Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study
Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain thresh...
Ausführliche Beschreibung
Autor*in: |
Tu, Yiheng [verfasserIn] |
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Englisch |
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2019transfer abstract |
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Übergeordnetes Werk: |
Enthalten in: Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements - Nicosia, Alessia ELSEVIER, 2017, a journal of brain function, Orlando, Fla |
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Übergeordnetes Werk: |
volume:202 ; year:2019 ; day:15 ; month:11 ; pages:0 |
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DOI / URN: |
10.1016/j.neuroimage.2019.116049 |
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520 | |a Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. | ||
520 | |a Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. | ||
650 | 7 | |a Within-individual stability |2 Elsevier | |
650 | 7 | |a fMRI brain connectome |2 Elsevier | |
650 | 7 | |a Inter-individual variability |2 Elsevier | |
650 | 7 | |a Neural trait |2 Elsevier | |
650 | 7 | |a Pain threshold |2 Elsevier | |
700 | 1 | |a Zhang, Binlong |4 oth | |
700 | 1 | |a Cao, Jin |4 oth | |
700 | 1 | |a Wilson, Georgia |4 oth | |
700 | 1 | |a Zhang, Zhiguo |4 oth | |
700 | 1 | |a Kong, Jian |4 oth | |
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10.1016/j.neuroimage.2019.116049 doi /cbs_pica/cbs_olc/import_discovery/elsevier/einzuspielen/GBV00000000000896.pica (DE-627)ELV048271861 (ELSEVIER)S1053-8119(19)30630-5 DE-627 ger DE-627 rakwb eng Tu, Yiheng verfasserin aut Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study 2019transfer abstract nicht spezifiziert zzz rdacontent nicht spezifiziert z rdamedia nicht spezifiziert zu rdacarrier Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Within-individual stability Elsevier fMRI brain connectome Elsevier Inter-individual variability Elsevier Neural trait Elsevier Pain threshold Elsevier Zhang, Binlong oth Cao, Jin oth Wilson, Georgia oth Zhang, Zhiguo oth Kong, Jian oth Enthalten in Academic Press Nicosia, Alessia ELSEVIER Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements 2017 a journal of brain function Orlando, Fla (DE-627)ELV001942808 volume:202 year:2019 day:15 month:11 pages:0 https://doi.org/10.1016/j.neuroimage.2019.116049 Volltext GBV_USEFLAG_U GBV_ELV SYSFLAG_U AR 202 2019 15 1115 0 |
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10.1016/j.neuroimage.2019.116049 doi /cbs_pica/cbs_olc/import_discovery/elsevier/einzuspielen/GBV00000000000896.pica (DE-627)ELV048271861 (ELSEVIER)S1053-8119(19)30630-5 DE-627 ger DE-627 rakwb eng Tu, Yiheng verfasserin aut Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study 2019transfer abstract nicht spezifiziert zzz rdacontent nicht spezifiziert z rdamedia nicht spezifiziert zu rdacarrier Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Within-individual stability Elsevier fMRI brain connectome Elsevier Inter-individual variability Elsevier Neural trait Elsevier Pain threshold Elsevier Zhang, Binlong oth Cao, Jin oth Wilson, Georgia oth Zhang, Zhiguo oth Kong, Jian oth Enthalten in Academic Press Nicosia, Alessia ELSEVIER Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements 2017 a journal of brain function Orlando, Fla (DE-627)ELV001942808 volume:202 year:2019 day:15 month:11 pages:0 https://doi.org/10.1016/j.neuroimage.2019.116049 Volltext GBV_USEFLAG_U GBV_ELV SYSFLAG_U AR 202 2019 15 1115 0 |
allfields_unstemmed |
10.1016/j.neuroimage.2019.116049 doi /cbs_pica/cbs_olc/import_discovery/elsevier/einzuspielen/GBV00000000000896.pica (DE-627)ELV048271861 (ELSEVIER)S1053-8119(19)30630-5 DE-627 ger DE-627 rakwb eng Tu, Yiheng verfasserin aut Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study 2019transfer abstract nicht spezifiziert zzz rdacontent nicht spezifiziert z rdamedia nicht spezifiziert zu rdacarrier Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Within-individual stability Elsevier fMRI brain connectome Elsevier Inter-individual variability Elsevier Neural trait Elsevier Pain threshold Elsevier Zhang, Binlong oth Cao, Jin oth Wilson, Georgia oth Zhang, Zhiguo oth Kong, Jian oth Enthalten in Academic Press Nicosia, Alessia ELSEVIER Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements 2017 a journal of brain function Orlando, Fla (DE-627)ELV001942808 volume:202 year:2019 day:15 month:11 pages:0 https://doi.org/10.1016/j.neuroimage.2019.116049 Volltext GBV_USEFLAG_U GBV_ELV SYSFLAG_U AR 202 2019 15 1115 0 |
allfieldsGer |
