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International Journal of Trend in Scientific Research and Development (IJTSRD)
Volume: 3 | Issue: 4 | May-Jun 2019 Available Online: www.ijtsrd.com e-ISSN: 2456 - 6470
@ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1470
Classification of Leukemia Detection in Human
Blood Sample Based on Microscopic Images
Ei Ei Chaw, Ohnmar Win
Department of Electronic Engineering, Mandalay Technological University, Mandalay, Myanmar
How to cite this paper: Ei Ei Chaw |
Ohnmar Win"Classificationof Leukemia
Detection in Human Blood Sample
Based on Microscopic Images"
Published in International Journal of
Trend in Scientific Research and
Development
(ijtsrd), ISSN: 2456-
6470, Volume-3 |
Issue-4, June 2019,
pp.1470-1474, URL:
https://www.ijtsrd.c
om/papers/ijtsrd25
186.pdf
Copyright © 2019 by author(s) and
International Journal of Trend in
Scientific Research and Development
Journal. This is an Open Access article
distributed under
the terms of the
Creative Commons
Attribution License (CC BY 4.0)
(http://creativecommons.org/licenses/
by/4.0)
ABSTRACT
Nowadays, the automatic specific tests such as Cytogenetics,
Immunophenotyping and morphological cell classification can identify the
leukemia disease by making experienced operators observing blood or bone
marrow microscopic images. The early identification of Acute Lymphoblastic
Leukemia (ALL) symptoms in patients can greatly increase the probability of
recovery. When typical symptoms appear in normal blood analysis, those
methods are not included into large screening programs and are applied only.
The method of blood cell observation using Cytogenetics and
Immunophenotyping diagnostic methods are currently preferred fortheirgreat
accuracy with respect to present undesirable drawbacks: slowness and it
presents a not standardized accuracy since it depends on the operator’s
capabilities and tiredness. The detection of leukemia in human blood sample
using microscopic images is suitable for lowcosts andremotediagnosissystems.
In this paper presents an implementation of detection and classification of
leukemia. The system will use features in microscopic images and examine
changes on texture, shape and color analysis. Support Vector Machines (SVM) is
used as a classifier, which classifies into cancerous or not. The detection and
classification of ALL is implemented with MATLAB programming language.
Keywords: Acute Lymphoblastic Leukemia (ALL), Cytogenetics,
Immunophenotyping, Support Vector Machine (SVM).
I. INTRODUCTION
Leukemia is a blood cancer which affects the white blood
cells (WBCs), it is one of the most dangerous diseases
causing fatality among people, particularly in developed
countries [1]. Blood is a suspension of millions of cells such
as red blood cells, white blood cells and platelets are
basically in a clear liquid. They are all made in the factory of
blood known as the Bone Marrow and once they are mature,
they are released into the blood stream. In the case of
leukemia, WBCs become cancerous for reasons that are still
not well understood. There are two types of leukemia,
namely acute leukemia and chronic leukemia. Acute
leukemia is characterized by its rapid and aggressive
proliferation of immature cells called the blast cells. On the
other hand, chronic leukemia progress slowly over the
course of many years. Acute leukemia requires immediately
treatment to be given.
Acute leukemia is basically classified into acute
lymphoblastic leukemia (ALL) and acute myeloid leukemia
(AML). The treatment of ALL is different from that of AML.
Therefore, it is critically importanttodeterminewhether the
cell of origin is lymphoid or myeloid as quickly as possible.
The microscopic morphological examinations of peripheral
blood slides and bone marrow aspiration use in the
diagnosis and differentiation of ALL.ThePB smearscreening
is a particular importance because it facilitates a rapid
diagnosis and specific treatment [2].However,itissubject to
human error, inter-observer variation and requires highly
trained experts.
Computer-aided diagnosis system using digital image
processing reduces the time as compared to the manual
procedure as it allows screening larger number of PB slides
[3], it also increase the accuracy of the result by eliminating
human error. The computer-aided peripheral blood
screening for the purpose of acute leukemia diagnosis and
classification consists of image acquisition, blast cell
segmentation, feature extraction and classification of blast
cell.
II. RELATED WORKS
In the literature, there are numerous methods are described
to detect and classify the presence of leukemia in digital
microscopic images. A lot of research has been done on the
feature analysis on blood smear images. Ms.Minal, D. Joshiis
proposed the blood cell segmentation with histogram
equalization, Ostu’s threshold, K-mean clustering etc. and
KNN classifier to classify the blast cells [4]. The next paper is
proposed by using preprocessing, performed filtering
operation to remove noises. Segmentation based mainly on
k-mean clustering. The enhancement of image achieved by
using mathematical morphology in order to obtain better
IJTSRD25186
International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470
@ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1471
result. The features extracted shape and statistical features
and classified SVM classifier [5]. And then, this paper is
segmented by watershed segmentation and classified by
SVM and KNN classifiers [6]. A major issue in any pattern
classification system is the extraction of proper featuresthat
effectively differentiate various patterns. Usually in feature
extraction, the visual information of an image is analyzed in
order to produce features such as shape, texture and color.
