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ORIGINAL RESEARCH
Network Organization of Psychophysiological Mechanisms of Visual Working Memory and Fluid Intelligence
Lomonosov Moscow State University, Moscow, Russia
The study was conducted and funded within the framework of the state assignment of Lomonosov Moscow State University "Methodology and development of innovative methods and information technologies for scientific research, educational and practical activities of a psychologist. Cognitive processes and functional states: general psychological and psychophysiological analysis", number CITIS 122031100322-5
We express our gratitude to Adamovich T V, Komarova A V, and Manaenkov A.E. for their consultations on data processing, to Shcherbakova E T for assistance in preparing the stimuli, and to Borodkina A S, Verkholaz D M, Vovnenko A E, Zubko V M, Kabanova P I, Kashirin V A, Korobkova A A, Krivchenkova E V, Obryashchikov I E, Safonova M I, Terlichenko E O, Udartseva V K, Usayeva E M, Fridt E D and Tsymbalyuk E V for assistance in collecting the data
Demkina E I – Development of machine learning models, data collection and processing, Mikheikin M E – development of non-verbal intelligence study design, data collection and processing, Gorshkova T A – Development of visual working memory study design, data collection and processing, Alekseeva V M – preparation of literature review, data collection and processing, Tarasova D M – preparation of literature review, data collection and processing, Mityureva D G – Writing a script for data processing, data processing, Skripkina S M – preparation of applications to the ethics committee, data collection and processing, Abrosimova V D – preparation of applications to the ethics committee, data collection and processing, Kiselnikov A A – organization of the research group work, data collection and processing
The authors declare no obvious or potential conflicts of interest related to the publication of this article. The study protocol was approved by the Ethics Committee of Moscow State University; application number 5-h V.3. All study participants signed informed consent.
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