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Dive into the research topics where Marco Bobba is active.

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Featured researches published by Marco Bobba.


Journal of Agricultural and Food Chemistry | 2010

High-Performance Liquid Chromatography−Ultraviolet Detection Method for the Simultaneous Determination of Typical Biogenic Amines and Precursor Amino Acids. Applications in Food Chemistry

Eleonora Mazzucco; Fabio Gosetti; Marco Bobba; Emilio Marengo; Elisa Robotti; Maria Carla Gennaro

A reversed-phase high-performance liquid chromatography (HPLC) method was developed for the simultaneous determination in food of biogenic amines and their precursor amino acids after a precolumn derivatization with dansyl chloride. The chromatographic conditions, selected to be suitable for mass spectrometry detection, were optimized through experimental design and artificial neural networks. The HPLC-UV method was validated by comparing the separation results with those obtained through a HPLC method, working under the same chromatographic conditions but employing mass spectrometry detection. The HPLC-UV method was then applied to the analysis of different food samples, namely, cheese, clams, salami, and beer. For all of the matrices, recoveries (relative standard deviation always <5%) always >92% were obtained. The results are discussed as a function of the total biogenic amine content and of the concentration ratio between amines and precursor amino acids.


Analytical and Bioanalytical Chemistry | 2008

Application of partial least squares discriminant analysis and variable selection procedures: a 2D-PAGE proteomic study

Emilio Marengo; Elisa Robotti; Marco Bobba; Alberto Milli; Natascia Campostrini; Sabina C. Righetti; Daniela Cecconi; Pier Giorgio Righetti

Abstract2D gel electrophoresis is a tool for measuring protein regulation, involving image analysis by dedicated software (PDQuest, Melanie, etc.). Here, partial least squares discriminant analysis was applied to improve the results obtained by classic image analysis and to identify the significant spots responsible for the differences between two datasets. A human colon cancer HCT116 cell line was analyzed, treated and not treated with a new histone deacetylase inhibitor, RC307. The proteins regulated by RC307 were detected by analyzing the total lysates and nuclear proteome profiles. Some of the regulated spots were identified by tandem mass spectrometry. The preliminary data are encouraging and the protein modulation reported is consistent with the antitumoral effect of RC307 on the HCT116 cell line. Partial least squares discriminant analysis coupled with backward elimination variable selection allowed the identification of a larger number of spots than classic PDQuest analysis. Moreover, it allows the achievement of the best performances of the model in terms of prediction and provides therefore more robust and reliable results. From this point of view, the multivariate procedure applied can be considered a good alternative to standard differential analysis, also taking into account the interdependencies existing among the variables.


Analytical and Bioanalytical Chemistry | 2010

The principle of exhaustiveness versus the principle of parsimony: a new approach for the identification of biomarkers from proteomic spot volume datasets based on principal component analysis

Emilio Marengo; Elisa Robotti; Marco Bobba; Fabio Gosetti

AbstractThe field of biomarkers discovery is one of the leading research areas in proteomics. One of the most exploited approaches to this purpose consists of the identification of potential biomarkers from spot volume datasets produced by 2D gel electrophoresis. In this case, problems may arise due to the large number of spots present in each map and the small number of maps available for each class (control/pathological). Multivariate methods are therefore usually applied together with variable selection procedures, to provide a subset of potential candidates. The variable selection procedures available usually pursue the so-called principle of parsimony: the most parsimonious set of spots is selected, providing the best classification performances. This approach is not effective in proteomics since all potential biomarkers must be identified: not only the most discriminating spots, usually related to general responses to inflammatory events, but also the smallest differences and all redundant molecules, i.e. biomarkers showing similar behaviour. The principle of exhaustiveness should be pursued rather than parsimony. To solve this problem, a new ranking and classification method, “Ranking-PCA”, based on principal component analysis and variable selection in forward search, is proposed here for the exhaustive identification of all possible biomarkers. The method is successfully applied to three different proteomic datasets to prove its effectiveness. FigureA new ranking and classification method, Ranking-PCA, is presented for the identification of pools of potential biomarkers from electrophoretic spot volume datasets. The method represents a new perspective in biomarker identification since it searches for the most exhaustive set of potential candidates rather than the most parsimonious. In this way, all significant candidates can be effectively selected.


