Brain Tumor Segmentation Based on α‐Expansion Graph Cut

Author:

Soloh Roaa123,Alabboud Hassan4,Shahin Ahmad25,Yassine Adnan36,El Chakik Abdallah7

Affiliation:

1. Computer & Information Systems Department Rafik Hariri University Mechref Lebanon

2. LIA Laboratory, Doctoral School of Sciences & Technology Lebanese University Tripoli Lebanon

3. UNIHAVRE, LMAH, FR‐CNRS‐3335, ISCN Normandie Université Le Havre France

4. Faculty of Economics and Business Administration Lebanese University Tripoli Lebanon

5. Department of Computer Information Systems, Faculty of Business – 3 Lebanese University Tripoli Lebanon

6. UNILEHAVRE, Institut Supérieur d'Etudes Logistiques (ISEL) Normandie Université Le Havre France

7. Department of Computer Science Beirut Arab University Tripoli Lebanon

Abstract

ABSTRACTIn recent years, there has been an increased interest in using image processing, computer vision, and machine learning in biological and medical imaging research. One area of this interest is the diagnosis of brain tumors, which is considered a difficult and time‐consuming task traditionally performed manually. In this study, we present a method for tumor detection from magnetic resonance images (MRI) using a well‐known graph‐based algorithm, the Boykov–Kolmogorov algorithm, and the α‐expansion method. This approach involves pre‐processing the MRIs, representing the image positions as nodes, and calculations of the weights between edges as differences in intensity. The problem is formulated as an energy minimization problem and is solved by finding the 0,1 score for the image. Post‐processing is also performed to enhance the overall segmentation. The proposed method is easy to implement and shows high accuracy, precision, and efficiency in the results. We believe that this approach will bring significant benefits to scientists and healthcare researchers in qualitative research and can be applied to various imaging modalities for future research.

Publisher

Wiley

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