| Literature DB >> 34770913 |
Goh Dirong1, Sara Nematbakhsh2, Jinap Selamat2,3, Pei Pei Chong4, Lokman Hakim Idris5, Noordiana Nordin2, Fatchiyah Fatchiyah6, Ahmad Faizal Abdull Razis1,2,3.
Abstract
Chicken is known to be the most common meat type involved in food mislabeling and adulteration. Establishing a method to authenticate chicken content precisely and identifying chicken breeds as declared in processed food is crucial for protecting consumers' rights. Categorizing the authentication method into their respective omics disciplines, such as genomics, transcriptomics, proteomics, lipidomics, metabolomics, and glycomics, and the implementation of bioinformatics or chemometrics in data analysis can assist the researcher in improving the currently available techniques. Designing a vast range of instruments and analytical methods at the molecular level is vital for overcoming the technical drawback in discriminating chicken from other species and even within its breed. This review aims to provide insight and highlight previous and current approaches suitable for countering different circumstances in chicken authentication.Entities:
Keywords: breed identification; chemometrics; chicken authentication; mislabeling; omics
Mesh:
Year: 2021 PMID: 34770913 PMCID: PMC8587031 DOI: 10.3390/molecules26216502
Source DB: PubMed Journal: Molecules ISSN: 1420-3049 Impact factor: 4.411
Figure 1An infographic overview for classical DNA-based molecular techniques in chicken meat adulteration detection, species, and breeds identification. Conventional PCR can be performed to identify a species at a time (singleplex) or multiple species simultaneously (multiplex) using species-specific primer targeting either nuclear or mitochondrial DNA. Real-time PCR plays the same concept as conventional PCR but incorporating dyes to monitor the PCR product in real-time. Loop-mediated isothermal amplification amplifies the target species using a set of four to six specially designed primers under isothermal conditions. Droplet Digital PCR allows the detection of a very low number of targets in DNA mixture by fractionating samples into 20,000 droplets, followed by target amplification of target in each droplet and detection using a laser. PCR-RFLP amplifies a conserved DNA region followed by digestion of the PCR products using one or more restriction endonucleases. Restriction profile can be obtained from the variation in band formation from agarose gel electrophoresis. PCR-Random Amplified Polymorphic DNA amplifies random segments of DNA by PCR using a single arbitrary primer binds to different loci in different species; variation in band patterns can be used to discriminate species. Amplified fragment length polymorphism technique discriminates individual species or breeds based on the selective PCR amplification of restriction fragments caused by single nucleotide polymorphism from a total digest of genomic DNA.
Summary of classical DNA-based techniques in the application of detection and authentication of chicken in meat and meat products. Type of samples and performance (limit of detection and discriminating accuracy) are included when available.
| Species/Breeds Involved | Main Technique | Main Markers | References | Detection Performance |
|---|---|---|---|---|
| Bovine, porcine, and chicken | qPCR | Species-specific SINEs | [ | Limit of detection: 5 pg |
| Beef, pork, lamb, goat, chicken, turkey, and duck | qPCR | Nuclear IL-2 precursor gene | [ | Detection level: 0.1% |
| Bovine, sheep, pig, and chicken | PCR | Mitochondrial 16S rRNA gene | [ | Detection level: 0.1% |
| Beef, pork, horse, mutton, chicken, and turkey | qPCR | Mitochondrial cyt | [ | Detection level: 0.01% |
