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使用机器学习测量花粉发芽率的一种简单方法。

A simple method for measuring pollen germination rate using machine learning.

机构信息

Faculty of Agriculture, Kindai University, Nara, 631-8505, Japan.

Graduate School of Agriculture, Kyoto University, Kizugawa, 619-0218, Japan.

出版信息

Plant Reprod. 2023 Dec;36(4):355-364. doi: 10.1007/s00497-023-00472-9. Epub 2023 Jun 6.

Abstract

The pollen germination rate decreases under various abiotic stresses, such as high-temperature stress, and it is one of the causes of inhibition of plant reproduction. Thus, measuring pollen germination rate is vital for understanding the reproductive ability of plants. However, measuring the pollen germination rate requires much labor when counting pollen. Therefore, we used the Yolov5 machine learning package in order to perform transfer learning and constructed a model that can detect germinated and non-germinated pollen separately. Pollen images of the chili pepper, Capsicum annuum, were used to create this model. Using images with a width of 640 pixels for training constructed a more accurate model than using images with a width of 320 pixels. This model could estimate the pollen germination rate of the F population of C. chinense previously studied with high accuracy. In addition, significantly associated gene regions previously detected in genome-wide association studies in this F population could again be detected using the pollen germination rate predicted by this model as a trait. Moreover, the model detected rose, tomato, radish, and strawberry pollen grains with similar accuracy to chili pepper. The pollen germination rate could be estimated even for plants other than chili pepper, probably because pollen images were similar among different plant species. We obtained a model that can identify genes related to pollen germination rate through genetic analyses in many plants.

摘要

在各种非生物胁迫下,花粉的萌发率会下降,这也是抑制植物繁殖的原因之一。因此,测量花粉的萌发率对于了解植物的繁殖能力至关重要。然而,在计数花粉时,测量花粉的萌发率需要大量的劳动力。因此,我们使用了 Yolov5 机器学习包进行迁移学习,并构建了一个可以分别检测萌发和非萌发花粉的模型。该模型使用辣椒花粉图像进行构建。使用宽度为 640 像素的图像进行训练比使用宽度为 320 像素的图像构建的模型更准确。该模型可以准确估计之前研究过的 C. chinense F 群体的花粉萌发率。此外,使用该模型预测的花粉萌发率作为性状,可以再次检测到之前在该 F 群体的全基因组关联研究中检测到的与显著相关的基因区域。此外,该模型对玫瑰、番茄、萝卜和草莓花粉粒的检测准确率与辣椒相似。即使对于辣椒以外的植物,也可以估计花粉的萌发率,这可能是因为不同植物物种的花粉图像相似。我们获得了一个可以通过对许多植物进行遗传分析来识别与花粉萌发率相关的基因的模型。

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