| Literature DB >> 22530181 |
Nisha Ramesh1, Bryan Dangott, Mohammed E Salama, Tolga Tasdizen.
Abstract
INTRODUCTION: An automated system for differential white blood cell (WBC) counting based on morphology can make manual differential leukocyte counts faster and less tedious for pathologists and laboratory professionals. We present an automated system for isolation and classification of WBCs in manually prepared, Wright stained, peripheral blood smears from whole slide images (WSI).Entities:
Keywords: Automated white blood cell classification; color channels; linear discriminant analysis; morphology
Year: 2012 PMID: 22530181 PMCID: PMC3327044 DOI: 10.4103/2153-3539.93895
Source DB: PubMed Journal: J Pathol Inform
Figure 1Examples of WBC subtypes
Figure 2Distribution of WBC subtypes
Figure 3Flowchart for WBC detection
Figure 4Flowchart for WBC segmentation
Figure 5Segmented WBC
Figure 6Examples of WBC with (a) segmented and (b) nonsegmented nucleus
Figure 7Step 1 of classification
Figure 8Steps representing segmented vs. nonsegmented nucleus classification, (a) White blood cell image; (b) Nucleus boundary superimposed on the white blood cell image; (c) Maximum curvature points; (d) Triangulation of maximum curvature points; (e) Removal of background edges; (f) Retaining edges if the tangents are in opposite directions; (g) Retaining edges if the edge vector and tangent vector are perpendicular; (h) Retains edges if the end points have curvatures in the same direction
Figure 9Examples to illustrate the curvature of convex and concave regions
Confusion matrix for the comparison method (five subtypes)[67] Rows represent the correct classification by experts. For each row, the columns represent the classification made by the approach used in the comparison method. The classification percentages made by the algorithm is enclosed in brackets. Diagonal entries indicate correct classification and are indicated in bold
Confusion matrix using our novel two-step classification (five subtypes). Rows represent the correct classification by experts. For each row, the columns represent the classification made by our algorithm. The classification percentages made by the algorithm is enclosed in brackets. Diagonal entries indicate correct classification and are indicated in bold