Perception and Application of Dental Artificial Intelligence in Orthodontic Clinical Practice: A Cross-Sectional Survey of Orthodontists in Iraq
DOI:
https://doi.org/10.54133/ajms.v9i1.2050الكلمات المفتاحية:
Artificial intelligence، Attitudes of health personnel، Clinical practice، Knowledge، Orthodontics، Perceptionsالملخص
الخلاصة
الخلفية : يشهد استخدام الذكاء الاصطناعي توسعًا سريعًا وقد أثر بشكل كبير على ممارسة تقويم الأسنان . الهدف : لتحري و دراسة تصورات و مواقف أخصائيي تقويم الأسنان تجاه الذكاء الاصطناعي في ممارسة تقويم الأسنان . الطرائق :تم إجراء مسح مقطعي مجهول الهوية عبر الإنترنت باستخدام نماذج جوجل . قام فريق من الخبراء الاختصاص بتقييم الاستبيان من حيث صلاحية المحتوى باستخدام طريقة لوشي و كذلك تقييم الصلاحية الظاهرية من خلال قياس درجة التوافق بين المقيمين . تضمّن الاستبيان 25 سؤالًا مغلقًا وسؤالًا واحدًا مفتوحًا، موزعة على ستة أقسام . بعد الاصدار الرسمي تم توزيع رابط الاستبيان على جميع أعضاء جمعية تقويم الأسنان العراقية خلال الفترة من كانون الثاني الى اذار 2025 . تم استخدام الإحصاءات الوصفية لتصنيف الفئات العمرية للمشاركين . النتائج : تم جمع و تحليل 101 استبانا صالحا و مصدقا , و كانت نسبة الاستجابة 63% . اظهرت النتائج أنه على الرغم من أن غالبية المشاركين (61.4%) كانوا على دراية باستخدام برامج مدعومة بالذكاء الاصطناعي، فإن نسبة كبيرة (40.6%) أفادت بعدم استخدامها لهذه البرامج من قبل، مما يبرز وجود قصور في تطبيق الذكاء الاصطناعي في مجال تقويم الأسنان . كان مستوى الوعي أعلى بالنسبة لتطبيقات الذكاء الاصطناعي في التحليل السيفالومتري (60.0%) مقارنة بالتطبيقات الأخرى، مثل جراحة الفكين و مجال البايوميكانيك . الاستنتاج : بشكل عام، كان هناك مستوى جيد من الوعي والمعرفة بدور الذكاء الاصطناعي في تقويم الأسنان، مع استعداد قوي لدى الأخصائيين للمشاركة في التدريبات المتعلقة بالذكاء الاصطناعي واستخدامه في روتينهم السريري . تدعم الدراسة ضرورة تعزيز التعليم و التدريب و اجراء بحوث اكثر لتقديم ادلة مستندة و تصميم المزيد من الادوات المدعومة بالذكاء الاصطناعي التي تركز على مجالات تقويم الاسنان المختلفة و خاصة البايوميكانيك و هي امور اساسية لسد فجوة الثقة .
الكلمات المفتاحية: الذكاء الاصطناعي، مواقف العاملين في المجال الصحي، الممارسة السريرية، المعرفة، تقويم الأسنان، التصورات ..
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