An enhanced ant colony optimizer with Cauchy-Gaussian fusion and novel movement strategy for multi-threshold COVID-19 X-ray image segmentation

Front Neuroinform. 2023 Mar 17:17:1126783. doi: 10.3389/fninf.2023.1126783. eCollection 2023.

Abstract

The novel coronavirus pneumonia (COVID-19) is a respiratory disease of great concern in terms of its dissemination and severity, for which X-ray imaging-based diagnosis is one of the effective complementary diagnostic methods. It is essential to be able to separate and identify lesions from their pathology images regardless of the computer-aided diagnosis techniques. Therefore, image segmentation in the pre-processing stage of COVID-19 pathology images would be more helpful for effective analysis. In this paper, to achieve highly effective pre-processing of COVID-19 pathological images by using multi-threshold image segmentation (MIS), an enhanced version of ant colony optimization for continuous domains (MGACO) is first proposed. In MGACO, not only a new move strategy is introduced, but also the Cauchy-Gaussian fusion strategy is incorporated. It has been accelerated in terms of convergence speed and has significantly enhanced its ability to jump out of the local optimum. Furthermore, an MIS method (MGACO-MIS) based on MGACO is developed, where it applies the non-local means, 2D histogram as the basis, and employs 2D Kapur's entropy as the fitness function. To demonstrate the performance of MGACO, we qualitatively analyze it in detail and compare it with other peers on 30 benchmark functions from IEEE CEC2014, which proves that it has a stronger capability of solving problems over the original ant colony optimization for continuous domains. To verify the segmentation effect of MGACO-MIS, we conducted a comparison experiment with eight other similar segmentation methods based on real pathology images of COVID-19 at different threshold levels. The final evaluation and analysis results fully demonstrate that the developed MGACO-MIS is sufficient to obtain high-quality segmentation results in the COVID-19 image segmentation and has stronger adaptability to different threshold levels than other methods. Therefore, it has been well-proven that MGACO is an excellent swarm intelligence optimization algorithm, and MGACO-MIS is also an excellent segmentation method.

Keywords: 2D Kapur’s entropy; ant colony optimization; continuous optimization; multi-threshold image segmentation; swarm intelligence.

Grants and funding

This work was supported in part by the Natural Science Foundation of Zhejiang Province (LZ22F020005), National Natural Science Foundation of China (62076185, U1809209), MIIT, PRC (2020NO.78), Wenzhou Science & Technology Bureau (Y20210097), Wenzhou Science and Technology Association Service Technology Innovation Project-General Practice Wisdom File Record System (2022-jczc54), the Second Batch of Educational Reform Research Projects of “13th Five-Year Plan” in Zhejiang Province (jg20190899), Zhejiang Provincial Education Sciences Planning Subject in 2022 (2022SCG263), the Ideological and Political Demonstration Course “Microcontroller Technology and Applications” of the Provincial-Level Curriculum Ideological and Political Teaching Project in 2022 [Zhejiang Teaching Letter (2022) No. 51].