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JavaScript is disabled on your browser. Please enable JavaScript to use all the features on this page. Skip to main contentSkip to article ScienceDirect * Journals & Books * Help * Search My account Sign in * View PDF Search ScienceDirect OUTLINE 1. Abstract 2. 3. Key words 4. Abbreviations 5. Introduction 6. Methods 7. RESULTS 8. Discussion 9. Conclusions 10. Ethics statement 11. Sources of funding 12. Declaration of competing interest 13. Data availability 14. References Show full outline FIGURES (4) 1. 2. 3. 4. TABLES (2) 1. Table 1 2. Table 2 ARCHIVES OF REHABILITATION RESEARCH AND CLINICAL TRANSLATION Available online 27 August 2024, 100368 In Press, Journal Pre-proofWhat’s this? ORIGINAL RESEARCH THE EFFECT OF SENSORY REWEIGHTING ON POSTURAL CONTROL AND CORTICAL ACTIVITY IN PARKINSON'S DISEASE: A PILOT STUDY Author links open overlay panelMaryam Sadeghi MS 1, Thomas Bristow BS 2, Sodiq Fakorede BS 1, Ke Liao PhD 3, Jacqueline A. Palmer PhD 4, Kelly E. Lyons PhD 5, Rajesh Pahwa MD 5, Chun-Kai Huang PhD 1 6, Abiodun Akinwuntan PhD, FACRM 1 6 7, Hannes Devos PhD, FACRM 1 6 Show more Outline Add to Mendeley Share Cite https://doi.org/10.1016/j.arrct.2024.100368Get rights and content Under a Creative Commons license open access ABSTRACT OBJECTIVE To investigate the effects of sensory reweighting on postural control and cortical activity in individuals with Parkinson's disease (PD) compared to age-matched controls using a virtual reality sensory organization test (VR-SOT). DESIGN Cross-sectional pilot study. SETTING University research laboratory. PARTICIPANTS Ten participants with idiopathic Parkinson's disease and eleven age- and sex-matched control participants without neurological disorders. INTERVENTIONS Not Applicable. MAIN OUTCOME MEASURES Changes in center of pressure (COP) and electroencephalography (EEG) activity (i.e., power) in the alpha band and the theta/beta ratio recorded during the VR-SOT were the main outcome variables. RESULTS PD participants exhibited greater COP displacement, particularly in the mediolateral direction across sensory conditions. They also showed increased alpha power when relying on visual inputs and increased theta/beta ratio power when depending on somatosensory inputs. CONCLUSION PD affects sensory reweighting mechanisms involved in postural control, as evidenced by greater COP displacement and altered cortical activity. These findings emphasize the potential of EEG and VR-SOT in understanding and monitoring postural control impairments in PD. KEY WORDS Parkinson's disease sensory reweighting postural control electroencephalography virtual reality center of pressure ABBREVIATIONS PD (Parkinson's Disease) COP (Center of Pressure) EEG (Electroencephalography) VR-SOT (Virtual Reality Sensory Organization Test) INTRODUCTION Postural imbalance is a hallmark symptom of Parkinson's disease (PD)1. Several clinical tests, such as the Berg Balance Scale, the Tinetti Balance Test, the BESTest, or the Mini-BESTest, have been developed and validated to identify balance impairments and determine the risk of falls in individuals with PD2. Although these tests include assessments of both static and dynamic postural control3, they provide limited insights into the specific sensory systems that contribute to postural control. The Sensory Organization Test (SOT) was designed to quantitatively evaluate the ability to maintain postural control by incorporating visual, vestibular, and somatosensory inputs4. The SOT uses sensory reweighting in which the brain adjusts the relative importance of different sensory systems to sustain balance5,6. This sensory reweighting is compromised in PD, indicating difficulties in distinguishing and selecting reliable information from various sensory systems to ensure postural control4,7. Particularly, individuals with PD show increased postural sway when relying predominantly on the inputs of the somatosensory and vestibular systems8, 9, 10, 11. These studies suggest that individuals with PD exhibit changes in central processing of somatosensory and vestibular information, resulting in increased reliance on vision to maintain balance. Yet, the cortical processes involved with sensory reweighting of postural control in PD have not been investigated. Mobile neuroimaging technology is increasingly used to elucidate the cortical processes related to postural control in healthy adults