Edge Artificial Intelligence (AI) for real-time automatic quantification of filariasis in mobile microscopy.

Journal: PLoS neglected tropical diseases
PMID:

Abstract

Filariasis, a neglected tropical disease caused by roundworms, is a significant public health concern in many tropical countries. Microscopic examination of blood samples can detect and differentiate parasite species, but it is time consuming and requires expert microscopists, a resource that is not always available. In this context, artificial intelligence (AI) can assist in the diagnosis of this disease by automatically detecting and differentiating microfilariae. In line with the target product profile for lymphatic filariasis as defined by the World Health Organization, we developed an edge AI system running on a smartphone whose camera is aligned with the ocular of an optical microscope that detects and differentiates filarias species in real time without the internet connection. Our object detection algorithm that uses the Single-Shot Detection (SSD) MobileNet V2 detection model was developed with 115 cases, 85 cases with 1903 fields of view and 3342 labels for model training, and 30 cases with 484 fields of view and 873 labels for model validation before clinical validation, is able to detect microfilariae at 10x magnification and distinguishes four species of them at 40x magnification: Loa loa, Mansonella perstans, Wuchereria bancrofti, and Brugia malayi. We validated our augmented microscopy system in the clinical environment by replicating the diagnostic workflow encompassed examinations at 10x and 40x with the assistance of the AI models analyzing 18 samples with the AI running on a middle range smartphone. It achieved an overall precision of 94.14%, recall of 91.90% and F1 score of 93.01% for the screening algorithm and 95.46%, 97.81% and 96.62% for the species differentiation algorithm respectively. This innovative solution has the potential to support filariasis diagnosis and monitoring, particularly in resource-limited settings where access to expert technicians and laboratory equipment is scarce.

Authors

  • Lin Lin
    Central Laboratory, The First Affiliated Hospital of Xiamen University, Xiamen, China, zhibinli33@163.com, liusuhuan@xmu.edu.cn.
  • Elena Dacal
    Spotlab, Madrid, Spain.
  • Nuria Diez
  • Claudia Carmona
    Malaria and Emerging Parasitic Diseases Laboratory, National Microbiology Centre, Instituto de Salud Carlos III-Madrid, Madrid, Spain.
  • Alexandra Martin Ramirez
    Malaria and Emerging Parasitic Diseases Laboratory, National Microbiology Centre, Instituto de Salud Carlos III-Madrid, Madrid, Spain.
  • Lourdes Barón Argos
    Malaria and Emerging Parasitic Diseases Laboratory, National Microbiology Centre, Instituto de Salud Carlos III-Madrid, Madrid, Spain.
  • David Bermejo-Pelaez
  • Carla Caballero
    Spotlab, Madrid, Spain.
  • Daniel Cuadrado
    Spotlab, Madrid, Spain.
  • Oscar Darias-Plasencia
    Spotlab, Madrid, Spain.
  • Jaime Garcia-Villena
    Spotlab, P.º de Juan XXIII, 36B, Madrid 28040, Spain.
  • Alexander Bakardjiev
    Spotlab, Madrid, Spain.
  • María Postigo
    Spotlab, Madrid, Spain.
  • Ethan Recalde-Jaramillo
    Spotlab, Madrid, Spain.
  • Maria Flores-Chavez
    Malaria and Emerging Parasitic Diseases Laboratory, National Microbiology Centre, Instituto de Salud Carlos III-Madrid, Madrid, Spain.
  • Andrés Santos
    Biomedical Image Technologies Laboratory, ETSI Telecomunicación, Universidad Politécnica de Madrid, Av. Complutense, 30, Madrid 28040, Spain.
  • Maria Jesus Ledesma-Carbayo
  • José M Rubio
    Malaria and Emerging Parasitic Diseases Laboratory, National Microbiology Centre, Instituto de Salud Carlos III-Madrid, Madrid, Spain.
  • Miguel Luengo-Oroz
    Spotlab, Madrid, Spain.