TY - JOUR
T1 - Theory-driven classification of reading difficulties from fMRI data using Bayesian latent-mixture models
AU - Siegelman, Noam
AU - van den Bunt, Mark R.
AU - Lo, Jason Chor Ming
AU - Rueckl, Jay G.
AU - Pugh, Kenneth R.
N1 - Funding Information: This work was supported by the Eunice Kennedy Shriver National Institute of Child Health & Human Development of the National Institutes of Health under award P20HD091013 , R01HD086168 , and R37HD090153 . The data included was collected under support by award R01HD065794. The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health. N.S. received funding from the Israeli Science Foundation (ISF), grant number 48/20. Funding Information: This work was supported by the Eunice Kennedy Shriver National Institute of Child Health & Human Development of the National Institutes of Health under award P20HD091013, R01HD086168, and R37HD090153. The data included was collected under support by award R01HD065794. The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health. N.S. received funding from the Israeli Science Foundation (ISF), grant number 48/20. Publisher Copyright: © 2021 DBLP License: DBLP's bibliographic metadata records provided through http://dblp.org/ are distributed under a Creative Commons CC0 1.0 Universal Public Domain Dedication. Although the bibliographic metadata records are provided consistent with CC0 1.0 Dedication, the content described by the metadata records is not. Content may be subject to copyright, rights of privacy, rights of publicity and other restrictions.
PY - 2021/11/15
Y1 - 2021/11/15
N2 - Decades of research have led to several competing theories regarding the neural contributors to impaired reading. But how can we know which theory (or theories) identifies the types of markers that indeed differentiate between individuals with reading disabilities (RD) and their typically developing (TD) peers? To answer this question, we propose a new analytical tool for theory evaluation and comparison, grounded in the Bayesian latent-mixture modeling framework. We start by constructing a series of latent-mixture classification models, each reflecting one existing theoretical claim regarding the neurofunctional markers of RD (highlighting network-level differences in either mean activation, inter-subject heterogeneity, inter-region variability, or connectivity). Then, we run each model on fMRI data alone (i.e., while models are blind to participants' behavioral status), which enables us to interpret the fit between a model's classification of participants and their behavioral (known) RD/TD status as an estimate of its explanatory power. Results from n=127 adolescents and young adults (RD: n=59; TD: n=68) show that models based on network-level differences in mean activation and heterogeneity failed to differentiate between TD and RD individuals. In contrast, classifications based on variability and connectivity were significantly associated with participants' behavioral status. These findings suggest that differences in inter-region variability and connectivity may be better network-level markers of RD than mean activation or heterogeneity (at least in some populations and tasks). More broadly, the results demonstrate the promise of latent-mixture modeling as a theory-driven tool for evaluating different theoretical claims regarding neural contributors to language disorders and other cognitive traits.
AB - Decades of research have led to several competing theories regarding the neural contributors to impaired reading. But how can we know which theory (or theories) identifies the types of markers that indeed differentiate between individuals with reading disabilities (RD) and their typically developing (TD) peers? To answer this question, we propose a new analytical tool for theory evaluation and comparison, grounded in the Bayesian latent-mixture modeling framework. We start by constructing a series of latent-mixture classification models, each reflecting one existing theoretical claim regarding the neurofunctional markers of RD (highlighting network-level differences in either mean activation, inter-subject heterogeneity, inter-region variability, or connectivity). Then, we run each model on fMRI data alone (i.e., while models are blind to participants' behavioral status), which enables us to interpret the fit between a model's classification of participants and their behavioral (known) RD/TD status as an estimate of its explanatory power. Results from n=127 adolescents and young adults (RD: n=59; TD: n=68) show that models based on network-level differences in mean activation and heterogeneity failed to differentiate between TD and RD individuals. In contrast, classifications based on variability and connectivity were significantly associated with participants' behavioral status. These findings suggest that differences in inter-region variability and connectivity may be better network-level markers of RD than mean activation or heterogeneity (at least in some populations and tasks). More broadly, the results demonstrate the promise of latent-mixture modeling as a theory-driven tool for evaluating different theoretical claims regarding neural contributors to language disorders and other cognitive traits.
KW - Bayesian modeling
KW - Latent-mixture modeling
KW - Neurofunctional markers
KW - Reading
KW - Reading disabilities
KW - fMRI data analysis
UR - http://www.scopus.com/inward/record.url?scp=85112805804&partnerID=8YFLogxK
U2 - https://doi.org/10.1016/j.neuroimage.2021.118476
DO - https://doi.org/10.1016/j.neuroimage.2021.118476
M3 - Article
C2 - 34416399
SN - 1053-8119
VL - 242
SP - 118476
JO - NeuroImage
JF - NeuroImage
M1 - 118476
ER -