and adults with neurological conditions12,13,14. Electroencephalography (EEG) utilizes electrodes placed on the scalp to measure voltage potential differences between two locations on the scalp15. These EEG signals can then be decomposed into functionally distinct frequency bands, such as delta (0 – 4 Hz), theta (4 – 7 Hz), alpha (8 – 12 Hz), beta (13 – 30 Hz), and gamma (>30 Hz). The activity in these frequency bands is referred to as power. Alpha power and the ratio of slow (theta) to fast wave (beta) activity are of particular interest to study the cortical processes of postural control16,17. Changes in alpha power appear to reflect the sensory and movement-related information processing of postural control18. In young adults, occipital alpha power increased when standing with the eyes closed19,20. Theta/beta ratio power reflects cognitive activity related to attentional control and executive function21. Theta/beta ratio power increased while standing with the eyes closed and while standing while performing a dual task in neurotypical young adults20. In older adults, theta/beta ratio power increased during dual-task standing compared to single-task standing21. In PD, participants with balance impairments showed decreased mid-frontal and mid-cerebellar theta power while standing with the eyes open compared to those with no balance problems and neurotypical older adults22. The results of this previous study22 warrant further assessment to elucidate the cortical processes involved in the sensory organization of postural control in PD. The primary objective of this pilot study was to investigate the effects of sensory reweighting on postural control and cortical activity in individuals with PD compared to age-matched older adults. We hypothesized that individuals with PD would exhibit greater CoP displacement and increased cortical activity during the SOT than older adults, with a specific focus on alpha power and the theta/beta ratio as key indicators of the cortical contribution to sensory reweighting in postural control. METHODS PARTICIPANTS Ten participants with a diagnosis of idiopathic PD were recruited from the Parkinson's disease and Movement Disorder Clinic at the University of Kansas Medical Center. Eleven control participants were age- and sex-matched with PD participants and were recruited from the community. Inclusion criteria were the ability to comprehend and follow instructions in English, ability to stand without assistive devices, scoring more than 20 on the Montreal Cognitive Assessment (MoCA)23, and the participant with PD being in the medication on state. Exclusion criteria were a diagnosis of severe cognitive impairment or dementia, decreased visual acuity or loss of visual fields that cannot be resolved with corrective lenses, severe head and trunk dystonia or dyskinesia in the medication on state, blepharospasm, unpredictable motor fluctuations, deep brain stimulation, and presence of any musculoskeletal conditions which could affect standing and balance activities. This cross-sectional pilot study was approved by the University of Kansas Medical Center Institutional Review Board (#00148555). PROTOCOL All participants provided informed consent before starting the study procedures. Relevant demographic information such as age, sex, education level, disease duration, disease severity (measured using the Hoehn and Yahr (H&Y) scale)24 and medication details were extracted from medical records. Medication dose was converted into a Levodopa Equivalent Daily Dose (LEDD)25. The Montreal Cognitive Assessment (MoCA) was administered as a general screen of cognitive function23. In addition, we recorded the participant-reported number of falls in the six months prior to their visit. All experiments were conducted when participants were in their optimal medication state (ON), about 45 minutes after medication intake. We used the virtual reality-based Comprehensive Balance Assessment and Training (VR-COMBAT) system to administer the virtual reality SOT (VR-SOT)26. The VR-COMBAT system includes a processing computer (Alienware, Dell)a, a VR-integrated head-mounted device (VR-HMD) from HTC VIVE Pro Eyeb, and VR tracking sensors (Steam VR Base Stations, HTC)b. The HTC VIVE Pro Eye features dual OLED displays (2,880 × 1,600 pixels) with a 90 Hz refresh rate and a 110-degree field of view. The Steam VR software (version 1.13, Valve) links the computer and VR headset. The head-mounted device integrates with an AMTI Optima force plate (Watertown, MA)c, synchronized for precise measurements during trials (Figure 1). 