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Bacterial blight poses a threat to rice production and food security, which can be controlled through large-scale breeding efforts toward resistant cultivars. Unmanned aerial vehicle (UAV) remote sensing provides an alternative means for the infield phenotype evaluation of crop disease resistance to relatively time-consuming and laborious traditional methods. However, the quality of data acquired by UAV can be affected by several factors such as weather, crop growth period, and geographical location, which can limit their utility for the detection of crop disease and resistant phenotypes. Therefore, a more effective use of UAV data for crop disease phenotype analysis is required. In this paper, we used time series UAV remote sensing data together with accumulated temperature data to train the rice bacterial blight severity evaluation model. The best results obtained with the predictive model showed an Rp2 of 0.86 with an RMSEp of 0.65. Moreover, model updating strategy was used to explore the scalability of the established model in different geographical locations. Twenty percent of transferred data for model training was useful for the evaluation of disease severity over different sites. In addition, the method for phenotypic analysis of rice disease we built here was combined with quantitative trait loci (QTL) analysis to identify resistance QTL in genetic populations at different growth stages. Three new QTLs were identified, and QTLs identified at different growth stages were inconsistent. QTL analysis combined with UAV high-throughput phenotyping provides new ideas for accelerating disease resistance breeding.
Kim SM, Reinke RF. A novel resistance gene for bacterial blight in rice, Xa43(t) identified by GWAS, confirmed by QTL mapping using a bi-parental population. PLOS ONE. 2019;14(2):e0211775.
Gavrilescu M, Demnerová K, Aamand J, Agathos S, Fava F. Emerging pollutants in the environment: Present and future challenges in biomonitoring, ecological risks and bioremediation. New Biotechnol. 2015;32(1):147–156.
Song A, Xue G, Cui P, Fan F, Liu H, Yin C, Sun W, Liang Y. The role of silicon in enhancing resistance to bacterial blight of hydroponic- and soil-cultured rice. Sci Rep. 2016;6(1):24640–24653.
Mazid MS, Rafii MY, Hanafi MM, Rahim HA, Shabanimofrad M, Latif MA. Agro-morphological characterization and assessment of variability, heritability, genetic advance and divergence in bacterial blight resistant rice genotypes. S Afr J Bot. 2013;86:15–22.
Varshney RK, Bohra A, Yu J, Graner A, Zhang Q, Sorrells ME. Designing future crops: Genomics-assisted breeding comes of age. Trends Plant Sci. 2021;26(6):631–649.
Fiyaz RA, Shivani D, Chaithanya K, Mounika K, Chiranjeevi M, Laha GS, Viraktamath BC, Rao LVS, Sundaram RM. Genetic improvement of rice for bacterial blight resistance: Present status and future prospects. Rice Sci. 2022;29(2):118–132.
Yang Y, Zhou Y, Sun J, Liang W, Chen X, Wang X, Zhou J, Yu C, Wang J, Wu S, et al. Research progress on cloning and function of Xa genes against rice bacterial blight. Front Plant Sci. 2022;13:847199.
Chen S, Wang C, Yang J, Chen B, Wang W, Su J, Feng A, Zeng L, Zhu X. Identification of the novel bacterial blight resistance gene Xa46(t) by mapping and expression analysis of the rice mutant H120. Sci Rep. 2020;10(1):12642–12653.
Busungu C, Taura S, Sakagami JI, Ichitani K. Identification and linkage analysis of a new rice bacterial blight resistance gene from XM14, a mutant line from IR24. Breed Sci. 2016;66(4):636–645.
Moeinizade S, Pham H, Han Y, Dobbels A, Hu G. An applied deep learning approach for estimating soybean relative maturity from UAV imagery to aid plant breeding decisions. Mach Learn. 2022;7:100233.
Oliva R, Ji C, Atienza-Grande G, Huguet-Tapia JC, Perez-Quintero A, Li T, Eom JS, Li C, Nguyen H, Liu B, et al. Broad-spectrum resistance to bacterial blight in rice using genome editing. Nat Biotechnol. 2019;37(11):1344–1350.
Wang G, Ding X, Yuan M, Qiu D, Li X, Xu C, Wang S. Dual function of rice OsDR8 gene in disease resistance and thiamine accumulation. Plant Mol Biol. 2006;60(3):437–449.
Ni D, Song F, Ni J, Zhang A, Wang C, Zhao K, Yang Y, Wei P, Yang J, Li L. Marker-assisted selection of two-line hybrid rice for disease resistance to rice blast and bacterial blight. Field Crop Res. 2015;184:1–8.
Abdulridha J, Ampatzidis Y, Roberts P, Kakarla SC. Detecting powdery mildew disease in squash at different stages using UAV-based hyperspectral imaging and artificial intelligence. Biosyst Eng. 2020;197:135–148.
