用于多类肺部感染诊断的智能贝叶斯推理:排序灰度级共现 (GLCM) 特征的网络分析

IF 2 4区 计算机科学 Q3 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE New Generation Computing Pub Date : 2024-08-28 DOI:10.1007/s00354-024-00278-x
Raja Nadir Mahmood Khan, Abdul Majid, Seong-O Shim, Safa Habibullah, Abdulwahab Ali Almazroi, Lal Hussain
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引用次数: 0

摘要

深度学习驱动的人工智能工具为改善 COVID-19 肺部感染诊断提供了巨大潜力。本研究提出了一种新颖的基于人工智能的多类分类图像分析方法。我们分析了来自意大利医学和介入放射学会(SIRM)、Kaggle 和 Radiopaedia 的公开数据集。然而,从这些图像中提取的静态特征的相关性、强度和关系还需要进一步研究。贝叶斯推理方法最近已成为分析静态特征的强大工具。这些方法可以揭示隐藏的动态特征和特征之间的关系。利用基于方差分析(ANOVA)的排序技术,我们从属于 COVID-19、细菌性肺炎和正常等三个类别的图像中提取了灰度共现矩阵(GLCM)特征。为了深入研究动态行为并优化其诊断潜力,我们选择了同质性(被认为是最重要的特征),并使用动态剖析和优化方法进行了进一步分析。这项重点调查旨在破译所有三个类别的 GLCM 特征中错综复杂的非线性动态。我们的方法有两方面的好处。首先,它加深了我们对使用灰度共现矩阵分析从胸部 X 光片中提取的特征之间错综复杂关系的理解。其次,它提供了对这些特征本身的全面检查。这种综合分析揭示了对各种传染病的准确诊断和预后至关重要的隐藏动态。除此之外,我们还开发了一种新颖的人工智能成像分析方法,用于多类分类。这种创新方法有望显著提高传染病(尤其是 COVID-19)的诊断准确性和预后。
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Intelligent Bayesian Inference for Multiclass Lung Infection Diagnosis: Network Analysis of Ranked Gray Level Co-occurrence (GLCM) Features

Deep learning-powered AI tools offer significant potential to improve COVID-19 lung infection diagnosis. This study proposes a novel AI-based image analysis method for multiclass classification. We analyzed publicly available datasets from Italian Society of Medical and Interventional Radiology (SIRM), Kaggle, and Radiopaedia. However, the relevance, strength, and relationships of static features extracted from these images require further investigation. Bayesian inference approaches have recently emerged as powerful tools for analyzing static features. These approaches can reveal hidden dynamics and relationships between features. Using Analysis of variance (ANOVA) based ranking techniques, we extracted gray level co-occurrence matrix (GLCM) features from images belonging to three classes such as COVID-19, bacterial pneumonia, and normal. To delve deeper into the dynamic behavior and optimize its diagnostic potential, Homogeneity (identified as the most significant feature) was chosen for further analysis using dynamic profiling and optimization methods. This focused investigation aimed to decipher the intricate, non-linear dynamics within GLCM features across all three classes. Our method offers a two-fold benefit. First, it deepens our understanding of the intricate relationships between features extracted from chest X-rays using gray level co-occurrence matrix analysis. Second, it provides a comprehensive examination of these features themselves. This combined analysis sheds light on the hidden dynamics that are crucial for accurate diagnosis and prognosis of various infectious diseases. In addition to the above, we have developed a novel AI-powered imaging analysis method for multiclass classification. This innovative approach has the potential to significantly improve diagnostic accuracy and prognosis of infectious diseases, particularly COVID-19.

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来源期刊
New Generation Computing
New Generation Computing 工程技术-计算机:理论方法
CiteScore
5.90
自引率
15.40%
发文量
47
审稿时长
>12 weeks
期刊介绍: The journal is specially intended to support the development of new computational and cognitive paradigms stemming from the cross-fertilization of various research fields. These fields include, but are not limited to, programming (logic, constraint, functional, object-oriented), distributed/parallel computing, knowledge-based systems, agent-oriented systems, and cognitive aspects of human embodied knowledge. It also encourages theoretical and/or practical papers concerning all types of learning, knowledge discovery, evolutionary mechanisms, human cognition and learning, and emergent systems that can lead to key technologies enabling us to build more complex and intelligent systems. The editorial board hopes that New Generation Computing will work as a catalyst among active researchers with broad interests by ensuring a smooth publication process.
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