quinney; Weixing Feng; Lang Li


ieee international conference on healthcare informatics | 2018

Analyzing Patterns of Literature-Based Phenotyping Definitions for Text Mining Applications

Samar Binkheder; Heng-Yi Wu; Sara K. Quinney; Lang Li


Author | 2018

Translational Biomedical Informatics and Pharmacometrics Approaches in the Drug Interactions Research

Pengyue Zhang; Heng-Yi Wu; Chien Wei Chiang; Samar Binkheder; Xueying Wang; Donglin Zeng; Sara K. Quinney; Lang Li


PMC | 2017

Using machine learning algorithms to identify genes essential for cell survival

Santosh Philips; Heng-Yi Wu; Lang Li


PMC | 2015

Extraction of pharmacokinetic evidence of drug-drug interactions from the literature

Artemy Kolchinsky; Anália Lourenço; Heng-Yi Wu; Lang Li; Luis Mateus Rocha

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Luis Mateus Rocha

Indiana University Bloomington

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Artemy Kolchinsky

Indiana University Bloomington

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Donglin Zeng

University of North Carolina at Chapel Hill

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