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Automated software for counting and measuring Hyalella genus using artificial intelligence.

Ludy Pineda-AlarcónMaycol ZuluagaSantiago RuízDavid Fernandez Mc CannFabio de Jesús Vélez MacíasNéstor Jaime Aguirre RamírezYarin PuertaJulio Eduardo Cañón Barriga
Published in: Environmental science and pollution research international (2023)
Amphipods belonging to the Hyalella genus are macroinvertebrates that inhabit aquatic environments. They are of particular interest in areas such as limnology and ecotoxicology, where data on the number of Hyalella individuals and their allometric measurements are used to assess the environmental dynamics of aquatic ecosystems. In this study, we introduce HyACS, a software tool that uses a model developed with the YOLOv3's architecture to detect individuals, and digital image processing techniques to extract morphological metrics of the Hyalella genus. The software detects body metrics of length, arc length, maximum width, eccentricity, perimeter, and area of Hyalella individuals, using basic imaging capture equipment. The performance metrics indicate that the model developed can achieve high prediction levels, with an accuracy above 90% for the correct identification of individuals. It can perform up to four times faster than traditional visual counting methods and provide precise morphological measurements of Hyalella individuals, which may improve further studies of the species populations and enhance their use as bioindicators of water quality.
Keyphrases
  • artificial intelligence
  • deep learning
  • big data
  • machine learning
  • risk assessment
  • water quality
  • data analysis
  • high resolution
  • oxidative stress
  • mass spectrometry
  • electronic health record
  • human health
  • life cycle