Phytopathogenic mollicutes
SCOPUS
  • Year: 2025
  • Volume: 15
  • Issue: 1

Leveraging artificial intelligence and big data to advance phytoplasma disease detection and crop health management

1Molecular Plant Pathology Laboratory, Agricultural Research Service, United States Department of Agriculture, Beltsville, Maryland, United States of America

2Statistics and Bioinformatics Group - Northeast Area, Agricultural Research Service, United States Department of Agriculture, Beltsville, Maryland, United States of America

*Corresponding author e-mail: Wei Wei (wei.wei@usda.gov)

Online published on 5 March, 2025.

Abstract

Phytoplasmas are minute, cell wall-less bacteria that infect various economically important crops worldwide, leading to significant agricultural losses. Traditional diagnostic methods are often time-consuming, require specialized expertise, and thus limit timely intervention. This study addressed these challenges by combining two complementary approaches. The first is devising an artificial intelligence (AI)-based diagnostic system utilizing Convolutional Neural Networks (CNNs) trained on extensive image datasets, enabling rapid, accurate detection of phytoplasma infections with promising accuracy. The second approach involves the construction of a comprehensive image and symptom database that allows farmers to compare crop symptoms for early disease identification. The image database serves as an initial online-accessible tool for proactive crop management while the AI model is being further optimized. Eventually, the AI diagnostic model and image database will be integrated, forming a scalable, powerful solution aimed at advancing phytoplasma disease management and enhancing crop protection strategies.

Keywords

Machine learning, Real-time diagnostics, Convolutional neural networks