International Potato Center (CIP), Headquarters, P.O. Box 1558, Lima 15024, Peru.
International Potato Center (CIP), Headquarters, P.O. Box 1558, Lima 15024, Peru; Programa academico de ingenieria ambiental, Universidad de Huanuco, Jr. Hermilio Valdizan N° 871, Huanuco, Peru.
Virus Res. 2024 Jan 2;339:199276. doi: 10.1016/j.virusres.2023.199276. Epub 2023 Nov 25.
Breeders have made important efforts to develop genotypes able to resist virus attacks in sweetpotato, a major crop providing food security and poverty alleviation to smallholder farmers in many regions of Sub-Saharan Africa, Asia and Latin America. However, a lack of accurate objective quantitative methods for this selection target in sweetpotato prevents a consistent and extensive assessment of large breeding populations. In this study, an approach to characterize and classify resistance in sweetpotato was established by assessing total yield loss and virus load after the infection of the three most common viruses (SPFMV, SPCSV, SPLCV). Twelve sweetpotato genotypes with contrasting reactions to virus infection were grown in the field under three different treatments: pre-infected by the three viruses, un-infected and protected from re-infection, and un-infected but exposed to natural infection. Virus loads were assessed using ELISA, (RT-)qPCR, and loop-mediated isothermal amplification (LAMP) methods, and also through multispectral reflectance and canopy temperature collected using an unmanned aerial vehicle. Total yield reduction compared to control and the arithmetic sum of (RT-)qPCR relative expression ratios were used to classify genotypes into four categories: resistant, tolerant, susceptible, and sensitives. Using 14 remote sensing predictors, machine learning algorithms were trained to classify all plots under the said categories. The study found that remotely sensed predictors were effective in discriminating the different virus response categories. The results suggest that using machine learning and remotely sensed data, further complemented by fast and sensitive LAMP assays to confirm results of predicted classifications could be used as a high throughput approach to support virus resistance phenotyping in sweetpotato breeding.
种植者为培育能够抵抗病毒攻击的甘薯基因型付出了巨大努力,甘薯是一种主要作物,为撒哈拉以南非洲、亚洲和拉丁美洲许多地区的小农户提供了粮食安全和减贫。然而,由于缺乏甘薯这一选择目标的准确客观的定量方法,无法对大型育种群体进行一致和广泛的评估。在这项研究中,通过评估三种最常见病毒(SPFMV、SPCSV 和 SPLCV)感染后的总产量损失和病毒载量,建立了一种用于表征和分类甘薯抗性的方法。在三种不同处理下(三种病毒预感染、未感染且免受再感染、未感染但暴露于自然感染),在田间种植了 12 个对病毒感染反应不同的甘薯基因型。使用 ELISA、(RT-)qPCR 和环介导等温扩增(LAMP)方法评估病毒载量,并使用无人机收集多光谱反射率和冠层温度。与对照相比,总产量减少和(RT-)qPCR 相对表达比的算术和用于将基因型分为四类:抗性、耐病、感病和敏感。使用 14 个遥感预测因子,训练机器学习算法对所有分类的地块进行分类。研究发现,遥感预测因子能够有效地区分不同的病毒反应类别。结果表明,使用机器学习和遥感数据,并进一步补充快速和敏感的 LAMP 检测来确认预测分类的结果,可作为一种高通量方法,支持甘薯抗病性表型鉴定。