Evaluation of the Deliciousness of Artifcial Meat
Guides | 2021 | ShimadzuInstrumentation
Global meat consumption has risen sharply over the past decades, driving environmental pressures and food insecurity concerns as the world population approaches 10 billion by 2050. Artificial meat—both plant-based meat (PBM) and cultured meat—promises to reduce greenhouse gas emissions, land use, and pollution while providing meat-like taste and texture.
This application note summarizes comprehensive analytical approaches for evaluating the flavor, taste, texture, and production monitoring of artificial meat products. Key objectives include comparing PBM against conventional meat, establishing classification models for quality control, and tracking cell culture parameters for cultured-meat manufacturing.
A suite of advanced analytical techniques—including SPME-GC/MS, LC-MS/MS, automated texture and thermal analysis, and cell culture profiling—provides robust tools to evaluate and optimize the taste, aroma, texture, and production processes of artificial meat. Adopting these methods can accelerate product development, ensure quality control, and support the commercialization of sustainable meat alternatives.
No formal literature references were provided in the original application note.
GC/MSD, SPME, GC/SQ, HPLC, LC/MS, LC/MS/MS, LC/QQQ
IndustriesFood & Agriculture, Metabolomics
ManufacturerShimadzu
Summary
Importance of the Topic
Global meat consumption has risen sharply over the past decades, driving environmental pressures and food insecurity concerns as the world population approaches 10 billion by 2050. Artificial meat—both plant-based meat (PBM) and cultured meat—promises to reduce greenhouse gas emissions, land use, and pollution while providing meat-like taste and texture.
Goals and Overview of the Study
This application note summarizes comprehensive analytical approaches for evaluating the flavor, taste, texture, and production monitoring of artificial meat products. Key objectives include comparing PBM against conventional meat, establishing classification models for quality control, and tracking cell culture parameters for cultured-meat manufacturing.
Methodology and Instrumentation
- Flavor profiling by headspace solid-phase microextraction (SPME) coupled to GC-MS to identify volatiles generated by Maillard reactions in PBM versus organic beef.
- Machine-learning classification using support vector machines (SVM) on SPME-GC/MS data to distinguish fresh versus deteriorated meat.
- Amino acid quantitation by post-column OPA derivatization with cation-exchange LC and fluorescence detection for soy-based versus chicken samples.
- Targeted primary metabolite analysis of ground beef and four PBM products by multiplexed LC-MS/MS using ion-pair and non-ion-pair methods for sugars, organic acids, amino acids, and nucleosides.
- Texture analysis employing fracture and compression tests on a Texture Analyzer to measure hardness, chewiness, and elasticity of meatballs, supported by DSC to monitor protein denaturation in cooked chicken.
- Cell culture monitoring by LC-MS/MS profiling of 95 medium components (amino acids, vitamins, nucleic acids, etc.) over a five-day hybridoma growth curve.
- Micro-compression testing of cell aggregates to quantify deformation strength of HEK293 and iPS-derived tissues with the MCT-510 system.
Main Results and Discussion
- Flavor analysis identified shared and unique volatile compounds in PBM and beef; PBM’s diverse precursor sources generated a broader volatile profile.
- SVM classification of GC-MS aroma data achieved 95.8% precision in distinguishing properly chilled versus heat-deteriorated meat samples.
- Amino acid profiles revealed higher levels of umami-active glutamic acid in chicken relative to soy meat, while PBM displayed distinct sugar-derived peaks.
- Principal component analysis of 55 primary metabolites separated ground beef from all PBM products, indicating measurable taste-related differences.
- Texture testing showed PBM meatballs were firmer but less elastic than chicken, consistent with sensory evaluations; DSC confirmed time-dependent protein denaturation correlating with increased hardness in cooked chicken.
- LC-MS/MS monitoring of culture supernatants tracked nutrient depletion (glucose, glutamine) and metabolite accumulation (lactate) in hybridoma culture, demonstrating the method’s utility for bioprocess control.
- Micro-compression measurements differentiated deformation strengths among HEK293 and two iPS cell aggregates, illustrating potential for engineered tissue characterization.
Benefits and Practical Applications
- Provides objective, reproducible analytical methods for flavor and texture profiling to guide formulation of PBM and cultured meat products.
- Enables rapid quality discrimination and shelf-life assessment via machine-learning models applied to aroma data.
- Offers targeted metabolomic and amino-acid assays to benchmark taste-related compounds and optimize ingredient selection.
- Integrates mechanical and thermal analysis to predict consumer perception of texture and juiciness in novel protein foods.
- Applies cell culture profiling and aggregate testing to support scalable, controlled production of cultured-meat tissues.
Future Trends and Possibilities
- Combining high-throughput multi-omics (proteomics, lipidomics, metabolomics) for holistic quality control of artificial meat.
- Leveraging real-time sensor integration and AI-driven process analytics to optimize cultured-meat bioreactors.
- Developing miniaturized or in-line GC-MS/LC-MS systems for continuous monitoring of flavor precursors and culture media.
- Standardizing texture and sensory metrics to align instrumental data with consumer acceptance models.
Conclusion
A suite of advanced analytical techniques—including SPME-GC/MS, LC-MS/MS, automated texture and thermal analysis, and cell culture profiling—provides robust tools to evaluate and optimize the taste, aroma, texture, and production processes of artificial meat. Adopting these methods can accelerate product development, ensure quality control, and support the commercialization of sustainable meat alternatives.
Instrumentation
- Shimadzu GCMS-QP2020 NX with SPME Arrow and AOC-6000 Plus autosampler
- Shimadzu Nexera LC system with post-column OPA derivatization for amino acids
- Shimadzu LCMS-8060NX triple quadrupole for targeted primary metabolites and cell culture profiling
- Texture Analyzer (stress-strain and compression testing)
- DSC (differential scanning calorimetry) for protein denaturation
- MCT-510 micro compression testing machine for cell aggregate mechanics
Reference
No formal literature references were provided in the original application note.
Content was automatically generated from an orignal PDF document using AI and may contain inaccuracies.
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