A Review of Key Techniques for in Ovo Sexing of Chicken Eggs
Abstract
:1. Introduction
2. Research Progress of Chicken in Ovo Sexing Methods
2.1. Molecular-Based Techniques
2.1.1. Chromosome Content in the Cell Nucleus
2.1.2. Hormone Concentration in the Allantoic Fluid
2.1.3. DNA Test by Polymerase Chain Reaction
Categories | Samples | Methods | Results | Reference |
---|---|---|---|---|
Nuclear DNA content in the cell | Blood samples from birds | The flow cytometric technique was used to estimate the nuclear DNA content of erythrocytes in blood samples. | The samples were stored at 4–20 °C and successfully analyzed after at least five days. The flow cytometric technique can be completed in a few minutes. | [3] |
Hormone concentration in the allantoic fluid | Allantoic fluid from eggs | Allantoic fluid was collected and estrone sulfate concentration was measured on day 9 of incubation, showing that male embryos displayed significantly lower hormone levels than female embryos. | This method can detect sex differences by day 9 with an accuracy greater than 98%. The fluid analysis required 4 h and reduced the hatching rate by 3%. | [4] |
DNA test by PCR | Blood from ISA brown chicken eggs | The Hologic Invader® sexing assay, which includes a W-rpt/CR2 probe mixture and core reagent kit, was developed to monitor fluorescence. | This assay can distinguish the sex of individual animals with as little as 1 ng of DNA or 125 nl of whole blood or as few as 250 cells. | [5] |
ISA brown, Dekalb white, Bovan brown, and Shaver black eggs | The Q-PCR technique was used to incubate beads chelated with potential PCR inhibitors followed by centrifugation to identify genes on chromosomes W (SWIM and Xho-I) and Z (DMRT). | The Q-PCR method exhibits 100% concordance and specificity for the in ovo sexing of 176 embryos. | [28] | |
Fertilized white Leghorn chicken eggs | The qRT–PCR technique was performed on mRNA from chick gonads and other tissues. | The qRT–PCR results of each sample agreed with those obtained by morphological examinations and PCR analyses. | [29] |
2.1.4. Molecular Genetic Analyses of Blastodermic Cells
2.2. Spectral-Based Techniques
2.2.1. Fourier Transform Infrared Spectroscopy
2.2.2. Raman Spectroscopy
2.2.3. Hyperspectral Imaging
2.2.4. 3D X-Ray Microcomputed Tomography
2.2.5. Optical Coherence Tomography
2.2.6. Magnetic Resonance Imaging
2.3. Acoustic-Based Techniques
2.4. Morphology-Based Techniques
2.4.1. Outer Shape of the Eggshell
2.4.2. Distribution of Blood Vessels
2.5. Volatile-Organic-Compound-Based Techniques
3. Breakthroughs and Perspectives
3.1. Mechanisms: Analysis of Physiological Changes in Chicken Eggs during Incubation
3.2. Big Data Support: From Sensing to Modeling
3.2.1. Multisensing Techniques
3.2.2. Data Processing
3.2.3. Modeling and Decision-Making
3.3. Commercialization and Practical Applications
3.4. Prospective
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Types | Samples | Incubation Age | Band Range | Data Processing and Modeling | Accuracy (%) | Reference |
---|---|---|---|---|---|---|
FT-IR | Blastoderm cells | >3 d | 1790 &1000 cm−1 | Removal of outliers and linear two-point baseline corrections | Not specified | [7] |
Raman | White eggs | 3.5 d | 785 nm | PCA, genetic optimal region selection, and nonlinear discriminant analysis | 91 | [11] |
Transmission | Brown eggs | 14 d | 600–950 nm | PCA and a linear discriminant analysis model | 97.47 | [17] |
Hyperspectral | White eggs from brown chickens | 10 d | 600–900 nm | SVM, PLSDA, and ANN | SVM: 75 PLSDA: 75 ANN: 82.86 | [40] |
Jing No. 1 chickens | 7 d | 360–780 nm | MSC, CARS, SPA, and GA-ELM | 87.14 | [41] | |
Guo Shao No. 1 chickens | 7 d | 500–900 nm | SPA+CNN | 93.83 | [35] |
Categories | Samples | Methods | Results | Reference |
---|---|---|---|---|
Outer shape of the eggshell | White eggs | The egg width (W), length (L), weight, and volume were measured to determine the sex of the fertilized white eggs before incubation. The egg volume and shape index were estimated according to these measurements as follows: | A multiple logistic regression model was built to determine the sex of the hatching chick. The female chick sex probability (IP1) was calculated as follows: IP1 = −0.39531+(0.01214 × SI) (R2 = 0.25). Eggs with greater SI values (p = 0.001) and lower volumes (p = 0.004) were more likely to produce female chicks. | [15] |
Duck eggs | The eccentricity (Ecc) of each sample was used to determine a specific threshold value to separate male and female eggs. | The results show that with an eccentricity threshold value of 0.6441, the duck egg sex prediction accuracy reached up to 86%. | [43] | |
Japanese quail eggs | The W, L, SI, Ecc, area, geometric mean diameter (Gd), and sphericity were measured and calculated to establish an in ovo sexing model for the eggs. | The Gaussian naïve Bayes model is the best classifier for data using two features (Ecc and SI), achieving an average accuracy of 82.88% (males: 85.14% and females: 80.16%). | [44] | |
Turkey eggs | The combination of plumage color, physical external egg characteristics, the color of down feathers, and behavioral approaches to determine sex of turkey eggs. | The specificity values were found to be 49.12, 93.33, and 100%, while the sensitivity values were observed to be 74.64, 91.03, and 100%, which translated into accuracy of 63.10, 92.26, and 100% in black, black-roan, and bronze-roan poults, respectively. | [45] | |
