- Open Access
- Total Downloads : 152
- Authors : Agnes Shiny Rachel. N, A. Ramya, M. Kiruthika
- Paper ID : IJERTV4IS030858
- Volume & Issue : Volume 04, Issue 03 (March 2015)
- DOI : http://dx.doi.org/10.17577/IJERTV4IS030858
- Published (First Online): 30-03-2015
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License: This work is licensed under a Creative Commons Attribution 4.0 International License
A Novel Approach in the Identification of Diseased Tissues in Brain, Kidney, Lungs and Heart using Median Filter
Agnes Shiny Rachel.N
-
(VLSI) Assistant Professor, Rathinam Institute of Technology, Pollachi Main
Road, Coimbatore-641021.India
-
Ramya1,M. Kiruthika2
-
-
B.E(ECE) Student, Rathinam Institute of Technology, Coimbatore.
-
B.E(ECE) Student, Rathinam Institute of Technology, Coimbatore.
Abstract Cardiac failure has become a major threat to human life in recent days. Although the rate of mortality due to improper cardiac functioning is increasing rapidly still there is no fast diagnosis method to detect the failures in heart. Hence we have proposed a novel method to identify the diseased tissue using Median Filter and further processing using Bayesian estimation. In this proposed system the contour of the organ is keenly observed in terms of Area and Volume. With these parameters the blood flow can be identified with respect to the increase or decrease in the area and volume. The blood flow would clearly indicate if there is a failure in the examined object. This method has proved to be highly efficient in terms of computation time by 1.26s.
Keywords Area; Volume; Contour; Computation Time;
In all the above discussed methods although the perfect diagnosis of the disorders has been seriously worked upon yet there was no improvement in computation time. In this proposed method using Median filter followed by Bayesian estimation the information of both the left and right ventricle has been separately studied in order to get a precise data and also the computation time which was otherwise greatly consumed by manual verification has been brought down to a great extent.
II. PROPOSED METHOD
The block diagram of the proposed Median Filtering and Bayesian Estimation has been shown in Fig. 1.
-
General Bayesian Formulation
-
I. INTRODUCTION
In early times a coupled level set segmentation of the myocardium of the left ventricle of the heart using a priori information was developed [1]. It made use of a novel and robust stopping term using gradient and region based information. Later in the year 2007, an automatic approach to segment cardiac magnetic resonance images was presented. The obtained overlapping percentage, mean and maximum distance between the two contours increased the performance [2]. Another new framework for the segmentation of ventricles based on image registration has been developed. The experimental results proved to correct the unrealistic deformations and improve the segmentation accuracy [3]. Later another method which went onsight into both the ventricles using automatic segmentation on dynamic short axis steady state free precession MR images[4]. In the year 2009, a discrete kernel density matching energy for segmenting the
Left ventricle cavity in cardiac magnetic resonance sequences was developed. Quantitative evaluations over 2280 images from 20 subjects demonstrated that the results correlated well with independent manual segmentations [5]. Tomasz Pieciak in the year 2012 proposed a short axis MRI left ventricle segmentation method which was based on an active contour method and gradient vector flow field forces [6]. Also another image compression method using Wavelet and SPIHT encoding scheme has been evolved [7].
(1)
d=data h=hypothesis
Fig 1. Block Diagram
-
Preprocessing
The steps in Preprocessing have been shown in Fig2.
Fig 2. Pre Processing
-
The image is initially resized to 256*256.
-
Then using a Median Filter the noise in the image is removed
-
-
Median Filtering
It is a non linear digital filtering technique. It goes through the signal on each pixel and replaces it with the median of the neighboring pixels. The neighbors are called as windows. For a one dimensional image there are less number of windows whereas for two dimensional and three dimensional there are n number of windows. Median filters can tend to erase lines narrower than ½ the width of the neighborhood. They can also round off corners.
-
BAYESIAN ESTIMATION
The Bayesian algorithm helps to obtain the area and volume of the organ of interest. The block diagram of this is shown in
Fig. 3 Bayesian Method
There are two different hypotheses
-
Maximum Likelihood Hypothesis
-
Maximum a Posteriori Hypothesis.
-
-
Of which we make use of the Maximum Likelihood hypothesis.
To determine the Maximum Likelihood hypothesis, we evaluate P (d|h) for the data d, which is the positive lab test and choose the hypothesis (diagnosis) that maximises it.
Area is obtained from the formula
(2)
(3)
Then the thickness is measured and combined with area to get the volume.
-
RESULTS AND DISCUSSIONS
-
Resizing
The image that is read is resized to a particular dimension as shown in Fig 4.
Fig 4. Resized image
-
Median filter
The Image is Filtered using Median Filter to make it noise free. The noise free image is shown in Fig 5
Fig 5. Filtered Output
-
Bayesian Estimation
The filtered image is then subjected to the algorithm procedure wherein it is separated into the Right part as in Fig 6. And the left part as in Fig 7.
