Comparison of classification techniques in the diagnosis of acute myelogenous leukemia

https://doi.org/10.53730/ijhs.v6nS1.7759

Authors

  • V. Jeya Ramya Research Scholar, Sathyabama Institute of Science and Technology, Chennai, India.
  • S. Lakshmi Associate Professor, Sathyabama Institute of Science and Technology, Chennai, India

Keywords:

Leukemia, Fractional Black Widow, Arithmetic Optimization, Modified DRLSE

Abstract

The leukemia blood cell discriminates from other blood cells by geometrical structure and cellular material by hematologist with microscope. In conventional color imaging system, the granular region in leukemia cells classify false negatively by experts due to micro geometrical and morphological changes in leukemia cell. Hence, a computer aided decision support system (CADSS) employs for automatic classification of leukemia blood cells. This paper gives the comparative study   of various methods of classification of Acute Myelogenous Leukemia (AML) with improved accuracy and their results are compared. In this paper, the classification techniques such as Convolutional Neural Networks (CNN), Support Vector Machines (SVM), Fraction Black-Widow Optimized Neural Network (FB-NN), Deep CNN with Arithmetic Optimization and Hybrid Convolutional Bi-LSTM based RNN are made with blood microscopic images, in which according to measures, Deep CNN with Arithmetic Optimization has the best accuracy.

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References

Viswanathan, “Fuzzy C means detection of leukemia based on morphological contour segmentation,” Procedia Computer Science, vol.58, pp.84–90, 2015.

Ali and Nadi, “An implementation of the active contours without edges model and the logic framework for active contours on multi-channel images,” 2010.

Haralick, “Statistical and structural approaches to texture,” Proceeding IEEE, vol.67, no.5, pp.786–804, 1979.

Hayyolalam, Vahideh, and Ali Asghar Pourhaji Kazem, “Black Widow Optimization Algorithm: A novel meta-heuristic approach for solving engineering optimization problems,” Engineering Applications of Artificial Intelligence, vol.87, pp.103249, 2020.

Kiranyaz, Ince, Yildirim and Gabbouj, “Fractional particle swarm optimization in multidimensional search space. IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics), vol.40, no.2, pp.298-319, 2009

Matek C, Schwarz S, Spiekermann K, Marr C. Human-level recognition of blast cells in acute myeloid leukaemia with convolutional neural networks. Nature Machine Intelligence. 2019 Nov;1(11):538-44.

Kaur J, Vats I, Verma A. Acute Myeloid Leukemia Detection in WBC Cell Based on ICA Feature Extraction. In International Conference on Next Generation Computing Technologies 2017 Oct 30 (pp. 722-732). Springer, Singapore.

Agaian S, Madhukar M, Chronopoulos AT. Automated screening system for acute myelogenous leukemia detection in blood microscopic images. IEEE Systems journal. 2014 Mar 13;8(3):995-1004.

Kumar P, Udwadia SM. Automatic detection of Acute Myeloid Leukemia from microscopic blood smear image. In2017 International Conference on Advances in Computing, Communications and Informatics (ICACCI) 2017 Sep 13 (pp. 1803-1807). IEEE.

Jayaraman T, Reddy S, Mahadevappa M, Sadhu A, Dutta PK. Modified distance regularized level set evolution for brain ventricles segmentation. Visual Computing for Industry, Biomedicine, and Art. 2020 Dec;3(1):1-2.

Abualigah L, Diabat A, Mirjalili S, Abd Elaziz M, Gandomi AH. The arithmetic optimization algorithm. Computer methods in applied mechanics and engineering. 2021 Apr 1;376:113609.

Long X, Sun J. Image segmentation based on the minimum spanning tree with a novel weight. Optik. 2020 Nov 1; 221:165308.

Hua Y, Mou L, Zhu XX. Recurrently exploring class-wise attention in a hybrid convolutional and bidirectional LSTM network for multi-label aerial image classification. ISPRS journal of photogrammetry and remote sensing. 2019 Mar 1;149:188-99.

Mou L, Zhu XX. Vehicle instance segmentation from aerial image and video using a multitask learning residual fully convolutional network. IEEE Transactions on Geoscience and Remote Sensing. 2018 Jul 9;56(11):6699-711.

Simonyan K, Zisserman A. Very deep convolutional networks for large-scale image recognition. arXiv preprint arXiv:1409.1556. 2014 Sep 4.

Banik, Saha and Kim, “An Automatic Nucleus Segmentation and CNN Model based Classification Method of White Blood Cell,” Expert Systems with Applications, vol.149, pp.113211, 2020.

https://wiki.cancerimagingarchive.net/pages/viewpage.action? pageId=61080958#bcab02c187174a288dbcbf95d26179e8

Published

23-05-2022

How to Cite

Ramya, V. J., & Lakshmi, S. (2022). Comparison of classification techniques in the diagnosis of acute myelogenous leukemia. International Journal of Health Sciences, 6(S1), 11248–11256. https://doi.org/10.53730/ijhs.v6nS1.7759

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Peer Review Articles

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