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Dive into the research topics where Shaojie Zhang is active.

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Featured researches published by Shaojie Zhang.


Proceedings of the National Academy of Sciences of the United States of America | 2015

Multicolor CRISPR labeling of chromosomal loci in human cells

Hanhui Ma; Ardalan Naseri; Pablo Reyes-Gutierrez; Scot A. Wolfe; Shaojie Zhang; Thoru Pederson

Significance The detection of specific genes in fixed cells was first accomplished in 1969 by Gall and Pardue. The development of analogous methods applicable to living cells is now at hand. At the forefront of this advance (2013–2014), we and other investigators have used transcription activator-like effectors (TALEs) conjugated with fluorescent proteins to tag genomic loci in live cells. More recently, the CRISPR/Cas9 system has provided a more flexible approach to targeting specific loci. In this paper, we describe the labeling of human genomic loci in live cells with three orthogonal CRISPR/Cas9 components, allowing multicolor detection of genomic loci with high spatial resolution, which provides an avenue for barcoding elements of the human genome in the living state. The intranuclear location of genomic loci and the dynamics of these loci are important parameters for understanding the spatial and temporal regulation of gene expression. Recently it has proven possible to visualize endogenous genomic loci in live cells by the use of transcription activator-like effectors (TALEs), as well as modified versions of the bacterial immunity clustered regularly interspersed short palindromic repeat (CRISPR)/CRISPR-associated protein 9 (Cas9) system. Here we report the design of multicolor versions of CRISPR using catalytically inactive Cas9 endonuclease (dCas9) from three bacterial orthologs. Each pair of dCas9-fluorescent proteins and cognate single-guide RNAs (sgRNAs) efficiently labeled several target loci in live human cells. Using pairs of differently colored dCas9-sgRNAs, it was possible to determine the intranuclear distance between loci on different chromosomes. In addition, the fluorescence spatial resolution between two loci on the same chromosome could be determined and related to the linear distance between them on the chromosome’s physical map, thereby permitting assessment of the DNA compaction of such regions in a live cell.


Nature Biotechnology | 2016

Multiplexed labeling of genomic loci with dCas9 and engineered sgRNAs using CRISPRainbow

Hanhui Ma; Li-Chun Tu; Ardalan Naseri; Maximiliaan Huisman; Shaojie Zhang; David Grunwald; Thoru Pederson

A lack of techniques to image multiple genomic loci in living cells has limited our ability to investigate chromosome dynamics. Here we describe CRISPRainbow, a system for labeling DNA in living cells based on nuclease-dead (d) Cas9 combined with engineered single guide RNA (sgRNA) scaffolds that bind sets of fluorescent proteins. We demonstrate simultaneous imaging of up to six chromosomal loci in individual live cells and document large differences in the dynamic properties of different chromosomal loci.


FEBS Letters | 2011

Epigenetic regulation of microRNA-375 and its role in melanoma development in humans

Joseph Mazar; Dan DeBlasio; Subramaniam S. Govindarajan; Shaojie Zhang; Ranjan J. Perera

To identify epigenetically regulated miRNAs in melanoma, we treated a stage 3 melanoma cell line WM1552C, with 5AzadC and/or 4‐PBA. Several hypermethylated miRNAs were detected, one of which, miR‐375, was highly methylated and was studied further. Minimal CpG island methylation was observed in melanocytes, keratinocytes, normal skin, and nevus but hypermethylation was observed in patient tissue samples from primary, regional, distant, and nodular metastatic melanoma. Ectopic expression of miR‐375 inhibited melanoma cell proliferation, invasion, and cell motility, and induced cell shape changes, strongly suggesting that miR‐375 may have an important function in the development and progression of human melanomas.


