학술논문

A primer on artificial intelligence in plant digital phenomics: embarking on the data to insights journey
Document Type
article
Source
Trends in Plant Science. 28(2)
Subject
Plant Biology
Biological Sciences
Humans
Artificial Intelligence
Phenomics
Technology
AI system architecture
black box models
data analytics
digital phenomics
explainable artificial intelligence
interpretable by design models
Ecology
Crop and Pasture Production
Plant Biology & Botany
Plant biology
Language
Abstract
Artificial intelligence (AI) has emerged as a fundamental component of global agricultural research that is poised to impact on many aspects of plant science. In digital phenomics, AI is capable of learning intricate structure and patterns in large datasets. We provide a perspective and primer on AI applications to phenome research. We propose a novel human-centric explainable AI (X-AI) system architecture consisting of data architecture, technology infrastructure, and AI architecture design. We clarify the difference between post hoc models and 'interpretable by design' models. We include guidance for effectively using an interpretable by design model in phenomic analysis. We also provide directions to sources of tools and resources for making data analytics increasingly accessible. This primer is accompanied by an interactive online tutorial.