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  Improving the reliability of fMRI-based predictions of intelligence via semi-blind machine learning

Lohmann, G., Heczko, S., Mahler, L., Wang, Q., Steiglechner, J., Kumar, V., et al. (submitted). Improving the reliability of fMRI-based predictions of intelligence via semi-blind machine learning.

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 Creators:
Lohmann, G1, Author                 
Heczko, S1, Author           
Mahler, L1, Author           
Wang, Q1, Author                 
Steiglechner, J1, Author           
Kumar, VJ1, Author                 
Roost, M, Author
Jost, J, Author
Scheffler, K1, Author                 
Affiliations:
1Department High-Field Magnetic Resonance, Max Planck Institute for Biological Cybernetics, Max Planck Society, ou_1497796              

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 Abstract: Predicting neuromarkers for cognitive abilities using fMRI has been a major focus of research in the past few years. However, it has recently been reported that many thousands of participants are required to obtain reproducible results (Marek et al (2022)). This appears to be a major impediment to obtaining neuromarkers from fMRI because large sample sizes are typically not available in neuroimaging studies. Here we show that the out-of-sample prediction accuracy can be dramatically improved by supplementing fMRI with readily available non-imaging information so that reliable predictive modeling becomes feasible even for small sample sizes. Specifically, we introduce a novel machine learning method that predicts intelligence from resting-state fMRI data, leveraging educational level as supplementary information. We refer to our approach as "semi-blind machine learning (SML)" because it operates under the assumption that supplementary information, such as educational level, is available for subjects in both the training and test sets. This setup closely mirrors real-world scenarios, especially in clinical contexts, where patient background information typically exists and can be utilized to boost prediction accuracy. Nonetheless, it is imperative to guard against potential bias. Subjects should not be categorized as more intelligent simply based on their higher education levels. Therefore, our approach contains a component explicitly designed for bias control. We have applied our method to three different data collections (HCP, AOMIC, ABIDE-1), and observed marked improvements in prediction accuracies across a wide range of sample sizes.

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 Dates: 2023-11
 Publication Status: Submitted
 Pages: -
 Publishing info: -
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 Rev. Type: -
 Identifiers: DOI: 10.1101/2023.11.03.565485
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