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Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator

The abilities of plant biologists and breeders to characterize the genetic basis of physiological traits are limited by their abilities to obtain quantitative data representing precise details of trait variation, and particularly to collect this data at a high-throughput scale with low cost. Althoug...

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Autores principales: Yuan, Jialin, Kaur, Damanpreet, Zhou, Zheng, Nagle, Michael, Kiddle, Nicholas George, Doshi, Nihar A., Behnoudfar, Ali, Peremyslova, Ekaterina, Ma, Cathleen, Strauss, Steven H., Li, Fuxin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: AAAS 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9394117/
https://www.ncbi.nlm.nih.gov/pubmed/36059601
http://dx.doi.org/10.34133/2022/9893639
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author Yuan, Jialin
Kaur, Damanpreet
Zhou, Zheng
Nagle, Michael
Kiddle, Nicholas George
Doshi, Nihar A.
Behnoudfar, Ali
Peremyslova, Ekaterina
Ma, Cathleen
Strauss, Steven H.
Li, Fuxin
author_facet Yuan, Jialin
Kaur, Damanpreet
Zhou, Zheng
Nagle, Michael
Kiddle, Nicholas George
Doshi, Nihar A.
Behnoudfar, Ali
Peremyslova, Ekaterina
Ma, Cathleen
Strauss, Steven H.
Li, Fuxin
author_sort Yuan, Jialin
collection PubMed
description The abilities of plant biologists and breeders to characterize the genetic basis of physiological traits are limited by their abilities to obtain quantitative data representing precise details of trait variation, and particularly to collect this data at a high-throughput scale with low cost. Although deep learning methods have demonstrated unprecedented potential to automate plant phenotyping, these methods commonly rely on large training sets that can be time-consuming to generate. Intelligent algorithms have therefore been proposed to enhance the productivity of these annotations and reduce human efforts. We propose a high-throughput phenotyping system which features a Graphical User Interface (GUI) and a novel interactive segmentation algorithm: Semantic-Guided Interactive Object Segmentation (SGIOS). By providing a user-friendly interface and intelligent assistance with annotation, this system offers potential to streamline and accelerate the generation of training sets, reducing the effort required by the user. Our evaluation shows that our proposed SGIOS model requires fewer user inputs compared to the state-of-art models for interactive segmentation. As a case study of the use of the GUI applied for genetic discovery in plants, we present an example of results from a preliminary genome-wide association study (GWAS) of in planta regeneration in Populus trichocarpa (poplar). We further demonstrate that the inclusion of a semantic prior map with SGIOS can accelerate the training process for future GWAS, using a sample of a dataset extracted from a poplar GWAS of in vitro regeneration. The capabilities of our phenotyping system surpass those of unassisted humans to rapidly and precisely phenotype our traits of interest. The scalability of this system enables large-scale phenomic screens that would otherwise be time-prohibitive, thereby providing increased power for GWAS, mutant screens, and other studies relying on large sample sizes to characterize the genetic basis of trait variation. Our user-friendly system can be used by researchers lacking a computational background, thus helping to democratize the use of deep segmentation as a tool for plant phenotyping.
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spelling pubmed-93941172022-09-02 Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator Yuan, Jialin Kaur, Damanpreet Zhou, Zheng Nagle, Michael Kiddle, Nicholas George Doshi, Nihar A. Behnoudfar, Ali Peremyslova, Ekaterina Ma, Cathleen Strauss, Steven H. Li, Fuxin Plant Phenomics Database/Software Article The abilities of plant biologists and breeders to characterize the genetic basis of physiological traits are limited by their abilities to obtain quantitative data representing precise details of trait variation, and particularly to collect this data at a high-throughput scale with low cost. Although deep learning methods have demonstrated unprecedented potential to automate plant phenotyping, these methods commonly rely on large training sets that can be time-consuming to generate. Intelligent algorithms have therefore been proposed to enhance the productivity of these annotations and reduce human efforts. We propose a high-throughput phenotyping system which features a Graphical User Interface (GUI) and a novel interactive segmentation algorithm: Semantic-Guided Interactive Object Segmentation (SGIOS). By providing a user-friendly interface and intelligent assistance with annotation, this system offers potential to streamline and accelerate the generation of training sets, reducing the effort required by the user. Our evaluation shows that our proposed SGIOS model requires fewer user inputs compared to the state-of-art models for interactive segmentation. As a case study of the use of the GUI applied for genetic discovery in plants, we present an example of results from a preliminary genome-wide association study (GWAS) of in planta regeneration in Populus trichocarpa (poplar). We further demonstrate that the inclusion of a semantic prior map with SGIOS can accelerate the training process for future GWAS, using a sample of a dataset extracted from a poplar GWAS of in vitro regeneration. The capabilities of our phenotyping system surpass those of unassisted humans to rapidly and precisely phenotype our traits of interest. The scalability of this system enables large-scale phenomic screens that would otherwise be time-prohibitive, thereby providing increased power for GWAS, mutant screens, and other studies relying on large sample sizes to characterize the genetic basis of trait variation. Our user-friendly system can be used by researchers lacking a computational background, thus helping to democratize the use of deep segmentation as a tool for plant phenotyping. AAAS 2022-05-18 /pmc/articles/PMC9394117/ /pubmed/36059601 http://dx.doi.org/10.34133/2022/9893639 Text en Copyright © 2022 Jialin Yuan et al. https://creativecommons.org/licenses/by/4.0/Exclusive Licensee Nanjing Agricultural University. Distributed under a Creative Commons Attribution License (CC BY 4.0).
spellingShingle Database/Software Article
Yuan, Jialin
Kaur, Damanpreet
Zhou, Zheng
Nagle, Michael
Kiddle, Nicholas George
Doshi, Nihar A.
Behnoudfar, Ali
Peremyslova, Ekaterina
Ma, Cathleen
Strauss, Steven H.
Li, Fuxin
Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator
title Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator
title_full Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator
title_fullStr Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator
title_full_unstemmed Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator
title_short Robust High-Throughput Phenotyping with Deep Segmentation Enabled by a Web-Based Annotator
title_sort robust high-throughput phenotyping with deep segmentation enabled by a web-based annotator
topic Database/Software Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9394117/
https://www.ncbi.nlm.nih.gov/pubmed/36059601
http://dx.doi.org/10.34133/2022/9893639
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