PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification Accuracy
Classification approaches have been increasingly applied to differentiate patients and normal controls using resting-state functional magnetic resonance imaging data (RS-fMRI). Although most previous classification studies have reported promising accuracy within individual datasets, achieving high l...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Frontiers Media S.A.
2018-01-01
|
Series: | Frontiers in Neuroscience |
Subjects: | |
Online Access: | http://journal.frontiersin.org/article/10.3389/fnins.2017.00740/full |
id |
doaj-f6ae3752102e45bd8b8715d8cf591024 |
---|---|
record_format |
Article |
spelling |
doaj-f6ae3752102e45bd8b8715d8cf5910242020-11-25T00:12:05ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2018-01-011110.3389/fnins.2017.00740302549PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification AccuracyZhen Zhou0Jian-Bao Wang1Jian-Bao Wang2Jian-Bao Wang3Yu-Feng Zang4Yu-Feng Zang5Yu-Feng Zang6Gang Pan7College of Computer Science and Technology, Zhejiang University, Hangzhou, ChinaCenter for Cognition and Brain Disorders and the Affiliated Hospital, Hangzhou Normal University, Hangzhou, ChinaZhejiang Key Laboratory for Research in Assessment of Cognitive Impairments, Hangzhou, ChinaInstitutes of Psychological Sciences, Hangzhou Normal University, Hangzhou, ChinaCenter for Cognition and Brain Disorders and the Affiliated Hospital, Hangzhou Normal University, Hangzhou, ChinaZhejiang Key Laboratory for Research in Assessment of Cognitive Impairments, Hangzhou, ChinaInstitutes of Psychological Sciences, Hangzhou Normal University, Hangzhou, ChinaCollege of Computer Science and Technology, Zhejiang University, Hangzhou, ChinaClassification approaches have been increasingly applied to differentiate patients and normal controls using resting-state functional magnetic resonance imaging data (RS-fMRI). Although most previous classification studies have reported promising accuracy within individual datasets, achieving high levels of accuracy with multiple datasets remains challenging for two main reasons: high dimensionality, and high variability across subjects. We used two independent RS-fMRI datasets (n = 31, 46, respectively) both with eyes closed (EC) and eyes open (EO) conditions. For each dataset, we first reduced the number of features to a small number of brain regions with paired t-tests, using the amplitude of low frequency fluctuation (ALFF) as a metric. Second, we employed a new method for feature extraction, named the PAIR method, examining EC and EO as paired conditions rather than independent conditions. Specifically, for each dataset, we obtained EC minus EO (EC—EO) maps of ALFF from half of subjects (n = 15 for dataset-1, n = 23 for dataset-2) and obtained EO—EC maps from the other half (n = 16 for dataset-1, n = 23 for dataset-2). A support vector machine (SVM) method was used for classification of EC RS-fMRI mapping and EO mapping. The mean classification accuracy of the PAIR method was 91.40% for dataset-1, and 92.75% for dataset-2 in the conventional frequency band of 0.01–0.08 Hz. For cross-dataset validation, we applied the classifier from dataset-1 directly to dataset-2, and vice versa. The mean accuracy of cross-dataset validation was 94.93% for dataset-1 to dataset-2 and 90.32% for dataset-2 to dataset-1 in the 0.01–0.08 Hz range. For the UNPAIR method, classification accuracy was substantially lower (mean 69.89% for dataset-1 and 82.97% for dataset-2), and was much lower for cross-dataset validation (64.69% for dataset-1 to dataset-2 and 64.98% for dataset-2 to dataset-1) in the 0.01–0.08 Hz range. In conclusion, for within-group design studies (e.g., paired conditions or follow-up studies), we recommend the PAIR method for feature extraction. In addition, dimensionality reduction with strong prior knowledge of specific brain regions should also be considered for feature selection in neuroimaging studies.http://journal.frontiersin.org/article/10.3389/fnins.2017.00740/fullresting-state fMRIwithin-group designamplitude of low-frequency fluctuationlinear support vector machinedimensionality reduction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhen Zhou Jian-Bao Wang Jian-Bao Wang Jian-Bao Wang Yu-Feng Zang Yu-Feng Zang Yu-Feng Zang Gang Pan |