III. METHODOLOGY
The proposed methodology for the classification of leukemia
in human blood sample based on microscopic images is
shown in Fig. 1.
The input for the system has used the image from database
which is provided by “ALL-IDB: The Acute Lymphoblastic
Leukemia Image Database for Image Processing”, [7]. And
then, the input image is pre-processed to upgrade the image
quality by using color conversion. The Otsu’s thresholding
and morphological operations are used for image
segmentation. The segmented image is then given to the
feature extraction block, which inheres of region of blast
cells analysis for its shape, color and texture features. The
extracted features are classified by using the SVM classifier.
Figure 1. Overall block diagram of the proposed
system
A. Image Pre-Processing
The blood smear image is given to the computer-aided
diagnostic system are usually captured in RGB color space,
however, many works in the literature discoveredthatother
color spaces such as HSV, Lab could be moreusefulthan RGB
in the extraction of blast cells.
The HSV color model represents every color in three
components namely Hue (H), Saturation (S), Value (V). It
strongly represents colors in a way that is very similar to
how the human eye senses color [8]. The HSV is a very
popular color space because it separates the pure color
aspects from the brightness. Hue band is the angle around
the vertical axis corresponding to thespectralfrequencyand
it is arranged on a circle encoded from 0 to 360 degree.
Saturation expresses how pure the color is, the more
saturated a color and it is represented by the distance from
the central axis. While the Value represents the distance
along the vertical axis, and denotes the color brightness. The
advantage of HSV over the RGB is that it appears more
intuitive about color in terms of brightness and spectral
name rather than the mixture coefficients of R, G, and B.
B. Image Segmentation
Image segmentation is an essential process for most image
analysis subsequent tasks. It makes things easier or change
the representation of an image into something that is more
meaningful and easier to analyze. And then, it partitions an
image into meaningful regions with respect to a practical
application. The detection of acute lymphoblastic leukemia
cell using microscopic images is segmented by the following
steps:
1. Otsu’s Thresholding
Thresholding is one of the most powerful tools for image
segmentation. The segmented image obtained from
thresholding has the advantages of smaller storage space,
fast processing speed and ease in manipulation, compared
with gray level image which usually contains 256 levels [9].
It is divided into two approaches: global thresholding.When
T is constant, this approach is called global thresholding.
When T varies for each sub-region, it is called local
thresholding. Otsu’s thresholdingmethodisoneof theglobal
thresholding.
Otsu’s thresholding is a non-linear operation that convertsa
gray-scale image into a binary image where the two levels
are assigned to pixels that are below or above the specified
threshold value.
where, g(x,y)=output image
f (x,y)=input image
T = threshold value
Otsu’s method is based on threshold selection by statistical
criteria. Otsu suggested minimizing the weighted sum of
within-class variances of theobjectandbackground pixelsto
establish an optimum threshold. Recall that minimization of
within-class variances is equivalent to maximization of
between-class variance. Threshold value based on this
method will be between 0 and 1. For choosingathresholding
follows this basic procedure:
Select an initial estimate for T
Segment the image using T. This will produce two
groups of pixels: G1, consisting of all pixels with
intensity values ,and G2, consisting of pixels with
values < T.
Compute the averageintensityvalues and forthe
pixels in regions G1 and G2.
Compute a new threshold value:
(1)
Repeat steps 2 through 4 until the difference in T in
successive iterations is smaller than a predefined
parameter .
It is based on threshold range by statistical. Otsu suggested
minimizing the weightedsumof within-classvariancesof the
object and background pixels to establish an optimum
International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470
@ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1472
threshold. Recall that minimizationofwithin-class variances
is equivalent to maximization of between-class variance.
Otsu’s thresholding method is based on selecting the lowest
point between two classes (peaks). Frequency and Mean
value are the following equations to be calculated.
, (2)
where, N = total pixel number
ni = number of pixels in level I
(3)
The variation of the mean values for each class from the
overall intensity mean of all pixels:
Between-classes variance ,
= + (4)
Substituting = ,
= ( (5)
, , , stands for thefrequencies andmean valuesof
two classes, respectively. Derived from this method,
threshold value represents between 0 and 1 and the
segmented image will be achieved.
2. Morphological Operation
Morphological image processing is a collection of non-linear
operations related to shape or morphology of features in an
image. Morphological operators often take a binary image
and a structuring elementas inputandcombinethemusinga
set operator. They process objects in the input image based
on characteristics of its shape, which are encoded in the
structuring element [10]. Morphology is a technique of
image processing based onshapes.Astructuringelementisa
shape mask used in the basic morphological operations. The
basic morphological operations are dilation and erosion.
