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What is Maltose?
Maltose, commonly known as malt sugar, is a disaccharide composed of two glucose molecules linked together by an α(1→4) glycosidic bond. Its chemical formula is C₁₂H₂₂O₁₁, and it is part of a class of carbohydrates that play essential roles in various biological and industrial processes. Maltose is a reducing sugar, meaning it possesses a free aldehyde group that can donate electrons to other molecules, making it chemically reactive in certain conditions.
Maltose is vital in:
- Energy metabolism: In living organisms, maltose is broken down into glucose, then used for energy production.
- Brewing and fermentation: Maltose is a key fermentable sugar in brewing, as yeast converts it into alcohol and carbon dioxide during fermentation.
- Food and beverage industry: Maltose is used as a mild sweetener and moisture-retaining agent in baked goods, syrups, and confectioneries.
- Pharmaceuticals: It acts as a stabilizer in drug formulations, especially in protein-based therapies.
Due to its widespread applications in these fields, precise analysis of maltose levels is essential for ensuring product quality, optimizing processes, and enhancing scientific understanding.
Maltose Analysis Services Offered by Creative Proteomics
At Creative Proteomics, we provide a wide range of tailored maltose analysis services. Our solutions are designed to support industries, research institutions, and manufacturers who need precise quantification, characterization, and quality control of maltose content in various matrices. Key maltose analysis services we offer include:
Maltose Quantification
Quantification of maltose is crucial for industries such as brewing and pharmaceuticals, where precise sugar concentrations are necessary for process control and product consistency. Using state-of-the-art analytical methods, we provide:
- High-Performance Liquid Chromatography (HPLC) for high-resolution separation and accurate measurement of maltose.
- Enzymatic Assays that specifically target maltose, offering rapid and sensitive quantification.
Maltose Content Determination in Complex Matrices
Maltose is often found in complex mixtures such as food products, beverages, and biological samples. Our advanced extraction and separation techniques ensure accurate quantification even in these challenging matrices. We specialize in:
- Food and beverage analysis
- Fermentation broth and bioprocess samples
- Biological tissue and serum analysis
Enzymatic Hydrolysis Studies
Understanding maltose generation during enzymatic hydrolysis of starch or polysaccharides is essential for various research and industrial processes. We offer:
- Analysis of maltose formation during enzymatic digestion of carbohydrates.
- Support for optimizing enzymatic processes in industrial applications such as brewing and food production.
Carbohydrate Profiling
We provide comprehensive carbohydrate profiling services, including maltose analysis, to support the characterization of carbohydrate composition in samples such as:
- Cereals and grains
- Nutritional supplements
- Processed food products
Brochures
Metabolomics Services
We provide unbiased non-targeted metabolomics and precise targeted metabolomics services to unravel the secrets of biological processes.
Our untargeted approach identifies and screens for differential metabolites, which are confirmed by standard methods. Follow-up targeted metabolomics studies validate important findings and support biomarker development.
Download our brochure to learn more about our solutions.
Brochures
Glycomics Services
Glycomics, the study of glycans and their roles in biological systems, is critical for understanding processes like glycosylation, immune recognition, and cell signaling. At Creative Proteomics, we offer advanced platforms such as high-resolution mass spectrometry, glycan microarrays, and glycoproteomics to provide precise glycan profiling and analysis.
For detailed insights into our glycomics solutions and methodologies, download our Glycomics Service Brochure and discover how we can support your research.
Technology Platforms for Maltose Analysis
High-Performance Liquid Chromatography (HPLC)
HPLC is a widely used and highly effective technique for maltose separation and quantification. By combining a separation column with precise detection methods, HPLC ensures:
- High sensitivity and specificity for maltose detection.
- Quantitative accuracy even in complex matrices.
- Application to a wide range of samples, including beverages, biological fluids, and processed foods.
For samples requiring volatile derivatives or complex mixtures, GC is an alternative powerful tool. Paired with appropriate sample preparation, it provides:
- Efficient separation of maltose in vaporized form.
- High resolution for maltose quantification in industrial and environmental samples.
Mass Spectrometry (MS)
When sensitivity is paramount, mass spectrometry provides unmatched accuracy and detection limits. Using LC-MS or GC-MS, we achieve:
- High-throughput maltose analysis.
- Structural characterization of maltose and related carbohydrates.
- Ultra-low detection limits, suitable for trace-level quantification in sensitive applications.