| Chicken, duck, pigeon, and pig | PCR | Mitochondrial D-loop gene | [ | NA |
| Turkey, chicken, beef, pork, and sheep | qPCR | Mitochondrial 16S rRNA and cyt | [ | Detection level: 1% |
| Turkey, chicken, bovine, ovine, donkey, pork, and horse | qPCR | Mitochondrial ND2 gene. | [ | Detection level: 0.001% |
| Chicken, duck, and turkey | qPCR | Nuclear TF-GB3 gene | [ | Limit of detection: 5–50 pg |
| Pork, beef, chicken, and mutton | Multiplex-PCR | Mitochondrial COI gene | [ | Detection level: 0.001 ng |
| Duck, partridge, pheasant, quail, chicken, and turkey | PCR | Mitochondrial cyt | [ | Detection level: 0.01% ( |
| Processed chicken, bovine, and pork meats | PCR | Mitochondrial cyt | [ | Limit of detection: 1% |
| Processed beef meat products | PCR | Mitochondrial cyt | [ | Limit of detection: 0.5% |
| Beef, pork, chicken, rabbit, horse, and mutton | qPCR | Mitochondrial COI gene | [ | Limit of detection: 0.1% |
| Bovine, porcine, chicken, and turkey | ddPCR | Mitochondrial cyt | [ | Limit of detection: 0.01–1.0% ( |
| Pork, beef, horse, duck, ostrich, and chicken | Multiplex-qPCR | Mitochondrial cyt | [ | Detection level: 0.32 ng |
| Pork, beef, horse, rabbit, donkey, sheep, goat, dog, chicken, duck, pigeon, goose, and turkey | ddPCR | Nuclear RPA1 gene | [ | Limit of detection: 0.1% ( |
| Beef, sheep, pig, horse, rabbit, chicken, turkey, and quail | qPCR, HRM | Mitochondrial cyt | [ | Limit of detection: 0.1 ng |
| Chicken, pheasant, quail, Silky Fowl, pigs, cows, sheep, duck, goose, dog, rabbit, yak, horse, donkey, and fish | qPCR, Southern blot, and digital PCR | Nuclear Act | [ | Limit of detection: 10 pg |
| Processed meat products from 24 species, including chicken | LAMP | Mitochondrial 12S rRNA gene | [ | Limit of detection: 10 fg |
| Beef, buffalo, chicken, cat, dog, pork, and fish | Heptaplex-PCR | Mitochondrial cyt | [ | Limit of detection: 0.01−0.001 ng |
| Processed meat products from pork, beef, and chicken | qPCR | NA | [ | Limit of detection: 0.1% for beef and pork; 0.2% for chicken |
| Beef, donkey, chicken, and human | PCR | Mitochondrial 12S rRNA gene | [ | NA |
| Pork, chicken, and beef | Multiplex-qPCR | Mitochondrial cyt | [ | Limit of detection: 0.1 pg |
| Beef, sheep, pork, goat, horse, chicken, rabbit, and turkey | PCR | Beta-tubulin intron III gene | [ | Detection level: 0.5% and 1% |
| Sheep/goat, bovine, chicken, duck, and pig | Multiplex-PCR | Nuclear DNA | [ | Limit of detection: 0.5 ng |
| Chicken, beef, mutton, pork, duck, goose, venison, horse meat, donkey meat, fish, shrimp, and crab | PCR-sensor | Mitochondrial cyt | [ | Detection level: 0.01% |
| Cattle, buffalo, goat, sheep, pig, and chicken | PCR-FINS | Mitochondrial cyt | [ | NA |
| Duck, chicken, goose, wild goose, quail, goat, sheep, pork, beef, horse, and donkey | Hexaplex-qPCR | Mitochondrial ND4, COI, COII, 12S rRNA, and 16S rRNA genes | [ | Limit of detection: 0.01–0.1 ng |
| Chicken, mutton, beef, and pork | Multiplex-qPCR | Nuclear TGFB3, PRLR, ND5, and ACTB genes | [ | Detection level: 0.002 ng |
PCR, polymerase chain reaction; qPCR, real-time/quantitative polymerase chain reaction; SINEs, short interspersed elements; IL-2, interleukin-2; cytb, cytochrome b; ND2, NADH dehydrogenase subunit 2; COI, cytochrome c oxidase subunit I; ddPCR, droplet digital polymerase chain reaction; RPA1, replication protein A1; HRM, high resolution melting analysis; LAMP, direct loop-mediated isothermal amplification assay; ND5, NADH dehydrogenase 5; PCR-FINS, polymerase chain reaction-forensically informative sequencing; TGFB3, transforming growth factor beta-3; PRLR, prolactin receptor; ACTB, beta-actin.