Xie C, Yang C. A review on plant high-throughput phenotyping traits using UAV-based sensors. Comput Electron Agric. 2020;178:105731.
Abdulridha J, Ampatzidis Y, Qureshi J, Roberts P. Laboratory and UAV-based identification and classification of tomato yellow leaf curl, bacterial spot, and target spot diseases in tomato utilizing hyperspectral imaging and machine learning. Remote Sens. 2020;12(17):2732–2749.
Kerkech M, Hafiane A, Canals R. Vine disease detection in UAV multispectral images using optimized image registration and deep learning segmentation approach. Comput Electron Agric. 2020;174:105446.
Sugiura R, Tsuda S, Tamiya S, Itoh A, Nishiwaki K, Murakami N, Shibuya Y, Hirafuji M, Nuske S. Field phenotyping system for the assessment of potato late blight resistance using RGB imagery from an unmanned aerial vehicle. Biosyst Eng. 2016;148:1–10.
Su J, Liu C, Hu X, Xu X, Guo L, Chen W-H. Spatio-temporal monitoring of wheat yellow rust using UAV multispectral imagery. Comput Electron Agric. 2019;167:105035.
Wang X, Zhang R, Song W, Han L, Liu X, Sun X, Luo M, Chen K, Zhang Y, Yang H, et al. Dynamic plant height QTL revealed in maize through remote sensing phenotyping using a high-throughput unmanned aerial vehicle (UAV). Sci Rep. 2019;9(1):3458–3468.
Hassan MA, Yang M, Fu L, Rasheed A, Zheng B, Xia X, Xiao Y, He Z. Accuracy assessment of plant height using an unmanned aerial vehicle for quantitative genomic analysis in bread wheat. Plant Methods. 2019;15:37–49.
Wang W, Gao X, Cheng Y, Ren Y, Zhang Z, Wang R, Cao J, Geng H. QTL mapping of leaf area index and chlorophyll content based on UAV remote sensing in wheat. Agriculture. 2022;12(5):595.
Hassan MA, Yang M, Rasheed A, Tian X, Reynolds M, Xia X, Xiao Y, He Z. Quantifying senescence in bread wheat using multispectral imaging from an unmanned aerial vehicle and QTL mapping. Plant Physiol. 2021;187(4):2623–2636.
Krupinsky JM, Bailey KL, McMullen MP, Gossen BD, Turkington TK. Managing plant disease risk in diversified cropping systems. Agron J. 2002;94(2):198–209.
Li Z, Taylor J, Yang H, Casa R, Jin X, Li Z, Song X, Yang G. A hierarchical interannual wheat yield and grain protein prediction model using spectral vegetative indices and meteorological data. Field Crop Res. 2020;248(1):107711–107720.
Li Z, Zhao Y, Taylor J, Gaulton R, Jin X, Song X, Li Z, Meng Y, Chen P, Feng H, et al. Comparison and transferability of thermal, temporal and phenological-based in-season predictions of above-ground biomass in wheat crops from proximal crop reflectance data. Remote Sens Environ. 2022;273:112967–112982.
Jin Y, Wong KW, Wu Z, Qi D, Wang R, Han F, Wu W. Relationship between accumulated temperature and quality of paddy. Int J Food Prop. 2019;22(1):19–33.
Zhang L, Gao L, Huang C, Wang N, Wang S, Peng M, Zhang X, Tong Q. Crop classification based on the spectrotemporal signature derived from vegetation indices and accumulated temperature. Int J Digit Earth. 2022;15(1):626–652.
Wan L, Cen H, Zhu J, Zhang J, Zhu Y, Sun D, Du X, Zhai L, Weng H, Li Y, et al. Grain yield prediction of rice using multi-temporal UAV-based RGB and multispectral images and model transfer—A case study of small farmlands in the south of China. Agric For Meteorol. 2020;291:108096–108111.
Honkavaara E, Saari H, Kaivosoja J, Pölönen I, Hakala T, Litkey P, Mäkynen J, Pesonen L. Processing and assessment of spectrometric, stereoscopic imagery collected using a lightweight UAV spectral camera for precision agriculture. Remote Sens. 2013;5(10):5006–5039.
Bai X, Zhang C, Xiao Q, He Y, Bao Y. Application of near-infrared hyperspectral imaging to identify a variety of silage maize seeds and common maize seeds. RSC Adv. 2020;10(20):11707–11715.
Wan L, Zhu J, Du X, Zhang J, Han X, Zhou W, Li X, Liu J, Liang F, He Y, et al. A model for phenotyping crop fractional vegetation cover using imagery from unmanned aerial vehicles. J Exp Bot. 2021;72(13):4691–4707.
