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Dive into the research topics where Thomas J. Albert is active.

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Featured researches published by Thomas J. Albert.


Nature Genetics | 2007

Genome-wide in situ exon capture for selective resequencing

Emily Hodges; Zhenyu Xuan; Vivekanand Balija; Melissa Kramer; Michael Molla; Steven Smith; Christina Middle; Matthew Rodesch; Thomas J. Albert; Gregory J. Hannon; W. Richard McCombie

Increasingly powerful sequencing technologies are ushering in an era of personal genome sequences and raising the possibility of using such information to guide medical decisions. Genome resequencing also promises to accelerate the identification of disease-associated mutations. Roughly 98% of the human genome is composed of repeats and intergenic or non–protein-coding sequences. Thus, it is crucial to focus resequencing on high-value genomic regions. Protein-coding exons represent one such type of high-value target. We have developed a method of using flexible, high-density microarrays to capture any desired fraction of the human genome, in this case corresponding to more than 200,000 protein-coding exons. Depending on the precise protocol, up to 55–85% of the captured fragments are associated with targeted regions and up to 98% of intended exons can be recovered. This methodology provides an adaptable route toward rapid and efficient resequencing of any sizeable, non-repeat portion of the human genome.


Nature Methods | 2007

Microarray-based genomic selection for high-throughput resequencing

David T. Okou; Karyn Meltz Steinberg; Christina Middle; David J. Cutler; Thomas J. Albert; Michael E. Zwick

We developed a general method, microarray-based genomic selection (MGS), capable of selecting and enriching targeted sequences from complex eukaryotic genomes without the repeat blocking steps necessary for bacterial artificial chromosome (BAC)-based genomic selection. We demonstrate that large human genomic regions, on the order of hundreds of kilobases, can be enriched and resequenced with resequencing arrays. MGS, when combined with a next-generation resequencing technology, can enable large-scale resequencing in single-investigator laboratories.


Nature Genetics | 2006

Comparative genome sequencing of Escherichia coli allows observation of bacterial evolution on a laboratory timescale

Christopher D. Herring; Anu Raghunathan; Christiane Honisch; Trina R. Patel; M. Kenyon Applebee; Andrew R. Joyce; Thomas J. Albert; Frederick R. Blattner; Dirk van den Boom; Charles R. Cantor; Bernhard O. Palsson

We applied whole-genome resequencing of Escherichia coli to monitor the acquisition and fixation of mutations that conveyed a selective growth advantage during adaptation to a glycerol-based growth medium. We identified 13 different de novo mutations in five different E. coli strains and monitored their fixation over a 44-d period of adaptation. We obtained proof that the observed spontaneous mutations were responsible for improved fitness by creating single, double and triple site-directed mutants that had growth rates matching those of the evolved strains. The success of this new genome-scale approach indicates that real-time evolution studies will now be practical in a wide variety of contexts.


Genome Research | 2010

Systematic comparison of three genomic enrichment methods for massively parallel DNA sequencing

Jamie K. Teer; Lori L. Bonnycastle; Peter S. Chines; Nancy F. Hansen; Natsuyo Aoyama; Amy J. Swift; Hatice Ozel Abaan; Thomas J. Albert; Nisc Comparative Sequencing Program; Elliott H. Margulies; Eric D. Green; Francis S. Collins; James C. Mullikin; Leslie G. Biesecker

Massively parallel DNA sequencing technologies have greatly increased our ability to generate large amounts of sequencing data at a rapid pace. Several methods have been developed to enrich for genomic regions of interest for targeted sequencing. We have compared three of these methods: Molecular Inversion Probes (MIP), Solution Hybrid Selection (SHS), and Microarray-based Genomic Selection (MGS). Using HapMap DNA samples, we compared each of these methods with respect to their ability to capture an identical set of exons and evolutionarily conserved regions associated with 528 genes (2.61 Mb). For sequence analysis, we developed and used a novel Bayesian genotype-assigning algorithm, Most Probable Genotype (MPG). All three capture methods were effective, but sensitivities (percentage of targeted bases associated with high-quality genotypes) varied for an equivalent amount of pass-filtered sequence: for example, 70% (MIP), 84% (SHS), and 91% (MGS) for 400 Mb. In contrast, all methods yielded similar accuracies of >99.84% when compared to Infinium 1M SNP BeadChip-derived genotypes and >99.998% when compared to 30-fold coverage whole-genome shotgun sequencing data. We also observed a low false-positive rate with all three methods; of the heterozygous positions identified by each of the capture methods, >99.57% agreed with 1M SNP BeadChip, and >98.840% agreed with the whole-genome shotgun data. In addition, we successfully piloted the genomic enrichment of a set of 12 pooled samples via the MGS method using molecular bar codes. We find that these three genomic enrichment methods are highly accurate and practical, with sensitivities comparable to that of 30-fold coverage whole-genome shotgun data.