A summary of advantages and disadvantages of nuclear and mitochondrial DNA in muscle food origin identification.
| DNA | Advantages | Disadvantages |
|---|---|---|
| Nuclear | Sequence information is conserved and stable [ | More susceptible to fragmentation in extensive food processing than mitochondrial DNA [ |
| Diploidy (suitable for genotyping) [ | ||
| Multiplex species identification at multiple target sites [ | ||
| Enable accurate quantification of meat weight based on the DNA copy number [ | ||
| Contains repetitive sequences (e.g., short interspersed nuclear elements (SINE) and long interspersed nuclear elements (LINE)) which can serve as amplification products, lowering the limit of detection [ | ||
| Mitochondrial | High copy number per cell (≈2500 copies) and varies in different tissues [ | Subject to mutation at primer binding region [ |
| Higher probability of obtaining positive results in fragmented DNA caused by intense food processing [ | ||
| Relatively higher in mutation rate than nuclear genes (suitable to discriminating closely related species, e.g., chicken vs turkey) [ | Quantification of meat by transforming copy numbers to the weight proportion of meat is challenging [ | |
| More resistant to fragmentation by heat compared to nuclear DNA [ |
Figure 2An overview for workflow performed previously in chicken proteome markers discovery. Blue arrows indicate the immunological approach, red arrows represent the chemical chromatogram profiling, and green arrows represent the bottom-up proteomics approach. The top-down proteomics approach is not shown due to no research reported using this approach in chicken authentication studies.
Summary of proteomics application in chicken authentication. Type of samples and performance (limit of detection and discriminating accuracy) are included where available.
|
| Main Technique | Statistical Analysis | Main Markers | References | Highlight |
|---|---|---|---|---|---|
| Detection of porcine, bovine, ovine, equine, deer, chicken, and turkey based on immunological approach. | ELISA | - | Troponin I (TnI) | [ | A class of monoclonal antibodies against the thermostable troponin I marker was found to be able to recognize all of the meats. The detectability of the assay was less than 1% for all the species analyzed. |
| Differentiation of meat products from chicken and other 14 species based on electrochemical profiles. | HPLC-EC | - | Chromatogram peaks of electroactive peptides and amino acids. | [ | The method involves simple extraction steps and may be applicable to fresh or cooked meats. Treatment of the meats at different harsh temperatures changed the intensity but not the pattern of species-specific peaks. |
| Preliminary proteomic study in 3 chicken breeds. | 2D-GE, MALDI-TOF-MS | SAM | Breed-specific sarcoplasmic proteins. | [ | Two categories of breeds-specific proteins were identified—breed-specific proteins and up or down expressed proteins in specific breeds. |
| Detection of chicken meat within mixed meat preparations. | OFFGEL-IEF, MALDI-TOF-MS, LC-MS/MS | - | Peptides from trypsin digestion of myosin light chain 3. | [ | Two peptides were selected as chicken specific biomarkers; LC-ESI-MS/MS allows high sensitivity detection up to 0.5% |
| Differentiation of cattle, pig, chicken, turkey, duck, and goose based on differential expression of myosin light chain (MLC) isoforms. | 2D-GE, MALDI-TOF-MS | Myosin light chain (MLC) isoforms. | [ | MLC3f was selected as the most versatile marker possible to differentiate between the given five species. | |
| Differentiation of pork from beef, mutton, chevon, and chicken based on their primary amino acid contents. | HPLC | PCA | Amino acids content. | [ | Serine and histidine were identified as the main amino acids for differentiating chicken from the other meats studied, while serine, alanine, and valine could differentiate pork and chicken. |
