2019
DOI: 10.3390/fi11110231
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A Context-Aware Conversational Agent in the Rehabilitation Domain

Abstract: Conversational agents are reshaping our communication environment and have the potential to inform and persuade in new and effective ways. In this paper, we present the underlying technologies and the theoretical background behind a health-care platform dedicated to supporting medical stuff and individuals with movement disabilities and to providing advanced monitoring functionalities in hospital and home surroundings. The framework implements an intelligent combination of two research areas: (1) sensor- and c… Show more

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Cited by 13 publications
(7 citation statements)
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References 37 publications
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“…Vaidyam et al [18] noted that the mental health field could adopt chatbots in psychiatric treatment with proper approaches. Mavropoulos et al [19] presented a context-aware system framework by combining monitoring and chatbots to benefit ailing patients and assist clinical experts to retrieve information about patients. Griol et al [20] presented a multimodal conversational coach for physical activity training with sensors to provide meaningful coaching and feedback during sessions.…”
Section: Related Workmentioning
confidence: 99%
“…Vaidyam et al [18] noted that the mental health field could adopt chatbots in psychiatric treatment with proper approaches. Mavropoulos et al [19] presented a context-aware system framework by combining monitoring and chatbots to benefit ailing patients and assist clinical experts to retrieve information about patients. Griol et al [20] presented a multimodal conversational coach for physical activity training with sensors to provide meaningful coaching and feedback during sessions.…”
Section: Related Workmentioning
confidence: 99%
“…Cluster 5 contains predominantly CS research papers investigating and proposing solutions for technical challenges in VA application development. Recent work focuses on extensions and improvements for the technologically relatively mature mass-market VAs (e.g., Liciotti et al, 2014 ; Azmandian et al, 2019 ; Jabbar et al, 2019 ; Mavropoulos et al, 2019 ). Some research investigates ways to overcome the technical challenges of VAs in household environments: For example, King et al ( 2017 ) work on more robust speech recognition, and Ito ( 2019 ) proposes an audio watermarking technique to avoid the misdetection of utterances from other VAs in the same room.…”
Section: Thematic Clusters In Recent Va Researchmentioning
confidence: 99%
“…Context-aware conversational agent to support patients with movement disability [30]; Transcription of patient charts at the emergency department [31] Community based screening and risk stratification Screening of cataracts [32] and glaucoma [33] highly image-driven specialty, there still exist large amounts of natural language in day-to-day work, for which NLP is a potential use case to help improve the quality and delivery of ophthalmic care. With population greying and lifestyle conditions such as cardiovascular disease dominating the demographic trend worldwide, ophthalmic conditions such as glaucoma, cataracts, and diabetic retinopathy have likewise increased in prevalence.…”
Section: Deep Learning-based Natural Language Processing In Ophthalmo...mentioning
confidence: 99%
“…In the recent decade, assistive technologies have risen in popularity to support these rehabilitative goals, as well as to provide continuity of care in between clinician visits. For example, a context-aware conversational agent has been developed, using techniques from speech recognition and computer vision, to support patients with movement disabilities, as well as communicate with ailing patients in the hospital and at home [30]. Other applications of speech recognition in healthcare include transcription for radiological reports, and recording of patient charts at the emergency department [31].…”
Section: Deep Learning-based Natural Language Processing In Healthcarementioning
confidence: 99%