Methods of Molecular Biology | 2008

2D-PAGE Maps Analysis

Emilio Marengo; Elisa Robotti; Marco Bobba

Due to the low reproducibility affecting 2D gel-electrophoresis and the complex maps provided by this technique, the use of effective and robust methods for the comparison and classification of 2D maps is a fundamental tool for the development of automated diagnostic methods. A review of classical and recently developed methods for the comparison of 2D maps is presented here. The methods proposed regard both the analysis of spot volume datasets through multivariate statistical tools (pattern recognition methods, cluster analysis, and classification methods) and the analysis of 2D map images through fuzzy logic, three-way PCA, and the use of moment functions. The theoretical basis of each procedure is briefly introduced, together with a review of the most interesting applications present in recent literature.


Talanta | 2005

Monitoring of pigmented surfaces in accelerated ageing process by ATR–FT-IR spectroscopy and multivariate control charts

Emilio Marengo; Maria Cristina Liparota; Elisa Robotti; Marco Bobba; Maria Carla Gennaro

This work is an extension of a method for monitoring the conservation state of pigmented surfaces presented in a previous paper. A cotton canvas painted with an organic pigment (Alizarin) was exposed to UV light in order to evaluate the effects of the applied treatment on the surface of the sample. The conservation state of the pigmented surface was monitored with ATR-FT-IR spectroscopy and multivariate control charts. The IR spectra were analysed by principal component analysis (PCA) and the relevant principal components (PCs) were used for constructing multivariate Shewhart, cumulative sums (CUSUM) and simultaneous scores monitoring and residuals tracking (SMART) control charts. These tools were successfully applied for the identification of the presence of relevant modifications occurring on the surface of the sample. Finally, with the aim to more deeply investigate what happened to the sample surface during the UV exposure, a PCA of the residuals matrix of degradation analyses only, not present in the previous paper, was performed. This analysis produced interesting results concerning the identification of the processes taking place on the irradiated surface.


Journal of Proteome Research | 2008

Evaluation of the variables characterized by significant discriminating power in the application of SIMCA classification method to proteomic studies.

Emilio Marengo; Elisa Robotti; Marco Bobba; Pier Giorgio Righetti

SIMCA classification can be applied to 2D-PAGE maps to identify changes occurring in cellular protein contents as a consequence of illnesses or therapies. These data sets are complex to treat due to the large number of proteins detected. A method for identifying relevant proteins from SIMCA discriminating powers is proposed, based on the Box-Cox transformation coupled to probability papers. The method successfully allowed the identification of the relevant spots from 2D maps.


Current Proteomics | 2007

Multivariate Statistical Tools for the Evaluation of Proteomic 2D-maps:Recent Achievements and Applications

Emilio Marengo; Elisa Robotti; Marco Bobba

Two dimensional polyacrylamide gel electrophoresis (2D-PAGE) maps represent an unavoidable tool in many fields connected with proteome research, such as development of new diagnostic assays or new drugs. Unfortunately the information contained in the maps is often so complex that its recognition and extraction usually requires complex statistical treatments. Statistics accompanies many phases of 2D-PAGE maps management from the spot revelation to maps matching, as well as the extraction and rationalisation of useful information. This review describes and reports the most recent achievements in the field of statistical tools applied to proteome research by two-dimensional gel electrophoresis (2D-GE). The first section is devoted to briefly describe the theoretical aspects of the multivariate methods mostly adopted in this field such as Principal Component Analysis, Cluster Analysis, Classification methods, Artificial Neural Networks. The most recent applications are then described explaining the analysis of spot volume datasets from standard differential analysis as well as the direct analysis of 2D maps images. Applications are also reported about the use of multivariate tools in the analysis of DNA and RNA profiles.