Dilation is used to grow or thicken regions in a binaryimage,
while in the gray level image. Dilation is used to brighten
small dark areas, and to remove small dark "holes". Dilation
on an image by a structure element is denoted and it is
represented by the following equation:
(6)
where, the reflection of B.
Erosion is used to reduce objects in the image and known
that erosion reduces the peaks and enlarges the widths of
minimum regions, so it can remove positive noisesbutaffect
negative impulsive noises. The erosion of A byBisalsogiven
by the expression:
(7)
C. Feature Extraction
Feature extraction is one of the most important steps in this
system. A feature is a significant piece of information
extracted from an image which provides more detailed
understanding of the image. The transformation of animage
into its set of features is known as feature extraction. A
feature is defined as a function of one or more
measurements, the values of some quantifiable property of
an object, computed so that it quantifies some significant
characteristics of the object [11]. Typically, the aim is to
process the image in such a way thattheimage, orproperties
of it, can be adequately represented and extracted in a
compact form amenable to subsequent recognition and
classification.
1. Geometric or Shape Features
In general, the shape representationscan bedivided intotwo
categories; boundary-based and region-based. The former
uses only the outer boundary of the shape while the letter
uses the entire shape region. The most successful
representatives for these two categories are Fourier
descriptor and moment invariants.Themainideaof moment
invariants is to use region-based moments which are
invariant to transformation, as the shape feature. The
following features can beextractedform binaryimagesusing
the appropriate equations.
Area – the total number of non-zeros pixels available
within the image region.
Circularity – a dimensionless parameter is calculated by
area and perimeter.
Circularity = (4*pi*Area)/Perimeter (8)
Eccentricity – to measure how much a shape of a
nucleus deviates from being circular.
Eccentricity = 0.5(a–b)/a (9)
Elongation – abnormal bulging of the nucleus is also a
feature which signifies towards leukemia.
Elongation = Rmax / Rmin (10)
Rectangularity – the ratio of the ROI’s area to the areaof
its minimum bounding box.
Rectangularity =Area/(Major axis*Minor axis) (11)
2. Color Features
Color feature is one of the important elements enabling
humans to recognize images. Color feature is relatively
robust to background complication and independent of
image size and orientation. It is considered for extraction
from nucleus region of blast cell. Each nucleus image
provides the mean color values in color spaces.
(12)
3. Statistical or Texture Features
The texture feature provides statistics on the spatial
arrangement of intensities in an image; Local BinaryPattern
(LPB), and Gray-Level Co-occurrence of Matrix (GLCM). In
this system, GLCM is used to measure the texture
information of images. The Gray Level Co-occurrenceMatrix
(GLCM) is based on the extraction of a gray-scale image. The
GLCM functions characterize the texture of an image by
calculating how often pairs of pixels with specific valuesand
in a specified spatial relationship occur in an image,creating
a GLCM, and then extracting statistical measures from this
matrix. Statistical parameters calculated from GLCM values
are follows:
Entropy: The statistical measure of randomness that can be
used to characterize the texture of the input image.
(13)
where, p is the number of gray-level co-occurrence matrices
in GLCM.
Contrast: Measures the local variations in the GLCM. It
calculates intensitycontrastbetween apixel anditsneighbor
pixel for the whole image. Contrast is 0 for a constant image.
International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470
@ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1473
(14)
Correlation: Measures the jointprobabilityoccurrenceofthe
specified pixel pairs.
(15)
Energy: Provides the sum of squared elements in the GLCM.
It is also known as uniformity or the angular second
moment.
(16)
Homogeneity: Measures the closeness of the distribution of
elements in the GLCM to the GLCM diagonal.
(17)
D. Support Vector Machine (SVM)
There are numerous classification methods for automated
classification of samples. In this paper it’s decided to work
with most popular classification method: Support Vector
Machines (SVM). The Support Vector machines were
introduced by Vladimir Vapnik and colleagues. Support
Vector machines (SVM’s) are a relatively new learning
method used for binary classification. The basic idea is to
find a hyper plane which separates the D-Dimensional data
perfectly into its two classes. However, since exampledata is
often not linearly separable, SVM’s introduce the notion of a
kernel induced feature space which casts the data into a
higher dimensional space where the data is separable.
Namely, the primary goal of SVM classifiers is classification
of examples that belong to one of two possible classes.
However, SVM classifiers could be extended to be able to
solve multiclass problems as well. One of the strategies for
adapting binary SVM classifiers for solving multiclass
problems is one-against-all (OvA) scheme. It includes
decomposition of the M-class problem (M>2) into series of
two-class problems.ThebasicconceptistoconstructMSVMs
where the i-th classifier is trained toseparatetheclassifrom
all other (M-1) classes. This strategy has a few advantages
such as its precision, the possibility for easy implementation
and the speed in the training phase and the classification
process. That is reason for its wide use.
