用于 Covid-19 筛选和定量的 PSO-SVM 混合算法。

M Sahaya Sheela, C A Arun
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引用次数: 0

摘要

科罗娜病毒病(COVID)19 已从根本上撼动了地球,其破坏性大大增加了放射科医生的诊断负担。在此关键时刻,人工智能(AI)将大大减轻在疫区工作的医生的工作量,帮助他们准确诊断这种新疾病。在这项工作中,采用了一种基于粒子群优化-支持向量机的混合人工智能算法来自动分析计算机断层扫描图像,从而高概率地确定是否存在 COVID19 引起的肺炎。本文提出了一个用于训练系统的模型,以对肺炎的存在进行分离和分类,这反过来将为医生节省约 50% 的时间。在疫情爆发的地方,这将特别有用,因为在这些地方,有一个团队在人工智能和/或医学背景的帮助下共同工作。纳入人工智能的系统分布在全球所有地区。据观察,所部署的系统积极应对了数据安全、模型测试时间有效性、数据差异等挑战。此外,由于人工智能集成系统能立即识别出受感染的病人,因此医生可以确认感染情况,并在适当的时期对病人进行隔离。共观察了 200 个训练病例,其中 150 个被确定为感染者。建议的工作显示特异性为 0.85,灵敏度为 0.956,准确率为 95.78%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Hybrid PSO-SVM algorithm for Covid-19 screening and quantification.

Hybrid PSO-SVM algorithm for Covid-19 screening and quantification.

Hybrid PSO-SVM algorithm for Covid-19 screening and quantification.

Hybrid PSO-SVM algorithm for Covid-19 screening and quantification.

Corona Virus Disease (COVID) 19 has shaken the earth at its root and the devastation has increased the diagnostic burden of radiologists by large. At this crucial juncture, Artificial Intelligence (AI) will go a long way in decreasing the workload of physicians working in the outbreak zone, aiding them to accurately diagnose the new disease. In this work, a hybrid Particle Swarm Optimization-Support Vector Machine based AI algorithm is deployed to analyze the Computed Tomography images automatically providing a high probability in determining the presence of pneumonia due to COVID19. This paper presents a model for training the system to segregate and classify the presence of pneumonia which will in turn save around 50% of the time frame for physicians. This will be especially useful in places of outbreaks where a team of people are working together with the aid of artificial intelligence and/or medical background. The AI incorporated system was distributed in all areas of across the globe. It has been observed that challenges such as data security, testing time effectiveness of model, data discrepancy etc. were positively handled using the deployed system. Moreover, since the AI integrated system identifies the infected patients immediately physicians can confirm the infection and segregate the patients at the right period. A total of 200 training cases have been observed of which 150 were identified to be infected. The proposed work shows specificity of 0.85, a sensitivity of 0.956 and an accuracy of 95.78%.

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