Human Molecular Genetics | 2010

Genome-wide analysis of allelic expression imbalance in human primary cells by high-throughput transcriptome resequencing

Graham A. Heap; Jennie H. M. Yang; Kate Downes; Barry Healy; Karen A. Hunt; Nicholas A. Bockett; Lude Franke; P Dubois; Charles A. Mein; Richard Dobson; Thomas J. Albert; Matthew Rodesch; David G. Clayton; John A. Todd; David A. van Heel; Vincent Plagnol

Many disease-associated variants identified by genome-wide association (GWA) studies are expected to regulate gene expression. Allele-specific expression (ASE) quantifies transcription from both haplotypes using individuals heterozygous at tested SNPs. We performed deep human transcriptome-wide resequencing (RNA-seq) for ASE analysis and expression quantitative trait locus discovery. We resequenced double poly(A)-selected RNA from primary CD4+ T cells (n = 4 individuals, both activated and untreated conditions) and developed tools for paired-end RNA-seq alignment and ASE analysis. We generated an average of 20 million uniquely mapping 45 base reads per sample. We obtained sufficient read depth to test 1371 unique transcripts for ASE. Multiple biases inflate the false discovery rate which we estimate to be ∼50% for random SNPs. However, after controlling for these biases and considering the subset of SNPs that pass HapMap QC, 4.6% of heterozygous SNP-sample pairs show evidence of imbalance (P < 0.001). We validated four findings by both bacterial cloning and Sanger sequencing assays. We also found convincing evidence for allelic imbalance at multiple reporter exonic SNPs in CD6 for two samples heterozygous at the multiple sclerosis-associated variant rs17824933, linking GWA findings with variation in gene expression. Finally, we show in CD4+ T cells from a further individual that high-throughput sequencing of genomic DNA and RNA-seq following enrichment for targeted gene sequences by sequence capture methods offers an unbiased means to increase the read depth for transcripts of interest, and therefore a method to investigate the regulatory role of many disease-associated genetic variants.


Genome Biology | 2010

Whole exome capture in solution with 3 Gbp of data.

Matthew N. Bainbridge; Min Wang; Daniel Burgess; Christie Kovar; Matthew Rodesch; Mark D'Ascenzo; Jacob Kitzman; Yuan Qing Wu; Irene Newsham; Todd Richmond; Jeffrey A. Jeddeloh; Donna M. Muzny; Thomas J. Albert; Richard A. Gibbs

We have developed a solution-based method for targeted DNA capture-sequencing that is directed to the complete human exome. Using this approach allows the discovery of greater than 95% of all expected heterozygous singe base variants, requires as little as 3 Gbp of raw sequence data and constitutes an effective tool for identifying rare coding alleles in large scale genomic studies.


Genome Biology | 2011

Targeted enrichment beyond the consensus coding DNA sequence exome reveals exons with higher variant densities

Matthew N. Bainbridge; Min Wang; Yuanqing Wu; Irene Newsham; Donna M. Muzny; John L. Jefferies; Thomas J. Albert; Daniel Burgess; Richard A. Gibbs

BackgroundEnrichment of loci by DNA hybridization-capture, followed by high-throughput sequencing, is an important tool in modern genetics. Currently, the most common targets for enrichment are the protein coding exons represented by the consensus coding DNA sequence (CCDS). The CCDS, however, excludes many actual or computationally predicted coding exons present in other databases, such as RefSeq and Vega, and non-coding functional elements such as untranslated and regulatory regions. The number of variants per base pair (variant density) and our ability to interrogate regions outside of the CCDS regions is consequently less well understood.ResultsWe examine capture sequence data from outside of the CCDS regions and find that extremes of GC content that are present in different subregions of the genome can reduce the local capture sequence coverage to less than 50% relative to the CCDS. This effect is due to biases inherent in both the Illumina and SOLiD sequencing platforms that are exacerbated by the capture process. Interestingly, for two subregion types, microRNA and predicted exons, the capture process yields higher than expected coverage when compared to whole genome sequencing. Lastly, we examine the variation present in non-CCDS regions and find that predicted exons, as well as exonic regions specific to RefSeq and Vega, show much higher variant densities than the CCDS.ConclusionsWe show that regions outside of the CCDS perform less efficiently in capture sequence experiments. Further, we show that the variant density in computationally predicted exons is more than 2.5-times higher than that observed in the CCDS.


Carcinogenesis | 2012

Identification of somatic mutations in non-small cell lung carcinomas using whole-exome sequencing

Pengyuan Liu; Carl Morrison; Liang Wang; Dong Hai Xiong; Peter T. Vedell; Peng Cui; Xing Hua; Feng Ding; Yan Lu; Michael A. James; John D. Ebben; Haiming Xu; Alex A. Adjei; Karen Head; Jaime Wendt Andrae; Michael Tschannen; Howard J. Jacob; Jing Pan; Qi Zhang; Françoise Van den Bergh; Haijie Xiao; Ken C. Lo; Jigar Patel; Todd Richmond; Mary Anne Watt; Thomas J. Albert; Rebecca R. Selzer; Marshall W. Anderson; Jiang Wang; Yian Wang

