作者
Georgios Papagiannis, Αthanasios Triantafyllou, Konstantina G Yiannopoulou, George Georgoudis, Maria Kyriakidou, Panagiotis Gkrilias, Apostolos Z Skouras, Xhoi Bega, Dimitrios Stasinopoulos, George Matsopoulos, Pantelis Syringas, Nikolaos Tselikas, Orestis Zestas, Vassiliki Potsika, Athanasios Pardalis, Christoforos Papaioannou, Vasilios Protopappas, Nikolas Malizos, Nikolaos Tachos, Dimitrios I Fotiadis
发表日期
2024/5/8
期刊
Scientific Reports
卷号
14
期号
1
页码范围
10598
出版商
Nature Publishing Group UK
简介
A popular and widely suggested measure for assessing unilateral hand motor skills in stroke patients is the box and block test (BBT). Our study aimed to create an augmented reality enhanced version of the BBT (AR-BBT) and evaluate its correlation to the original BBT for stroke patients. Following G-power analysis, clinical examination, and inclusion–exclusion criteria, 31 stroke patients were included in this study. AR-BBT was developed using the Open Source Computer Vision Library (OpenCV). The MediaPipe's hand tracking library uses a palm and a hand landmark machine learning model to detect and track hands. A computer and a depth camera were employed in the clinical evaluation of AR-BBT following the principles of traditional BBT. A strong correlation was achieved between the number of blocks moved in the BBT and the AR-BBT on the hemiplegic side (Pearson correlation = 0.918) and a positive …
学术搜索中的文章