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Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection

R. Suriyagrace1 , M. Devapriya2

Section:Research Paper, Product Type: Journal Paper
Volume-9 , Issue-10 , Page no. 28-36, Oct-2021

CrossRef-DOI:   https://doi.org/10.26438/ijcse/v9i10.2836

Online published on Oct 31, 2021

Copyright © R. Suriyagrace, M. Devapriya . This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

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IEEE Style Citation: R. Suriyagrace, M. Devapriya, “Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection,” International Journal of Computer Sciences and Engineering, Vol.9, Issue.10, pp.28-36, 2021.

MLA Style Citation: R. Suriyagrace, M. Devapriya "Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection." International Journal of Computer Sciences and Engineering 9.10 (2021): 28-36.

APA Style Citation: R. Suriyagrace, M. Devapriya, (2021). Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection. International Journal of Computer Sciences and Engineering, 9(10), 28-36.

BibTex Style Citation:
@article{Suriyagrace_2021,
author = {R. Suriyagrace, M. Devapriya},
title = {Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection},
journal = {International Journal of Computer Sciences and Engineering},
issue_date = {10 2021},
volume = {9},
Issue = {10},
month = {10},
year = {2021},
issn = {2347-2693},
pages = {28-36},
url = {https://www.ijcseonline.org/full_paper_view.php?paper_id=5408},
doi = {https://doi.org/10.26438/ijcse/v9i10.2836}
publisher = {IJCSE, Indore, INDIA},
}

RIS Style Citation:
TY - JOUR
DO = {https://doi.org/10.26438/ijcse/v9i10.2836}
UR - https://www.ijcseonline.org/full_paper_view.php?paper_id=5408
TI - Effective Image Pre-Processing Techniques with Deep Learning for Leukemia Detection
T2 - International Journal of Computer Sciences and Engineering
AU - R. Suriyagrace, M. Devapriya
PY - 2021
DA - 2021/10/31
PB - IJCSE, Indore, INDIA
SP - 28-36
IS - 10
VL - 9
SN - 2347-2693
ER -

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Abstract

Leukemia is a cancerous disease characterised by an uncontrollable development of abnormal White Blood Cells (WBC). The identification of acute leukaemia is based on the percentage of WBC in the peripheral blood. In practice, the manual microscopic examination methods are used for acute leukemia detection. Despite the use of hardware autofocus mechanisms, large image collections acquired by automated microscopes often contain some fraction of low quality, out-of-focus images. More complicated cell morphology, with a wide range of size, border, position, and colour contrast were also obtained. Moreover, when the images are captured, the contrast between the cell border and the background in peripheral blood smears is influenced by the lighting position, and the effects of unwanted noise on blood leukemia images can results .in inaccurate diagnosis. So, an efficient pre-processing method is required to highlights the edges of nuclei. This paper describes in detail about the proposed Image Pre-Processing Techniques with Deep Learning Method for Detecting Leukemia in Microscopic Blood Images. This automated system will detect leukemia cells from the blood cancer affected patient’s collected blood sample. The image processing techniques used for the diagnosis include optimized contrast stretching (OCS) to enhance the image and detect the nuclei, also the k-means clustering algorithm for nuclei segmentation. A features extraction based on geometry, colour, texture, and statistics information are extracted, as well as fuzzy rule based decision system are performed to get better results of leukemia detection.

Key-Words / Index Term

Leukemia, microscopic examination, Deep Learning method, contrasts stretching, k-means clustering

