Abstract

Semantic verbal fluency (sVF) tasks are commonly used in clinical diagnostic batteries as well as in a research context. When performing sVF tasks to assess executive functions (EFs) the sum of correctly produced words is the main measure. Although previous research indicates potentially better insights into EF performance by the use of finer grained sVF information, this has not yet been objectively evaluated. To investigate the potential of employing a finer grained sVF feature set to predict EF performance, healthy monolingual German speaking participants (n = 230) were tested with a comprehensive EF test battery and sVF tasks, from which features including sum scores, error types, speech breaks and semantic relatedness were extracted. A machine learning method was applied to predict EF scores from sVF features in previously unseen subjects. To investigate the predictive power of the advanced sVF feature set, we compared it to the commonly used sum score analysis. Results revealed that 8 / 14 EF tests were predicted significantly using the comprehensive sVF feature set, which outperformed sum scores particularly in predicting cognitive flexibility and inhibitory processes. These findings highlight the predictive potential of a comprehensive evaluation of sVF tasks which might be used as diagnostic screening of EFs.

Highlights

  • Our study revealed insights into the advantages of an elaborated analysis of sVF tasks which successfully predicts EF performance

  • In particular with regards to cognitive flexibility and inhibition our study demonstrated that an evaluation of sVF sum scores does not capture actual EF performance but rather assesses overall processing speed

  • We suggest the utilization of a comprehensive analysis of VF performance including features of error types, latencies and semantic distances

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Summary

Objectives

The aim of the present study was to investigate the predictive power of a comprehensive set of sVF measures and compare it to the commonly used sum score analysis. This study aimed to investigate whether EF performance can be predicted from sVF tasks using Machine Learning methods

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