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SUFMACS:一种基于机器学习的用于COVID-19放射图像解读的稳健图像分割框架。

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

作者信息

Chakraborty Shouvik, Mali Kalyani

机构信息

Department of Computer Science and Engineering, University of Kalyani, India.

出版信息

Expert Syst Appl. 2021 Sep 15;178:115069. doi: 10.1016/j.eswa.2021.115069. Epub 2021 Apr 20.

Abstract

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.

摘要

由于缺乏专门的疫苗或药物,新冠病毒病成为全球大流行疾病,而早期诊断可能是一种有效的预防机制。逆转录聚合酶链反应(RT-PCR)检测被认为是全球范围内可靠确认新冠病毒感染存在的金标准之一。放射影像在一定程度上也可用于相同目的。放射影像的获取简便且无需接触,这使其成为一种合适的替代方法,并且这项工作有助于定位和解读一些突出特征以用于筛查目的。该领域的一个主要挑战是缺乏经过适当标注的真实数据。受此启发,提出了一种名为SUFMACS(基于超像素的模糊拟态高级布谷鸟搜索)的新型无监督机器学习方法,以有效解读和分割新冠病毒放射影像。这种方法采用超像素方法来减少大量空间信息。对原始布谷鸟搜索方法进行了改进,并将卢斯 - 亚科拉启发式方法与麦卡洛克方法相结合。这种改进的布谷鸟搜索方法用于优化模糊修正目标函数。该目标函数利用了超像素的优势。对计算机断层扫描(CT)和X射线图像都进行了详细研究。定性和定量结果都很有前景,证明了所提方法的有效性和实际适用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1ed4/8055948/6466d79188a2/ga1_lrg.jpg

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