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Dive into the research topics where Damir Herman is active.

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Featured researches published by Damir Herman.


Nature Biotechnology | 2006

Rat toxicogenomic study reveals analytical consistency across microarray platforms

Lei Guo; Edward K. Lobenhofer; Charles Wang; Richard Shippy; Stephen Harris; Lu Zhang; Nan Mei; Tao Chen; Damir Herman; Federico Goodsaid; Patrick Hurban; Kenneth L. Phillips; Jun Xu; Xutao Deng; Yongming Andrew Sun; Weida Tong; Leming Shi

To validate and extend the findings of the MicroArray Quality Control (MAQC) project, a biologically relevant toxicogenomics data set was generated using 36 RNA samples from rats treated with three chemicals (aristolochic acid, riddelliine and comfrey) and each sample was hybridized to four microarray platforms. The MAQC project assessed concordance in intersite and cross-platform comparisons and the impact of gene selection methods on the reproducibility of profiling data in terms of differentially expressed genes using distinct reference RNA samples. The real-world toxicogenomic data set reported here showed high concordance in intersite and cross-platform comparisons. Further, gene lists generated by fold-change ranking were more reproducible than those obtained by t-test P value or Significance Analysis of Microarrays. Finally, gene lists generated by fold-change ranking with a nonstringent P-value cutoff showed increased consistency in Gene Ontology terms and pathways, and hence the biological impact of chemical exposure could be reliably deduced from all platforms analyzed.


Nature Biotechnology | 2006

Using RNA sample titrations to assess microarray platform performance and normalization techniques

Richard Shippy; Stephanie Fulmer-Smentek; Roderick V. Jensen; Wendell D. Jones; Paul K. Wolber; Charles D. Johnson; P. Scott Pine; Cecilie Boysen; Xu Guo; Eugene Chudin; Yongming Andrew Sun; James C. Willey; Jean Thierry-Mieg; Danielle Thierry-Mieg; Robert A. Setterquist; Michael Wilson; Natalia Novoradovskaya; Adam Papallo; Yaron Turpaz; Shawn C. Baker; Janet A. Warrington; Leming Shi; Damir Herman

We have assessed the utility of RNA titration samples for evaluating microarray platform performance and the impact of different normalization methods on the results obtained. As part of the MicroArray Quality Control project, we investigated the performance of five commercial microarray platforms using two independent RNA samples and two titration mixtures of these samples. Focusing on 12,091 genes common across all platforms, we determined the ability of each platform to detect the correct titration response across the samples. Global deviations from the response predicted by the titration ratios were observed. These differences could be explained by variations in relative amounts of messenger RNA as a fraction of total RNA between the two independent samples. Overall, both the qualitative and quantitative correspondence across platforms was high. In summary, titration samples may be regarded as a valuable tool, not only for assessing microarray platform performance and different analysis methods, but also for determining some underlying biological features of the samples.


Genome Biology | 2012

A metagenomic study of diet-dependent interaction between gut microbiota and host in infants reveals differences in immune response

Scott Schwartz; Iddo Friedberg; Ivan Ivanov; Laurie A. Davidson; Jennifer S. Goldsby; David B. Dahl; Damir Herman; Mei Wang; Sharon M. Donovan; Robert S. Chapkin

BackgroundGut microbiota and the host exist in a mutualistic relationship, with the functional composition of the microbiota strongly affecting the health and well-being of the host. Thus, it is important to develop a synthetic approach to study the host transcriptome and the microbiome simultaneously. Early microbial colonization in infants is critically important for directing neonatal intestinal and immune development, and is especially attractive for studying the development of human-commensal interactions. Here we report the results from a simultaneous study of the gut microbiome and host epithelial transcriptome of three-month-old exclusively breast- and formula-fed infants.ResultsVariation in both host mRNA expression and the microbiome phylogenetic and functional profiles was observed between breast- and formula-fed infants. To examine the interdependent relationship between host epithelial cell gene expression and bacterial metagenomic-based profiles, the host transcriptome and functionally profiled microbiome data were subjected to novel multivariate statistical analyses. Gut microbiota metagenome virulence characteristics concurrently varied with immunity-related gene expression in epithelial cells between the formula-fed and the breast-fed infants.ConclusionsOur data provide insight into the integrated responses of the host transcriptome and microbiome to dietary substrates in the early neonatal period. We demonstrate that differences in diet can affect, via gut colonization, host expression of genes associated with the innate immune system. Furthermore, the methodology presented in this study can be adapted to assess other host-commensal and host-pathogen interactions using genomic and transcriptomic data, providing a synthetic genomics-based picture of host-commensal relationships.


Scientific Reports | 2015

Non-invasive analysis of intestinal development in preterm and term infants using RNA-Sequencing

Jason M. Knight; Laurie A. Davidson; Damir Herman; Camilia R. Martin; Jennifer S. Goldsby; Ivan Ivanov; Sharon M. Donovan; Robert S. Chapkin

The state and development of the intestinal epithelium is vital for infant health, and increased understanding in this area has been limited by an inability to directly assess epithelial cell biology in the healthy newborn intestine. To that end, we have developed a novel, noninvasive, molecular approach that utilizes next generation RNA sequencing on stool samples containing intact epithelial cells for the purpose of quantifying intestinal gene expression. We then applied this technique to compare host gene expression in healthy term and extremely preterm infants. Bioinformatic analyses demonstrate repeatable detection of human mRNA expression, and network analysis shows immune cell function and inflammation pathways to be up-regulated in preterm infants. This study provides incontrovertible evidence that whole-genome sequencing of stool-derived RNA can be used to examine the neonatal host epithelial transcriptome in infants, which opens up opportunities for sequential monitoring of gut gene expression in response to dietary or therapeutic interventions.


