A-168 Neural Network for the Virtual Environment Grocery Store for Detection of Neurocognitive Impairment among Older Adults

2021 ◽  
Vol 36 (6) ◽  
pp. 1223-1223
Author(s):  
Michael J Persin ◽  
Danielle Hardesty ◽  
Diamond C Lee ◽  
Nancy Tran ◽  
Cameron Bayer ◽  
...  

Abstract Objective Virtual reality-based neuropsychological tests offer the ability to capture a variety of data while enabling standardized administration. The purpose of this study was to create an artificial neural network to examine the predictability of the Virtual Environment Grocery Store (VEGS) for neurocognitive impairment among older adults. Method Older adults (N = 71; age 55–90, M = 74.38, SD = 8.32; 13 with a neurocognitive diagnosis and 58 without) completed the VEGS as part of a neuropsychological evaluation. Results The multilayer perceptron found a model which had a 3.4% error rate. The VEGS sum of the learning trials was the most important predictor of this model (i = 0.45). Conclusion Results suggest that the VEGS is sensitive to detecting neurocognitive impairment among older adults, with the sum of the learning trials making a substantial contribution to the model’s accuracy.

2021 ◽  
Vol 36 (6) ◽  
pp. 1052-1052
Author(s):  
Danielle R Hardesty ◽  
Carmen Chek ◽  
Michael Persin ◽  
Emma Barr ◽  
Hannah Sasser ◽  
...  

Abstract Background/Problem Neuropsychologists are often asked to evaluate patients’ functional capacities, yet traditional neuropsychological tests have limited correspondence with real-world outcomes. The Virtual Environment Grocery store (VEGS) is a virtual environment that stimulates shopping tasks. Previous research has found support for the construct validity of the VEGS among older adults (Parsons & Barnett, 2017); however, no extant research has examined relationships between the VEGS and adaptive functioning among older adults. Method Older adults (n = 30; age 43–90 M = 77.09, SD = 12.94) were administered the Virtual Reality Grocery Store (VEGS) and the Texas Functional Living Scale (TFLS) and completed the Instruments of Daily Activities (IADLS) Questionnaire. Results VEGS variables explained 39.6% of the variance in self-reported adaptive functioning (I, e., the IADLS) and 60.0% of the variance in performance-based adaptive functioning (i.e., the TFLS). Conclusion These results suggest that the VEGS is a predictor of adaptive functioning – particularly when measured with a performance-based measure – among older adults.


2021 ◽  
pp. 004051752098752
Author(s):  
Zhujun Wang ◽  
Jianping Wang ◽  
Xianyi Zeng ◽  
Shukla Sharma ◽  
Yingmei Xing ◽  
...  

This paper proposes a probabilistic neural network-based model for predicting and controlling garment fit levels from garment ease allowances, digital pressures, and fabric mechanical properties measured in a three-dimensional (3D) virtual environment. The predicted fit levels include both comprehensive and local fit levels. The model was set up by learning from data measured during a series of virtual (input data) and real try-on (output data) experiments and then simulated to predict different garment styles, for example, loose and tight fits. Finally, the performance of the proposed model was compared with the Linear Regression model, the Support Vector Machine model, the Radial Basis Function Artificial Neural Network model, and the Back Propagation Artificial Neural Network model. The results of the comparison revealed that the prediction accuracy of the proposed model was superior to those of the other models. Furthermore, we put forward a new interactive garment design process in a 3D virtual environment based on the proposed model. Based on interactions between real pattern adjustments and virtual garment demonstrations, this new design process will enable designers to rapidly, accurately, and automatically predict relevant garment fit levels without undertaking expensive and time-consuming real try-ons.