Lung cancer is the leading cause of cancer-related death, with non-small cell lung cancer (NSCLC) being the predominant form of the disease. Most lung cancer is caused by the accumulation of genomic alterations due to tobacco exposure. To uncover its mutational landscape, we performed whole-exome sequencing in 31 NSCLCs and their matched normal tissue samples. We identified both common and unique mutation spectra and pathway activation in lung adenocarcinomas and squamous cell carcinomas, two major histologies in NSCLC. In addition to identifying previously known lung cancer genes (TP53, KRAS, EGFR, CDKN2A and RB1), the analysis revealed many genes not previously implicated in this malignancy. Notably, a novel gene CSMD3 was identified as the second most frequently mutated gene (next to TP53) in lung cancer. We further demonstrated that loss of CSMD3 results in increased proliferation of airway epithelial cells. The study provides unprecedented insights into mutational processes, cellular pathways and gene networks associated with lung cancer. Of potential immediate clinical relevance, several highly mutated genes identified in our study are promising druggable targets in cancer therapy including ALK, CTNNA3, DCC, MLL3, PCDHIIX, PIK3C2B, PIK3CG and ROCK2.


Cancer Research | 2012

Resistance to Selective BRAF Inhibition Can Be Mediated by Modest Upstream Pathway Activation

Fei Su; William D. Bradley; Qiongqing Wang; Hong Yang; Lizhong Xu; Brian Higgins; Kenneth Kolinsky; Kathryn Packman; Min Jung Kim; Kerstin Trunzer; Richard J. Lee; Kathleen Schostack; Jade Carter; Thomas J. Albert; Soren Germer; Jim Rosinski; Mitchell Martin; Mary Ellen Simcox; Brian Lestini; David C. Heimbrook; Gideon Bollag

A high percentage of patients with BRAF(V600E) mutant melanomas respond to the selective RAF inhibitor vemurafenib (RG7204, PLX4032) but resistance eventually emerges. To better understand the mechanisms of resistance, we used chronic selection to establish BRAF(V600E) melanoma clones with acquired resistance to vemurafenib. These clones retained the V600E mutation and no second-site mutations were identified in the BRAF coding sequence. Further characterization showed that vemurafenib was not able to inhibit extracellular signal-regulated kinase phosphorylation, suggesting pathway reactivation. Importantly, resistance also correlated with increased levels of RAS-GTP, and sequencing of RAS genes revealed a rare activating mutation in KRAS, resulting in a K117N change in the KRAS protein. Elevated levels of CRAF and phosphorylated AKT were also observed. In addition, combination treatment with vemurafenib and either a MAP/ERK kinase (MEK) inhibitor or an AKT inhibitor synergistically inhibited proliferation of resistant cells. These findings suggest that resistance to BRAF(V600E) inhibition could occur through several mechanisms, including elevated RAS-GTP levels and increased levels of AKT phosphorylation. Together, our data implicate reactivation of the RAS/RAF pathway by upstream signaling activation as a key mechanism of acquired resistance to vemurafenib, in support of clinical studies in which combination therapy with other targeted agents are being strategized to combat resistance.


Plant Physiology | 2011

The composition and origins of genomic variation among individuals of the soybean reference cultivar Williams 82

William J. Haun; David L. Hyten; Wayne Xu; Daniel J. Gerhardt; Thomas J. Albert; Todd Richmond; Jeffrey A. Jeddeloh; Gaofeng Jia; Nathan M. Springer; Carroll P. Vance; Robert M. Stupar

Soybean (Glycine max) is a self-pollinating species that has relatively low nucleotide polymorphism rates compared with other crop species. Despite the low rate of nucleotide polymorphisms, a wide range of heritable phenotypic variation exists. There is even evidence for heritable phenotypic variation among individuals within some cultivars. Williams 82, the soybean cultivar used to produce the reference genome sequence, was derived from backcrossing a Phytophthora root rot resistance locus from the donor parent Kingwa into the recurrent parent Williams. To explore the genetic basis of intracultivar variation, we investigated the nucleotide, structural, and gene content variation of different Williams 82 individuals. Williams 82 individuals exhibited variation in the number and size of introgressed Kingwa loci. In these regions of genomic heterogeneity, the reference Williams 82 genome sequence consists of a mosaic of Williams and Kingwa haplotypes. Genomic structural variation between Williams and Kingwa was maintained between the Williams 82 individuals within the regions of heterogeneity. Additionally, the regions of heterogeneity exhibited gene content differences between Williams 82 individuals. These findings show that genetic heterogeneity in Williams 82 primarily originated from the differential segregation of polymorphic chromosomal regions following the backcross and single-seed descent generations of the breeding process. We conclude that soybean haplotypes can possess a high rate of structural and gene content variation, and the impact of intracultivar genetic heterogeneity may be significant. This detailed characterization will be useful for interpreting soybean genomic data sets and highlights important considerations for research communities that are developing or utilizing a reference genome sequence.

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Michael Molla

University of Wisconsin-Madison

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George M. Weinstock

Washington University in St. Louis

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