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一种基于深度学习的新型黑霉菌病识别方法,采用改进的混合学习方法。

A Novel Deep Learning-Based Black Fungus Disease Identification Using Modified Hybrid Learning Methodology.

机构信息

Department of Electronics and Communication Engineering, Sathyabama Institute of Science and Technology, Chennai, Tamil Nadu, India.

Department of Electronics and Communication Engineering, Saveetha School of Engineering, Chennai, Tamil Nadu, India.

出版信息

Contrast Media Mol Imaging. 2022 Jan 27;2022:4352730. doi: 10.1155/2022/4352730. eCollection 2022.

Abstract

Currently, countries across the world are suffering from a prominent viral infection called COVID-19. Most countries are still facing several issues due to this disease, which has resulted in several fatalities. The first COVID-19 wave caused devastation across the world owing to its virulence and led to a massive loss in human lives, impacting the country's economy drastically. A dangerous disease called mucormycosis was discovered worldwide during the second COVID-19 wave, in 2021, which lasted from April to July. The mucormycosis disease is commonly known as "black fungus," which belongs to the fungus family Mucorales. It is usually a rare disease, but the level of destruction caused by the disease is vast and unpredictable. This disease mainly targets people already suffering from other diseases and consuming heavy medication to counter the disease they are suffering from. This is because of the reduction in antibodies in the affected people. Therefore, the patient's body does not have the ability to act against fungus-oriented infections. This black fungus is more commonly identified in patients with coronavirus disease in certain country. The condition frequently manifests on skin, but it can also harm organs such as eyes and brain. This study intends to design a modified neural network logic for an artificial intelligence (AI) strategy with learning principles, called a hybrid learning-based neural network classifier (HLNNC). The proposed method is based on well-known techniques such as convolutional neural network (CNN) and support vector machine (SVM). This article discusses a dataset containing several eye photographs of patients with and without black fungus infection. These images were collected from the real-time records of people afflicted with COVID followed by the black fungus. This proposed HLNNC scheme identifies the black fungus disease based on the following image processing procedures: image acquisition, preprocessing, feature extraction, and classification; these procedures were performed considering the dataset training and testing principles with proper performance analysis. The results of the procedure are provided in a graphical format with the precise specification, and the efficacy of the proposed method is established.

摘要

目前,世界各国都在遭受一种名为 COVID-19 的突出病毒性感染。由于这种疾病,大多数国家仍面临着一些问题,导致了一些死亡。第一波 COVID-19 在全球范围内造成了巨大的破坏,因为它的毒性导致了大量的生命损失,对国家经济产生了巨大的影响。2021 年 4 月至 7 月的第二波 COVID-19 期间,全球发现了一种名为毛霉菌病的危险疾病。毛霉菌病通常被称为“黑真菌”,属于毛霉科真菌。它通常是一种罕见的疾病,但这种疾病造成的破坏程度很大,且不可预测。这种疾病主要针对已经患有其他疾病且正在服用大量药物来对抗自身疾病的人。这是因为受影响的人体内抗体减少。因此,患者的身体没有能力对抗真菌感染。这种黑真菌在某些国家的冠状病毒疾病患者中更为常见。这种情况经常出现在皮肤,但它也可以损害眼睛和大脑等器官。本研究旨在设计一种基于学习原则的人工智能(AI)策略的改进型神经网络逻辑,称为基于混合学习的神经网络分类器(HLNNC)。所提出的方法基于卷积神经网络(CNN)和支持向量机(SVM)等知名技术。本文讨论了一个包含患有和未患有黑真菌感染的患者的眼部照片的数据集。这些图像是从受 COVID 影响的人的实时记录中收集的,然后是黑真菌。该 HLNNC 方案基于以下图像处理程序识别黑真菌病:图像采集、预处理、特征提取和分类;这些程序是根据数据集的训练和测试原则以及适当的性能分析来执行的。该过程的结果以图形格式提供,包括精确的规格,并且建立了所提出方法的功效。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8c51/8793349/e8514e4c615d/CMMI2022-4352730.001.jpg

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