Sample Requirements for Maltose Analysis
Sample Type | Minimum Volume/Weight | Storage Conditions | Additional Notes |
---|---|---|---|
Serum/Plasma | 1 mL | -80°C | Avoid multiple freeze-thaw cycles |
Liquid Samples (e.g., beverages, fermentation broth) | 5 mL | 4°C | Store in sterile, airtight containers |
Biological Tissues | 0.5 g | -80°C | Include detailed sample composition |
Grain and Cereal Extracts | 2 g | -20°C | Store in moisture-proof containers |
Carbohydrate Mixtures | 1 mL (liquid), 2 g (solid) | 4°C for liquid, -20°C for solid | Ensure proper labeling and storage conditions |
Food Matrices (e.g., baked goods, cereals) | 5 g | -20°C | Ensure no cross-contamination |
Processed Foods (e.g., syrups, confectioneries) | 5 g | -20°C | Store in airtight containers |
Please ensure samples are properly labeled, stored, and shipped to maintain integrity for accurate maltose analysis.
PCA chart
PLS-DA point cloud diagram
Plot of multiplicative change volcanoes
Metabolite variation box plot
Pearson correlation heat map
Multiomics of a rice population identifies genes and genomic regions that bestow low glycemic index and high protein content
Journal: Proceedings of the National Academy of Sciences (PNAS)
Published: 2024
Background
The world faces a triple burden of malnutrition characterized by obesity, undernutrition, and hidden hunger, with diabetes being a leading contributor to global mortality. The study focuses on developing rice varieties with low glycemic index (GI) and high protein content (PC) to combat diabetes and protein deficiency, especially in Asia where rice is a staple food. By employing genomics and metabolomics techniques, the study aims to identify candidate genes and genomic regions that facilitate the development of rice lines with ultralow GI and high PC, providing a vital breeding resource for enhancing food and nutritional security.
Materials & Methods
1) Population Development:
An F2-derived F3 mapping population was developed through hybridization between Samba Mahsuri and IR36 amylose extender (IR36ae) lines, with subsequent self-pollination until the F6 generation.
2) Measurement of Amylose and Protein Content:
Amylose content (AC) and protein content (PC) were measured from milled rice samples. AC was determined using sodium hydroxide dispersion and iodine complex formation, while PC was measured with the Kjeldahl method using Continuous Flow Analyser.
3) In-vitro Glycemic Index (GI) and Resistance Starch Analysis:
Milled rice samples were subjected to an in vitro digestion protocol mimicking human digestion, using enzymes to determine GI and resistance starch content under controlled conditions.
4) DNA Isolation and Whole Genome Sequencing:
Genomic DNA was extracted, and whole-genome resequencing was performed on selected bulk sets, with sequencing conducted using Illumina platforms to identify key SNPs.
5) QTL Mapping and Association Analyses:
QTL mapping for AC and PC used composite interval mapping. Targeted association and epistatic interaction analyses were conducted using PLINK1.9 and EMMAX software, with networks visualized in Cytoscape.
6) Metabolomic Analysis:
Rice flour samples were processed for metabolomic analysis through homogenization, sonication, and LC-MS to identify metabolic differences between samples.
7) Mathematical Modeling and Statistical Analysis:
GI classifications were performed using machine learning models, optimized for accuracy, with metabolomic data analyzed via PCA and oPLS-DA for pathway enrichment.
8) Rice Protein Isolate and Amino Acid Quantification:
Proteins were extracted from rice samples using an alkali extraction method, with amino acid quantification conducted following hydrolysis and HPLC analysis.
9) CRISPR/Cas9 Vector Construction and Rice Transformation:
The sgRNA targeting OsSBEIIb's exon 15 was designed and inserted into a CRISPR-Cas9 vector. Rice transformation employed Agrobacterium tumefaciens with subsequent sequence confirmation to produce T0 plants.
Results
Identification of Genetic Regions:
A broad variation in amylose content (AC) was observed in the F3 population, with multiple QTLs identified that influence AC and protein content (PC). Notably, OsSBEIIb, a major gene modulating starch branching, was highlighted.
Several candidate genes related to carbohydrate and protein metabolism were identified, providing targets for breeding rice with low glycemic index (GI) and high PC.
Trait Development through Gene Combination:
Ultralow GI, high AC, and high PC phenotypes were confirmed in advanced breeding lines through QTL analysis and targeted association studies.
Key alleles and SNPs contributing to phenotypic variance for GI, AC, and PC were discovered, highlighting the significance of OsSBEIIb in these traits.
Metabolomic profiles revealed significant differences between high AC/PC and low AC/PC lines, with amino acid and lipid metabolism pathways being particularly crucial.
In the ultralow GI samples, sugars like maltose, glucuronic acid, erythrose, and erythritol were significantly elevated, indicating distinct metabolic pathways among different GI classes.
Metabolomic analysis of HAHP and LALP groups.
Modeling and metabolomic analysis of ultralow, low, and high GI rice lines.
Machine Learning Classification:
Machine learning models effectively classified ultralow, low, and high GI classes based on AC, PC, and specific SNPs, offering robust tools for GI classification.
