Cargando…

Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment

BACKGROUND: There is increasing evidence that patients with retinal detachment (RD) have aberrant brain activity. However, neuroimaging investigations remain focused on static changes in brain activity among RD patients. There is limited knowledge regarding the characteristics of dynamic brain activ...

Descripción completa

Detalles Bibliográficos
Autores principales: Ji, Yu, Wang, Yuan-yuan, Cheng, Qi, Fu, Wen-wen, Huang, Shui-qin, Zhong, Pei-pei, Chen, Xiao-lin, Shu, Ben-liang, Wei, Bin, Huang, Qin-yi, Wu, Xiao-rong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10398337/
https://www.ncbi.nlm.nih.gov/pubmed/37547140
http://dx.doi.org/10.3389/fnins.2023.1227081
_version_ 1785084035117088768
author Ji, Yu
Wang, Yuan-yuan
Cheng, Qi
Fu, Wen-wen
Huang, Shui-qin
Zhong, Pei-pei
Chen, Xiao-lin
Shu, Ben-liang
Wei, Bin
Huang, Qin-yi
Wu, Xiao-rong
author_facet Ji, Yu
Wang, Yuan-yuan
Cheng, Qi
Fu, Wen-wen
Huang, Shui-qin
Zhong, Pei-pei
Chen, Xiao-lin
Shu, Ben-liang
Wei, Bin
Huang, Qin-yi
Wu, Xiao-rong
author_sort Ji, Yu
collection PubMed
description BACKGROUND: There is increasing evidence that patients with retinal detachment (RD) have aberrant brain activity. However, neuroimaging investigations remain focused on static changes in brain activity among RD patients. There is limited knowledge regarding the characteristics of dynamic brain activity in RD patients. AIM: This study evaluated changes in dynamic brain activity among RD patients, using a dynamic amplitude of low-frequency fluctuation (dALFF), k-means clustering method and support vector machine (SVM) classification approach. METHODS: We investigated inter-group disparities of dALFF indices under three different time window sizes using resting-state functional magnetic resonance imaging (rs-fMRI) data from 23 RD patients and 24 demographically matched healthy controls (HCs). The k-means clustering method was performed to analyze specific dALFF states and related temporal properties. Additionally, we selected altered dALFF values under three distinct conditions as classification features for distinguishing RD patients from HCs using an SVM classifier. RESULTS: RD patients exhibited dynamic changes in local intrinsic indicators of brain activity. Compared with HCs, RD patients displayed increased dALFF in the bilateral middle frontal gyrus, left putamen (Putamen_L), left superior occipital gyrus (Occipital_Sup_L), left middle occipital gyrus (Occipital_Mid_L), right calcarine (Calcarine_R), right middle temporal gyrus (Temporal_Mid_R), and right inferior frontal gyrus (Frontal_Inf_Tri_R). Additionally, RD patients showed significantly decreased dALFF values in the right superior parietal gyrus (Parietal_Sup_R) and right paracentral lobule (Paracentral_Lobule_R) [two-tailed, voxel-level p < 0.05, Gaussian random field (GRF) correction, cluster-level p < 0.05]. For dALFF, we derived 3 or 4 states of ALFF that occurred repeatedly. There were differences in state distribution and state properties between RD and HC groups. The number of transitions between the dALFF states was higher in the RD group than in the HC group. Based on dALFF values in various brain regions, the overall accuracies of SVM classification were 97.87, 100, and 93.62% under three different time windows; area under the curve values were 0.99, 1.00, and 0.95, respectively. No correlation was found between hamilton anxiety (HAMA) scores and regional dALFF. CONCLUSION: Our findings offer important insights concerning the neuropathology that underlies RD and provide robust evidence that dALFF, a local indicator of brain activity, may be useful for clinical diagnosis.
format Online
Article
Text
id pubmed-10398337
