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1.
  • Andersson, David C., 1978-, et al. (author)
  • A multivariate approach to investigate docking parameters' effects on docking performance
  • 2007
  • In: Journal of chemical information and modeling. - : American Chemical Society Publications. - 1549-9596 .- 1549-960X. ; 47:4, s. 1673-1687
  • Journal article (peer-reviewed)abstract
    • Increasingly powerful docking programs for analyzing and estimating the strength of protein-ligand interactions have been developed in recent decades, and they are now valuable tools in drug discovery. Software used to perform dockings relies on a number of parameters that affect various steps in the docking procedure. However, identifying the best choices of the settings for these parameters is often challenging. Therefore, the settings of the parameters are quite often left at their default values, even though scientists with long experience with a specific docking tool know that modifying certain parameters can improve the results. In the study presented here, we have used statistical experimental design and subsequent regression based on root-mean-square deviation values using partial least-square projections to latent structures (PLS) to scrutinize the effects of different parameters on the docking performance of two software packages: FRED and GOLD. Protein-ligand complexes with a high level of ligand diversity were selected from the PDBbind database for the study, using principal component analysis based on 1D and 2D descriptors, and space-filling design. The PLS models showed quantitative relationships between the docking parameters and the ability of the programs to reproduce the ligand crystallographic conformation. The PLS models also revealed which of the parameters and what parameter settings were important for the docking performance of the two programs. Furthermore, the variation in docking results obtained with specific parameter settings for different protein-ligand complexes in the diverse set examined indicates that there is great potential for optimizing the parameter settings for selected sets of proteins.
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2.
  • Bylesjö, Max, et al. (author)
  • Data integration in plant biology the O2PLS method for combined modeling of transcript and metabolite data
  • 2007
  • In: The Plant Journal. - 0960-7412 .- 1365-313X. ; 52:6, s. 1181-1191
  • Journal article (peer-reviewed)abstract
    • The technological advances in the instrumentation employed in life sciences have enabled the collection of a virtually unlimited quantity of data from multiple sources. By gathering data from several analytical platforms, with the aim of parallel monitoring of, e.g. transcriptomic, metabolomic or proteomic events, one hopes to answer and understand biological questions and observations. This 'systems biology' approach typically involves advanced statistics to facilitate the interpretation of the data. In the present study, we demonstrate that the O2PLS multivariate regression method can be used for combining 'omics' types of data. With this methodology, systematic variation that overlaps across analytical platforms can be separated from platform-specific systematic variation. A study of Populus tremula x Populus tremuloides, investigating short-day-induced effects at transcript and metabolite levels, is employed to demonstrate the benefits of the methodology. We show how the models can be validated and interpreted to identify biologically relevant events, and discuss the results in relation to a pairwise univariate correlation approach and principal component analysis.
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3.
  • Bylesjö, Max, et al. (author)
  • Integrated analysis of transcript, protein and metabolite data to study lignin biosynthesis in hybrid aspen
  • 2009
  • In: Journal of Proteome Research. - : American Chemical Society (ACS). - 1535-3893 .- 1535-3907. ; 8:1, s. 199-210
  • Journal article (peer-reviewed)abstract
    • Tree biotechnology will soon reach a mature state where it will influence the overall supply of fiber, energy and wood products. We are now ready to make the transition from identifying candidate genes, controlling important biological processes, to discovering the detailed molecular function of these genes on a broader, more holistic, systems biology level. In this paper, a strategy is outlined for informative data generation and integrated modeling of systematic changes in transcript, protein and metabolite profiles measured from hybrid aspen samples. The aim is to study characteristics of common changes in relation to genotype-specific perturbations affecting the lignin biosynthesis and growth. We show that a considerable part of the systematic effects in the system can be tracked across all platforms and that the approach has a high potential value in functional characterization of candidate genes.
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4.