IEEE/ACM Transactions on Computational Biology and Bioinformatics | 2005

Searching Genomes for Noncoding RNA Using FastR

Shaojie Zhang; Brian Haas; Eleazar Eskin; Vineet Bafna

The discovery of novel noncoding RNAs has been among the most exciting recent developments in biology. It has been hypothesized that there is, in fact, an abundance of functional noncoding RNAs (ncRNAs) with various catalytic and regulatory functions. However, the inherent signal for ncRNA is weaker than the signal for protein coding genes, making these harder to identify. We consider the following problem: Given an RNA sequence with a known secondary structure, efficiently detect all structural homologs in a genomic database by computing the sequence and structure similarity to the query. Our approach, based on structural filters that eliminate a large portion of the database while retaining the true homologs, allows us to search a typical bacterial genome in minutes on a standard PC. The results are two orders of magnitude better than the currently available software for the problem. We applied FastR to the discovery of novel riboswitches, which are a class of RNA domains found in the untranslated regions. They are of interest because they regulate metabolite synthesis by directly binding metabolites. We searched all available eubacterial and archaeal genomes for riboswitches from purine, lysine, thiamin, and riboflavin subfamilies. Our results point to a number of novel candidates for each of these subfamilies and include genomes that were not known to contain riboswitches.


Journal of Computational Biology | 2008

Structural alignment of pseudoknotted RNA.

Buhm Han; Banu Dost; Vineet Bafna; Shaojie Zhang

In this paper, we address the problem of discovering novel non-coding RNA (ncRNA) using primary sequence, and secondary structure conservation, focusing on ncRNA families with pseudoknotted structures. Our main technical result is an efficient algorithm for computing an optimum structural alignment of an RNA sequence against a genomic substring. This algorithm has two applications. First, by scanning a genome, we can identify novel (homologous) pseudoknotted ncRNA, and second, we can infer the secondary structure of the target aligned sequence. We test an implementation of our algorithm (PAL) and show that it has near-perfect behavior for predicting the structure of many known pseudoknots. Additionally, it can detect the true homologs with high sensitivity and specificity in controlled tests. We also use PAL to search entire viral genome and mouse genome for novel homologs of some viral and eukaryotic pseudoknots, respectively. In each case, we have found strong support for novel homologs.


Journal of Cell Biology | 2016

CRISPR-Cas9 nuclear dynamics and target recognition in living cells

Hanhui Ma; Li-Chun Tu; Ardalan Naseri; Maximiliaan Huisman; Shaojie Zhang; David Grunwald; Thoru Pederson

How CRISPR Cas9–guide RNA complexes navigate the nucleus and interrogate the genome is not well understood. Ma et al. track these complexes in live cells and find that mutations in the guide seed region significantly reduced the complex’s target residence time, with a commensurate impairment of cleavage.


Nucleic Acids Research | 2010

RNAMotifScan: automatic identification of RNA structural motifs using secondary structural alignment

Cuncong Zhong; Haixu Tang; Shaojie Zhang

Recent studies have shown that RNA structural motifs play essential roles in RNA folding and interaction with other molecules. Computational identification and analysis of RNA structural motifs remains a challenging task. Existing motif identification methods based on 3D structure may not properly compare motifs with high structural variations. Other structural motif identification methods consider only nested canonical base-pairing structures and cannot be used to identify complex RNA structural motifs that often consist of various non-canonical base pairs due to uncommon hydrogen bond interactions. In this article, we present a novel RNA structural alignment method for RNA structural motif identification, RNAMotifScan, which takes into consideration the isosteric (both canonical and non-canonical) base pairs and multi-pairings in RNA structural motifs. The utility and accuracy of RNAMotifScan is demonstrated by searching for kink-turn, C-loop, sarcin-ricin, reverse kink-turn and E-loop motifs against a 23S rRNA (PDBid: 1S72), which is well characterized for the occurrences of these motifs. Finally, we search these motifs against the RNA structures in the entire Protein Data Bank and the abundances of them are estimated. RNAMotifScan is freely available at our supplementary website (http://genome.ucf.edu/RNAMotifScan).


