Content-based medical image retrieval system for lung diseases using deep CNNs.

Shubham Agrawal, Aastha Chowdhary, Saurabh Agarwala, Veena Mayya, Sowmya Kamath S
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引用次数: 23

Abstract

Content-based image retrieval (CBIR) systems are designed to retrieve images that are relevant, based on detailed analysis of latent image characteristics, thus eliminating the dependency of natural language tags, text descriptions, or keywords associated with the images. A CBIR system maintains high-level image visuals in the form of feature vectors, which the retrieval engine leverages for similarity-based matching and ranking for a given query image. In this paper, a CBIR system is proposed for the retrieval of medical images (CBMIR) for enabling the early detection and classification of lung diseases based on lung X-ray images. The proposed CBMIR system is built on the predictive power of deep neural models for the identification and classification of disease-specific features using transfer learning based models trained on standard COVID-19 Chest X-ray image datasets. Experimental evaluation on the standard dataset revealed that the proposed approach achieved an improvement of 49.71% in terms of precision, averaging across various distance metrics. Also, an improvement of 26.55% was observed in the area under precision-recall curve (AUPRC) values across all subclasses.

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基于内容的深度cnn肺部疾病医学图像检索系统。
基于内容的图像检索(CBIR)系统旨在基于对潜在图像特征的详细分析来检索相关图像,从而消除与图像相关的自然语言标签、文本描述或关键字的依赖性。CBIR系统以特征向量的形式维护高级图像视觉,检索引擎利用这些特征向量对给定的查询图像进行基于相似性的匹配和排序。本文提出了一种基于肺部x射线图像的医学图像检索系统(CBMIR),以实现肺部疾病的早期发现和分类。该CBMIR系统基于深度神经模型的预测能力,使用基于迁移学习的模型对标准COVID-19胸部x射线图像数据集进行训练,用于识别和分类疾病特异性特征。在标准数据集上的实验评估表明,该方法的精度提高了49.71%,在各种距离指标上平均。此外,在所有子类的精确查全率曲线(AUPRC)值下的面积提高了26.55%。
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