Journal of Graphics ›› 2026, Vol. 47 ›› Issue (3): 607-615.DOI: 10.11996/JG.j.2095-302X.2026030607
• Computer Graphics and Virtual Reality • Previous Articles Next Articles
WANG Kun1(
), LI Yifan1, TIAN Hongliang2, ZHU Weiguang1, HUANG Yaning1
Received:2025-10-29
Accepted:2026-03-10
Online:2026-06-30
Published:2026-06-30
Contact:
WANG Kun
Supported by:CLC Number:
WANG Kun, LI Yifan, TIAN Hongliang, ZHU Weiguang, HUANG Yaning. A multi-indicator fusion digital-twin evaluation method oriented to FMA-UE[J]. Journal of Graphics, 2026, 47(3): 607-615.
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URL: http://www.txxb.com.cn/EN/10.11996/JG.j.2095-302X.2026030607
Fig. 3 Digital twin mapping effect and sensor layout ((a) Node placement on the virtual model; (b) Actual wearing configuration and axis orientation illustration)
Fig. 4 Correspondence between the DOFs of upper limb joints and the axes of euler angles ((a) Shoulder joint movement; (b) Forearm movement; (c) Elbow joint movement; (d) Wrist joint movement)
| 指标 | 符号 | 数据来源 | 关键参数 | 单位/方向 | 临床语义 |
|---|---|---|---|---|---|
| ROM | 目标关节分量 | 关节w | °;↑ | 反映幅度是否达标 | |
| CI | 邻近关节 | 邻近关节n | 无量纲;↓ | 非目标部位代偿现象 | |
| PTM | 关节 | 标准 | 无量纲;↓ | 目标部位是否达到参考位置 | |
| jerk | 目标关节角加速度 | 差分阶次 | 无量纲;↓ | 动作是否平滑流畅 | |
| RS | 目标关节角速度稳定性 | STD | 动作是否波动、停顿 | ||
| CT | 片段起止ts,te | vth,tmin | s;↓ | 起始到终止的持续时间 |
Table 1 Feature sequence indices and associated information
| 指标 | 符号 | 数据来源 | 关键参数 | 单位/方向 | 临床语义 |
|---|---|---|---|---|---|
| ROM | 目标关节分量 | 关节w | °;↑ | 反映幅度是否达标 | |
| CI | 邻近关节 | 邻近关节n | 无量纲;↓ | 非目标部位代偿现象 | |
| PTM | 关节 | 标准 | 无量纲;↓ | 目标部位是否达到参考位置 | |
| jerk | 目标关节角加速度 | 差分阶次 | 无量纲;↓ | 动作是否平滑流畅 | |
| RS | 目标关节角速度稳定性 | STD | 动作是否波动、停顿 | ||
| CT | 片段起止ts,te | vth,tmin | s;↓ | 起始到终止的持续时间 |
| 编号 | 动作类别 | 评分项 | 康复师评分判断逻辑 | 特征指标 | 监测传感器 |
|---|---|---|---|---|---|
| S1 | 屈肌协同运动 | 肩后缩 | 动作幅度是否到位,是否有躯干代偿 | ROM,CI | P3,P5,P7 |
| S2 | 肩上提 | 是否能顺利提肩,是否伴随肩胛代偿或躯干偏移 | ROM,CI | P3,P5,P6,P7 | |
| S3 | 肩外展 | 外展角度是否达标,是否达到预设空间位置 | ROM,PTM | P3,P5,P6,P7 | |
| S4 | 肩外旋 | 是否能自然外旋,肘部或肩部是否代偿 | ROM,CI | P2,P3,P7 | |
| S5 | 肘屈曲 | 屈肘幅度是否足够,是否过快或不稳定 | ROM,CT,Jerk | P2,P3,P7 | |
| S6 | 前臂旋后 | 是否能完成充分旋后,手部位置是否准确 | ROM,PTM | P2,P3,P5,P7 |
Table 2 Scoring items and feature assignment of each movement in the DFRA model
| 编号 | 动作类别 | 评分项 | 康复师评分判断逻辑 | 特征指标 | 监测传感器 |
|---|---|---|---|---|---|
| S1 | 屈肌协同运动 | 肩后缩 | 动作幅度是否到位,是否有躯干代偿 | ROM,CI | P3,P5,P7 |
| S2 | 肩上提 | 是否能顺利提肩,是否伴随肩胛代偿或躯干偏移 | ROM,CI | P3,P5,P6,P7 | |
| S3 | 肩外展 | 外展角度是否达标,是否达到预设空间位置 | ROM,PTM | P3,P5,P6,P7 | |
| S4 | 肩外旋 | 是否能自然外旋,肘部或肩部是否代偿 | ROM,CI | P2,P3,P7 | |
| S5 | 肘屈曲 | 屈肘幅度是否足够,是否过快或不稳定 | ROM,CT,Jerk | P2,P3,P7 | |