  • Bylesjö, Max, et al. (author)
  • K-OPLS package: Kernel-based orthogonal projections to latent structures for prediction and interpretation in feature space
  • 2008
  • In: BMC Bioinformatics. - : BioMed Central. - 1471-2105. ; 9, s. 1-7
  • Journal article (peer-reviewed)abstract
    • Background: Kernel-based classification and regression methods have been successfully applied to modelling a wide variety of biological data. The Kernel-based Orthogonal Projections to Latent Structures (K-OPLS) method offers unique properties facilitating separate modelling of predictive variation and structured noise in the feature space. While providing prediction results similar to other kernel-based methods, K-OPLS features enhanced interpretational capabilities; allowing detection of unanticipated systematic variation in the data such as instrumental drift, batch variability or unexpected biological variation.Results: We demonstrate an implementation of the K-OPLS algorithm for MATLAB and R, licensed under the GNU GPL and available at http://www.sourceforge.net/projects/kopls/. The package includes essential functionality and documentation for model evaluation (using cross-validation), training and prediction of future samples. Incorporated is also a set of diagnostic tools and plot functions to simplify the visualisation of data, e.g. for detecting trends or for identification of outlying samples. The utility of the software package is demonstrated by means of a metabolic profiling data set from a biological study of hybrid aspen.Conclusion: The properties of the K-OPLS method are well suited for analysis of biological data, which in conjunction with the availability of the outlined open-source package provides a comprehensive solution for kernel-based analysis in bioinformatics applications.
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5.
  • Bylesjö, Max, et al. (author)
  • LAMINA : a tool for rapid quantification of leaf size and shape parameters
  • 2008
  • In: BMC Plant Biology. - : BMC. - 1471-2229. ; 8
  • Journal article (peer-reviewed)abstract
    • Background: An increased understanding of leaf area development is important in a number of fields: in food and non-food crops, for example short rotation forestry as a biofuels feedstock, leaf area is intricately linked to biomass productivity; in paleontology leaf shape characteristics are used to reconstruct paleoclimate history. Such fields require measurement of large collections of leaves, with resulting conclusions being highly influenced by the accuracy of the phenotypic measurement process.Results: We have developed LAMINA (Leaf shApe deterMINAtion), a new tool for the automated analysis of images of leaves. LAMINA has been designed to provide classical indicators of leaf shape (blade dimensions) and size (area), which are typically required for correlation analysis to biomass productivity, as well as measures that indicate asymmetry in leaf shape, leaf serration traits, and measures of herbivory damage (missing leaf area). In order to allow Principal Component Analysis (PCA) to be performed, the location of a chosen number of equally spaced boundary coordinates can optionally be returned.Conclusion: We demonstrate the use of the software on a set of 500 scanned images, each containing multiple leaves, collected from a common garden experiment containing 116 clones of Populus tremula (European trembling aspen) that are being used for association mapping, as well as examples of leaves from other species. We show that the software provides an efficient and accurate means of analysing leaf area in large datasets in an automated or semi-automated work flow.
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6.
  • Bylesjö, Max, 1978- (author)
  • Latent variable based computational methods for applications in life sciences : Analysis and integration of omics data sets
  • 2008
  • Doctoral thesis (other academic/artistic)abstract
    • With the increasing availability of high-throughput systems for parallel monitoring of multiple variables, e.g. levels of large numbers of transcripts in functional genomics experiments, massive amounts of data are being collected even from single experiments. Extracting useful information from such systems is a non-trivial task that requires powerful computational methods to identify common trends and to help detect the underlying biological patterns. This thesis deals with the general computational problems of classifying and integrating high-dimensional empirical data using a latent variable based modeling approach. The underlying principle of this approach is that a complex system can be characterized by a few independent components that characterize the systematic properties of the system. Such a strategy is well suited for handling noisy, multivariate data sets with strong multicollinearity structures, such as those typically encountered in many biological and chemical applications. The main foci of the studies this thesis is based upon are applications and extensions of the orthogonal projections to latent structures (OPLS) method in life science contexts. OPLS is a latent variable based regression method that separately describes systematic sources of variation that are related and unrelated to the modeling aim (for instance, classifying two different categories of samples). This separation of sources of variation can be used to pre-process data, but also has distinct advantages for model interpretation, as exemplified throughout the work. For classification cases, a probabilistic framework for OPLS has been developed that allows the incorporation of both variance and covariance into classification decisions. This can be seen as a unification of two historical classification paradigms based on either variance or covariance. In addition, a non-linear reformulation of the OPLS algorithm is outlined, which is useful for particularly complex regression or classification tasks. The general trend in functional genomics studies in the post-genomics era is to perform increasingly comprehensive characterizations of organisms in order to study the associations between their molecular and cellular components in greater detail. Frequently, abundances of all transcripts, proteins and metabolites are measured simultaneously in an organism at a current state or over time. In this work, a generalization of OPLS is described for the analysis of multiple data sets. It is shown that this method can be used to integrate data in functional genomics experiments by separating the systematic variation that is common to all data sets considered from sources of variation that are specific to each data set.
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7.
  • Bylesjö, Max, et al. (author)
  • MASQOT : a method for cDNA microarray spot quality control.
