We propose an AutoML approach for the prediction of fluid intelligence from T1-weighted magnetic resonance images. We extracted 122 features from MRI scans and employed Sequential Model-based Algorithm Configuration to search for the best prediction pipeline, including the best data pre-processing and regression model. In total, we evaluated over 2600 prediction pipelines. We studied our final model by employing results from game theory in the form of Shapley values. Results indicate that predicting fluid intelligence from volume measurements is a challenging task with many challenges. We found that our final ensemble of 50 prediction pipelines associated larger parahippocampal gyrus volumes with lower fluid intelligence, and higher pons white matter volume with higher fluid intelligence.
CITATION STYLE
Pölsterl, S., Gutiérrez-Becker, B., Sarasua, I., Guha Roy, A., & Wachinger, C. (2019). An AutoML Approach for the Prediction of Fluid Intelligence from MRI-Derived Features. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 11791 LNCS, pp. 99–107). Springer. https://doi.org/10.1007/978-3-030-31901-4_12
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