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利用基于 Faster R-CNN 的目标检测方法进行高通量植物适合度性状测量。

High-throughput measurement of plant fitness traits with an object detection method using Faster R-CNN.

机构信息

Department of Plant Biology, Michigan State University, East Lansing, MI, 48824, USA.

DOE Great Lake Bioenergy Research Center, Michigan State University, East Lansing, MI, 48824, USA.

出版信息

New Phytol. 2022 May;234(4):1521-1533. doi: 10.1111/nph.18056. Epub 2022 Mar 26.

Abstract

Revealing the contributions of genes to plant phenotype is frequently challenging because loss-of-function effects may be subtle or masked by varying degrees of genetic redundancy. Such effects can potentially be detected by measuring plant fitness, which reflects the cumulative effects of genetic changes over the lifetime of a plant. However, fitness is challenging to measure accurately, particularly in species with high fecundity and relatively small propagule sizes such as Arabidopsis thaliana. An image segmentation-based method using the software ImageJ and an object detection-based method using the Faster Region-based Convolutional Neural Network (R-CNN) algorithm were used for measuring two Arabidopsis fitness traits: seed and fruit counts. The segmentation-based method was error-prone (correlation between true and predicted seed counts, r  = 0.849) because seeds touching each other were undercounted. By contrast, the object detection-based algorithm yielded near perfect seed counts (r  = 0.9996) and highly accurate fruit counts (r  = 0.980). Comparing seed counts for wild-type and 12 mutant lines revealed fitness effects for three genes; fruit counts revealed the same effects for two genes. Our study provides analysis pipelines and models to facilitate the investigation of Arabidopsis fitness traits and demonstrates the importance of examining fitness traits when studying gene functions.

摘要

揭示基因对植物表型的贡献常常具有挑战性,因为功能丧失效应可能很细微,或者被不同程度的遗传冗余所掩盖。通过测量植物的适合度,可以潜在地检测到这些效应,适合度反映了遗传变化在植物一生中的累积效应。然而,适合度很难准确测量,特别是在那些具有高繁殖力和相对较小繁殖体大小的物种中,如拟南芥。本研究使用基于图像分割的软件 ImageJ 和基于对象检测的 Faster Region-based Convolutional Neural Network (R-CNN) 算法,用于测量拟南芥的两个适合度性状:种子和果实计数。基于分割的方法容易出错(真实和预测种子计数之间的相关性,r = 0.849),因为相互接触的种子被低估了。相比之下,基于对象检测的算法产生了近乎完美的种子计数(r = 0.9996)和高度准确的果实计数(r = 0.980)。比较野生型和 12 个突变株的种子计数揭示了三个基因的适合度效应;果实计数揭示了两个基因的相同效应。本研究提供了分析管道和模型,以促进拟南芥适合度性状的研究,并证明了在研究基因功能时检查适合度性状的重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/25eb/9310946/d34004cfb8bd/NPH-234-1521-g004.jpg

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