Fig 6 Separation of the Right Ventricle
Fig 7. Separation of the Left Ventricle
The image is then combined and the thickness is denoted in yellow as shown in Fig 8.
Fig 8. Thickness with Bayesian estimation
The output image for Brain, Kidney and Lungs is shown as follows in Fig 9, Fig 10, and Fig 11.
Fig 9. Brain
Fig 10. Lungs
Fig 11. Kidney
The Area and the Volume is then Estimated along with the Computation time in Matlab 2010 version which is shown in Table 1.
TABLE I. HEART
S.No
Parameter
Value
1.
Area of LV
11134
2.
Area of RV
12016
3.
Volume of LV
11630
4.
Volume of RV
12638
5.
Computation Time
1.26s
The area of the left ventricle is found to be less than that of the Right also the volume. This can be compared with the areas and volume of a failed Heart so as to identify any sort of abnormalities in the Organ that is examined.
S.No
Parameter
Value
1.
Area of Left part
114
2.
Area of Right Part
60547
3.
Volume of Left part
162
4.
Volume of Right part
61431
5.
Computation Time
8.4397
TABLE II. LUNGS
TABLE III. KIDNEY
S.No
Parameter
Value
1.
Area of Left part
8552
2.
Area of Right Part
12101
3.
Volume of Left part
975
4.
Volue of Right part
12709
5.
Computation Time
7.6596
-
-
CONCLUSION
The proposed method serves to be highly efficient in computation time thereby overcoming the delay. The Bayesian algorithm helped in the clear distinguishing of the left and Right part of the examined organ. Later the blood flow is also known from the area and the volume hence giving appropriate information about the disorders in the organ.
REFERENCES
-
M.Lynch ,O.GhitaP.F.Whelan.''Left -Ventricle myocardium segmentation using a coupled level -set with A-Priori knowledge'',July 2005.
-
R.EL Berbari,I.Bloch,Et.al.''An automated myocardial segmentation in cardiac MRI'',Auguest 2007.
-
X.Zhuang, D.J.Hawkes, Et.al.'' Robust registration between cardiac MRI images ad atlas for segmentation propagation'', 2008.
-
Chris A.Cocosco,Wiro J.Niessen,Et.al.''Automatic image – Driven segmentation of the ventricles in cardiac cine MRI'',2008.
-
Ismail Ben Ayed,Kumaradeven Punithakumar,Et.al.''Left ventricle segmentation via graph cut distribution matching'',2009.
-
Tomasz pieciak. ''Segmentation of the left ventricle using active contour method with gradient vector flow forces in short
-axis MRI'',2012.
-
Swetha Dotla,Y.David Solmon Raju,Et.al.''Image compression using wavelet and SPIHT Encoding scheme'',sep 2013.
-
Zhijie Wang, Mohamed Ben Salah,Et.al.''Direct estimation of cardiac biventricular volumes with adapted Bayesian Formulation'',April 2014.
-
Z.Wang,M.B.Salah,Et.al.''Bi-ventricular volume estimation for cardiac functional assessment'',2013.
-
C.Petitjean and J.N.Dacher,A Review of Segmentation methods in short axis CardiacMR images, Med Image Anal.,vol 15, No 2pp 169-184,April 2011.
-
H.-y. Lee, N. C. F. Codella, M. D. Cham, J. W. Weinsaft, and
Y. Wang,Automatic left ventricle segmentation using iterative thresholding and an active contour model with adaptation on short-axis cardiac MRI, IEEETrans. Biomed. Eng., vol. 57, no. 4, pp. 905913, Apr. 2010.
-
M. Lynch, O. Ghita, and P. F. Whelan, Automatic segmentation of the left ventricle cavity and myocardium in MRI data, Comput. Biol. Med.,
vol. 36, no. 4, pp. 389407, Apr. 2006.
-
I. Ben Ayed, A. Mitiche, M. B. Salah, and S. Li, Finding image distributions on active curves, Comput. Vis. Pattern. Recog., vol. 1, pp. 32253232, Jun. 2010.
-
A. Andreopoulos and J. K. Tsotsos, Efficient and generalizable statistical models of shape and appearance for analysis of cardiac MRI,Med. Image Anal., vol. 12, no. 3, pp. 335357, Jun. 2008.
-
J. Senegas, C. A. Cocosco, and T. Netsch, Model-based segmentation of cardiac MRI cine sequences a Bayesian formulation, Proc. SPIE, Med. Imag., vol. 5370, pp. 432 443, May 2004.
-
M. Afshin, I. B. Ayed, A. Islam, A. Goela, T. M. Peters, and S. Li, Global assessment of cardiac function using image statistics in MRI, Int. Conf.Med. Image Comput. Comput.- Assisted Intervention, pp. 535543, Jan. 2012.
-
M. Afshin, Automatic assessment of cardiac left ventricular function via magnetic resonance images, Ph.D. dissertation, Univ. ofWesternOntario,