Machine Learning and Its Applications for Protozoal Pathogens and Protozoal Infectious Diseases

Front Cell Infect Microbiol. 2022 Apr 28:12:882995. doi: 10.3389/fcimb.2022.882995. eCollection 2022.

Abstract

In recent years, massive attention has been attracted to the development and application of machine learning (ML) in the field of infectious diseases, not only serving as a catalyst for academic studies but also as a key means of detecting pathogenic microorganisms, implementing public health surveillance, exploring host-pathogen interactions, discovering drug and vaccine candidates, and so forth. These applications also include the management of infectious diseases caused by protozoal pathogens, such as Plasmodium, Trypanosoma, Toxoplasma, Cryptosporidium, and Giardia, a class of fatal or life-threatening causative agents capable of infecting humans and a wide range of animals. With the reduction of computational cost, availability of effective ML algorithms, popularization of ML tools, and accumulation of high-throughput data, it is possible to implement the integration of ML applications into increasing scientific research related to protozoal infection. Here, we will present a brief overview of important concepts in ML serving as background knowledge, with a focus on basic workflows, popular algorithms (e.g., support vector machine, random forest, and neural networks), feature extraction and selection, and model evaluation metrics. We will then review current ML applications and major advances concerning protozoal pathogens and protozoal infectious diseases through combination with correlative biology expertise and provide forward-looking insights for perspectives and opportunities in future advances in ML techniques in this field.

Keywords: artificial intelligence; drug and vaccine discovery; host-parasite interaction; image detection; machine learning; protozoal parasite; public health.

Publication types

  • Review
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Animals
  • Communicable Diseases*
  • Cryptosporidiosis*
  • Cryptosporidium*
  • Machine Learning
  • Neural Networks, Computer