spellingShingle |
Zhen Zhou Jian-Bao Wang Jian-Bao Wang Jian-Bao Wang Yu-Feng Zang Yu-Feng Zang Yu-Feng Zang Gang Pan PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification Accuracy Frontiers in Neuroscience resting-state fMRI within-group design amplitude of low-frequency fluctuation linear support vector machine dimensionality reduction |
author_facet |
Zhen Zhou Jian-Bao Wang Jian-Bao Wang Jian-Bao Wang Yu-Feng Zang Yu-Feng Zang Yu-Feng Zang Gang Pan |
author_sort |
Zhen Zhou |
title |
PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification Accuracy |
title_short |
PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification Accuracy |
title_full |
PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification Accuracy |
title_fullStr |
PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification Accuracy |
title_full_unstemmed |
PAIR Comparison between Two Within-Group Conditions of Resting-State fMRI Improves Classification Accuracy |
title_sort |
pair comparison between two within-group conditions of resting-state fmri improves classification accuracy |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Neuroscience |
issn |
1662-453X |
publishDate |
2018-01-01 |
description |
Classification approaches have been increasingly applied to differentiate patients and normal controls using resting-state functional magnetic resonance imaging data (RS-fMRI). Although most previous classification studies have reported promising accuracy within individual datasets, achieving high levels of accuracy with multiple datasets remains challenging for two main reasons: high dimensionality, and high variability across subjects. We used two independent RS-fMRI datasets (n = 31, 46, respectively) both with eyes closed (EC) and eyes open (EO) conditions. For each dataset, we first reduced the number of features to a small number of brain regions with paired t-tests, using the amplitude of low frequency fluctuation (ALFF) as a metric. Second, we employed a new method for feature extraction, named the PAIR method, examining EC and EO as paired conditions rather than independent conditions. Specifically, for each dataset, we obtained EC minus EO (EC—EO) maps of ALFF from half of subjects (n = 15 for dataset-1, n = 23 for dataset-2) and obtained EO—EC maps from the other half (n = 16 for dataset-1, n = 23 for dataset-2). A support vector machine (SVM) method was used for classification of EC RS-fMRI mapping and EO mapping. The mean classification accuracy of the PAIR method was 91.40% for dataset-1, and 92.75% for dataset-2 in the conventional frequency band of 0.01–0.08 Hz. For cross-dataset validation, we applied the classifier from dataset-1 directly to dataset-2, and vice versa. The mean accuracy of cross-dataset validation was 94.93% for dataset-1 to dataset-2 and 90.32% for dataset-2 to dataset-1 in the 0.01–0.08 Hz range. For the UNPAIR method, classification accuracy was substantially lower (mean 69.89% for dataset-1 and 82.97% for dataset-2), and was much lower for cross-dataset validation (64.69% for dataset-1 to dataset-2 and 64.98% for dataset-2 to dataset-1) in the 0.01–0.08 Hz range. In conclusion, for within-group design studies (e.g., paired conditions or follow-up studies), we recommend the PAIR method for feature extraction. In addition, dimensionality reduction with strong prior knowledge of specific brain regions should also be considered for feature selection in neuroimaging studies. |
topic |
resting-state fMRI within-group design amplitude of low-frequency fluctuation linear support vector machine dimensionality reduction |
url |
http://journal.frontiersin.org/article/10.3389/fnins.2017.00740/full |
work_keys_str_mv |
AT zhenzhou paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy AT jianbaowang paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy AT jianbaowang paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy AT jianbaowang paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy AT yufengzang paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy AT yufengzang paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy AT yufengzang paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy AT gangpan paircomparisonbetweentwowithingroupconditionsofrestingstatefmriimprovesclassificationaccuracy |
_version_ |
1725401346985689088 |