| Literature DB >> 31814997 |
Jessica E Bartley1, Michael C Riedel1, Taylor Salo2, Emily R Boeving2, Katherine L Bottenhorn2, Elsa I Bravo2, Rosalie Odean2, Alina Nazareth3, Robert W Laird1, Matthew T Sutherland2, Shannon M Pruden2, Eric Brewe4,5,6, Angela R Laird1.
Abstract
Understanding how students learn is crucial for helping them succeed. We examined brain function in 107 undergraduate students during a task known to be challenging for many students-physics problem solving-to characterize the underlying neural mechanisms and determine how these support comprehension and proficiency. Further, we applied module analysis to response distributions, defining groups of students who answered by using similar physics conceptions, and probed for brain differences linked with different conceptual approaches. We found that integrated executive, attentional, visual motion, and default mode brain systems cooperate to achieve sequential and sustained physics-related cognition. While accuracy alone did not predict brain function, dissociable brain patterns were observed when students solved problems by using different physics conceptions, and increased success was linked to conceptual coherence. Our analyses demonstrate that episodic associations and control processes operate in tandem to support physics reasoning, offering potential insight to support student learning.Entities:
Keywords: Education; Problem solving
Year: 2019 PMID: 31814997 PMCID: PMC6889284 DOI: 10.1038/s41539-019-0059-8
Source DB: PubMed Journal: NPJ Sci Learn ISSN: 2056-7936
Fig. 1Physics problem solving-related brain activity. Activation of FCI > Control for a problem solving across all phases, b–d across each sequential problem phase, and e parametric modulation across all phases by problem difficulty. Activation maps were thresholded by using a cluster-defining threshold of P < 0.001 and a cluster extent threshold of P < 0.05, FWE corrected. Adjacent radar plots depict functional decoding results of the top ten weighted terms for each network. Note that term weightings depend on the values of each input map; thus, each radar plot depicts an arbitrary scale and comparison of values across plots is not recommended[29]
Fig. 2Psychophysiological interaction (PPI) results. Whole-brain PPI task-based functional connectivity associated with FCI > Control for a left V5/MT+, b left dlPFC, and c RSC seeds. PPI maps were thresholded by using a cluster-defining threshold of P < 0.001 and a cluster extent threshold of P < 0.05, FWE corrected
Fig. 3Inhomogeneity in students’ conceptual approach. a Module analysis of student responses across FCI answer distributions. Heat map colors represent student responses to multiple-choice FCI questions and black horizontal lines distinguish groups identified by community detection. b Scaled within-group overlap of incorrect FCI responses across nine previously measured physics conceptual models[31] (Supplementary Table 6) for top three normative groups. c Group differences in problem solving-related brain networks (FCI > Control, all phases) across the three normative groups. Increased activity is shown for Groups A and B relative to Group C (top) and Group C relative to Groups A and B (bottom). No significant differences were observed between Groups A and B. Group difference maps were thresholded by using a cluster-defining threshold of P < 0.001 and a cluster extent threshold of P < 0.05, FWE corrected