Analysis of fatty acid content in rice by GC-MS/MS combined with metabolite database
Posters | 2023 | Shimadzu | ASMSInstrumentation
Fatty acid composition is a critical determinant of rice flavor and nutritional quality. Traditional methods lack sensitivity and accuracy, prompting the need for advanced analytical techniques to support crop breeding and quality control.
This study aimed to develop a rapid and reliable method for quantifying 37 fatty acid methyl esters in rice seeds. By integrating a triple quadrupole GC-MS/MS system with a comprehensive metabolite database, the authors sought to improve detection limits and analytical throughput.
The method achieved detection limits between 0.01 and 9.47 µg/L, with calibration coefficients above 0.999. Precision tests showed relative standard deviations below 4% over six consecutive injections. Recovery rates ranged from 71% to 109%, confirming method accuracy. Representative chromatograms illustrated clear separation of all target fatty acid methyl esters.
Advancements may include coupling with automation for sample preparation, expanding the metabolite database to other crops, and integrating data analytics for comprehensive lipidomics studies.
The GC-MS/MS method combined with a curated database offers a robust platform for quantifying a broad range of fatty acids in rice. Its high sensitivity, precision, and throughput position it as a promising approach for agricultural research and food quality control.
GC/MSD, GC/MS/MS, GC/QQQ
IndustriesFood & Agriculture
ManufacturerShimadzu
Summary
Significance of the Topic
Fatty acid composition is a critical determinant of rice flavor and nutritional quality. Traditional methods lack sensitivity and accuracy, prompting the need for advanced analytical techniques to support crop breeding and quality control.
Objectives and Study Overview
This study aimed to develop a rapid and reliable method for quantifying 37 fatty acid methyl esters in rice seeds. By integrating a triple quadrupole GC-MS/MS system with a comprehensive metabolite database, the authors sought to improve detection limits and analytical throughput.
Methodology
- Sample Preparation: Rice seed powder was esterified in 10% acetyl chloride methanol at 80°C, followed by hexane extraction and purification.
- Calibration: Mixed standard solutions (1–400 µg/L) were used to construct calibration curves, demonstrating linearity (r > 0.999) across all compounds.
- Validation: Recovery rates and repeatability were assessed using spiked blank samples at 3 mg/kg in triplicate.
Instrumentation
- Shimadzu GCMS-TQ8040 NX triple quadrupole GC-MS/MS
- SH-Rt-2560 column (100 m × 0.25 mm, 0.2 µm)
- Split injection at 250°C; column oven program: 40°C initial, ramp to 240°C
- MRM transitions enabled by Smart Metabolites Database
Results and Discussion
The method achieved detection limits between 0.01 and 9.47 µg/L, with calibration coefficients above 0.999. Precision tests showed relative standard deviations below 4% over six consecutive injections. Recovery rates ranged from 71% to 109%, confirming method accuracy. Representative chromatograms illustrated clear separation of all target fatty acid methyl esters.
Benefits and Practical Applications
- Enhanced sensitivity and specificity for fatty acid profiling in rice
- Streamlined workflow suitable for high-throughput laboratories
- Valuable tool for breeding programs and quality assurance in food analysis
Future Trends and Applications
Advancements may include coupling with automation for sample preparation, expanding the metabolite database to other crops, and integrating data analytics for comprehensive lipidomics studies.
Conclusion
The GC-MS/MS method combined with a curated database offers a robust platform for quantifying a broad range of fatty acids in rice. Its high sensitivity, precision, and throughput position it as a promising approach for agricultural research and food quality control.
References
- Wang Y., Fan J., Huang T. Analysis of fatty acid content in rice by GC-MS/MS combined with metabolite database. Shimadzu (China) Co. Ltd.
Content was automatically generated from an orignal PDF document using AI and may contain inaccuracies.
Similar PDF
Analysis of fatty acid content in rice by GC-MS/MS combined with metabolite database (ASMS)
2023|Shimadzu|Posters
Analysis of fatty acid content in rice by GC-MS/MS combined with metabolite database TP 261 Yong Wang1, Jun Fan2, Taohong Huang2 1 Shimadzu (China) CO.LTD, Beijing Branch. 2 Shimadzu (China) CO.LTD, Shanghai Branch 4. Result 1. Overview In this paper,…
Key words
rice, ricedatabase, databasecompound, compoundmyristate, myristatemethyl, methyldecanoate, decanoatecombined, combinedultra, ultraspeed, speedname, namefast, fastspectrometer, spectrometerestablish, establishmetabolite, metaboliteonce
Quantitative Analysis of Fatty Acid Methyl Esters (FAMEs) Using Smart EI/CI Ion Source
2022|Shimadzu|Applications
GC-MS GCMS-TQ™ Series and Smart Metabolites Database™ Application News Quantitative Analysis of Fatty Acid Methyl Esters (FAMEs) Using Smart EI/CI Ion Source Y. Sakamoto and Y. Kawakita User Benefits PCI-MRM mode is ideal for analyzing fatty acids, as it…
Key words
pci, pcismart, smartmrm, mrmfatty, fattysource, sourceion, ionsensitivity, sensitivityacid, acidnews, newsesters, estersmode, modeconcentration, concentrationmethylation, methylationdedicated, dedicatedpretreated
Food Safety Solutions - Application Data Book
2015|Shimadzu|Guides
Food Safety Solutions Application Data Book Foreword Excellence in Science Dear Valued Customers, Shimadzu believes in total customer satisfaction. Every Shimadzu instrument sold is backed up by our strong after-sales support team. Be it service support, or application support, we…
Key words
area, areamrm, mrmhch, hchmethyl, methylesi, esipumps, pumpsratio, ratiomode, modeparathion, parathiongas, gastemperature, temperaturersd, rsdname, namecompound, compoundtest
Large scale screening and quantitation of pesticide residues in rice using GC-(EI)-MS/MS
2019|Thermo Fisher Scientific|Applications
APPLICATION NOTE 72952 Large scale screening and quantitation of pesticide residues in rice using GC-(EI)-MS/MS Authors Subodh Kumar Budakoti, Sarvendra Pratap Singh, and Dasharath Oulkar Customer Solution Center, Ghaziabad, Thermo Fisher Scientific, India Goal The objective of this work is…
Key words
fssai, fssaiquantitive, quantitivemrls, mrlsmms, mmsconfirmatory, confirmatoryion, ionpesticide, pesticiderice, riceethyl, ethylmethyl, methylresidues, residuesendosulfan, endosulfansante, santeloq, loqextractabrite