إطار مقترح لتطوير عمليات التنبأ في بيئات افتراضية معززة بالذكاء الإصطناعي للمجالات الإدارية والطبية

المؤلفون

DOI:

https://doi.org/10.24086/cuejhss.v10n2y2026.pp27-35

الكلمات المفتاحية:

الذكاء الاصطناعي، النماذج التنبئية، البيئة الأفتراضية، البيانات الطبية، البيانات الادارية

الملخص

تواجه النماذج التقليدية في المجال الاداري والطبي قصوراً في التعامل مع السيناريوهات الديناميكية المعقدة والتنبؤ بالأزمات غير المسبوقة، وذلك لاعتمادها بشكل كبير على البيانات التاريخية. يسد هذا البحث الفجوة العلمية باقتراح إطار نظري استشراقي يقوم على تطوير بيئات افتراضية ذكية ثلاثية الأبعاد تحاكي الواقع بدقة عالية، وتعالج البيانات الضخمة (الطبية والإدارية) باعتبارها نماذج أولية قابلة للاختبار عبر تحليلات الذكاء الاصطناعي. تُمكن هذه البيئات من محاكاة سيناريوهات مستقبلية متعددة (بما فيها سيناريوهات "البجهة السوداء")، مما يقلل المخاطر وعدم اليقين، وينتج تنبؤات دقيقة تدعم القرارات الإدارية الحاسمة وتطور الحالة الصحية للمريض. يقدم البحث ستة مقترحات بحثية (RPs) تغطي كلاً من المجال الإداري (تطوير أنظمة استباقية لإدارة الموارد البشرية والتنبؤ بالفجوات المهارية)، والمجال الطبي (تخصيص خطط العلاج والتنبؤ بمسارات التعافي). كما يناقش البحث التحديات الأخلاقية والتقنية المرتبطة بنشر هذهِ الأنظمة، مثل خصوصية البيانات والتحيزات الخوارزمية. تسهم الدراسة في تحول نوعي من التنبؤ التفاعلي التقليدي إلى نهج استباقي قائم على المحاكاة، معززةً بذلك قدرات التخطيط المستقبلي والتأهب للأزمات في مجالي الإدارة والطب.

التنزيلات

بيانات التنزيل غير متوفرة بعد.

السير الشخصية للمؤلفين

Zainab Y. Alsheikhly، Department of Public Administration, College of Administrative and Financial Sciences, Cihan University-Erbil, Kurdistan Region, IRAQ.

Zainab Alsheikhly is a lecturer at the Department of Public Administration, College of Administrative and Financial Sciences, Cihan University-Erbil, Kurdistan Region, Iraq. Her research interest is ProductionManagement .

Qusay H. Al-Salami، Department of Business Administration, College of Administrative and Financial Sciences, Cihan University-Erbil, Kurdistan Region, Iraq

Qusay H. Alsalami  is an assisstant Professor at the  Department of Business Administration, College of Administrative and Financial Sciences, Cihan University-Erbil, Kurdistan Region, IRAQ. His research interests are Operation Research and Computer Science.

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التنزيلات

منشور

2026-07-10

كيفية الاقتباس

Alsheikhly, Z. Y., & Al-Salami, Q. H. (2026). إطار مقترح لتطوير عمليات التنبأ في بيئات افتراضية معززة بالذكاء الإصطناعي للمجالات الإدارية والطبية. مجلة جامعة جيهان-إربيل للعلوم الإنسانية والاجتماعية, 10(2), 27–35. https://doi.org/10.24086/cuejhss.v10n2y2026.pp27-35

إصدار

القسم

Articles
Received 2026-06-07
Accepted 2026-06-17
Published 2026-07-10

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