Prakash Ankur, Singh Vibhav Prakash
Department of Computer Science and Engineering, Motilal Nehru National Institute of Technology Allahabad, Prayagraj, Uttar Pradesh, 211004, India.
Radiol Phys Technol. 2025 Jul 3. doi: 10.1007/s12194-025-00932-z.
This paper introduces a Content-Based Medical Image Retrieval (CBMIR) system for detecting and retrieving lung disease cases to assist doctors and radiologists in clinical decision-making. The system combines texture-based features using Local Binary Patterns (LBP) with deep learning-based features extracted from pretrained CNN models, including VGG-16, DenseNet121, and InceptionV3. The objective is to identify the optimal fusion of texture and deep features to enhance the image retrieval performance. Various similarity measures, including Euclidean, Manhattan, and cosine similarities, were evaluated, with Cosine Similarity demonstrating the best performance, achieving an average precision of 65.5%. For COVID-19 cases, VGG-16 achieved a precision of 52.5%, while LBP performed best for the normal class with 85% precision. The fusion of LBP, VGG-16, and DenseNet121 excelled in pneumonia cases, with a precision of 93.5%. Overall, VGG-16 delivered the highest average precision of 74.0% across all classes, followed by LBP at 72.0%. The fusion of texture (LBP) and deep features from all CNN models achieved 86% accuracy for the retrieval of the top 10 images, supporting healthcare professionals in making more informed clinical decisions.
本文介绍了一种基于内容的医学图像检索(CBMIR)系统,用于检测和检索肺部疾病病例,以协助医生和放射科医生进行临床决策。该系统将使用局部二值模式(LBP)的基于纹理的特征与从预训练的卷积神经网络(CNN)模型(包括VGG-16、DenseNet121和InceptionV3)中提取的基于深度学习的特征相结合。目的是确定纹理和深度特征的最佳融合,以提高图像检索性能。评估了各种相似性度量,包括欧几里得、曼哈顿和余弦相似性,其中余弦相似性表现最佳,平均精度达到65.5%。对于新冠肺炎病例,VGG-16的精度为52.5%,而LBP在正常类别中表现最佳,精度为85%。LBP、VGG-16和DenseNet121的融合在肺炎病例中表现出色,精度为93.5%。总体而言,VGG-16在所有类别中平均精度最高,为74.0%,其次是LBP,为72.0%。纹理(LBP)和所有CNN模型的深度特征的融合在检索前10幅图像时准确率达到86%,有助于医疗保健专业人员做出更明智的临床决策。