PLoS ONE (Jan 2020)

A novel deep learning-based point-of-care diagnostic method for detecting Plasmodium falciparum with fluorescence digital microscopy.

  • Oscar Holmström,
  • Sebastian Stenman,
  • Antti Suutala,
  • Hannu Moilanen,
  • Hakan Kücükel,
  • Billy Ngasala,
  • Andreas Mårtensson,
  • Lwidiko Mhamilawa,
  • Berit Aydin-Schmidt,
  • Mikael Lundin,
  • Vinod Diwan,
  • Nina Linder,
  • Johan Lundin

DOI
https://doi.org/10.1371/journal.pone.0242355
Journal volume & issue
Vol. 15, no. 11
p. e0242355

Abstract

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BackgroundMalaria remains a major global health problem with a need for improved field-usable diagnostic tests. We have developed a portable, low-cost digital microscope scanner, capable of both brightfield and fluorescence imaging. Here, we used the instrument to digitize blood smears, and applied deep learning (DL) algorithms to detect Plasmodium falciparum parasites.MethodsThin blood smears (n = 125) were collected from patients with microscopy-confirmed P. falciparum infections in rural Tanzania, prior to and after initiation of artemisinin-based combination therapy. The samples were stained using the 4',6-diamidino-2-phenylindole fluorogen and digitized using the prototype microscope scanner. Two DL algorithms were trained to detect malaria parasites in the samples, and results compared to the visual assessment of both the digitized samples, and the Giemsa-stained thick smears.ResultsDetection of P. falciparum parasites in the digitized thin blood smears was possible both by visual assessment and by DL-based analysis with a strong correlation in results (r = 0.99, p ConclusionQuantification of P. falciparum parasites in DAPI-stained thin smears is feasible using DL-supported, point-of-care digital microscopy, with a high correlation to visual assessment of samples. Fluorescent signals from artefacts in samples with low infection levels represented the main challenge for the digital analysis, thus highlighting the importance of minimizing sample contaminations. The proposed method could support malaria diagnostics and monitoring of treatment response through automated quantification of parasitaemia and is likely to be applicable also for diagnostics of other Plasmodium species and other infectious diseases.