Research Article | Open Access
Volume 2020 |Article ID 5801869 | https://doi.org/10.34133/2020/5801869

Latent Space Phenotyping: Automatic Image-Based Phenotyping for Treatment Studies

Jordan Ubbens iD ,1 Mikolaj CieslakiD ,2 Przemyslaw Prusinkiewicz,2 Isobel ParkiniD ,3 Jana EbersbachiD ,3 and Ian StavnessiD 1

1Department of Computer Science, University of Saskatchewan, Canada
2Department of Computer Science, University of Calgary, Canada
3Agriculture and Agri-Food Canada, Saskatoon, SK, Canada

Received 
29 Oct 2019
Accepted 
15 Dec 2019
Published
20 Jan 2020

Abstract

Association mapping studies have enabled researchers to identify candidate loci for many important environmental tolerance factors, including agronomically relevant tolerance traits in plants. However, traditional genome-by-environment studies such as these require a phenotyping pipeline which is capable of accurately measuring stress responses, typically in an automated high-throughput context using image processing. In this work, we present Latent Space Phenotyping (LSP), a novel phenotyping method which is able to automatically detect and quantify response-to-treatment directly from images. We demonstrate example applications using data from an interspecific cross of the model C4 grass Setaria, a diversity panel of sorghum (S. bicolor), and the founder panel for a nested association mapping population of canola (Brassica napus L.). Using two synthetically generated image datasets, we then show that LSP is able to successfully recover the simulated QTL in both simple and complex synthetic imagery. We propose LSP as an alternative to traditional image analysis methods for phenotyping, enabling the phenotyping of arbitrary and potentially complex response traits without the need for engineering-complicated image-processing pipelines.

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