A rapid method for volatile compound analysis in fruit is described. The volatile compounds present in the headspace of a homogenate of the sample are rapidly separated and detected with ultra-fast gas chromatography (GC) coupled with a surface acoustic wave (SAW) sensor. A procedure for data handling and analysis is also discussed.
Numerous and diverse physiological changes occur during fruit ripening, including the development of a specific volatile blend that characterizes fruit aroma. Maturity at harvest is one of the key factors influencing the flavor quality of fruits and vegetables1. The validation of robust methods that rapidly assess fruit maturity and aroma quality would allow improved management of advanced breeding programs, production practices and postharvest handling.
Over the last three decades, much research has been conducted to develop so-called electronic noses, which are devices able to rapidly detect odors and flavors2-4. Currently there are several commercially available electronic noses able to perform volatile analysis, based on different technologies. The electronic nose used in our work (zNose, EST, Newbury Park, CA, USA), consists of ultra-fast gas chromatography coupled with a surface acoustic wave sensor (UFGC-SAW). This technology has already been tested for its ability to monitor quality of various commodities, including detection of deterioration in apple5; ripeness and rot evaluation in mango6; aroma profiling of thymus species7; C6 volatile compounds in grape berries8; characterization of vegetable oil9 and detection of adulterants in virgin coconut oil10.
This system can perform the three major steps of aroma analysis: headspace sampling, separation of volatile compounds, and detection. In about one minute, the output, a chromatogram, is produced and, after a purging cycle, the instrument is ready for further analysis. The results obtained with the zNose can be compared to those of other gas-chromatographic systems by calculation of Kovats Indices (KI). Once the instrument has been tuned with an alkane standard solution, the retention times are automatically converted into KIs. However, slight changes in temperature and flow rate are expected to occur over time, causing retention times to drift. Also, depending on the polarity of the column stationary phase, the reproducibility of KI calculations can vary by several index units11. A series of programs and graphical interfaces were therefore developed to compare calculated KIs among samples in a semi-automated fashion. These programs reduce the time required for chromatogram analysis of large data sets and minimize the potential for misinterpretation of the data when chromatograms are not perfectly aligned.
We present a method for rapid volatile compound analysis in fruit. Sample preparation, data acquisition and handling procedures are also discussed.
1. Sample Preparation
2. Gas Chromatography-surface Acoustic Wave (GC-SAW) Set-up and Data Acquisition
3. Data Export and Analysis
4. Representative Results
The electronic nose was able to detect differences in volatile profiles among melon fruit harvested at different maturity stages (Figure 5). Twenty KI windows were identified across all samples. An analysis of variance showed that 14 peaks detected by the electronic nose varied significantly between maturity stages. In Figure 6, the log of the mean peak areas of these 14 components are plotted to show differences in peak abundances between two maturity stages, early mature and fully ripe fruit.
Figure 1. Examples of data format exported from instrument software (A) and after transformation, performed using “reform_data.py” script (B). To facilitate data manipulation and analysis, all the unique KIs are identified across all the samples, then the data are reordered with sample information in rows and peak area in columns, corresponding to unique KIs. If a peak is not detected for a KI value in a sample, the corresponding cell remains empty.
Figure 2. Screen capture from the script file “kim_interface.py”. The plot in the center displays number of hits per KI versus KI. ‘Hit per KI’ is the number of samples in which a peak with that specific KI was detected. On the left side, there are three yellow boxes controlling the selected data. They display parameters to divide the data set (treatments, replicates, qualitative variables, etc.). In this figure, they are (from top to bottom): Variety, Planting date and Maturity stage at harvest. On the bottom: by clicking on the 3 bars and moving the blue bar to the left or to the right, one can select the minimum and the maximum value of the KI range, and the minimum peak area (‘Threshold’). On the right: the ‘Merge’ button allows merging selected KIs by manually clicking on the bars in the plot. The ‘Unmerge’ button allows one to reverse the process for selected cases.
