Kuluçkalık Yumurtalarda Döllülük Tespitinde Güncel Tanısal Yaklaşımlar ve Kullanılan Yöntemler

Yazarlar

Sezgin Koçyiğit

Özet

Referanslar

Adegbenjo AO, Liu L, Ngadi MO. Non-destructive assessment of chicken egg fertility. Sensors (Basel). 2020;20(19):5546. doi:10.3390/s20195546.

Boğa M, Çevik KK, Koçer HE, Burgut A. Computer-assisted automatic egg fertility control. Kafkas Univ Vet Fak Derg. 2019;25:567–574. doi:10.9775/kvfd.2018.21329.

Ghaderi M, Mireei SA, Masoumi A, Sedghi M, Nazeri M. Fertility detection of unincubated chicken eggs by hyperspectral transmission imaging in the Vis-SWNIR region. Sci Rep. 2024;14:1289. doi:10.1038/s41598-024-51874-2.

Liu L, Ngadi MO. Detecting fertility and early embryo development of chicken eggs using near-infrared hyperspectral imaging. Food Bioprocess Technol. 2013;6:2503–2513. doi:10.1007/s11947-012-0933-3.

Hashemzadeh M, Farajzadeh N. A machine vision system for detecting fertile eggs in the incubation industry. Int J Comput Intell Syst. 2016;9:850–862. doi:10.1080/18756891.2016.1237185.

Das K, Evans MD. Detecting fertility of hatching eggs using machine vision I: Histogram characterization method. Trans ASABE. 1992;35:1335–1341. doi:10.13031/2013.28738.

Bamelis F, Tona K, De Baerdemaeker J, Decuypere E. Detection of early embryonic development in chicken eggs using visible light transmission. Br Poult Sci. 2002;43:204–212. doi:10.1080/00071660120121409.

Zhu Z, Ma M. The identification of white fertile eggs prior to incubation based on machine vision and least square support vector machine. Afr J Agric Res. 2011;6:2699–2704. doi:10.5897/AJAR11.509.

Lin CS, Yeh PT, Chen DC, Chiou YC, Lee CH. Identification and filtering of fertilized eggs with a thermal imaging system. Comput Electron Agric. 2013;91:94–105. doi:10.1016/j.compag.2012.12.004.

Latour MA, Meunier R, Stewart J. Poultry: The process of egg formation. West Lafayette: Purdue University Cooperative Extension Service; 2014.

Şamlı HE, Okur AA. Tüm yönleriyle yumurta. İstanbul: İstanbul Ticaret Borsası Yayınları; 2016.

Öztürk H. Kanatlılarda üreme. 2025. Erişim adresi: https://acikders.ankara.edu.tr/pluginfile.php/195910/mod_resource/content/0/Kanatl%C4%B1larda%20%C3%9Creme.pdf. Erişim tarihi: 8 Aralık 2025.

Guojun S. Day-1 chick development. Dev Dyn. 2014;243:357–367. doi:10.1002/dvdy.24087.

DİATEK. Tavuklarda yumurta oluşumu. 2019. Erişim adresi: https://diatek.com.tr/ArticleDetail.aspx?Article=3566. Erişim tarihi: 8 Aralık 2025.

Mohan J, Şarma SK, Kolluri G, Dhama K. History of artificial insemination in poultry, its components and significance. Worlds Poult Sci J. 2018;74:475–488. doi:10.1017/S0043933918000430.

Aviagen. Nasıl yapılır? Dölsüz yumurtaların ve erken dönem ölümlerinin tespit edilmesi. 2025. Erişim adresi: https://aviagen.com/assets/Tech_Center/BB_Foreign_Language_Docs/TR_TechDocs/04HowTo4IdentifyInfertileEggsandEarlyDeads-TR.pdf. Erişim tarihi: 8 Aralık 2025.

Durmuş İ. Yumurta kalite özelliklerinin kuluçka sonuçlarına etkisi. Akademik Ziraat Dergisi. 2014;3(2):95–99.

Coucke P, Room GM, Decuypere EM, De Baerdemaeker J. Monitoring embryo development in chicken eggs using acoustic resonance analysis. Biotechnol Prog. 1997;13:474–478. doi:10.1021/bp9700418.