IV. RESULTS AND DISCUSSION
Classification for leukemia detection system is proposed in
this paper. This work can see implementation main menu of
the proposed system as shown in Fig. 2.
Figure2. The main menu of the proposed system
Figure3. Load of the blood smear image
The first stage of the system is to select the blood smear
images from the database by clicking the load image button.
And then the required blood smear image is chosen as
shown in Fig. 3. In the next step, we need to preprocess
images to unify the background of images before converting
it to signal. The original colored image is converted to HSV
color image as shown in Fig 4. The main reason was that the
HSV color space highlights the cell of interest and makes it
more prominent than the other components, hence, this
makes the localization process more efficient.
Figure4. The preprocessing of the input RGB image to
HSV color conversion
Figure5. The segmented image of the blast cell
Segmentation of blast cell is difficult becauseof thevariation
of cell shapes, sizes, colors and other various blood cells.
After color conversion the input image, it is needed to
segment the blast cell by using Out’s Threshold Techniques
and morphological operation such as area opening and
erosion in order to get the better accuracy of the segmented
image as shown in Fig. 5.
Figure6. The extracted features and classification
results for the cancer image
International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470
@ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1474
In feature extraction the shape, texture and color features
are extracted from the segmented image. The extracted
features are given as input to the SVM classifier. Once the
classifier is trained with the training data set,thetestimages
are given as the input to the SVM classifier. SVM is already
trained so that the classifier produces whether the image is
cancerous or not. For cancer condition (Cancer), the
classifier output is 1, and for normal condition (Healthy) the
output is 0. Fig. 6 shows the extracted features and
classification results for the cancer image. The extracted
features and classification results for the healthy image is
shown in Fig. 7.
Figure7. The extracted features and classification
results for the healthy image
TABLE I ACCURACY OF CLASSIFICATION OF LEUKEMIA
DETECTION SYSTEM
Images
Set
Training
Set
Correct
Prediction
Accuracy
Rate
Cancer
Images
30 26 86%
Health
Images
20 17 85%
To evaluate performance in this system, there are known
image from a train data set and an unknown image from a
test data set. The system’s accuracy of skin lesion
classification is described in Table I.
CONCLUSION
In this paper, the accurate segmentation of blood sample
images is a vital first step for computer aided diagnostic
system. Therefore, the input image is convertedto RGBcolor
to HSV color in order to get more efficient for the blast cell
localization process. And then, segmentation is applied by
using Ostu’s threshold techniques and morphological
operation to get the better accuracy of segmented blast cell.
Features extraction such shape, color and texture features
are extracted from the segmented blast cell. The extracted
features are classified by the SVM classifier. Using the SVM
classifier, leukemia diagnosis system with the accuracy of
86% for cancerous images and the accuracy of 85% for
health images is achieved.
Acknowledgement
First of all, Author would like to thank to her supervisor
Professor Dr.Ohnmar Win for her valuable suggestion, and
sharing her experience to write this research. And then, the
author would like to express special thanks to all the
teachers and friends from the of Department of Electronic
Engineering, Mandalay Technological University. Also, her
appreciation and sincere thanks go toher parentsandfamily
for being all the way with her.
References
[1] Bain, B. J, A beginner’s guide to blood cells: John Wiley&
Sons, 2008.
[2] Bain, B. J, Diagnosis from the blood smear, New
England Journal of Medicine, 2005.
[3] Escalante, H. J., Montes-y-Gonzalez, J.A., “Acute
leukemia classification by ensemble particle swarm
model selection”, 2012.
[4] Ms. Minal D. Joshi, Prof. Atul H. Karode, Prof.
S.R.Suralkar, “White Blood Cells Segmentation and
Classification to Detect Acute Leukemia”, Vol2, Issue3,
May-June 2013.
[5] Lorenzo Putzu, Giovanni Caocci, Cecilia Ruberto,
“Leucocyte Classification for LeukemiaDetection using
Image Processing Techniques”, Italy, September 2014.
[6] E. A. Mohammed, M. M. A. Mohamed, C. Naugler, B. H.
Far, “Chronic lymphocytic leukemia cell segmentation
from microscopic blood images using watershed
algorithm and optimal thresholding”, IEEE 26th, 2013.
[7] Fabio Scotti, ALL-IDB: “The Acute Lymphoblastic
Leukemia Image Database For Image Processing”,
2011, http://homes.di.unimi.it/fscotti/all
[8] Smith, A. R., Color gamut transform pairs, USA, August
1978.
