4.7 Article

SUFMACS: A machine learning-based robust image segmentation framework for COVID-19 radiological image interpretation

Journal

EXPERT SYSTEMS WITH APPLICATIONS
Volume 178, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2021.115069

Keywords

COVID-19; Image segmentation; Radiological image interpretation; Machine learning; Clustering; SUFMACS

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The absence of dedicated vaccines or drugs makes COVID-19 a global pandemic, and early diagnosis is identified as an effective prevention mechanism. A novel unsupervised machine learning method called SUFMACS is proposed for efficiently interpreting and segmenting COVID-19 radiological images. The results demonstrate the efficiency and real-life applicability of this approach in investigating both CT scan and X-ray images.
The absence of dedicated vaccines or drugs makes the COVID-19 a global pandemic, and early diagnosis can be an effective prevention mechanism. RT-PCR test is considered as one of the gold standards worldwide to confirm the presence of COVID-19 infection reliably. Radiological images can also be used for the same purpose to some extent. Easy and no contact acquisition of the radiological images makes it a suitable alternative and this work can help to locate and interpret some prominent features for the screening purpose. One major challenge of this domain is the absence of appropriately annotated ground truth data. Motivated from this, a novel unsupervised machine learning-based method called SUFMACS (SUperpixel based Fuzzy Memetic Advanced Cuckoo Search) is proposed to efficiently interpret and segment the COVID-19 radiological images. This approach adapts the superpixel approach to reduce a large amount of spatial information. The original cuckoo search approach is modified and the Luus-Jaakola heuristic method is incorporated with McCulloch's approach. This modified cuckoo search approach is used to optimize the fuzzy modified objective function. This objective function exploits the advantages of the superpixel. Both CT scan and X-ray images are investigated in detail. Both qualitative and quantitative outcomes are quite promising and prove the efficiency and the real-life applicability of the proposed approach.

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