Huang L, Li T, Ding C, Zhao J, Zhang D, Yang G. Diagnosis of the severity of Fusarium head blight of wheat ears on the basis of image and spectral feature fusion. Sensors. 2020;20(10):2887.
Jin X, Shi C, Yu CY, Yamada T, Sacks EJ. Determination of leaf water content by visible and near-infrared spectrometry and multivariate calibration in Miscanthus. Front Plant Sci. 2017;8:721.
Soares CJ, Rodrigues MP, Vilela ABF, Rizo ERC, Ferreira LB, Giannini M, Price RB. Evaluation of eye protection filters used with broad-spectrum and conventional LED curing lights. Braz Dent J. 2017;28(1):9–15.
Mokarram N, Merchant A, Mukhatyar V, Patel G, Bellamkonda RV. Effect of modulating macrophage phenotype on peripheral nerve repair. Biomaterials. 2012;33(34):8793–8801.
Abdi H. Partial least squares regression and projection on latent structure regression (PLS regression). Wiley Interdiscip Rev Comput Stat. 2010;2(1):97–106.
Abbaszadeh M, Hezarkhani A, Soltani-Mohammadi S. Proposing drilling locations based on the 3D modeling results of fluid inclusion data using the support vector regression method. J Geochem Explor. 2016;165:23–34.
Guajardo JA, Weber R, Miranda J. A model updating strategy for predicting time series with seasonal patterns. Appl Soft Comput. 2010;10(1):276–283.
Lawrence M, O’Connor M. Sales forecasting updates: How good are they in practice? Int J Forecast. 2000;16(3):369–382.
Wan L, Zhou W, He Y, Wanger TC, Cen H. Combining transfer learning and hyperspectral reflectance analysis to assess leaf nitrogen concentration across different plant species datasets. Remote Sens Environ. 2022;269:112826.
Yu G, Ma B, Chen J, Li X, Li Y, Li C. Nondestructive identification of pesticide residues on the Hami melon surface using deep feature fusion by Vis/NIR spectroscopy and 1D-CNN. J Food Process Eng. 2020;44(1):e13602.
Liu Y, Zhou S, Han W, Liu W, Qiu Z, Li C. Convolutional neural network for hyperspectral data analysis and effective wavelengths selection. Anal Chim Acta. 2019;1086:46–54.
Saeys W, Mouazen AM, Ramon H. Potential for onsite and online analysis of pig manure using visible and near infrared reflectance spectroscopy. Biosyst Eng. 2005;91(4):393–402.
Bangelesa F, Adam E, Knight J, Dhau I, Ramudzuli M, Mokotjomela TM. Predicting soil organic carbon content using hyperspectral remote sensing in a degraded mountain landscape in Lesotho. Appl Environ Soil Sci. 2020;2020:2158573.
Collard BCY, Jahufer MZZ, Brouwer JB, Pang ECK. An introduction to markers, quantitative trait loci (QTL) mapping and marker-assisted selection for crop improvement: The basic concepts. Euphytica. 2005;142(1):169–196.
Yang Y, Chen L, Yan C, Cheng Y, Cheng X, Chen J. Construction of a genetic linkage map of a bacterial blight resistance rice line derived from Oryza meyeriana L. Acta Agriculturae Zhejiangensis. 2012;24:846–852.
Yang C-M. Assessment of the severity of bacterial leaf blight in rice using canopy hyperspectral reflectance. Precis Agric. 2009;11(1):61–81.
Liu T, Shi T, Zhang H, Wu C. Detection of rise damage by leaf folder (Cnaphalocrocis medinalis) using unmanned aerial vehicle based hyperspectral data. Sustainability. 2020;12(22):9343–9357.
Rodríguez J, Lizarazo I, Prieto F, Angulo-Morales V. Assessment of potato late blight from UAV-based multispectral imagery. Comput Electron Agric. 2021;184:106061.
Ma H, Huang W, Dong Y, Liu L, Guo A. Using UAV-based hyperspectral imagery to detect winter wheat Fusarium head blight. Remote Sens. 2021;13(15):3024.
Guo A, Huang W, Dong Y, Ye H, Ma H, Liu B, Wu W, Ren Y, Ruan C, Geng Y. Wheat yellow rust detection using UAV-based hyperspectral technology. Remote Sens. 2021;13(1):123.
Chukwu SC, Rafii MY, Ramlee SI, Ismail SI, Hasan MM, Oladosu YA, Magaji UG, Akos I, Olalekan KK. Bacterial leaf blight resistance in rice: A review of conventional breeding to molecular approach. Mol Biol Rep. 2019;46(1):1519–1532.
Vikal Y, Chawla H, Sharma R, Lore J, Singh K. Mapping of bacterial blight resistance gene xa8 in rice (Oryza sativa L.). Indian J Genet Plant Breed. 2014;74(4s):589–595.
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