Thermogram Classification Using Deep Siamese Network for Neonatal Disease Detection With Limited Data

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Date

2022

Authors

Ceylan, Murat

Journal Title

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Volume Title

Publisher

Taylor & Francis Ltd

Open Access Color

Green Open Access

Yes

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No
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Top 10%
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Average
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Top 10%

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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.

Description

Keywords

Disease Classification, Neonatal Intensive Care, One-Shot Learning, Siamese Neural Network, Thermal Imaging, Low-Birth-Weight, Infrared Thermography, Natural-History, System, Thermoregulation, Anomalies, Infants, System, Siamese Neural Network, Low-Birth-Weight, Anomalies, Thermoregulation, Neonatal Intensive Care, Disease Classification, Thermal Imaging, Infrared Thermography, Natural-History, One-Shot Learning, Infants

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Fields of Science

03 medical and health sciences, 0302 clinical medicine

Citation

WoS Q

Q1

Scopus Q

Q1
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OpenCitations Citation Count
4

Source

Quantitative Infrared Thermography Journal

Volume

19

Issue

Start Page

312

End Page

330
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Scopus : 7

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Mendeley Readers : 9

SCOPUS™ Citations

7

checked on Feb 03, 2026

Web of Science™ Citations

8

checked on Feb 03, 2026

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1.23730007

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