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Kernel Principal Component Analysis for dimensionality reduction in fMRI-based diagnosis of ADHD

Overview of attention for article published in Frontiers in Systems Neuroscience, January 2012
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  • Good Attention Score compared to outputs of the same age and source (70th percentile)

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Title
Kernel Principal Component Analysis for dimensionality reduction in fMRI-based diagnosis of ADHD
Published in
Frontiers in Systems Neuroscience, January 2012
DOI 10.3389/fnsys.2012.00074
Pubmed ID
Authors

Gagan S. Sidhu, Nasimeh Asgarian, Russell Greiner, Matthew R. G. Brown

Abstract

This study explored various feature extraction methods for use in automated diagnosis of Attention-Deficit Hyperactivity Disorder (ADHD) from functional Magnetic Resonance Image (fMRI) data. Each participant's data consisted of a resting state fMRI scan as well as phenotypic data (age, gender, handedness, IQ, and site of scanning) from the ADHD-200 dataset. We used machine learning techniques to produce support vector machine (SVM) classifiers that attempted to differentiate between (1) all ADHD patients vs. healthy controls and (2) ADHD combined (ADHD-c) type vs. ADHD inattentive (ADHD-i) type vs. controls. In different tests, we used only the phenotypic data, only the imaging data, or else both the phenotypic and imaging data. For feature extraction on fMRI data, we tested the Fast Fourier Transform (FFT), different variants of Principal Component Analysis (PCA), and combinations of FFT and PCA. PCA variants included PCA over time (PCA-t), PCA over space and time (PCA-st), and kernelized PCA (kPCA-st). Baseline chance accuracy was 64.2% produced by guessing healthy control (the majority class) for all participants. Using only phenotypic data produced 72.9% accuracy on two class diagnosis and 66.8% on three class diagnosis. Diagnosis using only imaging data did not perform as well as phenotypic-only approaches. Using both phenotypic and imaging data with combined FFT and kPCA-st feature extraction yielded accuracies of 76.0% on two class diagnosis and 68.6% on three class diagnosis-better than phenotypic-only approaches. Our results demonstrate the potential of using FFT and kPCA-st with resting-state fMRI data as well as phenotypic data for automated diagnosis of ADHD. These results are encouraging given known challenges of learning ADHD diagnostic classifiers using the ADHD-200 dataset (see Brown et al., 2012).

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Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 108 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
United States 3 3%
Singapore 1 <1%
Brazil 1 <1%
Unknown 103 95%

Demographic breakdown

Readers by professional status Count As %
Researcher 22 20%
Student > Master 21 19%
Student > Ph. D. Student 17 16%
Student > Bachelor 9 8%
Professor > Associate Professor 6 6%
Other 15 14%
Unknown 18 17%
Readers by discipline Count As %
Computer Science 24 22%
Psychology 18 17%
Medicine and Dentistry 12 11%
Engineering 11 10%
Neuroscience 10 9%
Other 13 12%
Unknown 20 19%
Attention Score in Context

Attention Score in Context

This research output has an Altmetric Attention Score of 4. This is our high-level measure of the quality and quantity of online attention that it has received. This Attention Score, as well as the ranking and number of research outputs shown below, was calculated when the research output was last mentioned on 25 February 2020.
All research outputs
#7,175,982
of 22,685,926 outputs
Outputs from Frontiers in Systems Neuroscience
#577
of 1,339 outputs
Outputs of similar age
#67,834
of 244,123 outputs
Outputs of similar age from Frontiers in Systems Neuroscience
#15
of 51 outputs
Altmetric has tracked 22,685,926 research outputs across all sources so far. This one has received more attention than most of these and is in the 67th percentile.
So far Altmetric has tracked 1,339 research outputs from this source. They typically receive a lot more attention than average, with a mean Attention Score of 10.6. This one has gotten more attention than average, scoring higher than 55% of its peers.
Older research outputs will score higher simply because they've had more time to accumulate mentions. To account for age we can compare this Altmetric Attention Score to the 244,123 tracked outputs that were published within six weeks on either side of this one in any source. This one has gotten more attention than average, scoring higher than 71% of its contemporaries.
We're also able to compare this research output to 51 others from the same source and published within six weeks on either side of this one. This one has gotten more attention than average, scoring higher than 70% of its contemporaries.