Automatic Detection Brain Segmentation to Detect Brain Tumor Using MRI

Riyanto Sigit, Annisa Wulandari, Noor Rofiqah, Heny Yuniarti

Abstract


Brain tumors are a type of disease in the form of lumps of meat that grow in the brain. In differentiating brain tumor tissue from normal tissue become a difficulty caused by the same colors are an obstacle in seeing brain tumors using MRI images. Accuracy is needed in analyzing brain tumors. However, currently, radiographers (radiologists) still analyze the results of manual MRI images of brain tumors. Therefore we need a method that is able to segment MRI images precisely and automatically, with the aim of obtaining faster and more accurate image segmentation of brain tumors so that we can know the percentage of brain tumors found in the brain. To overcome difficulties when segmenting brain tumors in separating brain tumor tissue from other tissues such as normal brain tissue, cerebrospinal fluid, fat, and edema, a learning-based system method that will carry out the training process uses Haar training to narrow the MRI image so that it is more focused on the part of the head object. Then median filtering is performed to maintain the edge of the image on the MRI image. Then the segmentation process using the thresholding method is run, then repeated to take the largest area. Segmentation of brain is carried out by marking the brain area and the area outside the brain using the DAS method and then cleaning the skull using the cropping method. In this research, 12 images of MRI brain tumors were used. The results of segmentation compared to area of the brain tumor and area of the brain tissue. The system obtains a calculation of the tumor area having an average error of 10,5%.

Keywords


automatic; brain tumors; MRI images; segmentation; thresholding.

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References


Huang Meiyan, Wei Yang, Wu Yao, Jiang Jun, Chen Wufan, and Qianjin Feng, “Brain Tumor Segmentation Based on Local Independent Projection-based Classificationâ€, IEEE Transactions on Biomedical Engineering, 2013.

Ines NJEH, Lamia Sallemi, Mohammed Ben Slima, Stephane Lehericy. “A Computer Aided Diagnosis ‘CAD’ for Brain Glioma Explorationâ€. International Conference on Advanced Technologies Signal and Image Processing.2014.

Eman Abdel-Maksoud*, Mohammad Elmogy, Rashid AlAwadi.â€Brain Tumor Segmentation Based on a Hybrid Clustering Techniqueâ€.Egyptian Informatics Journal.2015.

Riyanto Sigit, Zainal Arief, Mochamad Mobed Bachtiar. â€Development of Healthcare Kiosk for Checking Heart Healthâ€.EMITTER International Journal of Engineering Technology.2015.

Dawngliana Malsawm, Deb Daizy, Handique Mousum, and Roy Sudipta, “Automatic Brain Tumor Segmentation in MRI: Hybridized Multilevel Thresholding and Level Setâ€, International Symposium on Advanced Computing and Communication (ISACC). 2015.

Nooshin Nabizadeh, Miroslav Kubat. “Brain tumors detection and segmentation in MR images: Gabor wavelet vs. statistical featuresâ€. Elsevier.2015.

A. Min and Z. M. Kyu, "MRI Images Enhancement and Tumor Segmentation for Brain," 2017 18th International Conference on Parallel and Distributed Computing, Applications and Technologies (PDCAT), Taipei, 2017, pp. 270-275.

Malsawm Dawngliana, Daizy Deb, Mousum Handique, and Sudipta Roy. “Automatic Brain Tumor Segmentation in MRI: Hybridized Multilevel Thresholding and Level Setâ€. International Symposium on Advanced Computing and Communication (ISACC). 2015.

Jin Liu, Min Li, Jianxin Wang*, Fangxiang Wu, Tianming Liu, and Yi Pan. “ A Survey of MRI-Based Brain Tumor Segmentation Methodsâ€.ISSN.2014.

K. Bhima and A. Jagan, "Analysis of MRI based brain tumor identification using segmentation technique," 2016 International Conference on Communication and Signal Processing (ICCSP), Melmaruvathur, 2016, pp. 2109-2113.

P. Dhage, M. R. Phegade and S. K. Shah, "Watershed segmentation brain tumor detection," 2015 International Conference on Pervasive Computing (ICPC), Pune, 2015, pp. 1-5.

A. Wulandari, R. Sigit and M. M. Bachtiar, "Brain Tumor Segmentation to Calculate Percentage Tumor Using MRI," 2018 International Electronics Symposium on Knowledge Creation and Intelligent Computing (IES-KCIC), Bali, Indonesia, 2018, pp. 292-296.

R. R. Hidayatullah, R. Sigit and S. Wasista, "Segmentation of head CT-scan to calculate percentage of brain hemorrhage volume," 2017 International Electronics Symposium on Knowledge Creation and Intelligent Computing (IES-KCIC), Surabaya, 2017, pp. 301-306.

L. Breiman, “Random forests,†Machine Learning, vol. 45, no. 1, pp. 5–32, 2001.

Ines NJEH, Lamia Sallemi, Mohammed Ben Slima, Stephane Lehericy. “A Computer Aided Diagnosis ‘CAD’ for Brain Glioma Explorationâ€. International Conference on Advanced Technologies Signal and Image Processing.2014.

Lina Chato, Shahram Latifi. “Machine Learning and Deep LearningvTechniques to Predict Overall Survival of Brain Tumor Patients using MRI Imagesâ€.IEEE International Conference on Bioinformatics and Bioengineering.2017.

Ghafanzar Latif, M.Mohsin Butt, Adil H.Khan, Omair Butt D.N.F.Awang Iskandar. “Multiclass Brain Glioma Tumor Classification Using Block-Based 3D Wavelet Features of MR Imagesâ€.International Conference on Electrical and Electronics Engineering.2017.




DOI: http://dx.doi.org/10.18517/ijaseit.9.6.8536

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