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An automated image analysis system can be beneficial in preclassification of leucocytes in children with hematological disease

This study was aimed to evaluate the analytical performance of an automated image analysis system (a pilot model of Diff Master™ Octavia) for the preclassification of leucocytes in children with hematological disease. Manual microscopy performed by pediatric hematologists was used as the reference m...

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Published in:Journal of clinical laboratory analysis 2011, Vol.25 (2), p.71-75
Main Authors: Portakal, Oytun, Tavil, Betul, Kuşkonmaz, Barış, Aytaç, Selin, Hasçelik, Gülşen
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creator Portakal, Oytun
Tavil, Betul
Kuşkonmaz, Barış
Aytaç, Selin
Hasçelik, Gülşen
description This study was aimed to evaluate the analytical performance of an automated image analysis system (a pilot model of Diff Master™ Octavia) for the preclassification of leucocytes in children with hematological disease. Manual microscopy performed by pediatric hematologists was used as the reference method. Five mature cell class and blasts were evaluated. Diff Master Octavia correctly preclassified 87.4% of all leucocytes with a high reproducibility. The overall accuracy was found to be 93.0%. Clinical sensitivity was 97.7% and specificity was 76.0%. The average time per slide for Diff Master™ Octavia was 2.3 min lower than that of manual method. Our results indicated that the Diff Master™ Octavia can detect and preclassify leucocytes accurately; therefore, it can be used as an efficient and fast method in pediatric hematology routine. J. Clin. Lab. Anal. 25:71–75, 2011. © 2011 Wiley‐Liss, Inc.
doi_str_mv 10.1002/jcla.20433
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subjects artificial neural networks
Blast
Child
Children
Diff Master™ Octavia
Hematologic Diseases - blood
Hematologic Diseases - diagnosis
Hematological diseases
Humans
Image processing
Image Processing, Computer-Assisted - instrumentation
Image Processing, Computer-Assisted - methods
Leukocytes
Leukocytes - classification
Leukocytes - pathology
Microscopy
Microscopy - methods
Original
Pediatrics
preclassification of leucocytes
Predictive Value of Tests
Reproducibility of Results
Time Factors
title An automated image analysis system can be beneficial in preclassification of leucocytes in children with hematological disease
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