1. Download: Download high-res image (732KB) 2. Download: Download full-size image Figure 1. Demonstration of the virtual reality comprehensive balance assessment and training system with mobile electroencephalography left: Participant standing on a firm platform & right: Participant standing on foam. Participant signed a photo and video release form. EXPERIMENTAL PROCEDURE Participants were instructed to remove their shoes and socks and stand barefoot on an AMTI Optima force plate (Watertown, MA, United States). They were asked to position their heel centers 17.5 cm apart with their feet oriented at 14°. Each participant was fitted with a safety harness attached to an overhead anchor for security during testing. A trained spotter was positioned behind each participant to ensure safety throughout the procedure. The VR-SOT comprises six different conditions that mimic the six conditions of the Equitest® SOT. Condition 1 serves as a benchmark for assessing static balance on a stable surface with fixed VR surroundings. The panels in the VR environment do not move. Participants can use the feedback of the visual, somatosensory, and vestibular systems to keep their balance. Condition 2 provides the same balance testing condition as to condition 1. However, participants must rely on somatosensory inputs to remain upright since the VR surroundings are blackened out27. In condition 3, the surrounding panels are moving in the anteroposterior direction with a maximum of 20 degrees and a maximum velocity of 15 degrees/sec. This condition creates a conflict between normal input from the somatosensory and vestibular systems and the visual information from the moving VR panels. Conditions 4, 5, and 6 mirror the parameters of conditions 1, 2, and 3, respectively. However, in conditions 4, 5, and 6, a foam (19 × 15 × 1.5 inch) is placed between the feet and the force plate, thus challenging the somatosensory system. In condition 4, participants must rely on visual inputs to maintain balance, whereas in condition 5, participants must rely on vestibular inputs27,28. Condition 6 generates a conflict between visual, somatosensory and vestibular systems. Each of the six conditions comprised three trials, with each trial lasting 20 seconds. Between each trial, a 5-second break was given. Data of the three trials were averaged. DATA CAPTURE AND PROCESSING The center of pressure (COP) data were obtained from the force plate at 200 Hz and processed using the MATLAB software (MathWorks, Natick, MA)29 to compute the following parameters30: * • Mean displacement in the anterior-posterior (AP) or medial-lateral (ML) direction (MeanAP or MeanML): The average displacement of the COP from its mean position in the AP/ML direction. * • Mean velocity in the AP or ML direction (VelAP or VelML): The average speed at which the COP moves in the AP/ML direction. * • Average frequency in the AP or ML direction (MfAP or MfML): The rotational frequency (in Hz) of the COP as it completes a full circle with a radius equal to the mean displacement. EEG DATA ACQUISITION AND PROCESSING To capture cortical activity, we used the mobile EXG system from Mentalab (Munich, Germany)d. Eight electrodes (seven dry brush electrodes on the scalp and one flat wet reference electrode) were wired to the Mentalab Explore hub attached to the back of the EEG net. The Explore device captures the scalp electrical activity at 500 Hz and transmits the signals to the laptop via Bluetooth. Electrode placement included the midline channels Fz, Pz, Cz, Oz, the frontal channels Fpz and Fp1, the central channel Fcz, and the reference electrode on the right mastoid TP10, according to the International 10-20 system. Impedance was kept below 50 kΩ for the recording. Feasibility testing ensured that placing the VR apparatus over the EEG net did not compromise EEG recording. The EEG data underwent filtering from 0.1 to 30 Hz using the EEGlab31 plugin within the MATLAB software32. To reduce noise, EEG recordings were trimmed 10 seconds before the trials began and 10 seconds after the last trial ended. The continuous EEG data were segmented into six datasets for each condition. EEGLAB31 automatic channel rejection was used to initially detect the noisy channels. In detail, the pop_rejchan() function from EEGLAB was