References

[1]. Dharani, T., & Hariprasath, S, “Diagnosis of Leukemia and its types Using Digital Image Processing Techniques”, 3rd International Conference on Communication and Electronics Systems (ICCES) . IEEE, pp. 275-279, 2018 October.
[2]. Van Maele-Fabry, G., Lantin, A. C., Hoet, P., & Lison, D, “Childhood leukaemia and parental occupational exposure to pesticides: a systematic review and meta-analysis”, Cancer Causes & Control, 21(6), 787-809, 2010.
[3]. Agaian, S., Madhukar, M., & Chronopoulos, A. T. “Automated screening system for acute myelogenous leukemia detection in blood microscopic images”, IEEE Systems journal, 8(3), 995-1004, 2014.
[4]. Haidekker, M. “Advanced biomedical image analysis”, John Wiley & Sons, 2010.
[5]. Kazemi, F., Najafabadi, T. A., & Araabi, B. N, “Automatic recognition of acute myelogenous leukemia in blood microscopic images using k-means clustering and support vector machine”, Journal of medical signals and sensors, 6(3), 183, 2016.
[6]. Kumar, S., Mishra, S., & Asthana, P, “Automated detection of acute leukemia using k-mean clustering algorithm”, Advances in Computer and Computational Sciences. Springer, Singapore, pp. 655-670, 2018.
[7]. Vogado, L. H., Veras, R. M., Araujo, F. H., Silva, R. R., & Aires, K. R, “Leukemia diagnosis in blood slides using transfer learning in CNNs and SVM for classification”, Engineering Applications of Artificial Intelligence, 72, 415-422, 2018.
[8]. Negm, A. S., Hassan, O. A., & Kandil, A. H, “A decision support system for Acute Leukaemia classification based on digital microscopic images”, Alexandria engineering journal, 57(4), 2319-2332, 2018.
[9]. Salem, N., Sobhy, N. M., & El Dosoky, M, “A comparative study of white blood cells segmentation using Otsu threshold and watershed transformation”, Journal of Biomedical Engineering and Medical Imaging, 3(3), 15-15, 2016.
[10]. Li, Y., Zhu, R., Mi, L., Cao, Y., & Yao, D, “Segmentation of white blood cell from acute lymphoblastic leukemia images using dual-threshold method”, Computational and mathematical methods in medicine, 2016.
[11]. Choudhary, R. R., Sharma, S., & Meena, G, “Detection of Leukemia in Human Blood Samples through Image Processing”, International Conference on Next Generation Computing Technologies. Springer, Singapore, pp. 824-834, 2017 October.
[12]. Mishra, S., Majhi, B., Sa, P. K., & Sharma, L, “Gray level co-occurrence matrix and random forest based acute lymphoblastic leukemia detection”, Biomedical Signal Processing and Control, 33, 272-280, 2017.
[13]. https://www.kaggle.com/paultimothymooney/blood-cells.
[14]. Chitade, A. Z., & Katiyar, S. K., “Colour based image segmentation using k-means clustering”, International Journal of Engineering Science and Technology, 2(10), 5319-5325, 2010.
[15]. Sassi, O. B., Sellami, L., Slima, M. B., Chtourou, K., & Hamida, A. B, “Improved spatial gray level dependence matrices for texture analysis”, International Journal of Computer Science & Information Technology, 4(6), 209, 2012.
[16]. Anuradha, K. “Statistical feature extraction to classify oral cancers”, Journal of Global Research in Computer Science, 4(2), 8-1, 2013.
[17]. Castellano, G., Castiello, C., Pasquadibisceglie, V., & Zaza, G, “Fisdet: Fuzzy inference system development tool”, International Journal of Computational Intelligence Systems, 10(1), 13-22, 2017
[18]. Laosai, J., & Chamnongthai, K, “Acute leukemia classification by using SVM and K-Means clustering”, IEEE, International Electrical Engineering Congress (iEECON) pp. 1-4, 2014.
[19]. Jagadev, P., & Virani, H. G, (2017, May). “Detection of leukemia and its types using image processing and machine learning”, IEEE, International Conference on Trends in Electronics and Informatics (ICEI), pp. 522-526, 2017.
[20]. Singh, A, “Detection of brain tumor in MRI images, using combination of fuzzy c-means and SVM”, IEEE, 2nd International Conference on Signal Processing and Integrated Networks (SPIN), pp. 98-102, 2015.