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DOI :10.26650/acin.1068576   IUP :10.26650/acin.1068576    Tam Metin (PDF)

Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları

Betül AkalınMehmet Beşir Demirbaş

Teknoloji dünyası hızlı bir gelişim süreci içerisindedir. Bu süreçte birçok alana uyarlanan teknoloji ve beraberinde getirdiği yapay zekâ özellikle sağlık alanında oldukça kullanışlı hale gelmiştir. Bu kapsamda yapılan çalışma, sağlığın bir alt dalı olan rehabilitasyon hizmetlerinde yaşanan teknolojik gelişmeler ile yapay zekanın hasta ve sağlık profesyonellerine ne gibi yararlar sağladığına sağlık yönetimi bakış açısıyla odaklanmaktadır. Yapılan çalışma sonucunda rehabilitasyon sürecinde yapay zekâ kullanımının yönetim açısından zamansal, mekânsal ve maddi birçok yarar sağlamasının yanı sıra sağlık hizmetlerinde kalite ve verimliliği arttırdığı görülmüştür. Bununla beraber, yapay zekâ uygulamaları hastalara evde rehabilitasyon imkânı sunarak bireyi sosyal hayata adapte etmekte de etkilidir. Rehabilitasyon hizmetlerinde yapay zekâ kullanımı ile sağlık hizmet sunucusu ve hasta için tedavinin zaman, yoğunluk, devamlılık, hız gibi değişkenlerin esnek bir biçimde yapılandırılmasının sağlanması, güvenilir ve geçerli kullanıcı algılama donanımı ile objektif veri katkısı, gerçek zamanlı geribildirim sağlanması, gerçek yaşam simülasyonu ile aktivite edilmiş eğitim kolaylığı sunması ve rehabilitasyon sürecinde hasta ile fizyoterapistin olası tükenmişliğini azaltması mümkün olacaktır.

DOI :10.26650/acin.1068576   IUP :10.26650/acin.1068576    Tam Metin (PDF)

Artificial Intelligence Applications in Rehabilitation Services

Betül AkalınMehmet Beşir Demirbaş

The world of technology is in a rapid development process. In this process, technology has adapted to many areas, and the artificial intelligence it brings with it has become particularly useful in the field of health. The study focuses on technological developments in rehabilitation services, which are a subbranch of health, and on the health management perspective of how AI benefits patients and health professionals. The study found that the use of artificial intelligence in the rehabilitation process has provided many benefits in terms of management, temporal, spatial and material, as well as improved quality and efficiency in health care. However, artificial intelligence practices are also effective in adapting the individual to social life by providing home rehabilitation to patients. The use of artificial intelligence in rehabilitation services will provide flexible structuring of variables such as time, intensity, continuity and speed of treatment for the healthcare provider and the patient, objective data contribution with reliable and valid user detection hardware, real-time feedback, and real-life simulation. It will be possible to provide ease of education and reduce the possible burnout of the patient and physiotherapist during the rehabilitation process.


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Atıflar

Biçimlendirilmiş bir atıfı kopyalayıp yapıştırın veya seçtiğiniz biçimde dışa aktarmak için seçeneklerden birini kullanın


DIŞA AKTAR



APA

Akalın, B., & Demirbaş, M.B. (2022). Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları. Acta Infologica, 6(2), 141-161. https://doi.org/10.26650/acin.1068576


AMA

Akalın B, Demirbaş M B. Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları. Acta Infologica. 2022;6(2):141-161. https://doi.org/10.26650/acin.1068576


ABNT

Akalın, B.; Demirbaş, M.B. Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları. Acta Infologica, [Publisher Location], v. 6, n. 2, p. 141-161, 2022.


Chicago: Author-Date Style

Akalın, Betül, and Mehmet Beşir Demirbaş. 2022. “Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları.” Acta Infologica 6, no. 2: 141-161. https://doi.org/10.26650/acin.1068576


Chicago: Humanities Style

Akalın, Betül, and Mehmet Beşir Demirbaş. Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları.” Acta Infologica 6, no. 2 (Apr. 2024): 141-161. https://doi.org/10.26650/acin.1068576


Harvard: Australian Style

Akalın, B & Demirbaş, MB 2022, 'Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları', Acta Infologica, vol. 6, no. 2, pp. 141-161, viewed 19 Apr. 2024, https://doi.org/10.26650/acin.1068576


Harvard: Author-Date Style

Akalın, B. and Demirbaş, M.B. (2022) ‘Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları’, Acta Infologica, 6(2), pp. 141-161. https://doi.org/10.26650/acin.1068576 (19 Apr. 2024).


MLA

Akalın, Betül, and Mehmet Beşir Demirbaş. Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları.” Acta Infologica, vol. 6, no. 2, 2022, pp. 141-161. [Database Container], https://doi.org/10.26650/acin.1068576


Vancouver

Akalın B, Demirbaş MB. Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları. Acta Infologica [Internet]. 19 Apr. 2024 [cited 19 Apr. 2024];6(2):141-161. Available from: https://doi.org/10.26650/acin.1068576 doi: 10.26650/acin.1068576


ISNAD

Akalın, Betül - Demirbaş, MehmetBeşir. Rehabilitasyon Hizmetlerinde Yapay Zekâ Uygulamaları”. Acta Infologica 6/2 (Apr. 2024): 141-161. https://doi.org/10.26650/acin.1068576



ZAMAN ÇİZELGESİ


Gönderim05.02.2022
Kabul18.08.2022
Çevrimiçi Yayınlanma05.09.2022

LİSANS


Attribution-NonCommercial (CC BY-NC)

This license lets others remix, tweak, and build upon your work non-commercially, and although their new works must also acknowledge you and be non-commercial, they don’t have to license their derivative works on the same terms.


PAYLAŞ




İstanbul Üniversitesi Yayınları, uluslararası yayıncılık standartları ve etiğine uygun olarak, yüksek kalitede bilimsel dergi ve kitapların yayınlanmasıyla giderek artan bilimsel bilginin yayılmasına katkıda bulunmayı amaçlamaktadır. İstanbul Üniversitesi Yayınları açık erişimli, ticari olmayan, bilimsel yayıncılığı takip etmektedir.