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The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning

OBJECTIVE: This study aims to detect the invisible metabolic abnormality in PET images of patients with anti-leucine-rich glioma-inactivated 1 (LGI1) encephalitis using a multivariate cross-classification method. METHODS: Participants were divided into two groups, namely, the training cohort and the...

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Autores principales: Pan, Jian, Lv, Ruijuan, Zhou, Guifei, Si, Run, Wang, Qun, Zhao, Xiaobin, Liu, Jiangang, Ai, Lin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9197115/
https://www.ncbi.nlm.nih.gov/pubmed/35711267
http://dx.doi.org/10.3389/fneur.2022.812439
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author Pan, Jian
Lv, Ruijuan
Zhou, Guifei
Si, Run
Wang, Qun
Zhao, Xiaobin
Liu, Jiangang
Ai, Lin
author_facet Pan, Jian
Lv, Ruijuan
Zhou, Guifei
Si, Run
Wang, Qun
Zhao, Xiaobin
Liu, Jiangang
Ai, Lin
author_sort Pan, Jian
collection PubMed
description OBJECTIVE: This study aims to detect the invisible metabolic abnormality in PET images of patients with anti-leucine-rich glioma-inactivated 1 (LGI1) encephalitis using a multivariate cross-classification method. METHODS: Participants were divided into two groups, namely, the training cohort and the testing cohort. The training cohort included 17 healthy participants and 17 patients with anti-LGI1 encephalitis whose metabolic abnormality was able to be visibly detected in both the medial temporal lobe and the basal ganglia in their PET images [completely detectable (CD) patients]. The testing cohort included another 16 healthy participants and 16 patients with anti-LGI1 encephalitis whose metabolic abnormality was not able to be visibly detected in the medial temporal lobe and the basal ganglia in their PET images [non-completely detectable (non-CD) patients]. Independent component analysis (ICA) was used to extract features and reduce dimensions. A logistic regression model was constructed to identify the non-CD patients. RESULTS: For the testing cohort, the accuracy of classification was 90.63% with 13 out of 16 non-CD patients identified and all healthy participants distinguished from non-CD patients. The patterns of PET signal changes resulting from metabolic abnormalities related to anti-LGI1 encephalitis were similar for CD patients and non-CD patients. CONCLUSION: This study demonstrated that multivariate cross-classification combined with ICA could improve, to some degree, the detection of invisible abnormal metabolism in the PET images of patients with anti-LGI1 encephalitis. More importantly, the invisible metabolic abnormality in the PET images of non-CD patients showed patterns that were similar to those seen in CD patients.
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spelling pubmed-91971152022-06-15 The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning Pan, Jian Lv, Ruijuan Zhou, Guifei Si, Run Wang, Qun Zhao, Xiaobin Liu, Jiangang Ai, Lin Front Neurol Neurology OBJECTIVE: This study aims to detect the invisible metabolic abnormality in PET images of patients with anti-leucine-rich glioma-inactivated 1 (LGI1) encephalitis using a multivariate cross-classification method. METHODS: Participants were divided into two groups, namely, the training cohort and the testing cohort. The training cohort included 17 healthy participants and 17 patients with anti-LGI1 encephalitis whose metabolic abnormality was able to be visibly detected in both the medial temporal lobe and the basal ganglia in their PET images [completely detectable (CD) patients]. The testing cohort included another 16 healthy participants and 16 patients with anti-LGI1 encephalitis whose metabolic abnormality was not able to be visibly detected in the medial temporal lobe and the basal ganglia in their PET images [non-completely detectable (non-CD) patients]. Independent component analysis (ICA) was used to extract features and reduce dimensions. A logistic regression model was constructed to identify the non-CD patients. RESULTS: For the testing cohort, the accuracy of classification was 90.63% with 13 out of 16 non-CD patients identified and all healthy participants distinguished from non-CD patients. The patterns of PET signal changes resulting from metabolic abnormalities related to anti-LGI1 encephalitis were similar for CD patients and non-CD patients. CONCLUSION: This study demonstrated that multivariate cross-classification combined with ICA could improve, to some degree, the detection of invisible abnormal metabolism in the PET images of patients with anti-LGI1 encephalitis. More importantly, the invisible metabolic abnormality in the PET images of non-CD patients showed patterns that were similar to those seen in CD patients. Frontiers Media S.A. 2022-05-30 /pmc/articles/PMC9197115/ /pubmed/35711267 http://dx.doi.org/10.3389/fneur.2022.812439 Text en Copyright © 2022 Pan, Lv, Zhou, Si, Wang, Zhao, Liu and Ai. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Neurology
Pan, Jian
Lv, Ruijuan
Zhou, Guifei
Si, Run
Wang, Qun
Zhao, Xiaobin
Liu, Jiangang
Ai, Lin
The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning
title The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning
title_full The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning
title_fullStr The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning
title_full_unstemmed The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning
title_short The Detection of Invisible Abnormal Metabolism in the FDG-PET Images of Patients With Anti-LGI1 Encephalitis by Machine Learning
title_sort detection of invisible abnormal metabolism in the fdg-pet images of patients with anti-lgi1 encephalitis by machine learning
topic Neurology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9197115/
https://www.ncbi.nlm.nih.gov/pubmed/35711267
http://dx.doi.org/10.3389/fneur.2022.812439
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