基于胸部x线图像和病理数据的人工智能实现了COVID-19患者多阶段分类的双重诊断方法

IF 1.1 Q4 BIOPHYSICS AIMS Biophysics Pub Date : 2021-01-01 DOI:10.3934/biophy.2021028
Swarnava Biswas, Debajit Sen, D. Bhatia, P. Phukan, M. Mukherjee
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引用次数: 3

摘要

人工智能(AI)与物联网(IoT)的结合使用大大减少了人工测试COVID样本的需求,不仅节省了时间,还节省了金钱,最终节省了生命。在本文中,作者提出了一种新的方法来识别具有注释阶段的COVID-19患者,使医务人员能够手动激活受试者周围的地理围栏,从而确保早期发现和隔离。将x线摄影图像与用于COVID-19鉴定的病理数据结合使用,是全球任何研究小组首次做出的贡献。新颖性还在于对新冠肺炎患者进行了正确的阶段分类。目前的分析将使这个人工智能模型处于边缘,使该设施成为一个支持物联网的单元。所开发的系统已与临床观察结果进行了比较和广泛的彻底验证。用数学方法建立了影像学对COVID-19重症评分标签进行分期分类的检测和识别的意义。简而言之,整个算法工作流程不仅可以用于预测分析,还可以用于规范分析,从医生的诊断角度完成整个流程。事实上,作者使用了一种基于监督的学习方法,辅以基于多假设的决策融合技术来提高整个系统的准确性和预测能力。端到端价值链已置于基于物联网的生态系统之下,以利用人工智能和物联网的联合力量,不仅可以检测而且可以隔离受冠状病毒影响的个人。为了进一步强调,开发的人工智能模型预测了受冠状病毒影响的患者的各自类别,物联网系统帮助护理机构隔离并规定了COVID患者的住院需求。
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Chest X-Ray image and pathological data based artificial intelligence enabled dual diagnostic method for multi-stage classification of COVID-19 patients
The use of Artificial Intelligence (AI) in combination with Internet of Things (IoT) drastically reduces the need to test the COVID samples manually, saving not only time but money and ultimately lives. In this paper, the authors have proposed a novel methodology to identify the COVID-19 patients with an annotated stage to enable the medical staff to manually activate a geo-fence around the subject thus ensuring early detection and isolation. The use of radiography images with pathology data used for COVID-19 identification forms the first-ever contribution by any research group globally. The novelty lies in the correct stage classification of COVID-19 subjects as well. The present analysis would bring this AI Model on the edge to make the facility an IoT-enabled unit. The developed system has been compared and extensively verified thoroughly with those of clinical observations. The significance of radiography imaging for detecting and identification of COVID-19 subjects with severity score tag for stage classification is mathematically established. In a Nutshell, this entire algorithmic workflow can be used not only for predictive analytics but also for prescriptive analytics to complete the entire pipeline from the diagnostic viewpoint of a doctor. As a matter of fact, the authors have used a supervised based learning approach aided by a multiple hypothesis based decision fusion based technique to increase the overall system's accuracy and prediction. The end to end value chain has been put under an IoT based ecosystem to leverage the combined power of AI and IoT to not only detect but also to isolate the coronavirus affected individuals. To emphasize further, the developed AI model predicts the respective categories of a coronavirus affected patients and the IoT system helps the point of care facilities to isolate and prescribe the need of hospitalization for the COVID patients.
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来源期刊
AIMS Biophysics
AIMS Biophysics BIOPHYSICS-
CiteScore
2.40
自引率
20.00%
发文量
16
审稿时长
8 weeks
期刊介绍: AIMS Biophysics is an international Open Access journal devoted to publishing peer-reviewed, high quality, original papers in the field of biophysics. We publish the following article types: original research articles, reviews, editorials, letters, and conference reports. AIMS Biophysics welcomes, but not limited to, the papers from the following topics: · Structural biology · Biophysical technology · Bioenergetics · Membrane biophysics · Cellular Biophysics · Electrophysiology · Neuro-Biophysics · Biomechanics · Systems biology
期刊最新文献
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