Feeling Rested Improves Cognitive Performance Among University Students: Testing of a Novel Psychophysiological Measurement System
Abstract
1. Introduction
1.1. Cognitive Functions
1.2. Cardiac Activity as Indicator of the State of the Autonomic Nervous System
1.3. The Relationship Between Cognitive and Physiological Functions
1.4. Lack of Sleep and Cognitive Performance in University Students
1.5. Objectives
2. Materials and Methods
2.1. Study Design
2.2. Participants
2.3. Measurement System and Data Collection
2.4. Data Sources/Measurement
2.4.1. Computer-Adapted Questionnaire
2.4.2. Protocol of Gamified Cognitive Tests
- Stroop (color–word inhibition) is the digital version of the original Stroop task [35] in which out of three ink colors of color words 2 are mismatched, and the participant must choose the matching word. The test measures cognitive control (performance monitoring subconstruct) according to the RDoC matrix, and visual processing (Gv), working memory (Gsm) and processing speed (Gs) of the CHC model [36].
- Corsi block-tapping test is the digital form of the Corsi block-tapping test [37]. Participants must click on the blocks as the patterns are presented. This test measures working memory (active maintenance, limited capacity, interference control) according to the RDoC, and visual processing (Gv), working memory (Gsm) and processing speed (Gs) in the CHC model.
- Character memory task is the gamified version of Digit Span Task [38] in which icons and numbers are presented at the same time after which participants must recall them in order. This task measures working memory in the RDoC matrix (Subconstructs: Active Maintenance, Flexible Updating, Limited Capacity, Interference Control); and working memory (Gsm) and processing speed (Gs) in the CHC model.
- Grammatical Reasoning: Validity of logic statements need to be determined for each presented example. The original task of Baddeley was implemented [39]. According to the RDoC matrix, this task measures language abilities (comprehension, experimental manipulations), and reading–writing (Grw, requires reading fluency and passage comprehension) according to the CHC model [40].
- Shape Memory Task: The participant is presented with three symbols and is expected to memorize them. Then the participant will select the proper combination out of four possibilities [41,42,43]. This task measures working memory in the RDoC matrix (Subconstructs: Active Maintenance, Flexible Updating, Limited Capacity, Interference Control); and working memory (Gsm) and processing speed (Gs) in the CHC model.
- Trail making A (TMTA): The participant is presented with numbers from 1 to 24 located randomly on the screen. The participant is expected to click on the number in increasing order. This along with the trail making B test was developed to test the impact of brain damage [44]. The test assesses attention and cognitive control (subconstructs: Response Selection; Inhibition/Suppression) in RDoC, and processing speed (Gs) in the CHC model.
- Trail making B (TMTB): The participant is presented with numbers from 1 to 12 and letters from A to L randomly located on the screen. The participant is expected to click on the numbers and letters in increasing order by starting with number 1 and then A, switching between numbers and letters [44]. This test assesses attention and cognitive control (subconstructs: Goal Selection; Updating, Representation, Inhibition/Suppression and Maintenance) according to RDoC; working memory (Gsm) and processing speed (Gs) according to the CHC model are measured by this task.
- Numerical reasoning: This test is a simple version of the widely used numerical reasoning test that is usually part of various aptitude tests [45]. The participant is presented with single-digit computations where some of the numbers are given as text, others are written as digits. This task measures basic arithmetic operations to assess cognitive deficits [46] and language in RDoC; reading–writing (Grw, math fluency) [40] in CHC.
- Monotony grid: This task is a slightly modified version of the Psychomotor Vigilance Test developed for assessing the impact of sleep loss on performance during sustained work [47]. The participant is presented with a grid of horizontal and vertical columns delineating cells. These cells light up one at a time in varying order, and the participant is expected to click on the lit-up cell. Attention and motor actions (reaction time) are assessed according to the RDoC; and processing speed (Gs) according to the CHC.
- Candy counter: This is a visual scanning task [48] during which the participant sees several candies in different colors and patterns at random locations on the screen. Then the screen is obscured for a brief period after which in addition to the original set of candies, a new candy appears on the screen. The participant is expected to click on the newly added candy. Working memory (active maintenance; limited capacity) is assessed according to both the RDoC and the CHC.
- Highway drive: This task is a video racing game used to assess risk-taking [49]. The participant can control a car—which travels along a three-lane highway—via the keyboard by changing the speed and lane of the car. In addition to the participant’s car, other vehicles are slowly moving in all lanes in the same direction. The participant is instructed to travel as far as possible during the allocated time while avoiding other cars as the participant’s car slows down in the case of a collision. Attention, cognitive control, and motor action are assessed according to the RDoC.
