Effect of herbal feed additives on goat milk volatile flavor compounds
2023, WĂłjtowski, Jacek, Majcher, MaĆgorzata Anna, DankĂłw-Kubisz, Romualda, Pikul, Jan, MikoĆajczak, PrzemysĆaw, MoliĆska-Glura, Marta, Foksowicz-Flaczyk, Joanna, GryszczyĆska, Agnieszka, Ćowicki, ZdzisĆaw, ZajÄ czek, Karolina, CzyĆŒak-Runowska, GraĆŒyna, Markiewicz-KÄszycka, Maria, StanisĆawski, Daniel
The aim of this study is to investigate the effects of herbal supplements administered to goats on sensory quality and volatile flavor compounds in their milk. The experiment was conducted on sixty Polish white improved goats randomly allocated into five feeding groups (four experimental and one control) of twelve goats each. The trial lasted 12 weeks. The experimental animals received supplements containing a mixture of seven or nine different species of herbs at 20 or 40 g/animal/day. The control group received feed without any herbal supplements. Milk obtained from experimental and control groups of animals was characterized by a low content of aroma compounds, with only 11 chemical compounds being identified. Decanoic methyl ester, methylo 2-heptanone and methylo-butanoic methyl ester had the highest share in the total variability of the tested aroma compounds (PCA). During the sensory evaluation, the smell and taste of most of the samples were similar (p > 0.05). However, the addition of herbal feed supplements lowered the concentration of Caproic acid (C6:0), Caprylic acid (C8:0) and Capric acid (C10:0), which caused a significant reduction in the goaty smell of milk. The obtained results indicate that the studied herbal supplements can reduce the intensity of goaty smell and allow goat milk production without modification of other sensory features.
ZwiÄ zki aktywne zapachowo ksztaĆtujÄ ce aromat polskich miodĂłw pitnych. WpĆyw mikroflory i zabiegĂłw technologicznych na ich powstawanie
Influence of ozone treatment on sensory quality, aroma active compounds, phytosterols and phytosterol oxidation products in stored rapeseed and flaxseed oils
2025, Majcher, MaĆgorzata Anna, Fahmi, Rifaldi, Misiak, Anna, Grygier, Anna, RudziĆska, Magdalena
Combining Targeted Metabolomics with Untargeted Volatilomics for Unraveling the Impact of Sprouting on the Volatiles and Aroma of False Flax (Camelina sativa) Cold-Pressed Oil
2024, DrabiĆska, Natalia, Siger, Aleksander, Majcher, MaĆgorzata Anna, JeleĆ, Henryk
Carbonyl compounds as contaminants migrating from the ecological vessels to food
2023, Bronczyk, Karolina, Dabrowska, Agata, Majcher, MaĆgorzata Anna
Machine Learning in Sensory Analysis of MeadâA Case Study: Ensembles of Classifiers
2025, PrzybyĆ, Krzysztof, Cicha-Wojciechowicz Daria, DrabiĆska, Natalia, Majcher, MaĆgorzata Anna
The aim was to explore using machine learning (including cluster mapping and k-means methods) to classify types of mead based on sensory analysis and aromatic compounds. Machine learning is a modern tool that helps with detailed analysis, especially because verifying aromatic compounds is challenging. In the first stage, a cluster map analysis was conducted, allowing for the exploratory identification of the most characteristic features of mead. Based on this, k-means clustering was performed to evaluate how well the identified sensory features align with logically consistent groups of observations. In the next stage, experiments were carried out to classify the type of mead using algorithms such as Random Forest (RF), adaptive boosting (AdaBoost), Bootstrap aggregation (Bagging), K-Nearest Neighbors (KNN), and Decision Tree (DT). The analysis revealed that the RF and KNN algorithms were the most effective in classifying mead based on sensory characteristics, achieving the highest accuracy. In contrast, the AdaBoost algorithm consistently produced the lowest accuracy results. However, the Decision Tree algorithm achieved the highest accuracy value (0.909), demonstrating its potential for precise classification based on aroma characteristics. The error matrix analysis also indicated that acacia mead was easier for the algorithms to identify than tilia or buckwheat mead. The results show the potential of combining an exploratory approach (cluster map with the k-means method) with machine learning. It is also important to focus on selecting and optimizing classification models used in practice because, as the results so far indicate, choosing the right algorithm greatly affects the success of mead identification.
Sample preparation for food flavors analysis
2025, JeleĆ, Henryk, Majcher, MaĆgorzata Anna, Soylak, Mustafa, Boyaci, Ezel, Bojko, Barbara, JamrĂłz, Ewelina
Fermentation strategies in mead production: A multitechnique volatilomic approach to aroma characterization
2025, Cicha-Wojciechowicz, Daria, Kaczmarek, Anna Maria, Juzwa, Wojciech, DrabiĆska, Natalia, Majcher, MaĆgorzata Anna
Influence of Honey Varieties, Fermentation Techniques, and Production Process on Sensory Properties and Odor-Active Compounds in Meads
2024, Cicha-Wojciechowicz, Daria, DrabiĆska, Natalia, Majcher, MaĆgorzata Anna
This study investigates the impact of key factors on the formation of odorants and sensory properties in mead. The effects of the honey type (acacia, buckwheat, linden), wort heating, and the fermentation method (commercial Saccharomyces cerevisiae yeasts, spontaneous fermentation, Galactomyces geotrichum molds) were examined. Twelve model mead batches were produced, matured for 12 months, and analyzed using gas chromatographyâolfactometry (GCâO) and headspace SPME-GC/MS to identify odor-active compounds. Results confirmed that the honey type plays a significant role in sensory profiles, with distinct aroma clusters for buckwheat, acacia, and linden honey. Compounds like phenylacetic acid, 2- and 3-methylbutanal, and butanoic acid were identified as the most important odorants, correlating with sensory attributes such as honey-like, malty, and fermented aromas. Univariate and multivariate analyses, followed by correlation analysis, highlighted how production parameters affect mead aroma, providing insights to optimize sensory quality.