Automated Phospholipid Fatty Acid (PLFA) Analysis using the Sherlock™ PLFA Software Package on a Shimadzu GC-2010/2030
Applications | 2018 | MIDIInstrumentation
Soil phospholipid fatty acid analysis offers a direct window into the living microbial community within soils. By targeting phospholipids that degrade rapidly after cell death, this approach reliably quantifies active biomass and profiles microbial groups that drive nutrient cycling, pollutant degradation, carbon sequestration and overall ecosystem health.
This application note demonstrates an automated workflow combining a high-throughput PLFA extraction protocol with the Sherlock PLFA Software on a Shimadzu GC-2010 series instrument. The aim is to reduce manual intervention, shorten turnaround time, minimize reagent use and ensure consistent identification and quantification of PLFAs in a river sediment sample.
A fixed amount of 19:0 phosphocholine internal standard was added at extraction start. Samples were processed with the PLFAD2 method in the Sherlock Sample Processor, automatically loading parameters into LabSolutions software. A calibration standard established expected retention times, followed by blank and sample injections. Sherlock software then assigned peak names, calculated weight percentage and converted to mole percentage for 36 detected PLFAs.
Automated peak identification achieved 100 percent naming efficiency. Key findings included high levels of monounsaturated 16:1 w7c and saturated 16:0 PLFAs, reflecting bacterial dominance. Custom analysis generated biomass estimates by microbial group and critical ratios such as fungi to bacteria, predator to prey and saturated to unsaturated fractions. Total PLFA biomass was quantified at 161.8 nanomoles per gram of sediment, partitioned among gram-negative bacteria, gram-positive bacteria, actinomycetes and eukaryotes.
Advances may include integration with high-resolution mass spectrometry for enhanced structural elucidation, expansion of spectral libraries for rare microbial taxa, coupling PLFA data with metagenomic and metabolomic profiles, and leveraging machine learning for predictive ecosystem modeling. Miniaturized and field-deployable GC systems could enable on-site monitoring of soil health in precision agriculture and environmental remediation.
The combination of high-throughput extraction, Shimadzu GC-2010 instrumentation and Sherlock PLFA Software provides a robust, rapid and reproducible platform for in-depth soil microbial community analysis. This automated solution enhances throughput, accuracy and data consistency, making it a valuable tool for researchers and laboratories focused on soil ecology, environmental monitoring and quality assurance.
GC
IndustriesEnvironmental
ManufacturerShimadzu, MIDI
Summary
Significance of the Topic
Soil phospholipid fatty acid analysis offers a direct window into the living microbial community within soils. By targeting phospholipids that degrade rapidly after cell death, this approach reliably quantifies active biomass and profiles microbial groups that drive nutrient cycling, pollutant degradation, carbon sequestration and overall ecosystem health.
Objectives and Study Overview
This application note demonstrates an automated workflow combining a high-throughput PLFA extraction protocol with the Sherlock PLFA Software on a Shimadzu GC-2010 series instrument. The aim is to reduce manual intervention, shorten turnaround time, minimize reagent use and ensure consistent identification and quantification of PLFAs in a river sediment sample.
Methods and Instrumentation
A fixed amount of 19:0 phosphocholine internal standard was added at extraction start. Samples were processed with the PLFAD2 method in the Sherlock Sample Processor, automatically loading parameters into LabSolutions software. A calibration standard established expected retention times, followed by blank and sample injections. Sherlock software then assigned peak names, calculated weight percentage and converted to mole percentage for 36 detected PLFAs.
Main Results and Discussion
Automated peak identification achieved 100 percent naming efficiency. Key findings included high levels of monounsaturated 16:1 w7c and saturated 16:0 PLFAs, reflecting bacterial dominance. Custom analysis generated biomass estimates by microbial group and critical ratios such as fungi to bacteria, predator to prey and saturated to unsaturated fractions. Total PLFA biomass was quantified at 161.8 nanomoles per gram of sediment, partitioned among gram-negative bacteria, gram-positive bacteria, actinomycetes and eukaryotes.
Benefits and Practical Applications
- Fully automated naming and quantification streamlines data processing and reduces human error
- Rapid conversion from raw chromatogram to biomass and ratio outputs in under five minutes
- Customizable microbial group assignments and PLFA ratio calculations support targeted ecological and pollution studies
- Standardized workflow facilitates interlaboratory comparability and quality control
Future Trends and Applications
Advances may include integration with high-resolution mass spectrometry for enhanced structural elucidation, expansion of spectral libraries for rare microbial taxa, coupling PLFA data with metagenomic and metabolomic profiles, and leveraging machine learning for predictive ecosystem modeling. Miniaturized and field-deployable GC systems could enable on-site monitoring of soil health in precision agriculture and environmental remediation.
Conclusion
The combination of high-throughput extraction, Shimadzu GC-2010 instrumentation and Sherlock PLFA Software provides a robust, rapid and reproducible platform for in-depth soil microbial community analysis. This automated solution enhances throughput, accuracy and data consistency, making it a valuable tool for researchers and laboratories focused on soil ecology, environmental monitoring and quality assurance.
Used Instrumentation
- Gas chromatograph Shimadzu GC-2010 Plus
- Autosampler AOC-20i autoinjector with AOC-20S
- MIDI Sherlock Software version 6.3B with PLFAD2 package
- Shimadzu LabSolutions version 5.85
- J&W Ultra 2 capillary column, 25 m × 0.2 mm × 0.33 µm film
- Split liner for focusing, 10 µL fixed-needle syringe
- Carrier gas hydrogen at constant velocity, inlet 250 °C, FID at 300 °C
References
- Buyer J S and Sasser M (2012) High throughput phospholipid fatty acid analysis of soils Applied Soil Ecology 61 127–130
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