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  4. Automated morphological analysis of bone marrow cells in microscopic images for diagnosis of leukemia: Nucleus-plasma separation and cell classification using a hierarchical tree model of hematopoesis
 
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2016
Conference Paper
Titel

Automated morphological analysis of bone marrow cells in microscopic images for diagnosis of leukemia: Nucleus-plasma separation and cell classification using a hierarchical tree model of hematopoesis

Abstract
The morphological differentiation of bone marrow is fundamental for the diagnosis of leukemia. Currently, the counting and classification of the different types of bone marrow cells is done manually under the use of bright field microscopy. This is a time-consuming, subjective, tedious and error-prone process. Furthermore, repeated examinations of a slide may yield intra- and inter-observer variances. For that reason a computer assisted diagnosis system for bone marrow differentiation is pursued. In this work we focus (a) on a new method for the separation of nucleus and plasma parts and (b) on a knowledge-based hierarchical tree classifier for the differentiation of bone marrow cells in 16 different classes. Classification trees are easily interpretable and understandable and provide a classification together with an explanation. Using classification trees, expert knowledge (i.e. knowledge about similar classes and cell lines in the tree model of hematopoiesis) is integrated in the structure of the tree. The proposed segmentation method is evaluated with more than 10,000 manually segmented cells. For the evaluation of the proposed hierarchical classifier more than 140,000 automatically segmented bone marrow cells are used. Future automated solutions for the morphological analysis of bone marrow smears could potentially apply such an approach for the pre-classification of bone marrow cells and thereby shortening the examination time.
Author(s)
Krappe, Sebastian
Wittenberg, Thomas
Haferlach, Torsten
MLL Munich Leukemia Laboratory
Münzenmayer, Christian
Hauptwerk
Medical Imaging 2016. Computer-Aided Diagnosis. Pt.1
Konferenz
Conference "Medical Imaging - Computer-Aided Diagnosis" 2016
DOI
10.1117/12.2216037
Language
English
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Fraunhofer-Institut für Integrierte Schaltungen IIS
Tags
  • Texturanalyse

  • Segmentierung

  • Merkmal

  • medizinische BV

  • Klassifikation

  • Hämatologie

  • Farbbilder

  • Computer Assistierte Mikroskopie

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