Schellpfeffer MA, Kuhlmann RS, Bolender DL, Ruffolo CG, Kolesari GL. Preliminary investigation of the use of high frequency ultrasound imaging in the chick embryo. Birth Defects Res. 2005;73:39–49. doi:10.1002/bdra.20099.

Lawrence KC, Smith DP, Windham WR, Heitschmidt GW, Park B. Egg embryo development detection with hyperspectral imaging. Int J Poult Sci. 2006;5:964–969.

Smith D, Lawrence K, Heitschmidt G. Fertility and embryo development of broiler hatching eggs evaluated with a hyperspectral imaging and predictive modeling system. Int J Poult Sci. 2008;7:1001–1004.

Adegbenjo AO, Liu L, Ngadi MO. An adaptive partial least-squares regression approach for classifying chicken egg fertility by hyperspectral imaging. Sensors. 2024;24:1485. doi:10.3390/s24051485.

Zhang W, Pan L, Tu K, Zhang Q, Liu M. Comparison of spectral and image morphological analysis for early hatching detection based on hyperspectral imaging. PLoS One. 2014;9:e88659. doi:10.1371/journal.pone.0088659.

Qin WC, Tang XY, Peng YK, Zhao XH. Identification of fertilized chicken eggs based on visible/near-infrared spectrum during early stage of hatching. Spectrosc Spect Anal. 2017;37:200–204. doi:10.3964/j.issn.1000-0593(2017)01-0200-05.

Khaliduzzaman A, Kashimori A, Suzuki T, Ogawa Y, Kondo N. Nondestructive detection of super grade chick embryos or hatchlings using near-infrared spectroscopy. Poult Sci. 2021;100:101189. doi:10.1016/j.psj.2021.101189.

Yu H, Wang G, Zhao Z, Wang H, Wang Z. Chicken embryo fertility detection based on PPG and convolutional neural network. Infrared Phys Technol. 2019;103:103075. doi:10.1016/j.infrared.2019.103075.

Pasquini C. Near infrared spectroscopy: Fundamentals, practical aspects and analytical applications. J Braz Chem Soc. 2003;14:198–219. doi:10.1590/S0103-50532003000200006.

Siesler HW, Ozaki Y, Kawata S, Heise HM. Near-infrared spectroscopy: Principles, instruments, applications. Hoboken: Wiley; 2008.

El Masry G, Sun DW. Principles of hyperspectral imaging technology. In: Sun D-W, editor. Hyperspectral imaging for food quality analysis and control. San Diego: Academic Press; 2010. p. 3–43. doi:10.1016/B978-0-12-374753-2.10001-2.

Kim MS, Lefcourt AM, Chao K, Chen YR, Kim I, Chan DE. Multispectral detection of fecal contamination on apples based on hyperspectral imagery. Part I: Visible and near-infrared reflectance imaging. Trans ASAE. 2002;45:2027–2038. doi:10.13031/2013.11414.

Sun D-W. Hyperspectral imaging for food quality analysis and control. Amsterdam: Elsevier; 2010.

Yanenko L, Velikanov A. Hyperspectral imaging for food quality analysis and control. Kiev: National University of Food Technology; 2014. p. 312–313.

Sunardi S, Yudhana A, Saifullah S. Identity analysis of egg based on digital and thermal imaging: Image processing and counting object concept. Int J Electr Comput Eng. 2017;7:200–208. doi:10.11591/ijece.v7i1.12718.

Ghaderi M, Banakar A, Masoudi AA. Using dielectric properties and intelligent methods in separating hatching eggs during incubation. Measurement. 2018;114:191–194. doi:10.1016/j.measurement.2017.09.038.

Önler E, Çelen IH, Gulhan T, Boynukara B. A study regarding the fertility discrimination of eggs using ultrasound. Indian J Anim Res. 2017;51:322–326. doi:10.18805/ijar.v0iOF.4561.

Saifullah S, Drezewski R, Yudhana A, Pranolo A, Kaswijanti W, Suryotomo AP, et al. Nondestructive chicken egg fertility detection using CNN-transfer learning algorithms. JITEKI. 2023;9:854–871. doi:10.26555/jiteki.v9i3.26722.

Das K, Evans MD. Detecting fertility of hatching eggs using machine vision II: Neural network classifiers. Trans ASABE. 1992;35:2035–2041. doi:10.13031/2013.28832.

Gelecek

10 Şubat 2026

Lisans

Lisans