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Morphological, fractal, and textural features for the blood cell classification: the case of acute myeloid leukemia

Authorized Users Only
2021
Authors
Dinčić, Marko
Popović, Tamara B.
Kojadinović, Milica
Trbovich, Alexander M.
Ilić, Anđelija
Article (Published version)
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Abstract
Microscopic examination of stained peripheral blood smears is, nowadays, an indispensable tool in the evaluation of patients with hematological and non-hematological diseases. While a rapid automated quantification of the regular blood cells is available, recognition and counting of immature white blood cells (WBC) still relies mostly on the microscopic examination of blood smears by an experienced observer. Recently, there are efforts to improve the prediction by various machine learning approaches. An open dataset collection including the recently digitalized single-cell images for 200 patients, from peripheral blood smears at 100 × magnification, was used. We studied different morphological, fractal, and textural descriptors for WBC classification, with an aim to indicate the most reliable parameters for the recognition of certain cell types. Structural properties of both the mature and non-mature leukocytes obtained from (i) acute myeloid leukemia patients, or (ii) non-malignant co...ntrols, were studied in depth, with a sample size of about 25 WBC per group. We quantified structural and textural differences and, based on the statistical ranges of parameters for different WBC types, selected eight features for classification: Cell area, Nucleus-to-cell ratio, Nucleus solidity, Fractal dimension, Correlation, Contrast, Homogeneity, and Energy. Classification Precision of up to 100% (80% on average) was achieved.

Keywords:
Cell morphology / Cell contour / Cell nucleus architecture / Fractal dimension / Lacunarity / Gray-level co-occurence matrix (GLCM) features
Source:
European Biophysics Journal, 2021, 50, 8, 1111-1127
Publisher:
  • Springer
Funding / projects:
  • Ministry of Education, Science and Technological Development, Republic of Serbia, Grant no. 200015 (University of Belgrade, Institute for Medical Research) (RS-200015)
  • Optoelectronics nanodimension systems - the rout towards applications (RS-45003)

DOI: 10.1007/s00249-021-01574-w

ISSN: 0175-7571

[ Google Scholar ]
URI
http://rimi.imi.bg.ac.rs/handle/123456789/1191
Collections
  • Radovi istraživača / Researchers' publications
Institution/Community
Institut za medicinska istraživanja
TY  - JOUR
AU  - Dinčić, Marko
AU  - Popović, Tamara B.
AU  - Kojadinović, Milica
AU  - Trbovich, Alexander M.
AU  - Ilić, Anđelija
PY  - 2021
UR  - http://rimi.imi.bg.ac.rs/handle/123456789/1191
AB  - Microscopic examination of stained peripheral blood smears is, nowadays, an indispensable tool in the evaluation of patients with hematological and non-hematological diseases. While a rapid automated quantification of the regular blood cells is available, recognition and counting of immature white blood cells (WBC) still relies mostly on the microscopic examination of blood smears by an experienced observer. Recently, there are efforts to improve the prediction by various machine learning approaches. An open dataset collection including the recently digitalized single-cell images for 200 patients, from peripheral blood smears at 100 × magnification, was used. We studied different morphological, fractal, and textural descriptors for WBC classification, with an aim to indicate the most reliable parameters for the recognition of certain cell types. Structural properties of both the mature and non-mature leukocytes obtained from (i) acute myeloid leukemia patients, or (ii) non-malignant controls, were studied in depth, with a sample size of about 25 WBC per group. We quantified structural and textural differences and, based on the statistical ranges of parameters for different WBC types, selected eight features for classification: Cell area, Nucleus-to-cell ratio, Nucleus solidity, Fractal dimension, Correlation, Contrast, Homogeneity, and Energy. Classification Precision of up to 100% (80% on average) was achieved.
PB  - Springer
T2  - European Biophysics Journal
T1  - Morphological, fractal, and textural features for the blood cell classification: the case of acute myeloid leukemia
EP  - 1127
IS  - 8
SP  - 1111
VL  - 50
DO  - 10.1007/s00249-021-01574-w
ER  - 
@article{
author = "Dinčić, Marko and Popović, Tamara B. and Kojadinović, Milica and Trbovich, Alexander M. and Ilić, Anđelija",
year = "2021",
abstract = "Microscopic examination of stained peripheral blood smears is, nowadays, an indispensable tool in the evaluation of patients with hematological and non-hematological diseases. While a rapid automated quantification of the regular blood cells is available, recognition and counting of immature white blood cells (WBC) still relies mostly on the microscopic examination of blood smears by an experienced observer. Recently, there are efforts to improve the prediction by various machine learning approaches. An open dataset collection including the recently digitalized single-cell images for 200 patients, from peripheral blood smears at 100 × magnification, was used. We studied different morphological, fractal, and textural descriptors for WBC classification, with an aim to indicate the most reliable parameters for the recognition of certain cell types. Structural properties of both the mature and non-mature leukocytes obtained from (i) acute myeloid leukemia patients, or (ii) non-malignant controls, were studied in depth, with a sample size of about 25 WBC per group. We quantified structural and textural differences and, based on the statistical ranges of parameters for different WBC types, selected eight features for classification: Cell area, Nucleus-to-cell ratio, Nucleus solidity, Fractal dimension, Correlation, Contrast, Homogeneity, and Energy. Classification Precision of up to 100% (80% on average) was achieved.",
publisher = "Springer",
journal = "European Biophysics Journal",
title = "Morphological, fractal, and textural features for the blood cell classification: the case of acute myeloid leukemia",
pages = "1127-1111",
number = "8",
volume = "50",
doi = "10.1007/s00249-021-01574-w"
}
Dinčić, M., Popović, T. B., Kojadinović, M., Trbovich, A. M.,& Ilić, A.. (2021). Morphological, fractal, and textural features for the blood cell classification: the case of acute myeloid leukemia. in European Biophysics Journal
Springer., 50(8), 1111-1127.
https://doi.org/10.1007/s00249-021-01574-w
Dinčić M, Popović TB, Kojadinović M, Trbovich AM, Ilić A. Morphological, fractal, and textural features for the blood cell classification: the case of acute myeloid leukemia. in European Biophysics Journal. 2021;50(8):1111-1127.
doi:10.1007/s00249-021-01574-w .
Dinčić, Marko, Popović, Tamara B., Kojadinović, Milica, Trbovich, Alexander M., Ilić, Anđelija, "Morphological, fractal, and textural features for the blood cell classification: the case of acute myeloid leukemia" in European Biophysics Journal, 50, no. 8 (2021):1111-1127,
https://doi.org/10.1007/s00249-021-01574-w . .

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