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Dive into the research topics where Scott L. Vandenberg is active.

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Featured researches published by Scott L. Vandenberg.


Infection, Genetics and Evolution | 2012

TB-Lineage: an online tool for classification and analysis of strains of Mycobacterium tuberculosis complex.

Amina Shabbeer; Lauren S. Cowan; Cagri Ozcaglar; Nalin Rastogi; Scott L. Vandenberg; Bülent Yener; Kristin P. Bennett

This paper formulates a set of rules to classify genotypes of the Mycobacterium tuberculosis complex (MTBC) into major lineages using spoligotypes and MIRU-VNTR results. The rules synthesize prior literature that characterizes lineages by spacer deletions and variations in the number of repeats seen at locus MIRU24 (alias VNTR2687). A tool that efficiently and accurately implements this rule base is now freely available at http://tbinsight.cs.rpi.edu/run_tb_lineage.html. When MIRU24 data is not available, the system utilizes predictions made by a Naïve Bayes classifier based on spoligotype data. This website also provides a tool to generate spoligoforests in order to visualize the genetic diversity and relatedness of genotypes and their associated lineages. A detailed analysis of the application of these tools on a dataset collected by the CDC consisting of 3198 distinct spoligotypes and 5430 distinct MIRU-VNTR types from 37,066 clinical isolates is presented. The tools were also tested on four other independent datasets. The accuracy of automated classification using both spoligotypes and MIRU24 is >99%, and using spoligotypes alone is >95%. This online rule-based classification technique in conjunction with genotype visualization provides a practical tool that supports surveillance of TB transmission trends and molecular epidemiological studies.


Bellman Prize in Mathematical Biosciences | 2012

Epidemiological models of Mycobacterium tuberculosis complex infections

Cagri Ozcaglar; Amina Shabbeer; Scott L. Vandenberg; Bülent Yener; Kristin P. Bennett

The resurgence of tuberculosis in the 1990s and the emergence of drug-resistant tuberculosis in the first decade of the 21st century increased the importance of epidemiological models for the disease. Due to slow progression of tuberculosis, the transmission dynamics and its long-term effects can often be better observed and predicted using simulations of epidemiological models. This study provides a review of earlier study on modeling different aspects of tuberculosis dynamics. The models simulate tuberculosis transmission dynamics, treatment, drug resistance, control strategies for increasing compliance to treatment, HIV/TB co-infection, and patient groups. The models are based on various mathematical systems, such as systems of ordinary differential equations, simulation models, and Markov Chain Monte Carlo methods. The inferences from the models are justified by case studies and statistical analysis of TB patient datasets.


BMC Systems Biology | 2008

Multiway modeling and analysis in stem cell systems biology

Bülent Yener; Evrim Acar; Pheadra Aguis; Kristin P. Bennett; Scott L. Vandenberg; George E. Plopper

BackgroundSystems biology refers to multidisciplinary approaches designed to uncover emergent properties of biological systems. Stem cells are an attractive target for this analysis, due to their broad therapeutic potential. A central theme of systems biology is the use of computational modeling to reconstruct complex systems from a wealth of reductionist, molecular data (e.g., gene/protein expression, signal transduction activity, metabolic activity, etc.). A number of deterministic, probabilistic, and statistical learning models are used to understand sophisticated cellular behaviors such as protein expression during cellular differentiation and the activity of signaling networks. However, many of these models are bimodal i.e., they only consider row-column relationships. In contrast, multiway modeling techniques (also known as tensor models) can analyze multimodal data, which capture much more information about complex behaviors such as cell differentiation. In particular, tensors can be very powerful tools for modeling the dynamic activity of biological networks over time. Here, we review the application of systems biology to stem cells and illustrate application of tensor analysis to model collagen-induced osteogenic differentiation of human mesenchymal stem cells.ResultsWe applied Tucker1, Tucker3, and Parallel Factor Analysis (PARAFAC) models to identify protein/gene expression patterns during extracellular matrix-induced osteogenic differentiation of human mesenchymal stem cells. In one case, we organized our data into a tensor of type protein/gene locus link × gene ontology category × osteogenic stimulant, and found that our cells expressed two distinct, stimulus-dependent sets of functionally related genes as they underwent osteogenic differentiation. In a second case, we organized DNA microarray data in a three-way tensor of gene IDs × osteogenic stimulus × replicates, and found that application of tensile strain to a collagen I substrate accelerated the osteogenic differentiation induced by a static collagen I substrate.ConclusionOur results suggest gene- and protein-level models whereby stem cells undergo transdifferentiation to osteoblasts, and lay the foundation for mechanistic, hypothesis-driven studies. Our analysis methods are applicable to a wide range of stem cell differentiation models.