[9] N.Otsu, “A Thresholding Selection Method from Gray-
Level Histograms”, IEEE Transaction on Systems, Man
and Cybernetics, Vol.9, NO.1,pp.
[10] V. Piuri, F. Scotti, “MorphologicalClassificationof Blood
Leucocytes by Microscopic Images”, USA, July 2004.
[11] R. C. Gonzalez, R. E. Woods, S.L. Eddins, Digital Image
Processing Using MATLAB, USA, 2004.

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Classification of Leukemia Detection in Human Blood Sample Based on Microscopic Images

  • 1. International Journal of Trend in Scientific Research and Development (IJTSRD) Volume: 3 | Issue: 4 | May-Jun 2019 Available Online: www.ijtsrd.com e-ISSN: 2456 - 6470 @ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1470 Classification of Leukemia Detection in Human Blood Sample Based on Microscopic Images Ei Ei Chaw, Ohnmar Win Department of Electronic Engineering, Mandalay Technological University, Mandalay, Myanmar How to cite this paper: Ei Ei Chaw | Ohnmar Win"Classificationof Leukemia Detection in Human Blood Sample Based on Microscopic Images" Published in International Journal of Trend in Scientific Research and Development (ijtsrd), ISSN: 2456- 6470, Volume-3 | Issue-4, June 2019, pp.1470-1474, URL: https://www.ijtsrd.c om/papers/ijtsrd25 186.pdf Copyright © 2019 by author(s) and International Journal of Trend in Scientific Research and Development Journal. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0) (http://creativecommons.org/licenses/ by/4.0) ABSTRACT Nowadays, the automatic specific tests such as Cytogenetics, Immunophenotyping and morphological cell classification can identify the leukemia disease by making experienced operators observing blood or bone marrow microscopic images. The early identification of Acute Lymphoblastic Leukemia (ALL) symptoms in patients can greatly increase the probability of recovery. When typical symptoms appear in normal blood analysis, those methods are not included into large screening programs and are applied only. The method of blood cell observation using Cytogenetics and Immunophenotyping diagnostic methods are currently preferred fortheirgreat accuracy with respect to present undesirable drawbacks: slowness and it presents a not standardized accuracy since it depends on the operator’s capabilities and tiredness. The detection of leukemia in human blood sample using microscopic images is suitable for lowcosts andremotediagnosissystems. In this paper presents an implementation of detection and classification of leukemia. The system will use features in microscopic images and examine changes on texture, shape and color analysis. Support Vector Machines (SVM) is used as a classifier, which classifies into cancerous or not. The detection and classification of ALL is implemented with MATLAB programming language. Keywords: Acute Lymphoblastic Leukemia (ALL), Cytogenetics, Immunophenotyping, Support Vector Machine (SVM). I. INTRODUCTION Leukemia is a blood cancer which affects the white blood cells (WBCs), it is one of the most dangerous diseases causing fatality among people, particularly in developed countries [1]. Blood is a suspension of millions of cells such as red blood cells, white blood cells and platelets are basically in a clear liquid. They are all made in the factory of blood known as the Bone Marrow and once they are mature, they are released into the blood stream. In the case of leukemia, WBCs become cancerous for reasons that are still not well understood. There are two types of leukemia, namely acute leukemia and chronic leukemia. Acute leukemia is characterized by its rapid and aggressive proliferation of immature cells called the blast cells. On the other hand, chronic leukemia progress slowly over the course of many years. Acute leukemia requires immediately treatment to be given. Acute leukemia is basically classified into acute lymphoblastic leukemia (ALL) and acute myeloid leukemia (AML). The treatment of ALL is different from that of AML. Therefore, it is critically importanttodeterminewhether the cell of origin is lymphoid or myeloid as quickly as possible. The microscopic morphological examinations of peripheral blood slides and bone marrow aspiration use in the diagnosis and differentiation of ALL.ThePB smearscreening is a particular importance because it facilitates a rapid diagnosis and specific treatment [2].However,itissubject to human error, inter-observer variation and requires highly trained experts. Computer-aided diagnosis system using digital image processing reduces the time as compared to the manual procedure as it allows screening larger number of PB slides [3], it also increase the accuracy of the result by eliminating human error. The computer-aided peripheral blood screening for the purpose of acute leukemia diagnosis and classification consists of image acquisition, blast cell segmentation, feature extraction and classification of blast cell. II. RELATED WORKS In the literature, there are numerous methods are described to detect and classify the presence of leukemia in digital microscopic images. A lot of research has been done on the feature analysis on blood smear images. Ms.Minal, D. Joshiis proposed the blood cell segmentation with histogram equalization, Ostu’s threshold, K-mean clustering etc. and KNN classifier to classify the blast cells [4]. The next paper is proposed by using preprocessing, performed filtering operation to remove noises. Segmentation based mainly on k-mean clustering. The enhancement of image achieved by using mathematical morphology in order to obtain better IJTSRD25186