Distribution of blood vessels | Jingfen No. 1 eggs | The 11-dimensional feature parameters of the image were extracted with difference box, gray level co-occurrence matrix, gray histogram, and geometric methods. A GA-BP-based neural network was established for in ovo sexing of chicken eggs on day 4 of incubation. | The classification accuracies of the training and prediction set were 99.73% and 82.80%, respectively. | [16] |
Jingfen No. 1 eggs | The 2916-dimensional fully informative image features were extracted through a gray horizontal co-occurrence matrix with 5-dimensional features and histogram of gradients (HOG) orientation. In addition, the 96-dimensional features were simplified using sampling and PCA dimensionality reduction-gray co-occurrence matrix methods. Support vector machine (SVM), backpropagation (BP) neural network, and deep belief network (DBN) models were constructed. | The DBN model had the highest accuracies of 76.67% (male) and 90% (female), with an average accuracy of 83.33%. The DBN model had the longest discriminant time of 7.8 s. | [46] |
Methods | Principles | Merits | Reference |
---|---|---|---|
Moving average | is the width of the window | It can directly process all spectra without splitting the test and correction sets. | [57] |
SG | is the weighting factor in moving window smoothing (window length 2𝑙 + 1) | It is suitable for stable denoising of spectral signals and obtains better effects in terms of eliminating high-frequency noise. | [57] |
MSC | where denote the relative offset coefficients and translations of after linear regression | This method eliminates the scattering effects caused by uneven distributions. | [41] |
Differential algorithm | where G is the differential width | This method eliminates the effects of background interference and highlights changes in spectral patterns. | [57] |
Methods | Characteristic | Application Scope | References |
---|---|---|---|
PCA | Transforms large and highly correlated spectral data into feature information with fewer dimensions. | Suitable for multifactor spectral feature extraction, as this approach ensures that the main feature information is retained. | [11] |
ICA | Decomposes the observed mixed signal into statistically independent components, which can reduce the dimension by eliminating redundant information in the original data. | Utilizes higher-order statistical information, which is more conducive to decomposing the observed signal. | [57] |
SPA | Extracts several characteristic wavelengths in the full wavelength band to eliminate redundant information in the original spectral matrix. | Eliminates redundant information in the original spectral matrix and can be used to screen spectral feature wavelengths. | [35,41] |
CARS | The wavelength points with large absolute values of regression coefficients in the PLS model are selected by the ARS technique, which can effectively identify the optimal variable combinations. | Addresses the problem of variable combination explosion in the variable selection process. | [35,41] |
Type | Model | Methods | Accuracy (%) | Reference |
---|---|---|---|---|
Linear | SVM | Hyperspectral imaging | Modeling: 80.65 Validation: 75 | [40] |
Blood vessel distribution | Modeling: 100 Validation: 63.33 | [46] | ||
Outer shape of the eggshell | 81.51 | [44] | ||
Kernel Naïve Bayes | Outer shape of the eggshell | 82.88 | [44] | |
PLS-DA | Hyperspectral imaging | Modeling: 72.58 Validation: 75 | [40] | |
Vis-NIR | 99.05 | [38] | ||
Nonlinear | GA-BP | Blood vessel distribution | Modeling: 99.73 Validation: 82.80 | [46] |
GA-ELM | Blood vessel distribution | Modeling: 100 Validation: 87.14 | [41] | |
ANN | Hyperspectral imaging | Modeling: 88.14 Validation: 82.86 | [40] | |
DBN | Blood vessel distribution | Modeling: 100 Validation: 83.33 | [46] | |
CNN | VIS/NIR spectra | Modeling: 93.36 Validation: 93.83 | [35] |
Principle | Incubation Day | Sample | Technique | Invasiveness | Precision | Capacity | Marketing |
---|---|---|---|---|---|---|---|
Chromoso-mic | 9 d | Allantoic liquid | PCR on cells suspended in allantoic fluid | Yes | 97-99% | 3000/h | PLANTegg |
Molecular | 9 d | Allantoic liquid | Determination of estrone sulphate | Yes | 98% | SELEGGT: 3600/h; In Ovo: 1500/h | SELEGGT, In ovo |
Physiological | 13 d | Whole egg | Hyper-spectral imaging via feather color | No | 95% | 20,000/h | Agri Advanced Technologies |
Genome editing | 0 d | Whole egg | Imaging by fluorescence of a molecule produced by males after editing | No | 100% | / | EggXYT |
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Jia, N.; Li, B.; Zhu, J.; Wang, H.; Zhao, Y.; Zhao, W. A Review of Key Techniques for in Ovo Sexing of Chicken Eggs. Agriculture 2023, 13, 677. https://doi.org/10.3390/agriculture13030677
Jia N, Li B, Zhu J, Wang H, Zhao Y, Zhao W. A Review of Key Techniques for in Ovo Sexing of Chicken Eggs. Agriculture. 2023; 13(3):677. https://doi.org/10.3390/agriculture13030677
Chicago/Turabian StyleJia, Nan, Bin Li, Jun Zhu, Haifeng Wang, Yuliang Zhao, and Wenwen Zhao. 2023. "A Review of Key Techniques for in Ovo Sexing of Chicken Eggs" Agriculture 13, no. 3: 677. https://doi.org/10.3390/agriculture13030677
APA StyleJia, N., Li, B., Zhu, J., Wang, H., Zhao, Y., & Zhao, W. (2023). A Review of Key Techniques for in Ovo Sexing of Chicken Eggs. Agriculture, 13(3), 677. https://doi.org/10.3390/agriculture13030677