| S6 | 前臂旋后 | 是否能完成充分旋后,手部位置是否准确 | ROM,PTM | P2,P3,P5,P7 |
Fig. 5 Human-computer interaction interface of the system ((a) Home interface; (b) Main interface; (c) Assessment interface; (d) Data management interface)
| 编号 | 动作名称 | 涉及关节 | 次数 | 时间 | 测试角度 |
|---|---|---|---|---|---|
| A1 | 腕背伸 | 腕关节 | 20 | 3 s | 0°~60° |
| A2 | 肘屈曲 | 肘关节 | 0°~90° | ||
| A3 | 肩外展 | 肩关节 | 0°~90° | ||
| A4 | 肩前屈 | 肩关节 | 0°~90° |
Table 3 Test movements and parameters
| 编号 | 动作名称 | 涉及关节 | 次数 | 时间 | 测试角度 |
|---|---|---|---|---|---|
| A1 | 腕背伸 | 腕关节 | 20 | 3 s | 0°~60° |
| A2 | 肘屈曲 | 肘关节 | 0°~90° | ||
| A3 | 肩外展 | 肩关节 | 0°~90° | ||
| A4 | 肩前屈 | 肩关节 | 0°~90° |
| 编号 | MAE(均值±SD) | RMSE | P95 | <3°比例 |
|---|---|---|---|---|
| A1 | 1.74±0.93 | 1.971 | 2.852 | 97.5 % |
| A2 | 1.97±0.90 | 2.160 | 3.232 | 93.8 % |
| A3 | 1.80±0.84 | 1.986 | 2.902 | 96.2 % |
| A4 | 1.78±0.99 | 2.032 | 3.314 | 92.5 % |
Table 4 Accuracy statistics by movements
| 编号 | MAE(均值±SD) | RMSE | P95 | <3°比例 |
|---|---|---|---|---|
| A1 | 1.74±0.93 | 1.971 | 2.852 | 97.5 % |
| A2 | 1.97±0.90 | 2.160 | 3.232 | 93.8 % |
| A3 | 1.80±0.84 | 1.986 | 2.902 | 96.2 % |
| A4 | 1.78±0.99 | 2.032 | 3.314 | 92.5 % |
| 变量 | 统计 |
|---|---|
| 样本量 | 30 |
| 年龄/岁 | 50.9±9.0 |
| 性别 | 男18(60.0%);女12(40.0%) |
| 患侧 | 左16(53.3%);右14(46.7%) |
| 评分项 | 14项;23点 |
| 评估顺序 | 先系统15;先人工15; |
Table 5 Baseline characteristics of the participants
| 变量 | 统计 |
|---|---|
| 样本量 | 30 |
| 年龄/岁 | 50.9±9.0 |
| 性别 | 男18(60.0%);女12(40.0%) |
| 患侧 | 左16(53.3%);右14(46.7%) |
| 评分项 | 14项;23点 |
| 评估顺序 | 先系统15;先人工15; |
| 项目 | M | SD |
|---|---|---|
| 1. 我觉得我会经常使用该系统 | 3.7 | 0.8 |
| 2. 我觉得该系统的功能过于复杂,使用起来不够容易* | 2.3 | 1.0 |
| 3. 我觉得该系统在使用上是易于使用的 | 4.0 | 0.7 |
| 4. 我觉得我在使用该系统之前需要先花很多时间学习才能够熟练操作* | 2.5 | 0.9 |
| 5. 我觉得该系统的各种功能集成得很好,各部分之间交互顺畅 | 3.8 | 0.8 |
| 6. 我觉得该系统内的界面非常混乱,不够直观* | 2.2 | 1.1 |
| 7. 我相信大多数人在第一次接触该系统时能够很快学会如何使用 | 3.9 | 0.6 |
| 8. 我在使用该系统时会感到非常尴尬或不知所措* | 2.1 | 1.0 |
| 9. 我觉得该系统的各项功能是一体化的,使用过程没有不连贯的地方 | 3.9 | 0.7 |
| 10. 我觉得需要在使用该系统时有很多 额外的技术支持* | 2.4 | 0.9 |
| SUS 总分(0~100) | 74.0 | 8.5 |
Table 6 Scores for each item of the system usability scale (n=30)
| 项目 | M | SD |
|---|---|---|
| 1. 我觉得我会经常使用该系统 | 3.7 | 0.8 |
| 2. 我觉得该系统的功能过于复杂,使用起来不够容易* | 2.3 | 1.0 |
| 3. 我觉得该系统在使用上是易于使用的 | 4.0 | 0.7 |
| 4. 我觉得我在使用该系统之前需要先花很多时间学习才能够熟练操作* | 2.5 | 0.9 |
| 5. 我觉得该系统的各种功能集成得很好,各部分之间交互顺畅 | 3.8 | 0.8 |
| 6. 我觉得该系统内的界面非常混乱,不够直观* | 2.2 | 1.1 |
| 7. 我相信大多数人在第一次接触该系统时能够很快学会如何使用 | 3.9 | 0.6 |
| 8. 我在使用该系统时会感到非常尴尬或不知所措* | 2.1 | 1.0 |
| 9. 我觉得该系统的各项功能是一体化的,使用过程没有不连贯的地方 | 3.9 | 0.7 |
| 10. 我觉得需要在使用该系统时有很多 额外的技术支持* | 2.4 | 0.9 |
| SUS 总分(0~100) | 74.0 | 8.5 |
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