An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction

Abstract Background Cerebral edema is a common condition secondary to any type of neurological injury. The early diagnosis and monitoring of cerebral edema is of great importance to improve the prognosis. In this article, a flexible conformal electromagnetic two-coil sensor was employed as the elect...

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Main Authors: Jingbo Chen, Gen Li, Huayou Liang, Shuanglin Zhao, Jian Sun, Mingxin Qin
Format: Article
Language:English
Published: BMC 2021-08-01
Series:BioMedical Engineering OnLine
Subjects:
Online Access:https://doi.org/10.1186/s12938-021-00913-4
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spelling doaj-a34e8d3b795a4f0183ecc10da853e9732021-08-08T11:14:52ZengBMCBioMedical Engineering OnLine1475-925X2021-08-0120112010.1186/s12938-021-00913-4An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic inductionJingbo Chen0Gen Li1Huayou Liang2Shuanglin Zhao3Jian Sun4Mingxin Qin5College of Biomedical Engineering, Third Military Medical University (Army Medical University)School of Pharmacy and Bioengineering, Chongqing University of TechnologyChina Aerodynamics Research and Development Center Low Speed Aerodynamic InstituteCollege of Biomedical Engineering, Third Military Medical University (Army Medical University)College of Biomedical Engineering, Third Military Medical University (Army Medical University)College of Biomedical Engineering, Third Military Medical University (Army Medical University)Abstract Background Cerebral edema is a common condition secondary to any type of neurological injury. The early diagnosis and monitoring of cerebral edema is of great importance to improve the prognosis. In this article, a flexible conformal electromagnetic two-coil sensor was employed as the electromagnetic induction sensor, associated with a vector network analyzer (VNA) for signal generation and receiving. Measurement of amplitude data over the frequency range of 1–100 MHz is conducted to evaluate the changes in cerebral edema. We proposed an Amplitude-based Characteristic Parameter Extraction (Ab-CPE) algorithm for multi-frequency characteristic analysis over the frequency range of 1–100 MHz and investigated its performance in electromagnetic induction-based cerebral edema detection and distinction of its acute/chronic phase. Fourteen rabbits were enrolled to establish cerebral edema model and the 24 h real-time monitoring experiments were carried out for algorithm verification. Results The proposed Ab-CPE algorithm was able to detect cerebral edema with a sensitivity of 94.1% and specificity of 95.4%. Also, in the early stage, it can detect cerebral edema with a sensitivity of 85.0% and specificity of 87.5%. Moreover, the Ab-CPE algorithm was able to distinguish between acute and chronic phase of cerebral edema with a sensitivity of 85.0% and specificity of 91.0%. Conclusion The proposed Ab-CPE algorithm is suitable for multi-frequency characteristic analysis. Combined with this algorithm, the electromagnetic induction method has an excellent performance on the detection and monitoring of cerebral edema.https://doi.org/10.1186/s12938-021-00913-4Cerebral edemaElectromagnetic inductionAb-CPE algorithmMulti-frequency characteristic analysis
collection DOAJ
language English
format Article
sources DOAJ
author Jingbo Chen
Gen Li
Huayou Liang
Shuanglin Zhao
Jian Sun
Mingxin Qin
spellingShingle Jingbo Chen
Gen Li
Huayou Liang
Shuanglin Zhao
Jian Sun
Mingxin Qin
An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction
BioMedical Engineering OnLine
Cerebral edema
Electromagnetic induction
Ab-CPE algorithm
Multi-frequency characteristic analysis
author_facet Jingbo Chen
Gen Li
Huayou Liang
Shuanglin Zhao
Jian Sun
Mingxin Qin
author_sort Jingbo Chen
title An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction
title_short An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction
title_full An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction
title_fullStr An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction
title_full_unstemmed An amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction
title_sort amplitude-based characteristic parameter extraction algorithm for cerebral edema detection based on electromagnetic induction
publisher BMC
series BioMedical Engineering OnLine
issn 1475-925X
publishDate 2021-08-01
description Abstract Background Cerebral edema is a common condition secondary to any type of neurological injury. The early diagnosis and monitoring of cerebral edema is of great importance to improve the prognosis. In this article, a flexible conformal electromagnetic two-coil sensor was employed as the electromagnetic induction sensor, associated with a vector network analyzer (VNA) for signal generation and receiving. Measurement of amplitude data over the frequency range of 1–100 MHz is conducted to evaluate the changes in cerebral edema. We proposed an Amplitude-based Characteristic Parameter Extraction (Ab-CPE) algorithm for multi-frequency characteristic analysis over the frequency range of 1–100 MHz and investigated its performance in electromagnetic induction-based cerebral edema detection and distinction of its acute/chronic phase. Fourteen rabbits were enrolled to establish cerebral edema model and the 24 h real-time monitoring experiments were carried out for algorithm verification. Results The proposed Ab-CPE algorithm was able to detect cerebral edema with a sensitivity of 94.1% and specificity of 95.4%. Also, in the early stage, it can detect cerebral edema with a sensitivity of 85.0% and specificity of 87.5%. Moreover, the Ab-CPE algorithm was able to distinguish between acute and chronic phase of cerebral edema with a sensitivity of 85.0% and specificity of 91.0%. Conclusion The proposed Ab-CPE algorithm is suitable for multi-frequency characteristic analysis. Combined with this algorithm, the electromagnetic induction method has an excellent performance on the detection and monitoring of cerebral edema.
topic Cerebral edema
Electromagnetic induction
Ab-CPE algorithm
Multi-frequency characteristic analysis
url https://doi.org/10.1186/s12938-021-00913-4
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