used, in which the probability of each EEG channel was calculated as the rejection measurement with z-score threshold as 5. Then, the data were visually inspected to mark those channels with extreme noise. Finally, the Artifact Subspace Reconstruction (ASR) method33 from the EEGLAB clean_rawdata plugin (https://github.com/sccn/clean_rawdata) was used to reject bad data periods. The standard deviation cutoff for removal of bursts was chosen from 1 to 20 (mean/standard deviation: 8.61/6.15). The cleaned data were manually inspected again to be included into power calculation. A dataset was excluded from further data analysis if any of its channels was rejected as bad channel. To calculate the theta (4–7 Hz), alpha (8–13 Hz), and beta (13–30 Hz) frequency band power for all six conditions, EEGlab's Spectopo function was used to extract power spectral density from all electrodes, which uses Welch's method on the 1 s epochs with 50% overlap between its calculation windows. STATISTICAL ANALYSIS All statistical analyses were conducted using SAS software (version 9.4, Cary, NC). Normality of data distributions was assessed through the Shapiro–Wilk test and visual inspection of the histogram and Q-Q plots. We used Fisher's Exact tests and independent t-tests to compare demographic and clinical variables between groups. We calculated differences in sensory reweighting on COP and cortical activity between participants with PD and healthy controls (HC) using linear mixed models. We used a random intercept term and a subject-specific coefficient to adjust for correlation between measures within subjects. The linear mixed model included the main effects of group (PD – HC), condition (1 – 6), and the interaction effect of group*condition. To minimize the risk of type 1 errors, we only compared (1) condition 2 to condition 1 to evaluate the reweighting of postural control to the somatosensory system; (2) condition 4 to condition 1 to evaluate the reweighting of postural control to the visual system; (3) and condition 5 to condition 1 to evaluate the reweighting of postural control to the vestibular system28,34. We only report the results of the interaction effect. Finally, we correlated COP with EEG measures for each group separately using Pearson r correlations. The significance threshold for all analyses was set at alpha = 0.05. RESULTS DEMOGRAPHIC AND CLINICAL VARIABLES No differences were found in demographic and clinical characteristics between groups, except for the MoCA score (Table 1). Participants with PD scored slightly lower on the MoCA compared to controls. The disease duration and the H & Y stages indicated that participants with PD were in the very mild to moderate stage of the disease. Table 1. Comparison of demographic and clinical characteristics between groups. VariablesPD (n=10)HC (n=11)P valueAge, years72.30 ± 8.7769.90 ± 3.270.43 aSex, f:m3:74:70.45 bMoCA score, /3025.20 ± 2.0428.27 ± 1.490.0008 aEducation, years15.71 ± 2.214.7 ± 2.050.44 aDisease duration, years2.11 ± 3.07N/AN/AHoehn and Yahr (ON), stage 0:1:2:31:2:5:2N/AN/ALEDD, mg/day298.8 ± 258.7N/AN/AFalls in previous 6 months, yes: no5:5N/AN/ANumber of falls in previous 6 months, 0:1:2:30:3:1:1N/AN/A Abbreviations: LEDD: Levodopa Equivalent Daily Dose; MoCA, Montreal Cognitive Assessment; PD: Parkinson's disease; HC: healthy controls. Continuous variables are expressed as means ± standard deviations; dichotomous variables are expressed as frequencies. aIndependent t-test b Fisher's Exact test Table 2. Comparison of COP variables across the six VR-SOT conditions between PD (n = 10) and HC (n = 11) VariableGroupsMeanAP (mm)MeanML (mm)VelAP (mm/s)VelML (mm/s)MfAP (Hz)MfML (Hz)Condition 1PD11.87 ± 1.121.58 ± 1.0827.47 ± 3.8817.36 ± 2.772.38 ± 1.751.89 ± 1.02HC4.56 ± 2.031.23 ± 1.6220.45 ± 5.3911.29 ± 2.690.94 ± 0.331.79 ± 1.00Condition 2PD25.84 ± 8.7911.06 ± 1.7329.36 ± 4.6017.74 ± 2.802.29 ± 1.002.17 ± 0.94HC8.43 ± 5.742.42 ± 1.3024.25 ± 5.6411.76 ± 2.751.05 ± 0.321.65 ± 0.79Condition 3PD24.52 ± 7.8912.93 ± 1.0834.65 ± 16.6617.47 ± 2.102.29 ± 0.962.06 ± 0.70HC10.83 ± 5.464.50 ± 2.2624.23 ± 4.4712.97 ± 3.541.11 ± 0.251.64 ± 0.61Condition 4PD21.49 ± &.5913.98 ± 3.7742.64 ± 12.5331.77 ± 11.002.52 ± 1.512.21 ± 1.23HC6.21 ± 1.834.07 ± 1.8222.27 ± 5.0012.55 ± 2.570.98 ± 0.231.68 ± 0.80Condition 5PD44.96 ± 23.7419.53 ± 5.4141.78 ± 9.8323.34 ± 4.522.69 ± 1.112.55 ± 0.82HC9.49 ± 5.155.25 ± 1.8026.33 ± 5.1314.46 ± 3.071.67 ± 0.321.68 ± 