Deep Learning-Based Subtask Segmentation of Timed Up-and-Go Test Using RGB-D Cameras

被引:1
作者
Choi, Yoonjeong [1 ]
Bae, Yoosung [1 ]
Cha, Baekdong [1 ]
Ryu, Jeha [1 ]
机构
[1] Gwangju Inst Sci & Technol GIST, Sch Integrated Technol, Gwangju 61005, South Korea
关键词
timed up-and-go test; TUG subtask segmentation; deep learning; temporal convolutional network; FUNCTIONAL MOBILITY; OLDER-ADULTS; FRAILTY; PEOPLE; KINECT; FALLS;
D O I
10.3390/s22176323
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
The timed up-and-go (TUG) test is an efficient way to evaluate an individual's basic functional mobility, such as standing up, walking, turning around, and sitting back. The total completion time of the TUG test is a metric indicating an individual's overall mobility. Moreover, the fine-grained consumption time of the individual subtasks in the TUG test may provide important clinical information, such as elapsed time and speed of each TUG subtask, which may not only assist professionals in clinical interventions but also distinguish the functional recovery of patients. To perform more accurate, efficient, robust, and objective tests, this paper proposes a novel deep learning-based subtask segmentation of the TUG test using a dilated temporal convolutional network with a single RGB-D camera. Evaluation with three different subject groups (healthy young, healthy adult, stroke patients) showed that the proposed method demonstrated better generality and achieved a significantly higher and more robust performance (healthy young = 95.458%, healthy adult = 94.525%, stroke = 93.578%) than the existing rule-based and artificial neural network-based subtask segmentation methods. Additionally, the results indicated that the input from the pelvis alone achieved the best accuracy among many other single inputs or combinations of inputs, which allows a real-time inference (approximately 15 Hz) in edge devices, such as smartphones.
引用
收藏
页数:23
相关论文
共 45 条
[1]  
Alin-Ionut P., 2017, P IEEE C COMPUTER VI
[2]   Performances on the Timed Up and Go Test and subtasks between fallers and non-fallers in older adults with cognitive impairment [J].
Ansai, Juliana Hotta ;
de Andrade, Larissa Pires ;
Nakagawa, Theresa Helissa ;
Rebelatto, Jose Rubens .
ARQUIVOS DE NEURO-PSIQUIATRIA, 2018, 76 (06) :381-386
[3]  
Aschneider F.B., 2019, J MECH ENG BIOMECH, V4, P45, DOI [10.24243/jmeb/4.2.223, DOI 10.24243/JMEB/4.2.223]
[4]   Risk of Falling in a Timed Up and Go Test Using an UWB Radar and an Instrumented Insole [J].
Ayena, Johannes C. ;
Chioukh, Lydia ;
Otis, Martin J. -D. ;
Deslandes, Dominic .
SENSORS, 2021, 21 (03) :1-23
[5]  
Bai S., 2018, 6 INT C LEARN REPR V
[6]   Predicting Advanced Balance Ability and Mobility with an Instrumented Timed Up and Go Test [J].
Bergquist, Ronny ;
Nerz, Corinna ;
Taraldsen, Kristin ;
Mellone, Sabato ;
Ihlen, Espen A. F. ;
Vereijken, Beatrix ;
Helbostad, Jorunn L. ;
Becker, Clemens ;
Mikolaizak, A. Stefanie .
SENSORS, 2020, 20 (17) :1-14
[7]   Convergent Validity of a Wearable Sensor System for Measuring Sub-Task Performance during the Timed Up-and-Go Test [J].
Beyea, James ;
McGibbon, Chris A. ;
Sexton, Andrew ;
Noble, Jeremy ;
O'Connell, Colleen .
SENSORS, 2017, 17 (04)
[8]   The Component Timed-Up-and-Go test: the utility and psychometric properties of using a mobile application to determine prosthetic mobility in people with lower limb amputations [J].
Clemens, Sheila M. ;
Gailey, Robert S. ;
Bennett, Christopher L. ;
Pasquina, Paul F. ;
Kirk-Sanchez, Neva J. ;
Gaunaurd, Ignacio A. .
CLINICAL REHABILITATION, 2018, 32 (03) :388-397
[9]   Clinical frailty syndrome assessment using inertial sensors embedded in smartphones [J].
Galan-Mercant, A. ;
Cuesta-Vargas, A. I. .
PHYSIOLOGICAL MEASUREMENT, 2015, 36 (09) :1929-1942
[10]   The timed up and go test for lumbar degenerative disc disease [J].
Gautschi, Oliver P. ;
Corniola, Marco V. ;
Joswig, Holger ;
Smoll, Nicolas R. ;
Chau, Ivan ;
Jucker, Dario ;
Stienen, Martin N. .
JOURNAL OF CLINICAL NEUROSCIENCE, 2015, 22 (12) :1943-1948