2.4.3. ECG Data
2.5. Statistical Analysis
3. Results
3.1. Description of Participants
3.2. Description of Cognitive Performance and Sleep Duration
3.3. Association Between Being Stressed, Feeling Rested, Sleep Duration and Cognitive Performance
3.4. Association Between Cognitive Performance, Heart Rate Variability, Sleep Duration and Restedness
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| BSI | Baevsky Stress Index |
| HRV | Heart rate variability |
| HR | Heart rate (bpm) |
| RMSSD | Root Mean Square of the Successive Differences |
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| Characteristics | n (%) | Mean | Min | Max |
|---|---|---|---|---|
| Age | 107 (100%) | 22.2 (SD ± 2.22) | 18 | 29 |
| Entrance score * | 57 (53%) | 433 (SD ± 36.98) | 285 | 494 |
| Sleep duration | 107 (100%) | 6.34 (SD ± 1.27) | 4 | 9.5 |
| Characteristics | Subcategory | n (%) | Characteristics | Subcategory | n (%) |
|---|---|---|---|---|---|
| Sex | Female | 56 (52%) | Dominant hand | Right | 94 (88%) |
| Field of Study | Medical and health sciences | 45 (42%) | Left | 11 (10%) | |
| Informatics | 32 (30%) | Ambidextrous | 2 (2%) | ||
| Humanities and science | 30 (28%) | Frequency of playing video games | Daily | 15 (14%) | |
| Study level | Bachelor | 47 (44%) | Weekly | 2 (1.9%) | |
| Master | 12 (11%) | Often | 15 (14%) | ||
| Undivided | 40 (37%) | Monthly | 11 (10.3%) | ||
| Doctoral | 3 (3%) | Rarely | 26 (24.3%) | ||
| Other | 2 (2%) | Never | 38 (35.5%) | ||
| Feeling rested | Not well-rested | 64 (60%) | |||
| Well-rested | 43 (40%) | ||||
| Tasks | n (%) | Mean% ± SD | Median | Min | Max |
|---|---|---|---|---|---|
| 1. Stroop | 107 (100%) | 82.5 ± 4.42 | 83 | 72 | 90 |
| 2. Corsi | 107 (100%) | 81.2 ± 8.42 | 81 | 61 | 100 |
| 3. Character memory | 107 (100%) | 52.1 ± 11.33 | 52 | 27 | 85 |
| 4. Grammatical reasoning | 107 (100%) | 57.4 ± 30.79 | 60 | 0 | 100 |
| 5. Shape memory | 107 (100%) | 51.9 ± 9.24 | 54 | 7 | 67 |
| 6. TMT-A | 107 (100%) | 83.1 ± 17.25 | 90 | 25 | 100 |
| 7. TMT-B | 107 (100%) | 64.9 ± 26.57 | 70 | 5 | 100 |
| 8. Numerical reasoning | 107 (100%) | 65.4 ± 16.46 | 70 | 10 | 100 |
| 9. Monotony grid | 103 (96%) | 33.7 ± 19.08 | 29 | 7 | 82 |
| 10. Candy counter | 107 (100%) | 52.8 ± 14.94 | 50 | 21 | 86 |
| 11. Highway drive | 107 (100%) | 32.4 ± 8.58 | 34 | 9 | 50 |
| Overall cognitive performance | 107 (100%) | 57.6 ± 8.70 | 58.9 | 36.1 | 81.8 |
| Sleep Duration | n (%) | Mean ± SD | Median | Min | Max |
|---|---|---|---|---|---|
| Of those who were not well-rested | 64 (60%) | 5.98 ± 1.17 | 6 | 4 | 9 |
| Of those who were well-rested | 43 (40%) | 6.86 ± 1.25 | 7 | 4.5 | 9.5 |
| Total | 107 (100%) | 6.34 ± 1.27 | 6.5 | 4 | 9.5 |
| Parameter | n (%) | Mean ± SD | Median | Min | Max | Correlation (Pearson Test) |
|---|---|---|---|---|---|---|
| HRV parameters before testing (1 min relaxation) | ||||||
| Heart Rate, HR (bpm) | 102 | 83.6 ± 12.79 | 84.8 | 54.94 | 116.9 | r = 0.116 p = 0.247 |
| Baevsky Stress Index, BSI | 102 | 11.4 ± 4.43 | 10.2 | 4.8 | 26.4 | r = 0.165 p = 0.097 |
| RMSSD | 102 | 36 ± 16.64 | 33.3 | 8.16 | 91.3 | r = −0.119 p = 0.234 |
| HRV parameters during testing | ||||||
| Heart Rate, HR (bpm) | 102 (%) | 84.38 ± 12.06 | 85.59 | 61.80 | 118.1 | r = 0.157 p = 0.115 |
| Baevsky Stress Index, BSI | 102 (%) | 11.91 ± 4.47 | 11.36 | 5.19 | 24.4 | r = 0.195 p = 0.050 |
| RMSSD | 102 (%) | 33.09 ± 15.18 | 30.55 | 10.65 | 80.8 | r = −0.195 p = 0.050 |
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Komóczi, M.; Lévai, L.; Barna, P.; Kósa, K. Feeling Rested Improves Cognitive Performance Among University Students: Testing of a Novel Psychophysiological Measurement System. Brain Sci. 2026, 16, 136. https://doi.org/10.3390/brainsci16020136
Komóczi M, Lévai L, Barna P, Kósa K. Feeling Rested Improves Cognitive Performance Among University Students: Testing of a Novel Psychophysiological Measurement System. Brain Sciences. 2026; 16(2):136. https://doi.org/10.3390/brainsci16020136
Chicago/Turabian StyleKomóczi, Márk, Levente Lévai, Péter Barna, and Karolina Kósa. 2026. "Feeling Rested Improves Cognitive Performance Among University Students: Testing of a Novel Psychophysiological Measurement System" Brain Sciences 16, no. 2: 136. https://doi.org/10.3390/brainsci16020136
APA StyleKomóczi, M., Lévai, L., Barna, P., & Kósa, K. (2026). Feeling Rested Improves Cognitive Performance Among University Students: Testing of a Novel Psychophysiological Measurement System. Brain Sciences, 16(2), 136. https://doi.org/10.3390/brainsci16020136