| Identification of chicken breed-specific differences in terms of meat flavour between Korean native chickens and commercial broilers. | 2D-GE, MALDI-TOF-MS | - | Skeletal muscle proteins. | [ | Three proteins spots were found to increase in expression in Korean native chickens, while four proteins showed an increase in commercial broilers. |
| Searching of stable proteins differentiating cattle, pig, chicken, turkey, duck, and goose. | 2D-GE, MALDI-TOF | - | Skeletal muscle proteins. | [ | Significant differences in serum albumin, apolipoprotein B, HSP27, H-FABP, ATP synthase, cytochrome bc-1 subunit 1, and alpha-ETF can be considered to be used as markers in the authentication of meat products. |
| Selection and identification of heat-stable and species-specific peptide markers from beef, pork, horse, chicken, and turkey. | LESA-MS | PCA-X, OPLS-DA | Peptides from skeletal muscle proteins. | [ | Nine chicken-specific peptides were identified. The limit of detection for chicken was 5% ( |
| Authentication of processed beef, pork, horse, chicken, and turkey meat based on heat-stable peptide markers. | LESA-MS | - | Peptides from myofibrillar and sarcoplasmic proteins. | [ | This study had identified six heat-stable chicken-specific peptide markers derived from myofibrillar and sarcoplasmic proteins. |
| Searching of protein markers for discrimination of beef, pork, chicken, and duck. | 1D-GE, LC-MS/MS | - | Sarcoplasmic and myofibrillar proteins. | [ | Four proteins were identified and able to discriminate mammals from poultry by differences in electrophoretic mobility; each species can be further identified through LC-MS/MS analysis. |
| To search for heat-stable peptide biomarkers in cooked meats of pork, chicken, duck, beef, and sheep. | UPLC-MS, MRM | - | Peptides from myofibrillar and sarcoplasmic proteins | [ | After confirmation by the MRM method, six heat-stable chicken-specific peptides were found; three from six were novel. |
| Proteomic determination of three breeds of chickens. | LC-MS/MS | - | Peptides from serum proteins. | [ | Two peptides were specific to Kai-Tor; one for commercial layer hen and one for white tail yellow chicken. A total of 12 proteins are found expressed differently in the three breeds. |
| Differentiation of duck, goose, and chicken inprocessed meat products based on the species-specific peptide. | LC-MS/MS | - | Peptides from skeletal muscle. | [ | Ten chicken-specific peptides were monitored with high confidence using the qualitative LC-QQQ multiple reaction monitoring (MRM) method. |
| Authentication of chicken, duck, goose, guinea fowl, ostrich, pheasant, pigeon, quail, and turkey in raw and heated meat based on peptides marker. | HPLC-QTOF-MS/MS, LC-HRMS | - | Peptides from skeletal muscle. | [ | Three chicken-specific peptides and one common turkey/chicken peptide were identified. |
ELISA, enzyme-linked immunosorbent assay; HPLC-EC, high-performance liquid chromatography with electrochemical detection; SAM, significance analysis of microarrays, MALDI-TOF MS, matrix-assisted laser desorption ionization-time of flight mass spectrometry; PCA, principal component analysis; 2D-GE, two dimensional gel electrophoresis; IEF, isoelectric focusing; LESA-MS, liquid extraction surface analysis mass spectrometry; PCA-X, unsupervised principal component analysis; OPLS-DA, orthogonal partial least-squares discriminant analysis; PCA, principal component analysis; 1D-GE, one-dimensional gel electrophoresis; HPLC-MS/MS, high performance liquid chromatography-tandem mass spectrometry; MRM–MS, multiple reaction monitoring mass spectrometry; UPLC-MS, ultra-performance liquid chromatography-mass spectrometry; MRM, multiple reaction monitoring; HPLC-QTOF-MS/MS, high performance liquid chromatography-quadrupole-time of flight-tandem mass spectrometry; LC-HRMS, liquid chromatography–high-resolution mass spectrometry.
Figure 3General lipidomic workflow in meat products analysis. TAG, triacylglycerol; FA, fatty acid; FAME, fatty acid methyl ester; GC-FID, gas chromatography with flame ionization detector.
Summary of lipidomic application in chicken authentication. Type of samples and performance (limit of detection and discriminating accuracy) are included when available.