2021 ◽  
Vol 10 (10) ◽  
pp. 2133
Author(s):  
Xuangao Wu ◽  
Sunmin Park

Background: Skeletal muscle mass (SMM) and fat mass (FM) are essentially required for health and quality of life in older adults. Objective: To generate the best SMM and FM prediction models using machine learning models incorporating socioeconomic, lifestyle, and biochemical parameters and the urban hospital-based Ansan/Ansung cohort, and to determine relations between SMM and FM and metabolic syndrome and its components in this cohort. Methods: SMM and FM data measured using an Inbody 4.0 unit in 90% of Ansan/Ansung cohort participants were used to train seven machine learning algorithms. The ten most essential predictors from 1411 variables were selected by: (1) Manually filtering out 48 variables, (2) generating best models by random grid mode in a training set, and (3) comparing the accuracy of the models in a test set. The seven trained models’ accuracy was evaluated using mean-square errors (MSE), mean absolute errors (MAE), and R² values in 10% of the test set. SMM and FM of the 31,025 participants in the Ansan/Ansung cohort were predicted using the best prediction models (XGBoost for SMM and artificial neural network for FM). Metabolic syndrome and its components were compared between four groups categorized by 50 percentiles of predicted SMM and FM values in the cohort. Results: The best prediction models for SMM and FM were constructed using XGBoost (R2 = 0.82) and artificial neural network (ANN; R2 = 0.89) algorithms, respectively; both models had a low MSE. Serum platelet concentrations and GFR were identified as new biomarkers of SMM, and serum platelet and bilirubin concentrations were found to predict FM. Predicted SMM and FM values were significantly and positively correlated with grip strength (r = 0.726) and BMI (r = 0.915, p < 0.05), respectively. Grip strengths in the high-SMM groups of both genders were significantly higher than in low-SMM groups (p < 0.05), and blood glucose and hemoglobin A1c in high-FM groups were higher than in low-FM groups for both genders (p < 0.05). Conclusion: The models generated by XGBoost and ANN algorithms exhibited good accuracy for estimating SMM and FM, respectively. The prediction models take into account the actual clinical use since they included a small number of required features, and the features can be obtained in outpatients. SMM and FM predicted using the two models well represented the risk of low SMM and high fat in a clinical setting.


2008 ◽  
Vol 17 (1) ◽  
pp. 1-16 ◽  
Author(s):  
Young Youn Kim ◽  
Eun Nam Kim ◽  
Min Jae Park ◽  
Kwang Suk Park ◽  
Hee Dong Ko ◽  
...  

We examined the efficacy of a new method to reduce cybersickness. A real-time cybersickness detection system was constructed with an artificial neural network whose inputs were the electrophysiological signals of subjects in a virtual environment. The system was equipped with a means of feedback; it temporarily provided a narrow field of view and a message about navigation speed deceleration, both of which acted as feedback outputs whenever electrophysiological inputs signaled the occurrence of cybersickness. This system is named cybersickness relief virtual environment (CRVE). Forty-seven subjects experienced the VR for 9.5 min twice in CRVE and non-CRVE conditions. The results indicated that the frequency of cybersickness and simulator sickness questionnaire scores were lower in the CRVE condition than in the non-CRVE condition. Subjects also showed a higher net increase in tachyarrhythmia from the baseline period to the virtual navigation period in the CRVE condition compared to the non-CRVE condition. These results suggest that a CRVE condition may be a countermeasure against cybersickness.


2000 ◽  
Vol 25 (4) ◽  
pp. 325-325
Author(s):  
J.L.N. Roodenburg ◽  
H.J. Van Staveren ◽  
N.L.P. Van Veen ◽  
O.C. Speelman ◽  
J.M. Nauta ◽  
...  

2004 ◽  
Vol 171 (4S) ◽  
pp. 502-503
Author(s):  
Mohamed A. Gomha ◽  
Khaled Z. Sheir ◽  
Saeed Showky ◽  
Khaled Madbouly ◽  
Emad Elsobky ◽  
...  

1998 ◽  
Vol 49 (7) ◽  
pp. 717-722 ◽  
Author(s):  
M C M de Carvalho ◽  
M S Dougherty ◽  
A S Fowkes ◽  
M R Wardman

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