Figure 3. Overlaid chromatograms (in black and red) of two technical replicates from melon volatile headspace to illustrate a shift in retention time.
Figure 4. Example of the KI merging procedure. In the central plot, the green bar (Central KI) represents the most populated KI, which has been selected as center of the KI window. KI X and KI Y are KIs falling in the window of interest and they need to be merged into the central KI. By right-clicking on KI X’s bar, it turns red and, at the same time, a blue bar of the same length of KI X’s bar, appears on top of the green one. By repeating the same procedure for KI Y, the length of the blue bar (Merged KIs) will increase of the corresponding length. Once all the KIs have been added, by clicking on the green ‘Merge’ button, the merging process ends, the changes are saved, and the button color turns yellow.
Figure 5. Two chromatograms of melon samples harvested at different maturity stages, early mature (top) and fully ripe (bottom), to illustrate the ability of the electronic nose to detect differences in volatile abundances.
Figure 6. Radar plot showing the peak area of 14 components present in two melon samples at two different maturity stages, early mature and fully ripe. The peak areas are reported in log scale to help visualize the comparison. The numbers at the end of each ray represent the corresponding Kovats Indices.
Electronic noses represent a promising method for the rapid, objective evaluation of aroma profiles from fruits or volatile-rich samples. However, shifts in retention time represent a challenge for peak identification and might lead to misinterpretation of the data when two chromatograms are not perfectly aligned. Visual inspection of chromatograms indicated that the variability of retention times among samples frequently caused the same peak to be labeled with slightly different KI values (approximately ±10). This translated into an exaggerated number of unique KIs detected. In order to take advantage of the facts that (a) different compounds are present at different maturity stages and (b) technical replicates are approximately identical, two computer-based scripts (“kim_merge.py”, which contains the routines for handling the data set, and “kim_interface.py”, which provides a graphical user interface (GUI)) were developed to systematically compare samples in a semi-automated fashion, greatly reducing the time needed for chromatogram analysis of large data sets. These programs allow the consolidation, where appropriate, of peaks labeled with a range of KI values under a single KI label. This serves two important purposes: (a) it enables a statistical analysis to treat such peaks as a single variable, and (b) it facilitates peak identification and comparison to other systems and published values. Results presented here indicate that melon samples could be discriminated based on maturity and aroma profiling using the zNose system in combination with adequate KI identification. This represents a promising new technology for analysis of volatiles that may be used for quality control programs.
The authors have nothing to disclose.
The authors thank Bill Copes (Harris Moran Seed Company, Davis) for providing melon fruits for this analysis. This project is supported by the Specialty Crops Research Initiative Competitive Grants Program grant no. 2009-51181-05783 from the USDA National Institute of Food and Agriculture.
Name of the reagent | Company | Catalogue number | Comments |
Calcium chloride | MP Biomedical | 195088 | |
2-Methylbutyl isovalerate | SAFC Global | W350613 | ≥ 98%, natural, FCC |
Methanol | Fisher Scientific | A411-4 | |
Vial | Sigma/Supelco | SU860098 | |
Cap | Sigma/Supelco | SU860101 | |
Laboratory blender | Waring Laboratory Science | 7009G | 2-speed blender; 1- Liter glass container |
Bottle | Fisher Scientific | 06-414-1C | Pyrex, 500 mL; polypropylene plug-seal |
Needle | Electronic Sensor Technology | TLC101046 | Side hole luer |
Alkanes solution | Electronic Sensor Technology | C6-C14 alkanes solution in methanol | |
zNose | Electronic Sensor Technology | Model 4500 | |
DB-5 GC column | Electronic Sensor Technology | SYS4500C5 | |
MicroSense | Electronic Sensor Technology | Version 5.44.22 | |
Python 2.6 | Freely available on-line | ||
“reform_data.py” and “kim_interface.py” scripts | Scripts available as supplementary material on JoVE |