PEMANFAATAN KECERDASAN BUATAN (AI) DALAM TELEMEDICINE: DARI PERSPEKTIF PROFESIONAL KESEHATAN

Rita Komalasari

Abstract


Untuk pertama kalinya, makalah ini bertujuan untuk mendiskusikan tentang potensi Peran Kecerdasan Buatan (AI) dalam Telemedicine: Dari Perspektif Profesional Kesehatan. Terkait metode studi literatur,  kata kunci kecerdasan buatan awalnya digunakan selama periode pencarian artikel ini. Pencarian mencakup masalah telemedicine dalam tinjauan penalaran berbasis Bukti yang lengkap dan relevan. Hasil penelitian menunjukan bahwa Kecerdasan Buatan (AI) dalam industri medis dapat secara efektif meningkatkan kualitas, efektivitas, dan efisiensi pelayanan rumah sakit. Kesimpulan dari makalah ini menambah pemahaman yang lebih baik tentang bagaimana AI memengaruhi kesehatan dan efektivitas pelayanan medis.

Keywords


Kecerdasan Buatan (AI), industri medis, meningkatkan kualitas, pelayanan rumah sakit.

Full Text:

PDF

References


Ahmed MN, Toor AS, O'Neil K, Friedland D. Cognitive computing and the future of health care cognitive computing and the future of healthcare: the cognitive power of IBM Watson has the potential to transform global personalized medicine. IEEE pulse. 2017 May 16;8(3):4-9.

Al-Samarraie H, Ghazal S, Alzahrani AI, Moody L. Telemedicine in Middle Eastern countries: Progress, barriers, and policy recommendations. International journal of medical informatics. 2020 Sep 1;141:104232.

Arunkumar N, Mohammed MA, Mostafa SA, Ibrahim DA, Rodrigues JJ, de Albuquerque VH. Fully automatic model‐based segmentation and classification approach for MRI brain tumor using artificial neural networks. Concurrency and Computation: Practice and Experience. 2020 Jan 10;32(1):e4962.

Auner GW, Koya SK, Huang C, Broadbent B, Trexler M, Auner Z, Elias A, Mehne KC, Brusatori MA. Applications of Raman spectroscopy in cancer diagnosis. Cancer and Metastasis Reviews. 2018 Dec;37(4):691-717.

Bhattacharya S, Maddikunta PK, Pham QV, Gadekallu TR, Chowdhary CL, Alazab M, Piran MJ. Deep learning and medical image processing for coronavirus (COVID-19) pandemic: A survey. Sustainable cities and society. 2021 Feb 1;65:102589.

Chen M, Decary M. Artificial intelligence in healthcare: An essential guide for health leaders. InHealthcare management forum 2020 Jan (Vol. 33, No. 1, pp. 10-18). Sage CA: Los Angeles, CA: SAGE Publications.

Chitturu S, Lin DY, Sneader K, Tonby O, Woetzel J. Artificial intelligence and Southeast Asia’s future. Singapore Summit. 2017 Sep.

Deng W, Shi Q, Wang M, Zheng B, Ning N. Deep learning-based HCNN and CRF-RRNN model for brain tumor segmentation. IEEE Access. 2020 Jan 15;8:26665-75.

Dodoo JE, Al-Samarraie H, Alzahrani AI. Telemedicine use in Sub-Saharan Africa: Barriers and policy recommendations for Covid-19 and beyond. International Journal of Medical Informatics. 2021 Jul 1;151:104467.

Gashi M, Vuković M, Jekic N, Thalmann S, Holzinger A, Jean-Quartier C, Jeanquartier F. State-of-the-Art Explainability Methods with Focus on Visual Analytics Showcased by Glioma Classification. BioMedInformatics. 2022 Jan 19;2(1):139-58.

Kamal SA, Shafiq M, Kakria P. Investigating acceptance of telemedicine services through an extended technology acceptance model (TAM). Technology in Society. 2020 Feb 1;60:101212.

Kidholm K, Ekeland AG, Jensen LK, Rasmussen J, Pedersen CD, Bowes A, Flottorp SA, Bech M. A model for assessment of telemedicine applications: mast. International journal of technology assessment in health care. 2012 Jan;28(1):44-51.

Liu M, Guan W, Yan J, Hu H. Correlation identification in multimodal weibo via back propagation neural network with genetic algorithm. Journal of Visual Communication and Image Representation. 2019 Apr 1;60:312-8.

Meera R, Anandhan P. A Review On Automatic Detection of Brain Tumor Using Computer Aided Diagnosis System Through MRI. EAI Endorsed Transactions on Energy Web. 2018;5(20).

Moreira MW. Performance Evaluation of Smart Decision Support Systems on Healthcare.

Oh JY, Park YT, Jo EC, Kim SM. Current status and progress of telemedicine in Korea and other countries. Healthcare Informatics Research. 2015 Oct 31;21(4):239-43.

Rundo L, Pirrone R, Vitabile S, Sala E, Gambino O. Recent advances of HCI in decision-making tasks for optimized clinical workflows and precision medicine. Journal of biomedical informatics. 2020 Aug 1;108:103479.

Rahardja U, Hidayanto AN, Hariguna T, Aini Q. Design framework on tertiary education system in Indonesia using blockchain technology. In2019 7th International Conference on Cyber and IT Service Management (CITSM) 2019 Nov 6 (Vol. 7, pp. 1-4). IEEE.

Shi Y, Zhu J, Charles V. Data science and productivity: A bibliometric review of data science applications and approaches in productivity evaluations. Journal of the Operational Research Society. 2020 Dec 11;72(5):975-88.

Salahuddin T, Qidwai U. Computational methods for automated analysis of corneal nerve images: Lessons learned from retinal fundus image analysis. Computers in Biology and Medicine. 2020 Apr 1;119:103666.

Salahuddin T, Qidwai U. Computational methods for automated analysis of corneal nerve images: Lessons learned from retinal fundus image analysis. Computers in Biology and Medicine. 2020 Apr 1;119:103666.

Shanthakumar P, Ganesh Kumar P. Computer aided brain tumor detection system using watershed segmentation techniques. International Journal of Imaging Systems and Technology. 2015 Dec;25(4):297-301.

Shiferaw F, Zolfo M. The role of information communication technology (ICT) towards universal health coverage: the first steps of a telemedicine project in Ethiopia. Global health action. 2012 Dec 1;5(1):15638.

Toğaçar M, Ergen B, Cömert Z. BrainMRNet: Brain tumor detection using magnetic resonance images with a novel convolutional neural network model. Medical hypotheses. 2020 Jan 1;134:109531.

Wu W, Li D, Du J, Gao X, Gu W, Zhao F, Feng X, Yan H. An intelligent diagnosis method of brain MRI tumor segmentation using deep convolutional neural network and SVM algorithm. Computational and Mathematical Methods in Medicine. 2020 Jul 14;2020.

Yuda TK. The limits of healthcare reforms in Indonesia: Interrogating the Dutch colonial legacies’ influence within the logic and principles of welfare. International Journal of Social Welfare. 2022 Apr;31(2):236-47.




DOI: http://dx.doi.org/10.30872/jkm.v9i2.8309

Refbacks

  • There are currently no refbacks.


Copyright (c) 2022 Jurnal Kedokteran Mulawarman

Creative Commons License
Jurnal Kedokteran Mulawarman by Faculty of Medicine Mulawarman University is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.