4.5 Article

Malaria Detection Accelerated: Combing a High-Throughput NanoZoomer Platform with a ParasiteMacro Algorithm

Journal

PATHOGENS
Volume 11, Issue 10, Pages -

Publisher

MDPI
DOI: 10.3390/pathogens11101182

Keywords

NanoZoomer; ParasiteMacro; algorithm; microscopy; malaria; Plasmodium falciparum; parasite; Giemsa-staining; parasitemia

Categories

Funding

  1. US Military Medicine Photonics Program from the US Department of Defense (DoD)/Air Force grant [FA9550-17-1-0277]
  2. Rubicon grant from the Netherlands Organization for Scientific Research [Rubicon 40-45200-98-009]

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A proof-of-concept study used automated imaging platform (NanoZoomer) and algorithm (ParasiteMacro) to detect and estimate the quantity of malarial parasites, demonstrating efficient and accurate diagnostic results.
Eradication of malaria, a mosquito-borne parasitic disease that hijacks human red blood cells, is a global priority. Microscopy remains the gold standard hallmark for diagnosis and estimation of parasitemia for malaria, to date. However, this approach is time-consuming and requires much expertise especially in malaria-endemic countries or in areas with low-density malaria infection. Thus, there is a need for accurate malaria diagnosis/parasitemia estimation with standardized, fast, and more reliable methods. To this end, we performed a proof-of-concept study using the automated imaging (NanoZoomer) platform to detect the malarial parasite in infected blood. The approach can be used as a steppingstone for malaria diagnosis and parasitemia estimation. Additionally, we created an algorithm (ParasiteMacro) compatible with free online imaging software (ImageJ) that can be used with low magnification objectives (e.g., 5x, 10x, and 20 x ) both in the NanoZoomer and routine microscope. The novel approach to estimate malarial parasitemia based on modern technologies compared to manual light microscopy demonstrated 100% sensitivity, 87% specificity, a 100% negative predictive value (NPV) and a 93% positive predictive value (PPV). The manual and automated malaria counts showed a good Pearson correlation for low- (R-2 = 0.9377, r = 0.9683 and p < 0.0001) as well as high- parasitemia (R-2 = 0.8170, r = 0.9044 and p < 0.0001) with low estimation errors. Our robust strategy that identifies and quantifies malaria can play a pivotal role in disease control strategies.

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