0.77Condition 6PD35.14 ± 15.5817.09 ± 4.4039.41 ± 15.2720.36 ± 3.532.02 ± 1.402.10 ± 0.71HC24.91 ± 15.588.67 ± 3.7424.76 ± 8.4714.18 ± 2.781.15 ± 0.331.62 ± 0.52 MeanAP/MeanML: Mean displacement of the center of pressure (COP) in the anteroposterior/mediolateral direction; VelAP/VelML: Mean velocity of the center of pressure (COP) in the anteroposterior/mediolateral direction; MfAP/MfML: Mean rotational frequency of the center of pressure (COP) in the anteroposterior/mediolateral direction; PD: Parkinson's Disease; HC: healthy controls. Variables are expressed as mean ± standard deviation. Condition 1: stable surface with fixed VR surrounding; Condition 2: stable surface with blacked out VR surroundings; Condition 3: stable surface with VR visual conflict; Condition 4: unstable surface with fixed VR surroundings; Condition 5: unstable surface with blacked out VR surroundings; and Condition 6: unstable surface with VR visual conflict. Initially, our study enrolled 12 participants with PD and 12 control participants. During the postural balance conditions, two participants with PD lost their balance and requested support from the spotter. Of those, one person with PD discontinued in condition 5; the other person with PD lost balance during condition 4 but completed all conditions. One control lost balance in condition 4 and discontinued. Data from these participants were excluded from the final analysis. Consequently, the final sample size included in our analyses was reduced to 10 PD and 11 control participants. COP VARIABLES (TABLE 2) COP DISPLACEMENT The analysis of mean AP displacement demonstrated a significant group by condition interaction effect (F = 8.31, p < 0.001). Post-hoc analysis revealed that this interaction was significant for condition 5 (unstable surface, blacked out VR) relative to condition 1 (stable surface, fixed VR), producing a p < 0.001. Participants with PD exhibited greater displacement in the AP direction compared to controls when relying on vestibular inputs to maintain balance (Figure 2A). 1. Download: Download high-res image (649KB) 2. Download: Download full-size image 1. Download: Download high-res image (622KB) 2. Download: Download full-size image Figure 2. Comparison of center of pressure data using box-and-whisker and raincloud plots between participants with PD (n = 10) and HC (n=11). AP, anteroposterior; ML, mediolateral. Abbreviations: PD: Parkinson's disease; HC: healthy controls. Similarly, the analysis of mean ML displacement demonstrated a significant group by condition interaction effect (F = 7.25, p < 0.0001). Post-hoc analysis indicated that this interaction was significant for condition 2 (stable surface, blacked out VR; p = 0.03), condition 4 (unstable surface, fixed VR; p = 0.002), and condition 5 (unstable surface, blacked out VR; p < 0.0001) relative to condition 1 (stable surface, fixed VR). Individuals with PD displayed greater ML displacement compared to controls when relying on either somatosensory, visual, or vestibular inputs (Figure 2B). COP VELOCITY The analysis of AP velocity approached significance for group by condition interaction effect (F = 2.01, p = 0.08). No post-hoc effects were therefore calculated. The analysis of ML velocity demonstrated a significant group by condition interaction effect (F = 7.64, p < 0.001). Post-hoc analysis indicated that this interaction was significant for condition 4 (unstable surface, fixed VR; p < 0.001) relative to condition 1 (stable surface, fixed VR). Individuals with PD displayed greater velocity of the COP in the ML direction compared to controls when the relative contribution of the visual system to postural control was being tested (Figure 2D). COP FREQUENCY The analysis of frequency outcomes did not demonstrate any significant group by condition interaction effects (Figure 2E and Figure 2F). EEG VARIABLES ALPHA POWER The analysis of alpha power demonstrated a significant group by condition interaction effect (F = 3.50, p = 0.005). Post-hoc analysis revealed that this interaction was specifically significant for condition 4 (unstable surface, fixed VR; p = 0.003) relative to condition 1 (stable surface, fixed VR). Participants with PD (5.97 ± 7.23 µV/Hz2) exhibited increased alpha power compared to controls (3.49 ± 4.41 µV/Hz2) when relying on visual inputs of postural control (Figure 3A). 