Classification for avian malaria parasite Plasmodium gallinaceum blood stages by using deep convolutional neural networks.

Journal: Scientific reports
PMID:

Abstract

The infection of an avian malaria parasite (Plasmodium gallinaceum) in domestic chickens presents a major threat to the poultry industry because it causes economic loss in both the quality and quantity of meat and egg production. Computer-aided diagnosis has been developed to automatically identify avian malaria infections and classify the blood infection stage development. In this study, four types of deep convolutional neural networks, namely Darknet, Darknet19, Darknet19-448 and Densenet201 are used to classify P. gallinaceum blood stages. We randomly collected a dataset of 12,761 single-cell images consisting of three parasite stages from ten-infected blood films stained by Giemsa. All images were confirmed by three well-trained examiners. The study mainly compared several image classification models and used both qualitative and quantitative data for the evaluation of the proposed models. In the model-wise comparison, the four neural network models gave us high values with a mean average accuracy of at least 97%. The Darknet can reproduce a superior performance in the classification of the P. gallinaceum development stages across any other model architectures. Furthermore, the Darknet has the best performance in multiple class-wise classification, with average values of greater than 99% in accuracy, specificity, and sensitivity. It also has a low misclassification rate (< 1%) than the other three models. Therefore, the model is more suitable in the classification of P. gallinaceum blood stages. The findings could help us create a fast-screening method to help non-experts in field studies where there is a lack of specialized instruments for avian malaria diagnostics.

Authors

  • Veerayuth Kittichai
    Faculty of Medicine, King Mongkut's Institute of Technology Ladkrabang, 1 chalongkrug road, Bangkok, Thailand.
  • Morakot Kaewthamasorn
    Veterinary Parasitology Research Unit, Faculty of Veterinary Science, Chulalongkorn University, Bangkok, Thailand.
  • Suchansa Thanee
    Veterinary Parasitology Research Unit, Faculty of Veterinary Science, Chulalongkorn University, Bangkok, Thailand.
  • Rangsan Jomtarak
    Faculty of Science and Technology, Suan Dusit University, Bangkok, Thailand.
  • Kamonpob Klanboot
    College of Advanced Manufacturing Innovation, King Mongkut's Institute of Technology Ladkrabang, Bangkok, Thailand.
  • Kaung Myat Naing
    College of Advanced Manufacturing Innovation, King Mongkut's Institute of Technology Ladkrabang, Bangkok, Thailand.
  • Teerawat Tongloy
    College of Advanced Manufacturing Innovation, King Mongkut's Institute of Technology Ladkrabang, 1 chalongkrug road, Bangkok, Thailand.
  • Santhad Chuwongin
    College of Advanced Manufacturing Innovation, King Mongkut's Institute of Technology Ladkrabang, 1 chalongkrug road, Bangkok, Thailand.
  • Siridech Boonsang
    Department of Electrical Engineering, Faculty of Engineering, King Mongkut's Institute of Technology Ladkrabang, 1 chalongkrug road, Bangkok, Thailand. Siridech.bo@kmitl.ac.th.