Abstract

Medical imaging techniques play a critical role in diagnosing diseases and patient healthcare. They help in treatment, diagnosis, and early detection. Image segmentation is one of the most important steps in processing medical images, and it has been widely used in many applications. Multi-level thresholding (MLT) is considered as one of the simplest and most effective image segmentation techniques. Traditional approaches apply histogram methods; however, these methods face some challenges. In recent years, swarm intelligence methods have been leveraged in MLT, which is considered an NP-hard problem. One of the main drawbacks of the SI methods is when searching for optimum solutions, and some may get stuck in local optima. This because during the run of SI methods, they create random sequences among different operators. In this study, we propose a hybrid SI based approach that combines the features of two SI methods, marine predators algorithm (MPA) and moth-?ame optimization (MFO). The proposed approach is called MPAMFO, in which, the MFO is utilized as a local search method for MPA to avoid trapping at local optima. The MPAMFO is proposed as an MLT approach for image segmentation, which showed excellent performance in all experiments. To test the performance of MPAMFO, two experiments were carried out. The first one is to segment ten natural gray-scale images. The second experiment tested the MPAMFO for a real-world application, such as CT images of COVID-19. Therefore, thirteen CT images were used to test the performance of MPAMFO. Furthermore, extensive comparisons with several SI methods have been implemented to examine the quality and the performance of the MPAMFO. Overall experimental results confirm that the MPAMFO is an efficient MLT approach that approved its superiority over other existing methods.

Highlights

  • With the fast spread of the new coronavirus, COVID-19, researchers are trying to address different aspects related to this new virus

  • The developed model depends on improving the performance of the Marine Predators Algorithm (MPA) using the operators of moth-flame optimization (MFO)

  • It is compared with eight algorithms namely, original marine predators algorithm (MPA), harris hawks optimization (HHO) [85], cuckoo search (CS) [86], grey wolf optimization (GWO) [87], grasshopper optimization algorithm (GOA) [88], spherical search optimization (SSO) [89], particle swarm optimization (PSO) [90], and moth-flame optimization (MFO) [84]

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Summary

Introduction

With the fast spread of the new coronavirus, COVID-19, researchers are trying to address different aspects related to this new virus. One of the most important issues is diagnosing COVID-19 using different tests, including the real-time. The associate editor coordinating the review of this manuscript and approving it for publication was Shuhan Shen. Polymerase chain reaction (RTPCR), and chest CT. The RT-PCR is a time-consuming test, and it faces false-negative diagnosing [1]. Chest CT scans may play an important role in diagnosing COVID-19. Medical imaging technologies have been implemented in different diseases diagnosing. Image segmentation is an essential technique in image processing, and it is an important procedure in various image and vision applications, which can efficiently

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