Dampak Potensial Penggunaan ChatGPT (Generative Pre-training Transformer)/AI (Artificial Intelligence) untuk Peningkatan Efisiensi Pelayanan dan Edukasi Pasien Diabetes Melitus

Penulis

  • Eric Septian Prawira Program Studi Profesi Dokter, Fakultas Kedokteran Universitas Tanjungpura, Pontianak, Indonesia
  • Nurul Hikmah Program Studi Profesi Dokter, Fakultas Kedokteran Universitas Tanjungpura, Pontianak, Indonesia

DOI:

https://doi.org/10.55175/cdk.v51i10.1259

Kata Kunci:

ChatGPT, diabetes melitus, edukasi, kecerdasan buatan

Abstrak

ChatGPT (generative pre-training transformer) merupakan sebuah teknologi kecerdasan buatan dari OpenAI yang berfungsi sebagai chatbot dengan kemampuan percakapan mirip manusia. ChatGPT berpotensi meningkatkan layanan kesehatan, antara lain pelayanan diabetes melitus. Tantangan saat ini adalah faktor-faktor seperti kurangnya sumber daya manusia dan rendahnya kesadaran masyarakat. Integrasi ChatGPT diusulkan untuk meningkatkan efektivitas layanan kesehatan, menawarkan dukungan diagnostik, dan sumber daya pendidikan untuk kesadaran atas masalah diabetes.

Unduhan

Data unduhan belum tersedia.

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Unduhan

Diterbitkan

2024-10-04

Cara Mengutip

Prawira, E. S., & Hikmah, N. (2024). Dampak Potensial Penggunaan ChatGPT (Generative Pre-training Transformer)/AI (Artificial Intelligence) untuk Peningkatan Efisiensi Pelayanan dan Edukasi Pasien Diabetes Melitus. Cermin Dunia Kedokteran, 51(10), 601–604. https://doi.org/10.55175/cdk.v51i10.1259

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