Your browser doesn't support javascript.
loading
Automatic segmentation and classification of blood components in microscopic images using a fuzzy approach
Vale, Alessandra Mendes Pacheco Guerra; Guerreiro, Ana Maria Guimarães; Dória Neto, Adrião Duarte; Cavalvanti Junior, Geraldo Barroso; Leitão, Victor Cezar Lucena Tavares de Sá; Martins, Allan Medeiros.
  • Vale, Alessandra Mendes Pacheco Guerra; Federal University of Rio Grande do Norte - UFRN. Natal. BR
  • Guerreiro, Ana Maria Guimarães; Federal University of Rio Grande do Norte - UFRN. Natal. BR
  • Dória Neto, Adrião Duarte; Federal University of Rio Grande do Norte - UFRN. Natal. BR
  • Cavalvanti Junior, Geraldo Barroso; Federal University of Rio Grande do Norte - UFRN. Natal. BR
  • Leitão, Victor Cezar Lucena Tavares de Sá; Federal University of Rio Grande do Norte - UFRN. Natal. BR
  • Martins, Allan Medeiros; Federal University of Rio Grande do Norte - UFRN. Natal. BR
Rev. bras. eng. biomed ; 30(4): 341-354, Oct.-Dec. 2014. ilus, graf, tab
Article in English | LILACS | ID: lil-732833
ABSTRACT

INTRODUCTION:

Automatic detection of blood components is an important topic in the field of hematology. Segmentation is an important step because it allows components to be grouped into common areas and processed separately. This paper proposes a method for the automatic segmentation and classification of blood components in microscopic images using a general and automatic fuzzy approach.

METHODS:

During pre-processing, the supports of the fuzzy sets are automatically calculated based on the histogram peaks in the green channel of the RGB image and the Euclidean distance between the leukocyte nuclei centroids and the remaining pixels. During processing, fuzzification associates the degree of pertinence of the gray level of each pixel in the regions defined in the histogram with the proximity of the leukocyte nucleus centroid closest to the pixel. The fuzzy rules are then applied, and the image is defuzzified, resulting in the classification of four regions leukocyte nuclei, leukocyte cytoplasm, erythrocytes and blood plasma. In post-processing, false positives are reduced and the leukocytes (including the nucleus and cytoplasm), erythrocytes and blood plasma are segmented.

RESULTS:

A total of 530 microscopic images of blood smears were processed, and the results were compared with the results of manual segmentation by experts and the accuracy rates of other approaches.

CONCLUSION:

The method demonstrated average accuracy rates of 97.31% for leukocytes, 95.39% for erythrocytes and 95.06% for blood plasma, avoiding the limitations found in the literature and contributing to the practice of the segmentation of blood components.


Full text: Available Index: LILACS (Americas) Type of study: Practice guideline Language: English Journal: Rev. bras. eng. biomed Journal subject: Biomedical Engineering Year: 2014 Type: Article Affiliation country: Brazil Institution/Affiliation country: Federal University of Rio Grande do Norte - UFRN/BR

Similar

MEDLINE

...
LILACS

LIS


Full text: Available Index: LILACS (Americas) Type of study: Practice guideline Language: English Journal: Rev. bras. eng. biomed Journal subject: Biomedical Engineering Year: 2014 Type: Article Affiliation country: Brazil Institution/Affiliation country: Federal University of Rio Grande do Norte - UFRN/BR