10.1016/j.neuroimage.2019.116049 doi /cbs_pica/cbs_olc/import_discovery/elsevier/einzuspielen/GBV00000000000896.pica (DE-627)ELV048271861 (ELSEVIER)S1053-8119(19)30630-5 DE-627 ger DE-627 rakwb eng Tu, Yiheng verfasserin aut Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study 2019transfer abstract nicht spezifiziert zzz rdacontent nicht spezifiziert z rdamedia nicht spezifiziert zu rdacarrier Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Within-individual stability Elsevier fMRI brain connectome Elsevier Inter-individual variability Elsevier Neural trait Elsevier Pain threshold Elsevier Zhang, Binlong oth Cao, Jin oth Wilson, Georgia oth Zhang, Zhiguo oth Kong, Jian oth Enthalten in Academic Press Nicosia, Alessia ELSEVIER Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements 2017 a journal of brain function Orlando, Fla (DE-627)ELV001942808 volume:202 year:2019 day:15 month:11 pages:0 https://doi.org/10.1016/j.neuroimage.2019.116049 Volltext GBV_USEFLAG_U GBV_ELV SYSFLAG_U AR 202 2019 15 1115 0 |
allfieldsSound |
10.1016/j.neuroimage.2019.116049 doi /cbs_pica/cbs_olc/import_discovery/elsevier/einzuspielen/GBV00000000000896.pica (DE-627)ELV048271861 (ELSEVIER)S1053-8119(19)30630-5 DE-627 ger DE-627 rakwb eng Tu, Yiheng verfasserin aut Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study 2019transfer abstract nicht spezifiziert zzz rdacontent nicht spezifiziert z rdamedia nicht spezifiziert zu rdacarrier Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. Within-individual stability Elsevier fMRI brain connectome Elsevier Inter-individual variability Elsevier Neural trait Elsevier Pain threshold Elsevier Zhang, Binlong oth Cao, Jin oth Wilson, Georgia oth Zhang, Zhiguo oth Kong, Jian oth Enthalten in Academic Press Nicosia, Alessia ELSEVIER Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements 2017 a journal of brain function Orlando, Fla (DE-627)ELV001942808 volume:202 year:2019 day:15 month:11 pages:0 https://doi.org/10.1016/j.neuroimage.2019.116049 Volltext GBV_USEFLAG_U GBV_ELV SYSFLAG_U AR 202 2019 15 1115 0 |
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Enthalten in Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements Orlando, Fla volume:202 year:2019 day:15 month:11 pages:0 |
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Within-individual stability fMRI brain connectome Inter-individual variability Neural trait Pain threshold |
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Field study of a soft X-ray aerosol neutralizer combined with electrostatic classifiers for nanoparticle size distribution measurements |
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Tu, Yiheng @@aut@@ Zhang, Binlong @@oth@@ Cao, Jin @@oth@@ Wilson, Georgia @@oth@@ Zhang, Zhiguo @@oth@@ Kong, Jian @@oth@@ |
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identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study |
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Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study |
abstract |
Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. |
abstractGer |
Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. |
abstract_unstemmed |
Individuals are unique in terms of brain and behavior. Some are very sensitive to pain, while others have a high tolerance. However, how inter-individual intrinsic differences in the brain are related to pain is unknown. Here, we performed longitudinal test-retest analyses to investigate pain threshold variability among individuals using a resting-state fMRI brain connectome. Twenty-four healthy subjects who received four MRI sessions separated by at least 7 days were included in the data analysis. Subjects’ pain thresholds were measured using two modalities of experimental pain (heat and pressure) on two different locations (heat pain: leg and arm; pressure pain: leg and thumbnail). Behavioral results showed strong inter-individual variability and strong within-individual stability in pain threshold. Resting state fMRI data analyses showed that functional connectivity profiles can accurately identify subjects across four sessions, indicating that an individual’s connectivity profile may be intrinsic and unique. By using multivariate pattern analyses, we found that connectivity profiles could be used to predict an individual’s pain threshold at both within-session and between-session levels, with the most predictive contribution from medial-frontal and frontal-parietal networks. These results demonstrate the potential of using a resting-state fMRI brain connectome to build a ‘neural trait’ for characterizing an individual’s pain-related behavior, and such a ‘neural trait’ may eventually be used to personalize clinical assessments. |
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Identifying inter-individual differences in pain threshold using brain connectome: a test-retest reproducible study |
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Zhang, Binlong Cao, Jin Wilson, Georgia Zhang, Zhiguo Kong, Jian |
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