BMC Genomics | 2007

Proteomics reveals multiple routes to the osteogenic phenotype in mesenchymal stem cells

Kristin P. Bennett; Charles Bergeron; Evrim Acar; Robert F. Klees; Scott L. Vandenberg; Bülent Yener; George E. Plopper

BackgroundRecently, we demonstrated that human mesenchymal stem cells (hMSC) stimulated with dexamethazone undergo gene focusing during osteogenic differentiation (Stem Cells Dev 14(6): 1608–20, 2005). Here, we examine the protein expression profiles of three additional populations of hMSC stimulated to undergo osteogenic differentiation via either contact with pro-osteogenic extracellular matrix (ECM) proteins (collagen I, vitronectin, or laminin-5) or osteogenic media supplements (OS media). Specifically, we annotate these four protein expression profiles, as well as profiles from naïve hMSC and differentiated human osteoblasts (hOST), with known gene ontologies and analyze them as a tensor with modes for the expressed proteins, gene ontologies, and stimulants.ResultsDirect component analysis in the gene ontology space identifies three components that account for 90% of the variance between hMSC, osteoblasts, and the four stimulated hMSC populations. The directed component maps the differentiation stages of the stimulated stem cell populations along the differentiation axis created by the difference in the expression profiles of hMSC and hOST. Surprisingly, hMSC treated with ECM proteins lie closer to osteoblasts than do hMSC treated with OS media. Additionally, the second component demonstrates that proteomic profiles of collagen I- and vitronectin-stimulated hMSC are distinct from those of OS-stimulated cells. A three-mode tensor analysis reveals additional focus proteins critical for characterizing the phenotypic variations between naïve hMSC, partially differentiated hMSC, and hOST.ConclusionThe differences between the proteomic profiles of OS-stimulated hMSC and ECM-hMSC characterize different transitional phenotypes en route to becoming osteoblasts. This conclusion is arrived at via a three-mode tensor analysis validated using hMSC plated on laminin-5.


BMC Genomics | 2011

Sublineage structure analysis of Mycobacterium tuberculosis complex strains using multiple-biomarker tensors

Cagri Ozcaglar; Amina Shabbeer; Scott L. Vandenberg; Bülent Yener; Kristin P. Bennett

BackgroundStrains of Mycobacterium tuberculosis complex (MTBC) can be classified into major lineages based on their genotype. Further subdivision of major lineages into sublineages requires multiple biomarkers along with methods to combine and analyze multiple sources of information in one unsupervised learning model. Typically, spacer oligonucleotide type (spoligotype) and mycobacterial interspersed repetitive units (MIRU) are used for TB genotyping and surveillance. Here, we examine the sublineage structure of MTBC strains with multiple biomarkers simultaneously, by employing a tensor clustering framework (TCF) on multiple-biomarker tensors.ResultsSimultaneous analysis of the spoligotype and MIRU type of strains using TCF on multiple-biomarker tensors leads to coherent sublineages of major lineages with clear and distinctive spoligotype and MIRU signatures. Comparison of tensor sublineages with SpolDB4 families either supports tensor sublineages, or suggests subdivision or merging of SpolDB4 families. High prediction accuracy of major lineage classification with supervised tensor learning on multiple-biomarker tensors validates our unsupervised analysis of sublineages on multiple-biomarker tensors.ConclusionsTCF on multiple-biomarker tensors achieves simultaneous analysis of multiple biomarkers and suggest a new putative sublineage structure for each major lineage. Analysis of multiple-biomarker tensors gives insight into the sublineage structure of MTBC at the genomic level.


technical symposium on computer science education | 2000

Introducing computer science using a breadth-first approach and functional programming

Scott L. Vandenberg; Michael Wollowski

We present a breadth-first, lecture- and lab-based approach to introducing Computer Science that uses functional programming. Functional programming provides a low-overhead introduction to programming (no types, few constructs, and little syntax), enabling students to write, in their first semester, programs sophisticated enough to exemplify important concepts of Computer Science. It also encourages good programming style (modular design and testing, e.g.) and serves as an introduction to an important problem-solving paradigm. The course gives the students a broad overview of Computer Science and helps them gauge their interest in the field.


