Evaluation of the Red Blood Cell Advanced Software Application on the CellaVision DM96

Int J Lab Hematol. 2016 Aug;38(4):366-74. doi: 10.1111/ijlh.12497. Epub 2016 May 20.

Abstract

Introduction: The CellaVision Advanced Red Blood Cell (RBC) Software Application is a new software for advanced morphological analysis of RBCs on a digital microscopy system. Upon automated precharacterization into 21 categories, the software offers the possibility of reclassification of RBCs by the operator. We aimed to define the optimal cut-off to detect morphological RBC abnormalities and to evaluate the precharacterization performance of this software.

Methods: Thirty-eight blood samples of healthy donors and sixty-eight samples of hospitalized patients were analyzed. Different methodologies to define a cut-off between negativity and positivity were used. Sensitivity and specificity were calculated according to these different cut-offs using the manual microscopic method as the gold standard. Imprecision was assessed by measuring analytical within-run and between-run variability and by measuring between-observer variability.

Results: By optimizing the cut-off between negativity and positivity, sensitivities exceeded 80% for 'critical' RBC categories (target cells, tear drop cells, spherocytes, sickle cells, and parasites), while specificities exceeded 80% for the other RBC morphological categories. Results of within-run, between-run, and between-observer variabilities were all clinically acceptable.

Conclusion: The CellaVision Advanced RBC Software Application is an easy-to-use software that helps to detect most RBC morphological abnormalities in a sensitive and specific way without increasing work load, provided the proper cut-offs are chosen. However, evaluation of the images by an experienced observer remains necessary.

Keywords: RBC; automated cell analysis; morphology.

Publication types

  • Evaluation Study

MeSH terms

  • Case-Control Studies
  • Cell Shape
  • Erythrocytes / parasitology
  • Erythrocytes / pathology*
  • Humans
  • Image Processing, Computer-Assisted
  • Microscopy / methods*
  • Observer Variation
  • Software / standards*