Automatic identification of clinically important Aspergillus species by artificial intelligence-based image recognition: proof-of-concept study

Emerg Microbes Infect. 2025 Dec;14(1):2434573. doi: 10.1080/22221751.2024.2434573. Epub 2024 Dec 9.

Abstract

While morphological examination is the most widely used for Aspergillus identification in clinical laboratories, PCR-sequencing and MALDI-TOF MS are emerging technologies in more financially-competent laboratories. However, mycological expertise, molecular biologists and/or expensive equipment are needed for these. Recently, artificial intelligence (AI), especially image recognition, is being increasingly employed in medicine for fast and automated disease diagnosis. We explored the potential utility of AI in identifying Aspergillus species. In this proof-of-concept study, using 2813, 2814 and 1240 images from four clinically important Aspergillus species for training, validation and testing, respectively; the performances and accuracies of automatic Aspergillus identification using colonial images by three different convolutional neural networks were evaluated. Results demonstrated that ResNet-18 outperformed Inception-v3 and DenseNet-121 and is the best algorithm of choice because it made the fewest misidentifications (n = 8) and possessed the highest testing accuracy (99.35%). Images showing more unique morphological features were more accurately identified. AI-based image recognition using colonial images is a promising technology for Aspergillus identification. Given its short turn-around-time, minimal demand of expertise, low reagent/equipment costs and user-friendliness, it has the potential to serve as a routine laboratory diagnostic tool after the database is further expanded.

Keywords: Aspergillus; artificial intelligence; automation; identification; image recognition; machine learning.

MeSH terms

  • Algorithms
  • Artificial Intelligence*
  • Aspergillosis* / diagnosis
  • Aspergillosis* / microbiology
  • Aspergillus* / genetics
  • Aspergillus* / isolation & purification
  • Humans
  • Image Processing, Computer-Assisted / methods
  • Neural Networks, Computer
  • Proof of Concept Study

Grants and funding

This work was partly supported by the Innovation and Technology Fund Midstream Research Programme for Universities (MRP/026/18) and Research Talent Hub (InP/007/19, InP/011/19, InP/029/21, InP/046/20, InP/154/19, InP/226/20, InP/321/19, InP/356/20, PiH/006/19, PiH/074/19, PiH/115/21 and PiH/260/21) of the Innovation and Technology Commission, the Government of the Hong Kong Special Administrative Region; the framework of the Higher Education SPROUT Project by the Ministry of Education (MOE-112-S-023-A) in Taiwan; as well as the Early Career Researcher Award (2022/2023) from Tung Wah College, Hong Kong. Any opinions, findings, conclusions or recommendations expressed in this material/event (or by members of the project team) do not reflect the views of the Government of the Hong Kong Special Administrative Region, the Innovation and Technology Commission or the Innovation and Technology Fund Research Projects Assessment Panel.