BioMed Research International | 2014

Predicting Mycobacterium tuberculosis Complex Clades Using Knowledge-Based Bayesian Networks

Minoo Aminian; David Couvin; Amina Shabbeer; Kane Hadley; Scott L. Vandenberg; Nalin Rastogi; Kristin P. Bennett

We develop a novel approach for incorporating expert rules into Bayesian networks for classification of Mycobacterium tuberculosis complex (MTBC) clades. The proposed knowledge-based Bayesian network (KBBN) treats sets of expert rules as prior distributions on the classes. Unlike prior knowledge-based support vector machine approaches which require rules expressed as polyhedral sets, KBBN directly incorporates the rules without any modification. KBBN uses data to refine rule-based classifiers when the rule set is incomplete or ambiguous. We develop a predictive KBBN model for 69 MTBC clades found in the SITVIT international collection. We validate the approach using two testbeds that model knowledge of the MTBC obtained from two different experts and large DNA fingerprint databases to predict MTBC genetic clades and sublineages. These models represent strains of MTBC using high-throughput biomarkers called spacer oligonucleotide types (spoligotypes), since these are routinely gathered from MTBC isolates of tuberculosis (TB) patients. Results show that incorporating rules into problems can drastically increase classification accuracy if data alone are insufficient. The SITVIT KBBN is publicly available for use on the World Wide Web.


Proceedings of the 2nd ACM Conference on Bioinformatics, Computational Biology and Biomedicine | 2011

Knowledge-based Bayesian network for the classification of Mycobacterium tuberculosis complex sublineages

Minoo Aminian; Amina Shabbeer; Kane Hadley; Cagri Ozcaglar; Scott L. Vandenberg; Kristin P. Bennett

We develop a novel knowledge-based Bayesian network (KBBN) that models our knowledge of the Mycobacterium tuberculosis complex (MTBC) obtained from expert-defined rules and large DNA fingerprint databases to classify strains of MTBC into fifty-one genetic sublineages. The model uses two high-throughput biomarkers: spacer oligonucleotide types (spoligotypes) and mycobacterial interspersed repetitive units (MIRU) types to represent strains of MTBC, since these are routinely gathered from MTBC isolates of tuberculosis (TB) patients. KBBN provides an elegant and simple way to incorporate existing widely accepted visual rules for MTBC sublineages into a classifier designed to capture known properties of the MTBC biomarkers. Unlike prior knowledge-based SVM approaches which require rules expressed as polyhedral sets, KBBN directly incorporates the rules without any modification. Computational results show that KBBN achieves much higher accuracy than methods based purely on rules, and than Bayesian networks trained on biomarker data alone.


bioinformatics and biomedicine | 2010

Examining the sublineage structure of Mycobacterium tuberculosis complex strains with multiple-biomarker tensors

Cagri Ozcaglar; Amina Shabbeer; Scott L. Vandenberg; Bülent Yener; Kristin P. Bennett

Strains of the Mycobacterium tuberculosis complex (MTBC) can be classified into coherent lineages of similar traits based on their genotype. We present a tensor clustering framework to group MTBC strains into sublineages of the known major lineages based on two biomarkers: spacer oligonucleotide type (spoligotype) and mycobacterial interspersed repetitive units (MIRU). We represent genotype information of MTBC strains in a high-dimensional array in order to include information about spoligotype, MIRU, and their coexistence using multiple-biomarker tensors. We use multiway models to transform this multidimensional data about the MTBC strains into two-dimensional arrays and use the resulting score vectors in a stable partitive clustering algorithm to classify MTBC strains into sublineages. We validate clusterings using cluster stability and accuracy measures, and find stabilities of each cluster. Based on validated clustering results, we present a sublineage structure of MTBC strains and compare it to the sublineage structures of SpolDB4 and MIRU-VNTRplus.


technical symposium on computer science education | 2018

Catch 'em Early: Internship and Assistantship CS Mentoring Programs for Underclassmen

Meg Fryling; Mary Anne L. Egan; Robin Y. Flatland; Scott L. Vandenberg; Sharon G. Small

Recruiting and retaining STEM majors has been an ongoing challenge for colleges and universities. This research paper describes two initiatives to recruit and retain Computer Science (CS) majors that were implemented at Siena College starting in the fall of 2014. Both initiatives are directed at rising sophomores who have completed the first year CS sequence as an early strategy to encourage them to declare and complete the CS major. The first initiative is an early internship program directed at providing students an opportunity to apply those technical skills, extend their skill set, and introduce them to meaningful real-world projects between their freshman and sophomore years. The second initiative is a lab/classroom assistant program where sophomore or older students provide mentoring during lecture and lab sessions for the introductory CS courses. The paper provides preliminary findings, lessons learned, and directions for the future.

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Dive into the Scott L. Vandenberg's collaboration.

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Kristin P. Bennett

Rensselaer Polytechnic Institute

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Amina Shabbeer

Rensselaer Polytechnic Institute

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Bülent Yener

Rensselaer Polytechnic Institute

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Cagri Ozcaglar

Rensselaer Polytechnic Institute

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George E. Plopper

Rensselaer Polytechnic Institute

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Kane Hadley

Rensselaer Polytechnic Institute

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Minoo Aminian

Rensselaer Polytechnic Institute

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