Max-Planck-Institute of Molecular Plant Physiology, Potsdam, Germany.
Federal Research Centre for Cultivated Plants, Julius-Kühn Institut, Institute for Resistance Research and Stress Tolerance, Sanitz, Germany.
Plant Biotechnol J. 2018 Apr;16(4):939-950. doi: 10.1111/pbi.12840. Epub 2017 Oct 17.
Potato (Solanum tuberosum L.) is one of the most important food crops worldwide. Current potato varieties are highly susceptible to drought stress. In view of global climate change, selection of cultivars with improved drought tolerance and high yield potential is of paramount importance. Drought tolerance breeding of potato is currently based on direct selection according to yield and phenotypic traits and requires multiple trials under drought conditions. Marker-assisted selection (MAS) is cheaper, faster and reduces classification errors caused by noncontrolled environmental effects. We analysed 31 potato cultivars grown under optimal and reduced water supply in six independent field trials. Drought tolerance was determined as tuber starch yield. Leaf samples from young plants were screened for preselected transcript and nontargeted metabolite abundance using qRT-PCR and GC-MS profiling, respectively. Transcript marker candidates were selected from a published RNA-Seq data set. A Random Forest machine learning approach extracted metabolite and transcript markers for drought tolerance prediction with low error rates of 6% and 9%, respectively. Moreover, by combining transcript and metabolite markers, the prediction error was reduced to 4.3%. Feature selection from Random Forest models allowed model minimization, yielding a minimal combination of only 20 metabolite and transcript markers that were successfully tested for their reproducibility in 16 independent agronomic field trials. We demonstrate that a minimum combination of transcript and metabolite markers sampled at early cultivation stages predicts potato yield stability under drought largely independent of seasonal and regional agronomic conditions.
马铃薯(Solanum tuberosum L.)是全球最重要的粮食作物之一。目前的马铃薯品种对干旱胁迫极为敏感。鉴于全球气候变化,选择具有提高耐旱性和高产潜力的品种至关重要。马铃薯耐旱性育种目前基于根据产量和表型特征进行直接选择,并需要在干旱条件下进行多次试验。标记辅助选择(MAS)更便宜、更快,并减少了非受控环境影响引起的分类错误。我们在六个独立的田间试验中分析了在最佳和减少供水条件下生长的 31 个马铃薯品种。耐旱性被确定为块茎淀粉产量。从小植株叶片样本中,使用 qRT-PCR 和 GC-MS 图谱分析分别筛选出预选转录本和非靶向代谢物丰度。转录本标记候选物从已发表的 RNA-Seq 数据集选择。随机森林机器学习方法提取了用于耐旱性预测的代谢物和转录本标记,错误率分别为 6%和 9%。此外,通过结合转录本和代谢物标记,预测错误率降低至 4.3%。随机森林模型的特征选择允许模型最小化,仅产生最小组合,仅使用 20 个代谢物和转录本标记,这些标记在 16 个独立的农业田间试验中成功进行了重现性测试。我们证明,在早期种植阶段采样的转录本和代谢物标记的最小组合,在很大程度上独立于季节性和区域性农业条件,预测马铃薯在干旱条件下的产量稳定性。