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基于深度卷积神经网络的脑影像疾病类别特征数据库构建方法。

A disease category feature database construction method of brain image based on deep convolutional neural network.

机构信息

Institute of Medical Information, Chinese Academy of Medical Sciences & Peking Union Medical College, Beijing, China.

School of Traffic and Transportation, Institute of System Engineering and Control, Beijing Jiaotong University, Beijing, China.

出版信息

PLoS One. 2020 Jun 1;15(6):e0232791. doi: 10.1371/journal.pone.0232791. eCollection 2020.

Abstract

BACKGROUND

Constructing a medical image feature database according to the category of disease can achieve a quick retrieval of images with similar pathological features. Therefore, this approach has important application values in the fields such as auxiliary diagnosis, teaching, research, and telemedicine.

METHODS

Based on the deep convolutional neural network, an image classifier applicable to brain disease was designed to distinguish between the image features of the different brain diseases with similar anatomical structures. Through the extraction and analysis of visual features, the images were labelled with the corresponding semantic features of a specific disease category, which can establish an association between the visual features of brain images and the semantic features of the category of disease which will permit to construct a disease category feature database of brain images.

RESULTS

Based on the similarity measurement and the matching strategy of high-dimensional visual feature, a high-precision retrieval of brain image with semantics category was achieved, and the constructed disease category feature database of brain image was tested and evaluated through large numbers of pathological image retrieval experiments, the accuracy and the effectiveness of the proposed approach was verified.

CONCLUSION

The disease category feature database of brain image constructed by the proposed approach achieved a quick and effective retrieval of images with similar pathological features, which is beneficial to the categorization and analysis of intractable brain diseases. This provides an effective application tool such as case-based image data management, evidence-based medicine and clinical decision support.

摘要

背景

根据疾病类别构建医学图像特征数据库,可以实现对具有相似病理特征的图像的快速检索。因此,这种方法在辅助诊断、教学、研究和远程医疗等领域具有重要的应用价值。

方法

基于深度卷积神经网络,设计了一种适用于脑部疾病的图像分类器,用于区分具有相似解剖结构的不同脑部疾病的图像特征。通过对视觉特征的提取和分析,对图像进行了具有特定疾病类别的语义特征标注,从而建立了脑图像的视觉特征与疾病类别语义特征之间的关联,以构建脑部疾病图像的疾病类别特征数据库。

结果

基于高维视觉特征的相似性度量和匹配策略,实现了语义类别脑部图像的高精度检索,并通过大量的病理图像检索实验对构建的脑部疾病图像的疾病类别特征数据库进行了测试和评估,验证了所提出方法的准确性和有效性。

结论

所提出的方法构建的脑部疾病图像的疾病类别特征数据库实现了对具有相似病理特征的图像的快速有效检索,有利于对疑难脑部疾病进行分类和分析。这为基于案例的图像数据管理、循证医学和临床决策支持等提供了有效的应用工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4624/7263580/00e88a5dc638/pone.0232791.g001.jpg

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