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Plant roots influence many ecological and biogeochemical processes, such as carbon, water and nutrient cycling. Because of difficult accessibility, knowledge on plant root growth dynamics in field conditions, however, is fragmentary at best. Minirhizotrons, i.e. transparent tubes placed in the substrate into which specialized cameras or circular scanners are inserted, facilitate the capture of high-resolution images of root dynamics at the soil-tube interface with little to no disturbance after the initial installation. Their use, especially in field studies with multiple species and heterogeneous substrates, though, is limited by the amount of work that subsequent manual tracing of roots in the images requires. Furthermore, the reproducibility and objectivity of manual root detection is questionable. Here, we use a Convolutional Neural Network (CNN) for the automatic detection of roots in minirhizotron images and compare the performance of our RootDetector with human analysts with different levels of expertise. Our minirhizotron data come from various wetlands on organic soils, i.e. highly heterogeneous substrates consisting of dead plant material, often times mainly roots, in various degrees of decomposition. This may be seen as one of the most challenging soil types for root segmentation in minirhizotron images. RootDetector showed a high capability to correctly segment root pixels in minirhizotron images from field observations (F1 = 0.6044; r compared to a human expert = 0.99). Reproducibility among humans, however, depended strongly on expertise level, with novices showing drastic variation among individual analysts and annotating on average more than 13-times higher root length/cm per image compared to expert analysts. CNNs such as RootDetector provide a reliable and efficient method for the detection of roots and root length in minirhizotron images even from challenging field conditions. Analyses with RootDetector thus save resources, are reproducible and objective, and are as accurate as manual analyses performed by human experts.
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http://dx.doi.org/10.1038/s41598-023-28400-x | DOI Listing |
Sensors (Basel)
August 2025
CAS Key Laboratory of Forest Ecology and Management, Institute of Applied Ecology, Chinese Academy of Sciences, Shenyang 110016, China.
Accurate segmentation of fine roots in field rhizotron imagery is essential for high-throughput root system analysis but remains challenging due to limitations of traditional methods. Traditional methods for root quantification (e.g.
View Article and Find Full Text PDFAnn Bot
August 2025
Department of Plant and Environmental Sciences, University of Copenhagen, Højbakkegård Allé 30, 2630 Taastrup, Denmark.
Background And Aims: Deep roots may help plants adapt to climate change by allowing them to access deeper soil layers where water is still available, reducing water stress and increasing nitrogen (N) uptake. Water stress significantly affects yield during later developmental stages, but methods are lacking for phenotyping for deep rooting under field conditions and at maturity.
Methods: Over three years, we used minirhizotron root imaging in the RadiMax semi-field facility to compare deep rooting in winter wheat genotypes grown in field soil to 2.
Ann Bot
May 2025
Department of Plant and Environmental Sciences, University of Copenhagen, Højbakkegård Allé 30, 2630 Taastrup, Denmark.
Background And Aims: There is growing interest in production of ancient grains including emmer, einkorn and spelt, particularly in low input systems. Differences in their root systems and how these affect water and nitrogen uptake are not well known, but can offer important insights into the effects of plant breeding on resource use and root physiology, which can inform breeding of future crops.
Methods: In this study, we used imaging in minirhizotron tubes to evaluate root development in emmer, einkorn, spelt and modern wheat growing under field conditions, taking images to 2.
Plant Methods
December 2024
Institute of Sugar Beet Research, Holtenser Landstraße 77, 37079, Göttingen, Germany.
Background: Root growth is most commonly determined with the destructive soil core method, which is very labor-intensive and destroys the plants at the sampling spots. The alternative minirhizotron technique allows for root growth observation throughout the growing season at the same spot but necessitates a high-throughput image analysis for being labor- and cost-efficient. In this study, wheat root development in agronomically varied situations was monitored with minirhizotrons over the growing period in two years, paralleled by destructive samplings at two dates.
View Article and Find Full Text PDFPlant Methods
October 2024
Birmingham Institute of Forest Research, University of Birmingham, Birmingham, UK.