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39 - Current and Emerging Technologies for Supporting Successful Aging

from Part V - Later Life and Interventions

Published online by Cambridge University Press:  28 May 2020

Ayanna K. Thomas
Affiliation:
Tufts University, Massachusetts
Angela Gutchess
Affiliation:
Brandeis University, Massachusetts
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Summary

Successful aging can be generally defined as minimizing disabilities, maintaining functional capacity, and supporting an engaged lifestyle. Given world population changes, this concept is of increasing importance. Technologies have become an integral part of daily life across a range of domains and have potential to support older adults. However, for that potential to be met, the technology must be designed with consideration for older adults’ capabilities, limitations, motivations to use technological support, and opinions regarding the role of technology in their lives. In this context, we review the theoretical background relevant to successful aging and technology support. Moreover, the technology should not impose cognitive demands but should augment or enhance cognitive function. We present older adult personas to highlight how current and emerging technologies can assist aging individuals in meeting their diverse needs and reaching their goals. We provide considerations and future research directions to guide technology design and promote successful aging.

Type
Chapter
Information
The Cambridge Handbook of Cognitive Aging
A Life Course Perspective
, pp. 717 - 736
Publisher: Cambridge University Press
Print publication year: 2020

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