Smart Health System to Detect Dementia Disorders Using Virtual Reality
Abstract
:1. Introduction
- To use the statistical methods along with VR technology in order to evaluate the possibility of detecting visuospatial and memory deficits in patients who have dementia.
- To use simulated environment that tests two cognitive domains, memory and visuospatial deficits, for diagnosing patients with cognitive impairment.
- To compare the performance of participants who have early and moderately severe dementia, mild cognitive impairment (MCI), and older adults with normal cognitive functioning.
- To collect data from real patients while they performed common everyday tasks in virtual reality.
2. Methods and Materials
2.1. Clinical and Demographic Information
2.2. The Virtual Scenario
- Creating the patient record on the system.
- Starting the first task of testing.
- Calculating the scores.
- Repeating step 2 and step 3 for all tasks.
- Collecting all tasks scores measured in step 3 for all tests.
- Extracting outcome measures.
- Checking the results.
2.2.1. Visuospatial Function
2.2.2. Visual Perception, Spatial Orientation, and Topographical Orientation
- Show video to the patient from start to destination.
- Patient sees the path from start point to destination.
- Start tasks with instructions.
- System checks if participant can navigate in the system.
- System calculates the patient’s path coordinates.
- System displays several questions to measure judgment of direction, which the patient verbally answers; then, the assistant/nurse uses the keyboard to enter the response directly at the same time. The system will check if the participant reaches the final destination.
2.2.3. Visual Memory
- Displays several images.
- Check if the patient remembers any of these images.
2.3. Memory Function
- System asks him/her to repeat three words.
- Check if patient navigates to store.
- Check if patient remembers the previous three words.
2.4. Outcomes Measurements
- Number of times the patient changed direction, the total time it took to arrive to the destination (Time1), and total time it took to finish the visual memory task (Time2) were recorded.
- Patient’s history and medical history including past head injuries or exposure to solvents, diabetes, hypertension, hyperlipidemia, checking if patient has dementia or MCI, type of dementia, stage of dementia, and functional evaluation. Patient’s history will be provided to the system before patient starts the VR test (see Figure 3).
- VR scores includes navigational ability, spatial orientation, memory recall, visual memory correct, and incorrect visual memory (see Figure 5).
3. Result
3.1. Pre-Processing Data
3.2. Statistical Methods
4. Discussion of Results
4.1. Demographics of Clinical and Neuropsychological Assessments
4.2. Memory Recall as Diagnostic Predictors of Dementia and MCI
4.3. Functional Evaluation and Navigational Ability
4.4. Spatial Orientation Performance as Diagnostic Predictors of Dementia and MCI
4.5. Visual Memory
4.6. Visuospatial Function Using Clinical Scores and VR Scores as a Diagnostic Predictor of Dementia and MCI
5. Conclusions
- The limited diagnosis of spatial orientation problems in the clinic—the limitation is due to lack of feasible and proper practical tasks in a clinical setting;
- The assessment must reflect real-world conditions for accurate assessment of functional disability in dementia;
- Diagnosis of dementia consumes time, effort, and high cost, especially in the early stages of the disease.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Kappa Statistic | Agreement |
---|---|
<0.20 | Poor |
<0.40 | Fair |
<0.60 | Moderate |
<0.80 | Good |
to 1 | Very good |
Function/Group | Normal (Mean, Stdv) | MCI (Mean, Stdv) | Dementia Patient (Mean, Stdv) | Kruskal–Wallis H-Test (Normal vs. MCI vs. Dementia) | Hypothesis Result |
---|---|---|---|---|---|
Age (years) | (60, 7.85) | (68.5, 9.34) | (80, 8.08) | --- | --- |
Sex (M/F) | (10:55) | (8:12) | (20:10) | --- | --- |
Level of education | (1, 1) | (1, 1) | (1.5, 1.5) | --- | not significant |
Diabetes | (0.58, 0.49) | (0.74, 0.44) | (0.56, 0.49) | 0.44 | Same Distribution |
Hyperlipemia | (0.17, 0.37) | (0.52, 0.49) | (0.06, 0.24) | <0.001 | Different Distributions (Reject H0) The population median of all the groups are not equal. |
Time-Task 1 (min) | (3.70, 0.79) | (4.02, 0.46) | (4.57, 0.89) | ||
Time-Task 2 (min) | (0.62, 0.43) | (1.26, 0.49) | (1.06, 0.52) | ||
Navigational Ability-VR | (2, 0) | (2, 0) | (1, 0) | ||
Function Evaluation-Clinical | (2,0) | (2,0) | (1,0) | ||
Spatial Orientation-VR | (2.44, 0.98) | (0.90, 0.20) | (0.55, 0.49) | ||
Memory Recall-VR | (2.95, 0.22) | (2.40, 0.49) | (0.61, 0.68) | ||
Memory Recall-Clinical | (2.88, 0.32) | (2.30, 0.64) | (0.61, 0.89) | ||
VR system Scores | (4.78, 0.53) | (3.3, 0.64) | (1.28, 1.36) | ||
Mini-Cog Test-Clinical | (4.53, 0.62) | (3.50, 0.67) | (0.94, 1.22) | ||
Visual Memory Right | (3.77, 0.60) | (2.70, 0.64) | (1.78, 1.58) | ||
Visual Memory Wrong | (0.12, 0.42) | (0.60, 0.80) | (0.89, 0.88) |
Function/Group | All Participants (m/stdv) | Wilcoxon Test (Clinic vs. VR System) | Hypothesis Result | Cohen_Kappa_Score |
---|---|---|---|---|
Mini-Cog Clinical | (3.81, 1.54) | p = 0.860 | Same distribution (fail to reject H0) | 0.93 |
VR System (Scores) | (3.83, 1.58) | |||
Function Evaluation-Clinical | (1.82, 0.377) | p = 1.000 | 1 | |
Navigational ability-VR | (1.82, 0.377) | |||
Three Word Recall-Clinical | (2.43, 0.98) | p = 0.500 | 0.86 | |
Three Word Recall-VR | (2.49, 0.95) | |||
Classification of Clinical | (0.32, 0.62) | p = 0.6 | 0.92 | |
Classification of VR System | (0.25, 0.53) |
Function/Group | All Participants (μ/std) | Friedman Test (Clinical vs. VR vs. Standard Mini-Cog Test) | Hypothesis Result | Cohen Kappa Score |
---|---|---|---|---|
Classification of Clinical diagnosis | (0.32, 0.62) | p = 0.1800923 | Same distribution (fail to reject H0) | 0.90 |
Classification of Standard Mini-Cog Scores | (0.28, 0.58) | |||
Classification of VR Scores | (0.25, 0.53) |
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Bayahya, A.Y.; Alhalabi, W.; AlAmri, S.H. Smart Health System to Detect Dementia Disorders Using Virtual Reality. Healthcare 2021, 9, 810. https://doi.org/10.3390/healthcare9070810
Bayahya AY, Alhalabi W, AlAmri SH. Smart Health System to Detect Dementia Disorders Using Virtual Reality. Healthcare. 2021; 9(7):810. https://doi.org/10.3390/healthcare9070810
Chicago/Turabian StyleBayahya, Areej Y., Wadee Alhalabi, and Sultan H. AlAmri. 2021. "Smart Health System to Detect Dementia Disorders Using Virtual Reality" Healthcare 9, no. 7: 810. https://doi.org/10.3390/healthcare9070810
APA StyleBayahya, A. Y., Alhalabi, W., & AlAmri, S. H. (2021). Smart Health System to Detect Dementia Disorders Using Virtual Reality. Healthcare, 9(7), 810. https://doi.org/10.3390/healthcare9070810