  • 2. International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470 @ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1471 result. The features extracted shape and statistical features and classified SVM classifier [5]. And then, this paper is segmented by watershed segmentation and classified by SVM and KNN classifiers [6]. A major issue in any pattern classification system is the extraction of proper featuresthat effectively differentiate various patterns. Usually in feature extraction, the visual information of an image is analyzed in order to produce features such as shape, texture and color. III. METHODOLOGY The proposed methodology for the classification of leukemia in human blood sample based on microscopic images is shown in Fig. 1. The input for the system has used the image from database which is provided by “ALL-IDB: The Acute Lymphoblastic Leukemia Image Database for Image Processing”, [7]. And then, the input image is pre-processed to upgrade the image quality by using color conversion. The Otsu’s thresholding and morphological operations are used for image segmentation. The segmented image is then given to the feature extraction block, which inheres of region of blast cells analysis for its shape, color and texture features. The extracted features are classified by using the SVM classifier. Figure 1. Overall block diagram of the proposed system A. Image Pre-Processing The blood smear image is given to the computer-aided diagnostic system are usually captured in RGB color space, however, many works in the literature discoveredthatother color spaces such as HSV, Lab could be moreusefulthan RGB in the extraction of blast cells. The HSV color model represents every color in three components namely Hue (H), Saturation (S), Value (V). It strongly represents colors in a way that is very similar to how the human eye senses color [8]. The HSV is a very popular color space because it separates the pure color aspects from the brightness. Hue band is the angle around the vertical axis corresponding to thespectralfrequencyand it is arranged on a circle encoded from 0 to 360 degree. Saturation expresses how pure the color is, the more saturated a color and it is represented by the distance from the central axis. While the Value represents the distance along the vertical axis, and denotes the color brightness. The advantage of HSV over the RGB is that it appears more intuitive about color in terms of brightness and spectral name rather than the mixture coefficients of R, G, and B. B. Image Segmentation Image segmentation is an essential process for most image analysis subsequent tasks. It makes things easier or change the representation of an image into something that is more meaningful and easier to analyze. And then, it partitions an image into meaningful regions with respect to a practical application. The detection of acute lymphoblastic leukemia cell using microscopic images is segmented by the following steps: 1. Otsu’s Thresholding Thresholding is one of the most powerful tools for image segmentation. The segmented image obtained from thresholding has the advantages of smaller storage space, fast processing speed and ease in manipulation, compared with gray level image which usually contains 256 levels [9]. It is divided into two approaches: global thresholding.When T is constant, this approach is called global thresholding. When T varies for each sub-region, it is called local thresholding. Otsu’s thresholdingmethodisoneof theglobal thresholding. Otsu’s thresholding is a non-linear operation that convertsa gray-scale image into a binary image where the two levels are assigned to pixels that are below or above the specified threshold value. where, g(x,y)=output image f (x,y)=input image T = threshold value Otsu’s method is based on threshold selection by statistical criteria. Otsu suggested minimizing the weighted sum of within-class variances of theobjectandbackground pixelsto establish an optimum threshold. Recall that minimization of within-class variances is equivalent to maximization of between-class variance. Threshold value based on this method will be between 0 and 1. For choosingathresholding follows this basic procedure: Select an initial estimate for T Segment the image using T. This will produce two groups of pixels: G1, consisting of all pixels with intensity values ,and G2, consisting of pixels with values < T. Compute the averageintensityvalues and forthe pixels in regions G1 and G2. Compute a new threshold value: (1) Repeat steps 2 through 4 until the difference in T in successive iterations is smaller than a predefined parameter . It is based on threshold range by statistical. Otsu suggested minimizing the weightedsumof within-classvariancesof the object and background pixels to establish an optimum
  • 3. International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470 @ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1472 threshold. Recall that minimizationofwithin-class variances is equivalent to maximization of between-class variance. Otsu’s thresholding method is based on selecting the lowest point between two classes (peaks). Frequency and Mean value are the following equations to be calculated. , (2) where, N = total pixel number ni = number of pixels in level I (3) The variation of the mean values for each class from the overall intensity mean of all pixels: Between-classes variance , = + (4) Substituting = , = ( (5) , , , stands for thefrequencies andmean valuesof two classes, respectively. Derived from this method, threshold value represents between 0 and 1 and the segmented image will be achieved. 