|
| Main Instrument | Statistical Analysis | Markers/Differentiation Features | References | Highlight |
|---|---|---|---|---|---|
| Analysis of tallow, lard, and chicken fat adulterations in canola oil. | DSC, HPLC, GC-FID | SMLR | Thermogram profile. | [ | Chicken fat adulteration is impossible to be determined under DSC thermoprofiling. |
| Analysis of lard, body fats of lamb, cow, and chicken. | FTIR | PLS-DA | FTIR spectrum at fingerprint region (1500–900 cm−1) of lipid components. | [ | The equation obtained from the calibration model can predict lard mixed with cow and chicken fat percentage at 1500–900 cm−1. |
| Analysis of cod liver oil, mutton fat, chicken fat, and beef fat. | FTIR | PLS-DA | FTIR mid-region (4000–650 cm−1). | [ | PLS model can be used for the quantification of chickenfat in CLO with 100% accuracy. |
| Analysis of lard, chicken fat, beef fat, and mutton fat. | GC-MS, EA-IRMS | PCA | Stearic, oleic, and linoleic acids; carbon isotope ratios (δ 13C). | [ | PCA of stearic, oleic, and linoleic acids data and significant differences in the values of carbon isotope ratios (δ 13C) of all animal fats can potentially discriminate meat species. |
| Analysis of chicken fat adulteration in butter | FTIR, GC-FID | PLS | FTIR spectrum at fingerprint region of (1200–1000 cm−1). | [ | PLS can be successfully used to quantify the level of chicken fat adulterant with R2 of 0.981 at the selected fingerprint region of 1200–1000 cm−1. |
| Acylglycerols analysis of lard, chicken fat, beef fat, and mutton fat. | GC-MS, EA-IRMS | PCA | MAG and DAG profiles; carbon isotope ratios (δ 13C). | [ | The presence of small amounts of arachidic acid and differences in the proportions of several fatty acids in the chicken diacylglycerols can differentiate chicken from lard. Variation in δ 13C values can also discriminate MAG and DAG in different species. |
| To authenticate fats originated from beef, chicken, and lard. | NIR | SVM | Wavelength region from 1300 to 2200 nm. | [ | Using the developed SVM model, lard can be classified 100% correctly from chicken and beef fat, but only 86.67% accuracy was obtained when the three fats were classified together. |
| Lipid composition characterization of Taihe black-boned silky fowls and comparison to crossbred black-boned silky fowls. | UPLC/MS/MS, Q-TOF/MS | OPLS-DA | 47 lipid molecules as markers to distinguish Taihe and crossbred black-boned silky fowls. | [ | OPLS-DA analysis reveals 47 lipid compounds were statistically significant and can be used as potentialmarkers for the authentication of Taihe black-boned silky fowl. |
| Post-heat treated lard differentiation from chicken fats, mutton, tallow, and palm-based shortening. | FTIR | PCA, k-mean CA, LDA | Wavenumbers at region 3488–3980, 2160–2300, and 1200–1900 cm−1. | [ | The combination of PCA with k-mean CA was able to differentiate heated fats according to their origin. LDA only possesses 80.5% classification accuracy where mutton and tallow cannot be classified correctly. |
| Wavelength profiling in a different mixture of fat samples containing chicken, lamb, beef, and palm oil. | FTIR | PCA | Wavelength at 1236 and 3007 cm−1. | [ | The biomarker wavelengths identified from the spectra of the studied samples at positions 1236 and 3007 cm−1 separated at notable distances can be used to discriminate the fat from different species. |
| Triacylglycerols (TAGs) fingerprinting on beef, pork, chicken in meat products | DART–HRMS | PCA, PLS-DA | 3 TAGs ion | [ | DART–HRMS could be used primarily as a screening method, and suspected samples are required to be confirmed by PCR. |
| Profiling of lard with beef tallow, mutton tallow, and chicken fat. | GC-FID, HPLC, DSC | ANOVA, PCA | Score plot of 7 fatty acid composition, OOL/SPO ratio, and thermogram profile. | [ | Score plot of PCA model, a significant difference in OOL/SPO ratio and thermal profile can provide a basis for differentiating chicken fat from lard. |
SMLR, stepwise multiple linear regression analysis; DSC, differential scanning calorimetry; GC-FID, gas chromatography with flame ionization detector; FTIR, Fourier transform infrared spectroscopy; EA-IRMS, elemental analyzer–isotope ratio mass spectrometry; NIR, near-infrared spectroscopy; SVM, support vector machine; MAG, Monoacylglycerols; DAG, diacylglycerols; PLSR, partial least square regression; OPLS-DA, orthogonal partial least squares-discriminant analysis; UPLC/MS/MS, ultra-performance liquid chromatography-tandem mass spectrometry; k-mean CA, k-mean cluster analysis; LDA, linear discriminant analysis; DART–HRMS, direct analysis in real-time coupled with high-resolution mass spectrometry; PLS-DA, partial least squares discriminant analysis; OOL/SPO, oleic oleic linoleic/stearic palmitic oleic.