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用于自闭症谱系障碍成年人获取过马路和沿路径行走技能的自然界面和虚拟环境:一项可行性研究。

Natural interfaces and virtual environments for the acquisition of street crossing and path following skills in adults with Autism Spectrum Disorders: a feasibility study.

作者信息

Saiano Mario, Pellegrino Laura, Casadio Maura, Summa Susanna, Garbarino Eleonora, Rossi Valentina, Dall'Agata Daniela, Sanguineti Vittorio

机构信息

Department Informatics, Bioengineering, Robotics and Systems Engineering, University of Genoa, Via Opera Pia 13, 16145, Genoa, Italy.

Department Primary Care, ASL3 Genovese, Genoa, Italy.

出版信息

J Neuroeng Rehabil. 2015 Feb 19;12:17. doi: 10.1186/s12984-015-0010-z.

Abstract

BACKGROUND

Lack of social skills and/or a reduced ability to determine when to use them are common symptoms of Autism Spectrum Disorder (ASD). Here we examine whether an integrated approach based on virtual environments and natural interfaces is effective in teaching safety skills in adults with ASD. We specifically focus on pedestrian skills, namely street crossing with or without traffic lights, and following road signs.

METHODS

Seven adults with ASD explored a virtual environment (VE) representing a city (buildings, sidewalks, streets, squares), which was continuously displayed on a wide screen. A markerless motion capture device recorded the subjects' movements, which were translated into control commands for the VE according to a predefined vocabulary of gestures. The treatment protocol consisted of ten 45-minutes sessions (1 session/week). During a familiarization phase, the participants practiced the vocabulary of gestures. In a subsequent training phase, participants had to follow road signs (to either a police station or a pharmacy) and to cross streets with and without traffic lights. We assessed the performance in both street crossing (number and type of errors) and navigation (walking speed, path length and ability to turn without stopping). To assess their understanding of the practiced skill, before and after treatment subjects had to answer a test questionnaire. To assess transfer of the learned skill to real-life situations, another specific questionnaire was separately administered to both parents/legal guardians and the subjects' personal caregivers.

RESULTS

One subject did not complete the familiarization phase because of problems with depth perception. The six subjects who completed the protocol easily learned the simple body gestures required to interact with the VE. Over sessions they significantly improved their navigation performance, but did not significantly reduce the errors made in street crossing. In the test questionnaire they exhibited no significant reduction in the number of errors. However, both parents and caregivers reported a significant improvement in the subjects' street crossing performance. Their answers were also highly consistent, thus pointing at a significant transfer to real-life behaviors.

CONCLUSIONS

Rehabilitation of adults with ASD mainly focuses on educational interventions that have an impact in their quality of life, which includes safety skills. Our results confirm that interaction with VEs may be effective in facilitating the acquisition of these skills.

摘要

背景

社交技能缺失和/或判断何时运用社交技能的能力下降是自闭症谱系障碍(ASD)的常见症状。在此,我们研究基于虚拟环境和自然界面的综合方法在教导成年ASD患者安全技能方面是否有效。我们特别关注行人技能,即有或没有交通信号灯时过马路以及遵循道路标志。

方法

七名成年ASD患者探索了一个代表城市(建筑物、人行道、街道、广场)的虚拟环境(VE),该环境持续显示在宽屏幕上。一个无标记动作捕捉设备记录受试者的动作,这些动作根据预定义的手势词汇被转换为VE的控制命令。治疗方案包括十节45分钟的课程(每周1节)。在熟悉阶段,参与者练习手势词汇。在随后的训练阶段,参与者必须遵循道路标志(前往警察局或药店),并在有和没有交通信号灯的情况下过马路。我们评估了过马路(错误的数量和类型)和导航(步行速度、路径长度以及不停顿转弯的能力)方面的表现。为了评估他们对所练习技能的理解,治疗前后受试者必须回答一份测试问卷。为了评估所学技能向现实生活情境的迁移,另一份特定问卷分别发放给父母/法定监护人以及受试者的私人护理人员。

结果

一名受试者由于深度感知问题未完成熟悉阶段。完成方案的六名受试者轻松学会了与VE交互所需的简单身体手势。在课程过程中,他们的导航表现显著改善,但过马路时的错误没有显著减少。在测试问卷中,他们的错误数量没有显著减少。然而,父母和护理人员都报告说受试者过马路的表现有显著改善。他们的回答也高度一致,因此表明向现实生活行为有显著迁移。

结论

成年ASD患者的康复主要侧重于对其生活质量有影响的教育干预,其中包括安全技能。我们的结果证实,与VE的交互可能有效地促进这些技能的习得。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/657a/4344805/552d2ffd6fd4/12984_2015_10_Fig1_HTML.jpg

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