Title
Predicting performance from functional imaging data: methods matter.
Abstract
In the standard approach to functional imaging studies, brain-behavior relationships are studied by contrasting data obtained during different behavioral states. It is generally assumed that relative change yields meaningful data about relevant brain processes, and that the magnitude of the change reflects the extent of a region's involvement in the behavior being studied. The present study takes a different approach by asking the question, Can functional imaging data predict performance? Regional cerebral blood flow was measured using positron emission tomography in a group of 13 right-handed, normal volunteers during speech production and quiet baseline. A number of methodological assumptions were addressed by examining the relationships between different imaging measures derived from the same raw data and performance on the speech task. The results demonstrate that several common assumptions are not necessarily true. First, although measures based on “activated” scans alone had predictive value with respect to speech rate, measures based on contrasts between “baseline” and “activated” states did not. This was true regardless of whether the contrast was based on subtraction or covariance analyses. Second, while many regions demonstrated large signal increases during speech, speech rate could be predicted by a linear combination of data from two regions, neither of which had the highest “activation” peak, and one of which had a negative relationship with performance. The results demonstrate that contrasting experimental conditions do not necessarily isolate or enhance brain activity related to performance, and that the current assumptions about activation in functional imaging need to be reconsidered.
Year
DOI
Venue
2003
10.1016/S1053-8119(03)00349-5
NeuroImage
Keywords
DocType
Volume
speech production,functional imaging
Journal
20
Issue
ISSN
Citations 
2
1053-8119
8
PageRank 
References 
Authors
1.75
2
3
Name
Order
Citations
PageRank
John J Sidtis1173.71
Stephen C. Strother239956.31
David A. Rottenberg332647.60