Genomic prediction for potato (Solanum tuberosum) quality traits improved through image analysis

Muyideen Yusuf, Michael D. Miller, Thomas R. Stefaniak, Darrin Haagenson, Jeffrey B. Endelman, Asunta L. Thompson, Laura M. Shannon
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Abstract

Potato (Solanum tuberosum L.) is the most widely grown vegetable in the world. Consumers and processors evaluate potatoes based on quality traits such as shape and skin color, making these traits important targets for breeders. Achieving and evaluating genetic gain is facilitated by precise and accurate trait measures. Historically, quality traits have been measured using visual rating scales, which are subject to human error and necessarily lump individuals with distinct characteristics into categories. Image analysis offers a method of generating quantitative measures of quality traits. In this study, we use TubAR, an image‐analysis R package, to generate quantitative measures of shape and skin color traits for use in genomic prediction. We developed and compared different genomic models based on additive and additive plus non‐additive relationship matrices for two aspects of skin color, redness, and lightness, and two aspects of shape, roundness, and length‐to‐width ratio for fresh market red and yellow potatoes grown in Minnesota between 2020 and 2022. Similarly, we used the much larger chipping potato population grown during the same time to develop a multi‐trait selection index including roundness, specific gravity, and yield. Traits ranged in heritability with shape traits falling between 0.23 and 0.85, and color traits falling between 0.34 and 0.91. Genetic effects were primarily additive with color traits showing the strongest effect (0.47), while shape traits varied based on market class. Modeling non‐additive effects did not significantly improve prediction models for quality traits. The combination of image analysis and genomic prediction presents a promising avenue for improving potato quality traits.
通过图像分析改进马铃薯(Solanum tuberosum)品质性状的基因组预测
马铃薯(Solanum tuberosum L.)是世界上种植最广泛的蔬菜。消费者和加工商根据马铃薯的形状和皮色等质量性状对其进行评价,因此这些性状成为育种者的重要目标。精确和准确的性状测量有助于实现和评估遗传增益。一直以来,质量性状的测量都是采用目测评分法,这种方法容易出现人为误差,而且必然会将具有不同特征的个体归为一类。图像分析为质量性状的量化测量提供了一种方法。在本研究中,我们使用图像分析 R 软件包 TubAR 生成形状和肤色特征的定量测量值,用于基因组预测。我们针对 2020 年至 2022 年期间在明尼苏达州种植的新鲜上市红薯和黄薯,开发并比较了基于加性关系矩阵和加性加非加性关系矩阵的不同基因组模型,涉及皮色的两个方面--红度和亮度,以及形状的两个方面--圆度和长宽比。同样,我们利用同一时期种植的更大的削片马铃薯种群,制定了包括圆度、比重和产量在内的多性状选择指数。性状的遗传率各不相同,形状性状的遗传率介于 0.23 和 0.85 之间,颜色性状的遗传率介于 0.34 和 0.91 之间。遗传效应主要是加性效应,其中颜色性状的效应最强(0.47),而形状性状则因市场等级而异。建立非加成效应模型并不能明显改善质量性状的预测模型。图像分析与基因组预测的结合为改善马铃薯品质性状提供了一条很有前景的途径。
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