  • 2005
  • In: BMC Bioinformatics. - : Springer Science and Business Media LLC. - 1471-2105. ; 6, s. 250-
  • Journal article (peer-reviewed)abstract
    • BackgroundcDNA microarray technology has emerged as a major player in the parallel detection of biomolecules, but still suffers from fundamental technical problems. Identifying and removing unreliable data is crucial to prevent the risk of receiving illusive analysis results. Visual assessment of spot quality is still a common procedure, despite the time-consuming work of manually inspecting spots in the range of hundreds of thousands or more.ResultsA novel methodology for cDNA microarray spot quality control is outlined. Multivariate discriminant analysis was used to assess spot quality based on existing and novel descriptors. The presented methodology displays high reproducibility and was found superior in identifying unreliable data compared to other evaluated methodologies.ConclusionThe proposed methodology for cDNA microarray spot quality control generates non-discrete values of spot quality which can be utilized as weights in subsequent analysis procedures as well as to discard spots of undesired quality using the suggested threshold values. The MASQOT approach provides a consistent assessment of spot quality and can be considered an alternative to the labor-intensive manual quality assessment process.
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8.
  • Bylesjö, Max, et al. (author)
  • MASQOT-GUI : spot quality assessment for the two-channel microarray platform
  • 2006
  • In: Bioinformatics. - : Oxford University Press (OUP). - 1367-4803 .- 1367-4811. ; 22:20, s. 2554-2555
  • Journal article (peer-reviewed)abstract
    • MASQOT-GUI provides an open-source, platform-independent software pipeline for two-channel microarray spot quality control. This includes gridding, segmentation, quantification, quality assessment and data visualization. It hosts a set of independent applications, with interactions between the tools as well as import and export support for external software. The implementation of automated multivariate quality control assessment, which is a unique feature of MASQOT-GUI, is based on the previously documented and evaluated MASQOT methodology. Further abilities of the application are outlined and illustrated. AVAILABILITY: MASQOT-GUI is Java-based and licensed under the GNU LGPL. Source code and installation files are available for download at http://masqot-gui.sourceforge.net/
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10.
  • Bylesjö, Max, et al. (author)
  • Normalization and Closure
  • 2009
  • In: Comprehensive Chemometrics. - AMSTERDAM : Elsevier. - 9780444527028 ; , s. A109-A127
  • Book chapter (other academic/artistic)
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  • Result 1-10 of 20
Type of publication
journal article (14)
book chapter (3)
editorial proceedings (1)
conference paper (1)
doctoral thesis (1)
Type of content
peer-reviewed (13)
other academic/artistic (6)
pop. science, debate, etc. (1)
Author/Editor
Bylesjö, Max (18)
Trygg, Johan (14)
Jansson, Stefan, 195 ... (6)
Moritz, Thomas (5)
Sjödin, Andreas (5)
Eriksson, Daniel (4)
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Antti, Henrik (3)
Nicholson, Jeremy K (3)
Holmes, Elaine (3)
Rantalainen, Mattias (3)
Rantalainen, M (2)
Cloarec, Olivier (2)
Gustafsson, Petter, ... (2)
Bylesjö, Max, 1978- (2)
Johansson, Annika (1)
Street, Nathaniel R. ... (1)
Raubacher, Florian (1)
Jansson, Stefan (1)
Lindström, Anton (1)
Nilsson, Robert (1)
Karlsson, Jan, 1966- (1)
Sjöström, Michael (1)
Thysell, Elin (1)
Wissel, Kirsten (1)
Andersson, David C., ... (1)
Linusson Jonsson, An ... (1)
Landfors, Mattias, 1 ... (1)
Wingsle, Gunnar (1)
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Hvidsten, Torgeir, 1 ... (1)
Srivastava, Vaibhav (1)
Jonsson, Pär (1)
Freyhult, Eva (1)
Kusano, Miyako (1)
Grönlund, Andreas, 1 ... (1)
Segura, Vincent (1)
Soolanayakanahally, ... (1)
Rae, Anne M (1)
Trygg, Johan, PhD (1)
Naes, Tormod, PhD (1)
Cloarec, O. (1)
Fahlén, Jessica, 197 ... (1)
Rydén, Patrik, 1969- (1)
Street, Nathaniel Ro ... (1)
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University
Umeå University (20)
Swedish University of Agricultural Sciences (2)
Royal Institute of Technology (1)
Luleå University of Technology (1)
Language
English (19)
Swedish (1)
Research subject (UKÄ/SCB)
Natural sciences (18)
Agricultural Sciences (2)
Medical and Health Sciences (1)

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