An Integrated Multi-Omics and Artificial Intelligence Framework for Advance Plant Phenotyping in Horticulture

Author:

Cembrowska-Lech Danuta12ORCID,Krzemińska Adrianna23ORCID,Miller Tymoteusz24ORCID,Nowakowska Anna1ORCID,Adamski Cezary3,Radaczyńska Martyna5,Mikiciuk Grzegorz6ORCID,Mikiciuk Małgorzata7ORCID

Affiliation:

1. Department of Physiology and Biochemistry, Institute of Biology, University of Szczecin, Felczaka 3c, 71-412 Szczecin, Poland

2. Polish Society of Bioinformatics and Data Science BIODATA, Popiełuszki 4c, 71-214 Szczecin, Poland

3. Institute of Biology, University of Szczecin, Wąska 13, 71-415 Szczecin, Poland

4. Institute of Marine and Environmental Sciences, University of Szczecin, Wąska 13, 71-415 Szczecin, Poland

5. Sanprobi Sp. z o. o. Sp. k., Kurza Stopka 5/C, 70-535 Szczecin, Poland

6. Department of Horticulture, Faculty of Environmental Management and Agriculture, West Pomeranian University of Technology in Szczecin, Słowackiego 17, 71-434 Szczecin, Poland

7. Department of Bioengineering, Faculty of Environmental Management and Agriculture, West Pomeranian University of Technology in Szczecin, Słowackiego 17, 71-434 Szczecin, Poland

Abstract

This review discusses the transformative potential of integrating multi-omics data and artificial intelligence (AI) in advancing horticultural research, specifically plant phenotyping. The traditional methods of plant phenotyping, while valuable, are limited in their ability to capture the complexity of plant biology. The advent of (meta-)genomics, (meta-)transcriptomics, proteomics, and metabolomics has provided an opportunity for a more comprehensive analysis. AI and machine learning (ML) techniques can effectively handle the complexity and volume of multi-omics data, providing meaningful interpretations and predictions. Reflecting the multidisciplinary nature of this area of research, in this review, readers will find a collection of state-of-the-art solutions that are key to the integration of multi-omics data and AI for phenotyping experiments in horticulture, including experimental design considerations with several technical and non-technical challenges, which are discussed along with potential solutions. The future prospects of this integration include precision horticulture, predictive breeding, improved disease and stress response management, sustainable crop management, and exploration of plant biodiversity. The integration of multi-omics and AI holds immense promise for revolutionizing horticultural research and applications, heralding a new era in plant phenotyping.

Publisher

MDPI AG

Subject

General Agricultural and Biological Sciences,General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology

Reference264 articles.

1. Cultural Changes and Food Production;Tang;Int. J. Bus. Soc. Res.,2017

2. Dissanayake, D.H.G. (2020). Home Gardens for Improved Food Security and Livelihoods, Routledge.

3. Abebe, A.M., Kim, Y., Kim, J., Kim, S.L., and Baek, J. (2023). Image-Based High-Throughput Phenotyping in Horticultural Crops. Plants, 12.

4. Kirk, R., Mangan, M., and Cielniak, G. (2021). International Conference on Computer Vision Systems, Springer International Publishing.

5. High-Throughput Physiology-Based Stress Response Phenotyping: Advantages, Applications and Prospective in Horticultural Plants;Li;Hortic. Plant J.,2021

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