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-103983372023-08-04 Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment Ji, Yu Wang, Yuan-yuan Cheng, Qi Fu, Wen-wen Huang, Shui-qin Zhong, Pei-pei Chen, Xiao-lin Shu, Ben-liang Wei, Bin Huang, Qin-yi Wu, Xiao-rong Front Neurosci Neuroscience BACKGROUND: There is increasing evidence that patients with retinal detachment (RD) have aberrant brain activity. However, neuroimaging investigations remain focused on static changes in brain activity among RD patients. There is limited knowledge regarding the characteristics of dynamic brain activity in RD patients. AIM: This study evaluated changes in dynamic brain activity among RD patients, using a dynamic amplitude of low-frequency fluctuation (dALFF), k-means clustering method and support vector machine (SVM) classification approach. METHODS: We investigated inter-group disparities of dALFF indices under three different time window sizes using resting-state functional magnetic resonance imaging (rs-fMRI) data from 23 RD patients and 24 demographically matched healthy controls (HCs). The k-means clustering method was performed to analyze specific dALFF states and related temporal properties. Additionally, we selected altered dALFF values under three distinct conditions as classification features for distinguishing RD patients from HCs using an SVM classifier. RESULTS: RD patients exhibited dynamic changes in local intrinsic indicators of brain activity. Compared with HCs, RD patients displayed increased dALFF in the bilateral middle frontal gyrus, left putamen (Putamen_L), left superior occipital gyrus (Occipital_Sup_L), left middle occipital gyrus (Occipital_Mid_L), right calcarine (Calcarine_R), right middle temporal gyrus (Temporal_Mid_R), and right inferior frontal gyrus (Frontal_Inf_Tri_R). Additionally, RD patients showed significantly decreased dALFF values in the right superior parietal gyrus (Parietal_Sup_R) and right paracentral lobule (Paracentral_Lobule_R) [two-tailed, voxel-level p < 0.05, Gaussian random field (GRF) correction, cluster-level p < 0.05]. For dALFF, we derived 3 or 4 states of ALFF that occurred repeatedly. There were differences in state distribution and state properties between RD and HC groups. The number of transitions between the dALFF states was higher in the RD group than in the HC group. Based on dALFF values in various brain regions, the overall accuracies of SVM classification were 97.87, 100, and 93.62% under three different time windows; area under the curve values were 0.99, 1.00, and 0.95, respectively. No correlation was found between hamilton anxiety (HAMA) scores and regional dALFF. CONCLUSION: Our findings offer important insights concerning the neuropathology that underlies RD and provide robust evidence that dALFF, a local indicator of brain activity, may be useful for clinical diagnosis. Frontiers Media S.A. 2023-07-20 /pmc/articles/PMC10398337/ /pubmed/37547140 http://dx.doi.org/10.3389/fnins.2023.1227081 Text en Copyright © 2023 Ji, Wang, Cheng, Fu, Huang, Zhong, Chen, Shu, Wei, Huang and Wu. 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 Neuroscience
Ji, Yu
Wang, Yuan-yuan
Cheng, Qi
Fu, Wen-wen
Huang, Shui-qin
Zhong, Pei-pei
Chen, Xiao-lin
Shu, Ben-liang
Wei, Bin
Huang, Qin-yi
Wu, Xiao-rong
Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment
title Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment
title_full Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment
title_fullStr Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment
title_full_unstemmed Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment
title_short Machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment
title_sort machine learning analysis reveals aberrant dynamic changes in amplitude of low-frequency fluctuations among patients with retinal detachment
topic Neuroscience
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10398337/
https://www.ncbi.nlm.nih.gov/pubmed/37547140
http://dx.doi.org/10.3389/fnins.2023.1227081
work_keys_str_mv AT jiyu machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT wangyuanyuan machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT chengqi machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT fuwenwen machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT huangshuiqin machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT zhongpeipei machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT chenxiaolin machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT shubenliang machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT weibin machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT huangqinyi machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment
AT wuxiaorong machinelearninganalysisrevealsaberrantdynamicchangesinamplitudeoflowfrequencyfluctuationsamongpatientswithretinaldetachment