A Deep Learning-Based Approach for High-Throughput Hypocotyl Phenotyping

被引:17
|
作者
Dobos, Orsolya [1 ,2 ]
Horvath, Peter [3 ]
Nagy, Ferenc [1 ]
Danka, Tivadar [3 ]
Viczian, Andras [1 ]
机构
[1] Hungarian Acad Sci, Inst Plant Biol, Res Ctr, H-6726 Szeged, Hungary
[2] Univ Szeged, Fac Sci & Informat, Doctoral Sch Biol, H-6726 Szeged, Hungary
[3] Hungarian Acad Sci, Inst Biochem, Biol Res Ctr, H-6726 Szeged, Hungary
基金
匈牙利科学研究基金会;
关键词
DEETIOLATED MUSTARD SEEDLINGS; B-INDUCED PHOTOMORPHOGENESIS; ARABIDOPSIS MUTANTS; IMAGE-ANALYSIS; GROWTH; LIGHT; PHYTOCHROME; ELONGATION; PHOTORECEPTOR; EXPRESSION;
D O I
10.1104/pp.19.00728
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Hypocotyl length determination is a widely used method to phenotype young seedlings. The measurement itself has advanced from using rulers and millimeter papers to assessing digitized images but remains a labor-intensive, monotonous, and time-consuming procedure. To make high-throughput plant phenotyping possible, we developed a deep-learning-based approach to simplify and accelerate this method. Our pipeline does not require a specialized imaging system but works well with low-quality images produced with a simple flatbed scanner or a smartphone camera. Moreover, it is easily adaptable for a diverse range of datasets not restricted to Arabidopsis (Arabidopsis thaliana). Furthermore, we show that the accuracy of the method reaches human performance. We not only provide the full code at , but also give detailed instructions on how the algorithm can be trained with custom data, tailoring it for the requirements and imaging setup of the user. A deep learning-based algorithm provides an adaptable tool for determining hypocotyl or coleoptile length of different plant species.
引用
收藏
页码:1415 / 1424
页数:10
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