Diagnostic accuracy of an automated microscope solution (miLab™) in detecting malaria parasites in symptomatic patients at point-of-care in Sudan: a case–control study
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Malaria Journal
Abstract
Background Microscopic detection of malaria parasites is labour-intensive, time-consuming, and expertise-demand ing. Moreover, the slide interpretation is highly dependent on the staining technique and the technician’s expertise.
Therefore, there is a growing interest in next-generation, fully- or semi-integrated microscopes that can improve slide
preparation and examination. This study aimed to evaluate the clinical performance of miLab™ (Noul Inc., Republic
of Korea), a fully-integrated automated microscopy device for the detection of malaria parasites in symptomatic
patients at point-of-care in Sudan.
Methods This was a prospective, case-control diagnostic accuracy study conducted in primary healthcare facilities
in rural Khartoum, Sudan in 2020. According to the outcomes of routine on-site microscopy testing, 100 malaria-positive and 90 malaria-negative patients who presented at the health facility and were 5 years of age or older were
enrolled consecutively. All consenting patients underwent miLab™ testing and received a negative or suspected
result. For the primary analysis, the suspected results were regarded as positive (automated mode). For the secondary
analysis, the operator reviewed the suspected results and categorized them as either negative or positive (corrected
mode). Nested polymerase chain reaction (PCR) was used as the reference standard, and expert light microscopy
as the comparator.
Results Out of the 190 patients, malaria diagnosis was confirmed by PCR in 112 and excluded in 78. The sensitivity
of miLab™ was 91.1% (95% confidence interval [CI] 84.2–95.6%) and the specificity was 66.7% (95% Cl 55.1–67.7%)
in the automated mode. The specificity increased to 96.2% (95% Cl 89.6–99.2%), with operator intervention in the corrected mode. Concordance of miLab with expert microscopy was substantial (kappa 0.65 [95% CI 0.54–0.76])
in the automated mode, but almost perfect (kappa 0.97 [95% CI 0.95–0.99]) in the corrected mode. A mean difference
of 0.359 was found in the Bland–Altman analysis of the agreement between expert microscopy and miLab™ for quantifying parasite counts.
Conclusion When used in a clinical context, miLab™ demonstrated high sensitivity but low specificity. Expert intervention was shown to be required to improve the device’s specificity in its current version. miLab™ in the corrected
mode performed similar to expert microscopy. Before clinical application, more refinement is needed to ensure full
workfow automation and eliminate human intervention