BMC Genomics | 2012

Detecting transcription of ribosomal protein pseudogenes in diverse human tissues from RNA-seq data

Peter Tonner; Vinodh Srinivasasainagendra; Shaojie Zhang; Degui Zhi

BackgroundRibosomal proteins (RPs) have about 2000 pseudogenes in the human genome. While anecdotal reports for RP pseudogene transcription exists, it is unclear to what extent these pseudogenes are transcribed. The RP pseudogene transcription is difficult to identify in microarrays due to potential cross-hybridization between transcripts from the parent genes and pseudogenes. Recently, transcriptome sequencing (RNA-seq) provides an opportunity to ascertain the transcription of pseudogenes. A challenge for pseudogene expression discovery in RNA-seq data lies in the difficulty to uniquely identify reads mapped to pseudogene regions, which are typically also similar to the parent genes.ResultsHere we developed a specialized pipeline for pseudogene transcription discovery. We first construct a “composite genome” that includes the entire human genome sequence as well as mRNA sequences of real ribosomal protein genes. We then map all sequence reads to the composite genome, and only exact matches were retained. Moreover, we restrict our analysis to strictly defined mappable regions and calculate the RPKM values as measurement of pseudogene transcription levels. We report evidences for the transcription of RP pseudogenes in 16 human tissues. By analyzing the Human Body Map 2.0 study RNA-sequencing data using our pipeline, we identified that one ribosomal protein (RP) pseudogene (PGOHUM-249508) is transcribed with RPKM 170 in thyroid. Moreover, three other RP pseudogenes are transcribed with RPKM > 10, a level similar to that of the normal RP genes, in white blood cell, kidney, and testes, respectively. Furthermore, an additional thirteen RP pseudogenes are of RPKM > 5, corresponding to the 20–30 percentile among all genes. Unlike ribosomal protein genes that are constitutively expressed in almost all tissues, RP pseudogenes are differentially expressed, suggesting that they may contribute to tissue-specific biological processes.ConclusionsUsing a specialized bioinformatics method, we identified the transcription of ribosomal protein pseudogenes in human tissues using RNA-seq data.


design automation conference | 2014

FIGHT-Metric: Functional Identification of Gate-Level Hardware Trustworthiness

Dean Sullivan; Jeff Biggers; Guidong Zhu; Shaojie Zhang; Yier Jin

To address the concern that a complete detection scheme for effective hardware Trojan identification is lacking, we have designed an RTL security metric in order to evaluate the quality of IP cores (with the same or similar functionality) and counter Trojan attacks at the pre-fabrication stages of the IP design flow. The proposed security metric is constructed on top of two criteria, from which a quantitative security value can be assigned to the target circuit: 1) Distribution of controllability; 2) Existence of rare events. The proposed metric, called FIGHT, is an automated tool whereby malicious modifications to ICs and/or the vulnerability of the IP core can be identified, by monitoring both internal node controllability and the corresponding control value distribution plotted as a histogram. Experimentation on an RS232 module was performed to demonstrate our dual security criteria and proved security degradation to the IP module upon hardware Trojan insertion.


Methods | 2015

Computational analysis of RNA structures with chemical probing data.

Ping Ge; Shaojie Zhang

RNAs play various roles, not only as the genetic codes to synthesize proteins, but also as the direct participants of biological functions determined by their underlying high-order structures. Although many computational methods have been proposed for analyzing RNA structures, their accuracy and efficiency are limited, especially when applied to the large RNAs and the genome-wide data sets. Recently, advances in parallel sequencing and high-throughput chemical probing technologies have prompted the development of numerous new algorithms, which can incorporate the auxiliary structural information obtained from those experiments. Their potential has been revealed by the secondary structure prediction of ribosomal RNAs and the genome-wide ncRNA function annotation. In this review, the existing probing-directed computational methods for RNA secondary and tertiary structure analysis are discussed.

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Cuncong Zhong

University of Central Florida

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Vineet Bafna

University of California

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Ardalan Naseri

University of Central Florida

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Ping Ge

University of Central Florida

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Yier Jin

University of Florida

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Hanhui Ma

University of Massachusetts Medical School

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Thoru Pederson

University of Massachusetts Medical School

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David Grunwald

University of Massachusetts Medical School

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Degui Zhi

University of Alabama at Birmingham

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Li-Chun Tu

University of Massachusetts Medical School

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