2. Morphological Operation Morphological image processing is a collection of non-linear operations related to shape or morphology of features in an image. Morphological operators often take a binary image and a structuring elementas inputandcombinethemusinga set operator. They process objects in the input image based on characteristics of its shape, which are encoded in the structuring element [10]. Morphology is a technique of image processing based onshapes.Astructuringelementisa shape mask used in the basic morphological operations. The basic morphological operations are dilation and erosion. Dilation is used to grow or thicken regions in a binaryimage, while in the gray level image. Dilation is used to brighten small dark areas, and to remove small dark "holes". Dilation on an image by a structure element is denoted and it is represented by the following equation: (6) where, the reflection of B. Erosion is used to reduce objects in the image and known that erosion reduces the peaks and enlarges the widths of minimum regions, so it can remove positive noisesbutaffect negative impulsive noises. The erosion of A byBisalsogiven by the expression: (7) C. Feature Extraction Feature extraction is one of the most important steps in this system. A feature is a significant piece of information extracted from an image which provides more detailed understanding of the image. The transformation of animage into its set of features is known as feature extraction. A feature is defined as a function of one or more measurements, the values of some quantifiable property of an object, computed so that it quantifies some significant characteristics of the object [11]. Typically, the aim is to process the image in such a way thattheimage, orproperties of it, can be adequately represented and extracted in a compact form amenable to subsequent recognition and classification. 1. Geometric or Shape Features In general, the shape representationscan bedivided intotwo categories; boundary-based and region-based. The former uses only the outer boundary of the shape while the letter uses the entire shape region. The most successful representatives for these two categories are Fourier descriptor and moment invariants.Themainideaof moment invariants is to use region-based moments which are invariant to transformation, as the shape feature. The following features can beextractedform binaryimagesusing the appropriate equations. Area – the total number of non-zeros pixels available within the image region. Circularity – a dimensionless parameter is calculated by area and perimeter. Circularity = (4*pi*Area)/Perimeter (8) Eccentricity – to measure how much a shape of a nucleus deviates from being circular. Eccentricity = 0.5(a–b)/a (9) Elongation – abnormal bulging of the nucleus is also a feature which signifies towards leukemia. Elongation = Rmax / Rmin (10) Rectangularity – the ratio of the ROI’s area to the areaof its minimum bounding box. Rectangularity =Area/(Major axis*Minor axis) (11) 2. Color Features Color feature is one of the important elements enabling humans to recognize images. Color feature is relatively robust to background complication and independent of image size and orientation. It is considered for extraction from nucleus region of blast cell. Each nucleus image provides the mean color values in color spaces. (12) 3. Statistical or Texture Features The texture feature provides statistics on the spatial arrangement of intensities in an image; Local BinaryPattern (LPB), and Gray-Level Co-occurrence of Matrix (GLCM). In this system, GLCM is used to measure the texture information of images. The Gray Level Co-occurrenceMatrix (GLCM) is based on the extraction of a gray-scale image. The GLCM functions characterize the texture of an image by calculating how often pairs of pixels with specific valuesand in a specified spatial relationship occur in an image,creating a GLCM, and then extracting statistical measures from this matrix. Statistical parameters calculated from GLCM values are follows: Entropy: The statistical measure of randomness that can be used to characterize the texture of the input image. (13) where, p is the number of gray-level co-occurrence matrices in GLCM. Contrast: Measures the local variations in the GLCM. It calculates intensitycontrastbetween apixel anditsneighbor pixel for the whole image. Contrast is 0 for a constant image.
  • 4. International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470 @ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1473 (14) Correlation: Measures the jointprobabilityoccurrenceofthe specified pixel pairs. (15) Energy: Provides the sum of squared elements in the GLCM. It is also known as uniformity or the angular second moment. (16) Homogeneity: Measures the closeness of the distribution of elements in the GLCM to the GLCM diagonal. (17) D. Support Vector Machine (SVM) There are numerous classification methods for automated classification of samples. In this paper it’s decided to work with most popular classification method: Support Vector Machines (SVM). The Support Vector machines were introduced by Vladimir Vapnik and colleagues. Support Vector machines (SVM’s) are a relatively new learning method used for binary classification. The basic idea is to find a hyper plane which separates the D-Dimensional data perfectly into its two classes. However, since exampledata is often not linearly separable, SVM’s introduce the notion of a kernel induced feature space which casts the data into a higher dimensional space where the data is separable. Namely, the primary goal of SVM classifiers is classification of examples that belong to one of two possible classes. However, SVM classifiers could be extended to be able to solve multiclass problems as well. One of the strategies for adapting binary SVM classifiers for solving multiclass problems is one-against-all (OvA) scheme. It includes decomposition