Analytical and Bioanalytical Chemistry | 2008

A new method of comparing 2D-PAGE maps based on the computation of Zernike moments and multivariate statistical tools.

Emilio Marengo; Elisa Robotti; Marco Bobba; Marco Demartini; Pier Giorgio Righetti

The aim of this work was to obtain the correct classification of a set of two-dimensional polyacrylamide gel electrophoresis map images using the Zernike moments as discriminant variables. For each 2D-PAGE image, the Zernike moments were computed up to a maximum p order of 100. Partial least squares discriminant analysis with variable selection, based on a backward elimination algorithm, was applied to the moments calculated in order to select those that provided the lowest error in cross-validation. The new method was tested on four datasets: (1) samples belonging to neuroblastoma; (2) samples of human lymphoma; (3) samples from pancreatic cancer cells (two cell lines of control and drug-treated cancer cells); (4) samples from colon cancer cells (total lysates and nuclei treated or untreated with a histone deacetylase inhibitor). The results demonstrate that the Zernike moments can be successfully applied for fast classification purposes. The final aim is to build models that can be used to achieve rapid diagnosis of these illnesses.


Talanta | 2016

Classification of 7 monofloral honey varieties by PTR-ToF-MS direct headspace analysis and chemometrics.

Erna Schuhfried; José Sánchez del Pulgar; Marco Bobba; Roberto Piro; Luca Cappellin; T.D. Märk; Franco Biasioli

Honey, in particular monofloral varieties, is a valuable commodity. Here, we present proton transfer reaction-time of flight-mass spectrometry, PTR-ToF-MS, coupled to chemometrics as a successful tool in the classification of monofloral honeys, which should serve in fraud protection against mispresentation of the floral origin of honey. We analyzed 7 different honey varieties from citrus, chestnut, sunflower, honeydew, robinia, rhododendron and linden tree, in total 70 different honey samples and a total of 206 measurements. Only subtle differences in the profiles of the volatile organic compounds (VOCs) in the headspace of the different honeys could be found. Nevertheless, it was possible to successfully apply 6 different classification methods with a total correct assignment of 81-99% in the internal validation sets. The most successful methods were stepwise linear discriminant analysis (LDA) and probabilistic neural network (PNN), giving total correct assignments in the external validation sets of 100 and 90%, respectively. Clearly, PTR-ToF-MS/chemometrics is a powerful tool in honey classification.


Talanta | 2008

Optimisation of sensitivity in the multi-elemental determination of 83 isotopes by ICP-MS as a function of 21 instrumental operative conditions by modified simplex, principal component analysis and partial least squares

Emilio Marengo; Maurizio Aceto; Elisa Robotti; Matteo Oddone; Marco Bobba

The optimisation of the sensitivity in the ICP-MS determination of 83 isotopes, as a function of 21 operative parameters was performed by generating an initial experimental design that was used to define, by principal component analysis, the multi-criteria target function. The first PC, which contained an overall evaluation of the signal intensity of all isotopes, was used to rank the experiments. The modified simplex optimisation technique was then applied on the ranked experiments. The increase in signal intensity was, on the average, 3.9 times for the isotopes considered for the simplex procedure. When finally convergence was achieved, a PLS regression model calculated on the available experiments allowed to investigate the effect played by each factor on the experimental response. Simplex and PCA proved to be extremely effective to obtain the optimisation and to generate the multi-criteria target function: they can be suggested as an automatic method to perform the optimisation of the instrumental operative conditions.

Collaboration


Dive into the Marco Bobba's collaboration.

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Elisa Robotti

University of Eastern Piedmont

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Emilio Marengo

University of Eastern Piedmont

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Maria Cristina Liparota

University of Eastern Piedmont

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Fabio Gosetti

University of Eastern Piedmont

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Marco Demartini

University of Eastern Piedmont

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Orfeo Zerbinati

University of Eastern Piedmont

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Eleonora Mazzucco

University of Eastern Piedmont

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Giorgio Calabrese

Catholic University of the Sacred Heart

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Maurizio Aceto

University of Eastern Piedmont

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