BMC Bioinformatics | 2011

Analysis of cancer metabolism with high-throughput technologies

Aleksandra A Markovets; Damir Herman

BackgroundRecent advances in genomics and proteomics have allowed us to study the nuances of the Warburg effect – a long-standing puzzle in cancer energy metabolism – at an unprecedented level of detail. While modern next-generation sequencing technologies are extremely powerful, the lack of appropriate data analysis tools makes this study difficult. To meet this challenge, we developed a novel application for comparative analysis of gene expression and visualization of RNA-Seq data.ResultsWe analyzed two biological samples (normal human brain tissue and human cancer cell lines) with high-energy, metabolic requirements. We calculated digital topology and the copy number of every expressed transcript. We observed subtle but remarkable qualitative and quantitative differences between the citric acid (TCA) cycle and glycolysis pathways. We found that in the first three steps of the TCA cycle, digital expression of aconitase 2 (ACO2) in the brain exceeded both citrate synthase (CS) and isocitrate dehydrogenase 2 (IDH2), while in cancer cells this trend was quite the opposite. In the glycolysis pathway, all genes showed higher expression levels in cancer cell lines; and most notably, digital gene expression of glyceraldehyde-3-phosphate dehydrogenase (GAPDH) and enolase (ENO) were considerably increased when compared to the brain sample.ConclusionsThe variations we observed should affect the rates and quantities of ATP production. We expect that the developed tool will provide insights into the subtleties related to the causality between the Warburg effect and neoplastic transformation. Even though we focused on well-known and extensively studied metabolic pathways, the data analysis and visualization pipeline that we developed is particularly valuable as it is global and pathway-independent.


Archive | 2008

Keep it simple: microarray cross-platform comparison without statistics

Damir Herman

With the proliferation of statistical algorithms developed for analyzing microarray data, high throughput molecular biology has shifted focus to highly numerical data exploration. We are increasingly aware that, although appealing, complicated statistical algorithms cannot remedy all discordance in microarray data, if such exist. In this chapter we explain how significant biological insight can be obtained from a carefully designed microarray experiment where intuition can often replace the need for statistics. We discuss analysis of gene expression data in the context of the FDA spearheaded MicroArray Quality Control project, a comprehensive public effort with its first round of results published in Nature Biotechnology in September 2006. We base our analysis on an understanding of commercial probe-design philosophies and comprehensive probe mapping. With a concrete example, we illustrate the rich biology often overlooked in microarray research and we discuss the merits of cross-platform comparison in clinical setting.


BMC Bioinformatics | 2008

The balance of reproducibility, sensitivity, and specificity of lists of differentially expressed genes in microarray studies

Leming Shi; Wendell D. Jones; Roderick V. Jensen; Stephen Harris; Roger Perkins; Federico Goodsaid; Lei Guo; Lisa J. Croner; Cecilie Boysen; Hong Fang; Feng Qian; Shashi Amur; Wenjun Bao; Catalin Barbacioru; Vincent Bertholet; Xiaoxi Megan Cao; Tzu Ming Chu; Patrick J. Collins; Xiaohui Fan; Felix W. Frueh; James C. Fuscoe; Xu Guo; Jing Han; Damir Herman; Huixiao Hong; Ernest S. Kawasaki; Quan Zhen Li; Yuling Luo; Yunqing Ma; Nan Mei


Pharmacogenomics Journal | 2010

A comparison of batch effect removal methods for enhancement of prediction performance using MAQC-II microarray gene expression data

Jun Luo; Martin Schumacher; Andreas Scherer; Despina Sanoudou; Dalila B. Megherbi; Timothy S. Davison; Tieliu Shi; Weida Tong; Leming Shi; Huixiao Hong; C Zhao; Fathi Elloumi; Weiwei Shi; Russell S. Thomas; Simon Lin; G. Tillinghast; G. Liu; Yiming Zhou; Damir Herman; Y Li; Youping Deng; Hong Fang; Pierre R. Bushel; M. Woods; J. Zhang


Nature Precedings | 2007

The Reproducibility of Lists of Differentially Expressed Genes in Microarray Studies

Leming Shi; Wendell D. Jones; Roderick V. Jensen; Stephen Harris; Roger Perkins; Federico Goodsaid; Lei Guo; Lisa J. Croner; Cecilie Boysen; Hong Fang; Shashi Amur; Wenjun Bao; Catalin Barbacioru; Vincent Bertholet; Xiaoxi Megan Cao; Tzu-Ming Chu; Patrick J. Collins; Xiaohui Fan; Felix W. Frueh; James C. Fuscoe; Xu Guo; Jing Han; Damir Herman; Huixiao Hong; Ernest S. Kawasaki; Quan Zhen Li; Yuling Luo; Yunqing Ma; Nan Mei; Ron L. Peterson

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Leming Shi

National Center for Toxicological Research

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Cecilie Boysen

University of Massachusetts Boston

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Federico Goodsaid

Food and Drug Administration

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Hong Fang

Food and Drug Administration

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Huixiao Hong

Food and Drug Administration

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Lei Guo

National Center for Toxicological Research

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Nan Mei

National Center for Toxicological Research

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Roderick V. Jensen

University of Massachusetts Boston

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Stephen Harris

National Center for Toxicological Research

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