| Literature DB >> 33228709 |
Qinyin Qiu1, Amanda Cronce2, Jigna Patel3,2, Gerard G Fluet3, Ashley J Mont2, Alma S Merians3, Sergei V Adamovich3,2.
Abstract
BACKGROUND: After stroke, sustained hand rehabilitation training is required for continuous improvement and maintenance of distal function.Entities:
Keywords: Serious gaming; Stroke; Telerehabilitation; Upper extremity; Virtual reality
Mesh:
Year: 2020 PMID: 33228709 PMCID: PMC7685660 DOI: 10.1186/s12984-020-00789-w
Source DB: PubMed Journal: J Neuroeng Rehabil ISSN: 1743-0003 Impact factor: 4.262
Fig. 1HoVRS sub-systems diagram and types of arm positioning. a HoVRS sub-systems diagram: The client-based platform provides hand and arm training. A cloud-based data server provides secure data streaming, analysis and presenting. Therapists can access patients’ progress through web portal. Two different types of arm positioning above LMC: b Passive arm support. c Hip wedge
Fig. 2An example of an online algorithm in virtual piano game. An online algorithm is modifying the difficulty levels for the virtual piano game by using the real-time assessment of finger individuation during the piano game (see text for details). The objective for the algorithm is to allow the participants with various levels of finger impairment to successfully press the virtual piano keys while at the same time keeping the activity sufficiently challenging
Fig. 3Examples of performance measures captured by HoVRS during training of a representative subject. a System weekly usage. The black arrow in panel a indicates a new scheme for hand positioning that was introduced by the therapist between week 15 and week 16. That allowed for more successful gameplay, resulting in a substantial increase in adherence. b Gradual increase in the range of affected hand opening/closing over the course of training. c Modulation of wrist pitch angle during one session of Pitch Flying game
Clinical and demographic description of the subjects
| ID | Age | Gender | Time Since stroke (months) | Hemiplegic side | Initial UEFMA | Final UEFMA | Living situation | Computer skills | Training min/week |
|---|---|---|---|---|---|---|---|---|---|
| S1 | 67 | M | 28 | Right | 40 | 45 | House | Good | 46 |
| S2 | 45 | F | 192 | Right | 59 | 63 | Town Home | Basic | 88 |
| S3 | 55 | M | 204 | Right | 47 | 51 | Town Home | Basic | 168 |
| S4 | 82 | M | 84 | Right | 49 | 54 | House | Basic | 100 |
| S5 | 56 | M | 36 | Right | 22 | 29 | House | Advanced | 46 |
| S6 | 57 | M | 18 | Left | 56 | 58 | House | Good | 58 |
| S7 | 66 | M | 30 | Left | 42 | 47 | House | Advanced | 37 |
| S8 | 62 | M | 60 | Left | 40 | 45 | House | Advanced | 37 |
| S9 | 47 | M | 12 | Left | 55 | 56 | House | Good | 66 |
| S10 | 50 | M | 12 | Left | 15 | 21 | Apartment | Basic | 50 |
| S11 | 35 | M | 6 | Left | 30 | 38 | House | Expert | 25 |
| S12 | 63 | M | 6 | Right | 46 | 51 | House | Good | 134 |
| S13 | 45 | M | 6 | Left | 54 | 55 | Apartment | Basic | 70 |
| S14 | 48 | F | 84 | Right | 36 | 45 | Group Home | Good | 75 |
| S15 | 72 | M | 6 | Right | 39 | 50 | Basement | Advanced | 32 |
Fig. 4Estimation plots of Fugl-Meyer Assessment. The small circles represent the individual subjects. The blue and orange circles with error bars represent group mean of pre and post UEFMA with their 95% confidence. This is depicted on the axis on the left. The difference between the group means is depicted on the “difference axis” on the right. The 0 point of this axis is based on the group mean of pre UEFMA test. The filled triangle shows the difference between pre and post UEFMA scores. The shaded curve shows the entire distribution of expected sampling error for the difference between the means
Fig. 5Kinematic outcomes and correlation result. Left panel shows the mean (SD) percentage changes in the range and accuracy of three movements that were used to control the games. After 3 months of intervention, Hand Open, Wrist Pitch and Roll range increased. Accuracy for each movement, which was calculated as the root mean square error, improved. Right panel illustrates the significant relationship between HOA, HOR and UEFMA. Notable is subject S10, the only outlier in this regression model, who also had the lowest baseline UEFMA score in our sample