1. Download: Download high-res image (571KB) 2. Download: Download full-size image Figure 3. Comparison of EEG power using box-and-whisker and raincloud plots between participants with PD (n = 10) and HC (n=11). Abbreviations: PD: Parkinson's disease; HC: healthy controls. Since participants with PD exhibited cognitive impairment, we repeated the linear mixed model while adjusting for MOCA scores. Although MOCA scores were associated with alpha power (F = 4.59, p < 0.001), the interaction effect of group by condition remained significant (F = 3.74; p = 0.0007), with post-hoc effects for condition 4 (unstable surface, fixed VR; p = 0.0004) relative to condition 1 (stable surface, fixed VR). THETA/BETA RATIO POWER Similarly, the analysis of theta/beta ratio power demonstrated a significant group by condition interaction (F = 3.77, p = 0.003). Post-hoc analysis indicated that this interaction was significant for condition 2 (stable surface, blacked out VR; p = 0.01) relative to condition 1 (stable surface, fixed VR). Individuals with PD (5.14 ± 3.27) displayed increased theta/beta ratio power compared to controls (2.95 ± 2.51) when the relative contribution of the somatosensory system was being tested. We repeated the linear mixed models while adjusting for MOCA scores. MOCA scores were not associated with theta/beta ratio power (F = 0.59; p = 0.79), and the interaction effect of group by condition remained significant (F = 3.20; p = 0.005), with post-hoc effects for condition 2 (p = 0.03) relative to condition 1. Figure 4 shows the topographical maps of alpha power of condition 4 (unstable surface, fixed VR) – condition 1 (stable surface, fixed VR) and theta/beta ratio power of condition 2 (stable surface, blacked out VR) – condition 1 (stable surface, fixed VR) in participants with PD and controls. 1. Download: Download high-res image (862KB) 2. Download: Download full-size image Figure 4. Topographical maps of alpha power (µV/Hz2) during visual system testing and theta/beta ratio power during somatosensory system testing in the PD group (n = 10) and the HC group (n = 11). Abbreviations: PD: Parkinson's disease; HC: healthy controls. DISCUSSION The purpose of this study was to examine the impact of sensory reweighting of postural control on center of pressure (COP) and cortical activity in individuals with Parkinson's disease (PD) compared to age-matched healthy older adults. We observed two key findings: (1) participants with PD displayed greater mediolateral (ML) displacement when relying on somatosensory, visual, or vestibular inputs; and (2) participants with PD exhibit greater cortical activity when relying on somatosensory and visual inputs of postural control compared to healthy controls. Participants with PD exhibited greater COP displacement and velocity particularly in the ML direction, compared to the control group. While increased postural sway in the anteroposterior (AP) direction is more noticeable with higher postural control task difficulty, both PD and control groups responded similarly to sensory adjustments in the AP direction. Previous studies have indicated that individuals in the early stage of PD demonstrated the ability to use sensory inputs for postural control in the AP direction effectively35, 36, 37. However, they showed reduced ability to quickly adapt postural control to changing sensory conditions38. In contrast, individuals with PD showed increased COP displacement in the ML direction when relying on either somatosensory, visual, or vestibular inputs. Previous studies suggesting that ML sway is more sensitive than AP sway in detecting postural instability, detecting disease progression, or risk of falls in PD39,40. We hypothesized that the increased COP displacement during sensory reweighting is linked to increased cortical activity. Indeed, participants with PD exhibited increased alpha power when relying primarily using the visual system, and increased theta/beta ratio power when primarily relying on the somatosensory system for postural control. Increased alpha power in PD participants when relying on visual inputs suggests heightened cortical activity associated with visual processing. The increased alpha power may reflect either impaired central processing of visual cues, or potentially compensating for deficits in other sensory modalities. This finding aligns with the notion that patients with PD may depend more heavily on visual information to maintain balance, due to impaired proprioceptive and vestibular functions.41 Theta/beta