of the M-class problem (M>2) into series of two-class problems.ThebasicconceptistoconstructMSVMs where the i-th classifier is trained toseparatetheclassifrom all other (M-1) classes. This strategy has a few advantages such as its precision, the possibility for easy implementation and the speed in the training phase and the classification process. That is reason for its wide use. IV. RESULTS AND DISCUSSION Classification for leukemia detection system is proposed in this paper. This work can see implementation main menu of the proposed system as shown in Fig. 2. Figure2. The main menu of the proposed system Figure3. Load of the blood smear image The first stage of the system is to select the blood smear images from the database by clicking the load image button. And then the required blood smear image is chosen as shown in Fig. 3. In the next step, we need to preprocess images to unify the background of images before converting it to signal. The original colored image is converted to HSV color image as shown in Fig 4. The main reason was that the HSV color space highlights the cell of interest and makes it more prominent than the other components, hence, this makes the localization process more efficient. Figure4. The preprocessing of the input RGB image to HSV color conversion Figure5. The segmented image of the blast cell Segmentation of blast cell is difficult becauseof thevariation of cell shapes, sizes, colors and other various blood cells. After color conversion the input image, it is needed to segment the blast cell by using Out’s Threshold Techniques and morphological operation such as area opening and erosion in order to get the better accuracy of the segmented image as shown in Fig. 5. Figure6. The extracted features and classification results for the cancer image
  • 5. International Journal of Trend in Scientific Research and Development (IJTSRD) @ www.ijtsrd.com eISSN: 2456-6470 @ IJTSRD | Unique Paper ID – IJTSRD25186 | Volume – 3 | Issue – 4 | May-Jun 2019 Page: 1474 In feature extraction the shape, texture and color features are extracted from the segmented image. The extracted features are given as input to the SVM classifier. Once the classifier is trained with the training data set,thetestimages are given as the input to the SVM classifier. SVM is already trained so that the classifier produces whether the image is cancerous or not. For cancer condition (Cancer), the classifier output is 1, and for normal condition (Healthy) the output is 0. Fig. 6 shows the extracted features and classification results for the cancer image. The extracted features and classification results for the healthy image is shown in Fig. 7. Figure7. The extracted features and classification results for the healthy image TABLE I ACCURACY OF CLASSIFICATION OF LEUKEMIA DETECTION SYSTEM Images Set Training Set Correct Prediction Accuracy Rate Cancer Images 30 26 86% Health Images 20 17 85% To evaluate performance in this system, there are known image from a train data set and an unknown image from a test data set. The system’s accuracy of skin lesion classification is described in Table I. CONCLUSION In this paper, the accurate segmentation of blood sample images is a vital first step for computer aided diagnostic system. Therefore, the input image is convertedto RGBcolor to HSV color in order to get more efficient for the blast cell localization process. And then, segmentation is applied by using Ostu’s threshold techniques and morphological operation to get the better accuracy of segmented blast cell. Features extraction such shape, color and texture features are extracted from the segmented blast cell. The extracted features are classified by the SVM classifier. Using the SVM classifier, leukemia diagnosis system with the accuracy of 86% for cancerous images and the accuracy of 85% for health images is achieved. Acknowledgement First of all, Author would like to thank to her supervisor Professor Dr.Ohnmar Win for her valuable suggestion, and sharing her experience to write this research. And then, the author would like to express special thanks to all the teachers and friends from the of Department of Electronic Engineering, Mandalay Technological University. Also, her appreciation and sincere thanks go toher parentsandfamily for being all the way with her. References [1] Bain, B. J, A beginner’s guide to blood cells: John Wiley& Sons, 2008. [2] Bain, B. J, Diagnosis from the blood smear, New England Journal of Medicine, 2005. [3] Escalante, H. J., Montes-y-Gonzalez, J.A., “Acute leukemia classification by ensemble particle swarm model selection”, 2012. [4] Ms. Minal D. Joshi, Prof. Atul H. Karode, Prof. S.R.Suralkar, “White Blood Cells Segmentation and Classification to Detect Acute Leukemia”, Vol2, Issue3, May-June 2013. [5] Lorenzo Putzu, Giovanni Caocci, Cecilia Ruberto, “Leucocyte Classification for LeukemiaDetection using Image Processing Techniques”, Italy, September 2014. [6] E. A. Mohammed, M. M. A. Mohamed, C. Naugler, B. H. Far, “Chronic lymphocytic leukemia cell segmentation from microscopic blood images using watershed algorithm and optimal thresholding”, IEEE 26th, 2013. [7] Fabio Scotti, ALL-IDB: “The Acute Lymphoblastic Leukemia Image Database For Image Processing”, 2011, http://homes.di.unimi.it/fscotti/all [8] Smith, A. R., Color gamut transform pairs, USA, August 1978. [9] N.Otsu, “A Thresholding Selection Method from Gray- Level Histograms”, IEEE Transaction on Systems, Man and Cybernetics, Vol.9, NO.1,pp. [10] V. Piuri, F. Scotti, “MorphologicalClassificationof Blood Leucocytes by Microscopic Images”, USA, July 2004. [11] R. C. Gonzalez, R. E. Woods, S.L. Eddins, Digital Image Processing Using MATLAB, USA, 2004.