1. High-throughput measurement of plant fitness traits with an object detection method using Faster R-CNN
- Author
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Peipei Wang, Fanrui Meng, Paityn Donaldson, Sarah Horan, Nicholas L. Panchy, Elyse Vischulis, Eamon Winship, Jeffrey K. Conner, Patrick J. Krysan, Shin‐Han Shiu, and Melissa D. Lehti‐Shiu
- Subjects
Phenotype ,Physiology ,Seeds ,Arabidopsis ,Plant Science ,Neural Networks, Computer ,Algorithms - 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
- Published
- 2021