Marina Krpan
University of Zagreb
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Featured researches published by Marina Krpan.
Talanta | 2011
Nikola Major; Ksenija Marković; Marina Krpan; Goran Šarić; Mirjana Hruškar; Nada Vahčić
In this paper a commercial electronic tongue (αAstree, Alpha M.O.S.) was applied for botanical classification and physicochemical characterization of honey samples. The electronic tongue was comprised of seven potentiometric sensors coupled with an Ag/AgCl reference electrode. Botanical classification was performed by PCA, CCA and ANN modeling on 12 samples of acacia, chestnut and honeydew honey. The physicochemical characterization of honey was obtained by ANN modeling and the parameters included were electrical conductivity, acidity, water content, invert sugar and total sugar. The initial reference values for the physicochemical parameters observed were determined by traditional methods. Botanical classification of honey samples obtained by ANN was 100% accurate while the highest correlation between observed and predicted values was obtained for electrical conductivity (0.999), followed by acidity (0.997), water content (0.994), invert sugar content (0.988) and total sugar content (0.979). All developed ANN models for rapid honey characterization and botanical classification performed excellently showing the potential of the electronic tongue as a tool in rapid honey analysis and characterization. The advantage of using such a technique is a simple sample preparation procedure, there are no chemicals involved and there are no additional costs except the initial measurements required for ANN model development.
Talanta | 2010
Mirjana Hruškar; Nikola Major; Marina Krpan
This paper reports on the application of a potentiometric sensor array used for monitoring changes in probiotic fermented milk during storage, classification of probiotic fermented milk according to flavor and to accurately predict the results from a human sensory panel. For that purpose the potentiometric electronic tongue consisting of seven sensors and an Ag/AgCl reference electrode was used. The samples of plain, strawberry, apple-pear and forest-fruit probiotic fermented milk were stored during 20 days on two different temperatures and monitored by the electronic tongue and the human sensory panel. Various pattern recognition techniques are adapted including multivariate data processing based on principal components analysis (PCA) for monitoring changes occurring in probiotic fermented milk, artificial neural networks (ANN) for the classification of probiotic fermented milk during storage, partial least square regression (PLS) and artificial neural networks (ANN) to estimate and predict the sensory panel evaluation results. The highest correct classification percentage (97%) was obtained for plain probiotic fermented milk and the lowest (87%) for apple-pear flavored probiotic fermented milk. The highest correlation between the sensor array and the human sensory panel was obtained for the forest-fruit flavored probiotic fermented milk both by using artificial neural networks (0.998) and partial least square regression (0.992). Results from these analyses demonstrate that the electronic tongue can be used to monitor changes in probiotic fermented milk during storage, to classify probiotic fermented milk according to flavor and to predict the sensory characteristics and their relationship to the quality of the probiotic fermented milk measured by consumer.
Talanta | 2010
Mirjana Hruškar; Nikola Major; Marina Krpan; Nada Vahčić
The paper reports on the application of an electronic tongue for simultaneous determination of ethanol, acetaldehyde, diacetyl, lactic acid, acetic acid and citric acid content in probiotic fermented milk. The alphaAstree electronic tongue by Alpha M.O.S. was employed. The sensor array comprised of seven non-specific, cross-sensitive sensors developed especially for food analysis coupled with a reference Ag/AgCl electrode. Samples of plain, strawberry, apple-pear and forest-fruit flavored probiotic fermented milk were analyzed both by standard methods and by the potentiometric sensor array. The results obtained by these methods were used for the development of neural network models for rapid estimation of aroma compounds content in probiotic fermented milk. The highest correlation (0.967) and lowest standard deviation of error for the training (0.585), selection (0.503) and testing (0.571) subset was obtained for the estimation of ethanol content. The lowest correlation (0.669) was obtained for the estimation of acetaldehyde content. The model exhibited poor performance in average error and standard deviations of errors in all subsets which could be explained by low sensitivity of the sensor array to the compound. The obtained results indicate that the potentiometric electronic tongue coupled with artificial neural networks can be applied as a rapid method for the determination of aroma compounds in probiotic fermented milk.
Journal of Liquid Chromatography & Related Technologies | 2009
Marina Krpan; Nada Vahčić; Mirjana Hruškar
Abstract This paper describes the development and validation of a simple, fast, and sensitive high performance liquid chromatographic method for the determination of the 5′-mononucleotides: adenosine 5′-monophosphate, cytidine 5′-monophosphate, guanosine 5′-monophosphate, inosine 5′-monophosphate, and uridine 5′-monophosphate in infant formulae in defined labour conditions. Following deproteinisation and filtration, the sample extract was analysed by reversed-phase liquid chromatography. The method was developed by using a C18 reverse-phase column. Isocratic elution was used with a mobile phase consisting of 0.1 M potassium phosphate buffer and 4 mM tetrabutylammonium hydrogen phosphate. The pH of the solution was adjusted to 6.0. The analysis of nucleotides was performed with a PDA detector at 260 nm and 278 nm. Analytical validation parameters, such as specificity and selectivity, linearity, accuracy, precision, robustness, and system suitability were evaluated. During evaluation of the analytical parameters, it was shown that the method is linear (r = 0,999). The recoveries ranged 100 ± 3 and the relative standard deviation was ≤3. The precision of the method was achieved with a coefficient of variation (CV %), which is less than 3%. Standard solutions are stable during 30 hours and in the range of method robustness. Validation of the HPLC method for determination of nucleotides has shown that the developed analytical method is acceptable for its intended purpose in defined labour conditions.
Czech Journal of Food Sciences | 2018
Marina Krpan; Ksenija Marković; Goran Šarić; Božena Skoko; Mirjana Hruškar; Nada Vahčić
Mljekarstvo | 2009
Mirjana Hruškar; Nikola Major; Marina Krpan; Ines Panjkota Krbavčić; Goran Šarić; Ksenija Marković; Nada Vahčić
Food Technology and Biotechnology | 2012
Goran Šarić; Ksenija Marković; Nikola Major; Marina Krpan; Natalija Uršulin-Trstenjak; Mirjana Hruškar; Nada Vahčić
Acta Alimentaria | 2010
Ksenija Marković; Ines Panjkota Krbavčić; Marina Krpan; Dane Bicanic; Nada Vahčić
Hrvatski Časopis za Prehrambenu Tehnologiju Biotehnologiju i Nutricionizam - Croatian Journal of Food Technology, Biotechnology and Nutrition | 2015
Nikolina Čukelj; Saša Ajredini; Marina Krpan; Dubravka Novotni; Bojana Voučko; Ivna Vrana Špoljarić; Mirjana Hruškar; Duška Ćurić
Proceedings of the 2008 Joint Central European Congress, 4th Central European Congress on Food, 6th Croatian Congress of FOOD TECHNOLOGISTS, BIOTECHNOLOGISTS, AND NUTRITIONISTS | 2009
Mirjana Hruškar; Marina Krpan; Ksenija Marković; Goran Šerić; Nikola Major; Nada Vahčić