Emotional Self-Regulation of Individuals with Autism Spectrum Disorders: Smartwatches for Monitoring and Interaction
Abstract
:1. Introduction
1.1. Autism Spectrum Disorders and Emotions
1.1.1. Self-Determination and Executive Dysfunction
1.1.2. Do I Need Assistance?
1.2. Autism Spectrum Disorders and Technology
1.2.1. Acceptance and Social Stigma
1.2.2. The Role of Caregivers and Family
1.3. Autism Spectrum Disorders and Intervention Strategies
Procedures and Media
1.4. From Inward State to Interaction
1.4.1. What Is Inward State?
1.4.2. Wearables as Translators of Inward State
1.4.3. Smartwatches: Towards Acceptance
1.5. Taimun-Watch
1.5.1. The System
1.5.2. Wearable Paradigm
- Standalone apps: they are executed in the smartwatch, and do not need interaction with smartphones, tablets or other supporting devices (e.g., Endomondo for Android Wear or Apple Pay for watchOS)
- Smartphone-dependent apps: they are sold as smartphone apps, but include a smartwatch module to complement the systems (as notification reader, alarms or reminders). They are usually smartphone apps that have been added smartwatch functionality in order to keep in line with the trend of new devices, and they are often called cross-device apps (e.g., Google Keep for Android Wear, iTunes for watchOS)
- Dual apps: they were designed to work together smartphone-smartwatch. None of their halves are able to work as standalone (e.g., PixtoCam for Android Wear, Slopes for WatchOS).
1.5.3. Smartwatch: Assistive Device
1.5.4. Smartphone: Authoring Tool
1.5.5. Self-Regulation Strategies
1.5.6. Use Cases
1.5.7. Contribution
2. Materials and Methods
- (a)
- Study the way that executive dysfunction manifests in the individual.
- (b)
- Analyze the effects of emotional dysregulation on the individual’s behavior.
- (c)
- Analyze the intervention that caregivers used to employ in those cases (if any).
- (d)
- Adapt that intervention, case by case, to the tool’s format.
- (e)
- Test the tool on the individual performing a thorough observation of the effects of the intervention.
- (f)
- Analyze all post-session gathered data.
2.1. Users
- Lack of organization skills
- Unproportioned attention to irrelevant aspects of a given task.
- Difficulty to keep an instruction in mind while inhibiting a problematic response.
- Lack of abstract and conceptual thinking.
- Literality in the comprehension of a given problem.
- Strong difficulties in the change of environment of certain tasks.
- Lack of initiative at problem solving.
- Lack of knowledge transfer between tasks.
- Inclusion of pointless activity between instructions.
2.2. Materials
2.3. Methodology
- Ground truth problem: prior to the experiment, we gathered sensor data from the individuals (wearing the smartwatch), and their caregivers used a smartphone annotator software to report outbursts, temper tantrums and anger episodes. Machine learning from these data, though useful for other purposes, excludes episodes with no visible manifestation. For instance, user A showed episodes of fear and stress that manifested in subtle ways such as slightly paler skin and lip tightening: caregiver’s reports would not have noticed them during the ground truth data gathering.
- Underrepresentation: even if the ground truth data gathering was perfectly accurate, it would contain far fewer samples labeled as “stress-positive” compared to the whole set of samples of time windows where the user is calm and does not need assistance. Accuracy of any classifier built over this kind of data is hindered greatly.
3. Results
- Does the self-regulation assistance from the smartwatch help the user regain a state of calm?
- Is the user able to interact with the device in a way that the assistance is provided and the strategies are completed?
- What level of autonomy can they achieve with the system? Are they able to use it themselves?
3.1. User A
3.2. User B
4. Conclusions
5. Future Work
Acknowledgments
Author Contributions
Conflicts of Interest
Appendix A
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Appendix B
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Self-Regulation Strategy | Implementation |
---|---|
Counting numbers | Sequence of (numbers/picture representation of numbers/picture representation of quantities). It has timeout if the counting is automatic, it does not if the user is intended to touch the screen with each number |
Sitting and relaxing | Sequence of pictograms telling the user to sit and relax |
Grasping a certain object | Sequence of pictograms telling the user to look for the object and grasp it |
Going for a walk | Sequence of pictograms and animated GIFs telling the user to walk or run |
Asking an adult for help | Sequence of pictograms telling the user to look for an adult, combined with other timed strategy meanwhile |
Two-phase breathing | Sequence of pairs of timed pictograms with indications of breathing in and out |
Asking for a hug | Sequence of pictograms telling the user to look for an adult and asking him for a hug, combined with other timed strategy meanwhile |
Looking funny/relaxing pictures | Sequence of such images, with or without timing |
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Torrado, J.C.; Gomez, J.; Montoro, G. Emotional Self-Regulation of Individuals with Autism Spectrum Disorders: Smartwatches for Monitoring and Interaction. Sensors 2017, 17, 1359. https://doi.org/10.3390/s17061359
Torrado JC, Gomez J, Montoro G. Emotional Self-Regulation of Individuals with Autism Spectrum Disorders: Smartwatches for Monitoring and Interaction. Sensors. 2017; 17(6):1359. https://doi.org/10.3390/s17061359
Chicago/Turabian StyleTorrado, Juan C., Javier Gomez, and Germán Montoro. 2017. "Emotional Self-Regulation of Individuals with Autism Spectrum Disorders: Smartwatches for Monitoring and Interaction" Sensors 17, no. 6: 1359. https://doi.org/10.3390/s17061359
APA StyleTorrado, J. C., Gomez, J., & Montoro, G. (2017). Emotional Self-Regulation of Individuals with Autism Spectrum Disorders: Smartwatches for Monitoring and Interaction. Sensors, 17(6), 1359. https://doi.org/10.3390/s17061359