利用深度连体网络进行新生儿疾病检测的热像图分类

IF 3.7 3区 工程技术 Q1 INSTRUMENTS & INSTRUMENTATION
Saim Ervural, M. Ceylan
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引用次数: 4

摘要

监测新生儿体温,评价新生儿热不对称性,有助于了解新生儿疾病。红外热像仪是一种无创、无害和非接触的方式,可以监测体温分布。由于新生儿的高死亡率和新生儿成像的一些困难,使用有限的数据集进行早期诊断至关重要。与其他技术相比,热成像在检测新生儿疾病方面是一种有用的工具。然而,由于新生儿的敏感性,传统人工智能方法所需要的由每个类别的数千张图像组成的热像图数据库是不可能的。最近在有限数据学习(特别是单次学习)的应用中取得成功的元学习模型之一是暹罗神经网络。在这项工作中,我们使用暹罗神经网络执行多类分类,为疾病检测专家提供预诊断。通过使用两种不同的优化技术和数据增强,使用在二级和三级评价方法中测试的方法对只有少量样本数据的危重疾病进行分类。基于疾病类型的结果对感染性疾病的准确率为99.4%,对食管闭锁的准确率为96.4%,对肠闭锁的准确率为97.4%,对坏死性小肠结肠炎的准确率为94.02%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Thermogram classification using deep siamese network for neonatal disease detection with limited data
ABSTRACT Monitoring the body temperatures and evaluating the thermal asymmetry of newborns give an idea about neonatal diseases. Infrared thermography is a non-invasive, non-harmful, and non-contact modality that allows the monitoring of the body temperature distribution. Early diagnosis using a limited data set is extremely vital due to the high mortality rate in newborns and some difficulties in neonatal imaging. Thermography stands out as a useful tool in detecting neonatal diseases compared to other techniques. However, creating a thermogram database consisting of thousands of images from each class required by traditional artificial intelligence methods, is impossible due to the sensitivity of newborns. One of the meta-learning models that has recently gained success in applying limited data learning, especially one-shot, in various fields is Siamese neural networks. In this work, we perform a multi-class classification to provide pre-diagnosis to experts in disease detection using Siamese neural networks. By using two different optimisation techniques and data augmentation, critical diseases with only a few sample data are classified using the method tested in two- and three-class evaluation approaches. The results based on the disease type achieve 99.4% accuracy in infection diseases and 96.4% oesophageal atresia, 97.4% in intestinal atresia, and 94.02% in necrotising enterocolitis.
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来源期刊
Quantitative Infrared Thermography Journal
Quantitative Infrared Thermography Journal Physics and Astronomy-Instrumentation
CiteScore
6.80
自引率
12.00%
发文量
17
审稿时长
>12 weeks
期刊介绍: The Quantitative InfraRed Thermography Journal (QIRT) provides a forum for industry and academia to discuss the latest developments of instrumentation, theoretical and experimental practices, data reduction, and image processing related to infrared thermography.
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