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Segmentation and Classification of Bone Marrow Cells Images Using Contextual Information for Medical Diagnosis of Acute Leukemias

Author

Listed:
  • Carolina Reta
  • Leopoldo Altamirano
  • Jesus A Gonzalez
  • Raquel Diaz-Hernandez
  • Hayde Peregrina
  • Ivan Olmos
  • Jose E Alonso
  • Ruben Lobato

Abstract

Morphological identification of acute leukemia is a powerful tool used by hematologists to determine the family of such a disease. In some cases, experienced physicians are even able to determine the leukemia subtype of the sample. However, the identification process may have error rates up to 40% (when classifying acute leukemia subtypes) depending on the physician’s experience and the sample quality. This problem raises the need to create automatic tools that provide hematologists with a second opinion during the classification process. Our research presents a contextual analysis methodology for the detection of acute leukemia subtypes from bone marrow cells images. We propose a cells separation algorithm to break up overlapped regions. In this phase, we achieved an average accuracy of 95% in the evaluation of the segmentation process. In a second phase, we extract descriptive features to the nucleus and cytoplasm obtained in the segmentation phase in order to classify leukemia families and subtypes. We finally created a decision algorithm that provides an automatic diagnosis for a patient. In our experiments, we achieved an overall accuracy of 92% in the supervised classification of acute leukemia families, 84% for the lymphoblastic subtypes, and 92% for the myeloblastic subtypes. Finally, we achieved accuracies of 95% in the diagnosis of leukemia families and 90% in the diagnosis of leukemia subtypes.

Suggested Citation

  • Carolina Reta & Leopoldo Altamirano & Jesus A Gonzalez & Raquel Diaz-Hernandez & Hayde Peregrina & Ivan Olmos & Jose E Alonso & Ruben Lobato, 2015. "Segmentation and Classification of Bone Marrow Cells Images Using Contextual Information for Medical Diagnosis of Acute Leukemias," PLOS ONE, Public Library of Science, vol. 10(6), pages 1-18, June.
  • Handle: RePEc:plo:pone00:0130805
    DOI: 10.1371/journal.pone.0130805
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    Cited by:

    1. Jin Woo Choi & Yunseo Ku & Byeong Wook Yoo & Jung-Ah Kim & Dong Soon Lee & Young Jun Chai & Hyoun-Joong Kong & Hee Chan Kim, 2017. "White blood cell differential count of maturation stages in bone marrow smear using dual-stage convolutional neural networks," PLOS ONE, Public Library of Science, vol. 12(12), pages 1-15, December.

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