Enriched pathways for amino acid and flavonoid biosynthesis in the ultralow GI varieties underscore their potential relevance in differentiating GI levels.
CRISPR/Cas9-Mediated OsSBEIIb Mutagenesis:
OsSBEIIb was validated as a crucial gene influencing GI through CRISPR/Cas9-induced mutagenesis, resulting in lines with significantly reduced GI and increased resistant starch.
These mutant lines will undergo further testing and hold potential for development into rice varieties suitable for consumption.
Reference
- Badoni, Saurabh, et al. "Multiomics of a rice population identifies genes and genomic regions that bestow low glycemic index and high protein content." Proceedings of the National Academy of Sciences 121.36 (2024): e2410598121.
How do you ensure the accuracy and reproducibility of maltose analysis?
At Creative Proteomics, we ensure accuracy and reproducibility through rigorous quality control processes. Each sample undergoes method validation, including precision testing, sensitivity assessment, and calibration with certified reference standards. We also implement internal quality checks during the analysis to monitor performance consistency. Our advanced technology platforms, such as HPLC, GC-MS, and LC-MS, are regularly maintained and calibrated, ensuring they meet the highest industry standards for reliable results. Additionally, we perform replicate analyses to minimize variability, especially for complex matrices.
Can you analyze maltose in very small sample volumes or limited sample quantities?
Yes, we specialize in working with low-volume or precious samples. Using highly sensitive methods like LC-MS and enzymatic assays, we can accurately detect and quantify maltose even in small sample volumes. Our minimum sample requirements are designed to accommodate limited sample availability, and we optimize our extraction and detection protocols to maximize data quality without compromising sample integrity.
How do you handle samples with interfering substances that might affect maltose detection?
For samples that contain potential interfering substances (e.g., complex food matrices, fermentation broths), we employ advanced sample preparation techniques such as filtration, extraction, and derivatization to isolate maltose from other components. Additionally, our chromatographic separation methods (e.g., HPLC, GC) are optimized to specifically distinguish maltose from other sugars and impurities, ensuring clean, reliable quantification. If necessary, we can also use mass spectrometry to further enhance the selectivity and sensitivity of maltose detection in the presence of interfering compounds.
Can you analyze maltose alongside other sugars and carbohydrates in the same sample?
Yes, Creative Proteomics offers comprehensive carbohydrate profiling services that allow simultaneous analysis of maltose along with other sugars such as glucose, fructose, and sucrose. We use techniques like HPLC coupled with refractive index (RI) detectors or mass spectrometry, which can separate and quantify multiple carbohydrates in complex samples. This approach is especially useful for food, beverage, and fermentation industries, where understanding the full carbohydrate composition is critical for quality control and process optimization.
What measures do you take to ensure sample traceability throughout the analysis process?
We prioritize sample traceability by assigning each submitted sample a unique identifier as soon as it enters our laboratory. Throughout the analysis process, samples are tracked using a digital Laboratory Information Management System (LIMS), ensuring that each sample is handled consistently and can be easily traced at any stage of the workflow. This system minimizes the risk of sample mix-ups and guarantees that you receive results that are accurately tied to your specific samples.
How do you handle samples that may be prone to contamination, such as biological fluids or fermentation broths?
For samples that are prone to contamination, such as biological fluids (serum, plasma) or fermentation broths, we follow strict sterile handling protocols. All lab environments and equipment are sterilized, and samples are processed in biosafety cabinets when necessary. We also perform microbial screening when needed to ensure that contaminants do not interfere with the maltose analysis. Furthermore, samples are always handled with sterile, single-use tools to prevent cross-contamination between batches.
Multiomics of a rice population identifies genes and genomic regions that bestow low glycemic index and high protein content.
Badoni, Saurabh, Satyajeet A. Shirsat, Anupama S. Kumbhar, Sharath C. Mutalik, Anuradha Karande, Aakash S. Karadi, and Ranjekar P. Harish.
Journal: Proceedings of the National Academy of Sciences
Year: 2024
https://doi.org/10.1073/pnas.2410598121
Predictive Simulation and Functional Insights of Serotonin Transporter: Ligand Interactions Explored through Database Analysis.
Nurman, Irzan, Dian Nugrahati Andriawan, M. Zakiyul Fadhil, and Mohamad Anas Nurfiansyah.
Journal: Pharmacognosy Journal
Year: 2024
https://doi.org/10.5530/pj.2024.16.8
Contextualized Metabolic Modelling Revealed Factors Affecting Isoflavone Accumulation in Soybean Seeds.
Contador, Carolina A., Mariana Ruiz-Foster, Ignacio Contreras-Ferrat, Rocio Morales-Fournier, Diego Munoz-Torres, and Maria I. Apablaza-Pizarro.
Journal: Plant, Cell & Environment
Year: 2024
https://doi.org/10.1111/pce.15140