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Automatic Recognition of Acute Myelogenous Leukemia in Blood Microscopic Images Using K-means Clustering and Support Vector Machine.

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TLDR
The results show that the proposed algorithm has achieved an acceptable performance for diagnosis of AML and its common subtypes and can be used as an assistant diagnostic tool for pathologists.
Abstract
Acute myelogenous leukemia (AML) is a subtype of acute leukemia, which is characterized by the accumulation of myeloid blasts in the bone marrow. Careful microscopic examination of stained blood smear or bone marrow aspirate is still the most significant diagnostic methodology for initial AML screening and considered as the first step toward diagnosis. It is time-consuming and due to the elusive nature of the signs and symptoms of AML; wrong diagnosis may occur by pathologists. Therefore, the need for automation of leukemia detection has arisen. In this paper, an automatic technique for identification and detection of AML and its prevalent subtypes, i.e., M2-M5 is presented. At first, microscopic images are acquired from blood smears of patients with AML and normal cases. After applying image preprocessing, color segmentation strategy is applied for segmenting white blood cells from other blood components and then discriminative features, i.e., irregularity, nucleus-cytoplasm ratio, Hausdorff dimension, shape, color, and texture features are extracted from the entire nucleus in the whole images containing multiple nuclei. Images are classified to cancerous and noncancerous images by binary support vector machine (SVM) classifier with 10-fold cross validation technique. Classifier performance is evaluated by three parameters, i.e., sensitivity, specificity, and accuracy. Cancerous images are also classified into their prevalent subtypes by multi-SVM classifier. The results show that the proposed algorithm has achieved an acceptable performance for diagnosis of AML and its common subtypes. Therefore, it can be used as an assistant diagnostic tool for pathologists.

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Citations
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Recent advancement in cancer detection using machine learning: Systematic survey of decades, comparisons and challenges.

TL;DR: The study highlights how cancer diagnosis, cure process is assisted using machine learning with supervised, unsupervised and deep learning techniques.
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Computer assisted classification framework for prediction of acute lymphoblastic and acute myeloblastic leukemia

TL;DR: An attempt has been made to design a CAC (computer aided classification system) for diagnosis of myeloid and lymphoid cells and their FAB (French, American, and British) characterization and improves the AML and ALL diagnostic accuracy by analyzing color, morphological and textural features from the blood image using image processing.
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Machine learning applications in the diagnosis of leukemia: Current trends and future directions.

TL;DR: The included studies illustrated the need to develop the field of ML research, including the transformation from solely designing algorithms to practically applying them clinically, and the need for more studies to be performed on microscopic diagnosis of leukemia.
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Automated Detection of Acute Lymphoblastic Leukemia From Microscopic Images Based on Human Visual Perception.

TL;DR: This paper proposes a novel approach based on conventional digital image processing techniques and machine learning algorithms to automatically identify acute lymphoblastic leukemia from peripheral blood smear images and implemented extensive pre-processing and introduced a three-phase filtration algorithm to achieve the best segmentation results.
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SDCT-AuxNetθ: DCT augmented stain deconvolutional CNN with auxiliary classifier for cancer diagnosis.

TL;DR: The recent release of a large dataset is discussed and a novel deep learning architecture for the classification of cell images of ALL cancer is presented, namely, SDCT-AuxNetθ is a 2-module framework that utilizes a compact CNN as the main classifiers in one module and a Kernel SVM as the auxiliary classifier in the other.
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