ratio power increased in participants with PD when relying on somatosensory cues42. Occlusion of the dominant visual system likely prompted participants with PD to focus more attention on maintaining postural control, resulting in increased theta/beta ratio power42. In line with the Compensation-Related Utilization of Neural Circuits Hypothesis (CRUNCH) model43, individuals with PD might engage additional cortical regions or increase activation in specific areas to compensate for postural control impairments. An alternative explanation for the enhanced cognitive activity may be that participants with PD exhibited mild cognitive impairment. The average MOCA score in the PD group was 25.20, which is below the threshold for normal cognition (26 and above).44 We adjusted for differences in MOCA scores in the statistical analyses. After such adjustment, the increased cortical activity persisted in the PD group. This result implies that difficulties with postural control, independent of changes in cognitive function, are associated with heightened cortical activity in people with PD. Although preliminary, our findings suggest that COP displacement, particularly in the mediolateral direction, and changes in EEG alpha power and theta/beta ratio, could help in the early identification of postural balance impairment and falls risk in individuals with PD. Our findings may also inform the development of targeted interventions, including balance training programs that emphasize sensory integration and real-time EEG biofeedback to monitor and adjust treatment strategies. STUDY LIMITATIONS While the study presents the first link between cortical activity and sensory reweighting in PD, caution is necessary due to the relatively small sample size of this study26. The study may have been underpowered to identify real differences between groups. In addition, the findings may not be generalized to the population of people with PD until the results have been confirmed in a larger sample size. Many VR systems currently on the market (e.g., Bertec®, Virtualis®, UprightVR) or used for research have found the VR-SOT to be valid compared to traditional SOT45,46. However, caution is warranted to directly compare the outcomes of VR-SOT with traditional SOT47. Future studies should encompass larger sample sizes, a wider range of PD severities, and subtypes for a more comprehensive understanding how PD affects cortical processes of sensory reweighting. Particularly, the robustness of our findings should be tested in a group of PD patients with no cognitive impairments. The study results are also sufficiently encouraging to explore the use of EEG as an early marker of balance impairment in PD. Future studies should evaluate the temporal association between changes in cortical activity and balance impairment in PD. CONCLUSIONS In conclusion, our study provides preliminary insights into the challenges faced by individuals with PD in adjusting postural control in response to changes in sensory inputs, particularly in the ML direction. These exploratory findings underscore the potential role of EEG in detecting subtle changes in cortical activity associated with balance impairments in PD. The increased cortical activity observed in PD participants when relying on somatosensory and visual inputs highlights the need for further investigation into the neural mechanisms underlying postural control in this population. Future studies are encouraged to build on this foundation, exploring the clinical implications of sensory reweighting and cortical activity changes in PD for improving balance and reducing fall risk. ETHICS STATEMENT The research involving human participants underwent a review and received approval from the Institutional Review Board (IRB) at the University of Kansas Medical Center. All participants provided their explicit written consent to take part in this study. SOURCES OF FUNDING This study was funded in part by the Mabel A. Woodyard Fellowship in Neurodegenerative Disorders (M.S.). M.S. and T.B. received support from the NIH T32 HD057850 Kansas University Training Program in Neurological and Rehabilitation Sciences. DECLARATION OF COMPETING INTEREST There are no conflicts of interest to report by any of the authors. Recommended articles DATA AVAILABILITY * Authors will make available all raw data supporting their conclusions without undue delay. 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