Image‐based assessment of plant disease progression identifies new genetic loci for resistance to Ralstonia solanacearum in tomato

Author:

Méline Valérian1,Caldwell Denise L.1,Kim Bong‐Suk1,Khangura Rajdeep S.2,Baireddy Sriram3,Yang Changye3,Sparks Erin E.4,Dilkes Brian2,Delp Edward J.3,Iyer‐Pascuzzi Anjali S.1ORCID

Affiliation:

1. Department of Botany and Plant Pathology and Center for Plant Biology Purdue University 915 W. State Street West Lafayette Indiana USA

2. Department of Biochemistry and Center for Plant Biology Purdue University West Lafayette Indiana 47907 USA

3. Video and Image Processing Laboratory (VIPER) School of Electrical and Computer Engineering Purdue University West Lafayette Indiana USA

4. Department of Plant and Soil Sciences and the Delaware Biotechnology Institute University of Delaware Newark Delaware USA

Abstract

SUMMARYA major challenge in global crop production is mitigating yield loss due to plant diseases. One of the best strategies to control these losses is through breeding for disease resistance. One barrier to the identification of resistance genes is the quantification of disease severity, which is typically based on the determination of a subjective score by a human observer. We hypothesized that image‐based, non‐destructive measurements of plant morphology over an extended period after pathogen infection would capture subtle quantitative differences between genotypes, and thus enable identification of new disease resistance loci. To test this, we inoculated a genetically diverse biparental mapping population of tomato (Solanum lycopersicum) with Ralstonia solanacearum, a soilborne pathogen that causes bacterial wilt disease. We acquired over 40 000 time‐series images of disease progression in this population, and developed an image analysis pipeline providing a suite of 10 traits to quantify bacterial wilt disease based on plant shape and size. Quantitative trait locus (QTL) analyses using image‐based phenotyping for single and multi‐traits identified QTLs that were both unique and shared compared with those identified by human assessment of wilting, and could detect QTLs earlier than human assessment. Expanding the phenotypic space of disease with image‐based, non‐destructive phenotyping both allowed earlier detection and identified new genetic components of resistance.

Funder

Foundation for Food and Agriculture Research

National Institute of Food and Agriculture

National Science Foundation of Sri Lanka

Publisher

Wiley

Subject

Cell Biology,Plant Science,Genetics

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