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:: دوره 11، شماره 4 - ( پاییز 1402 ) ::
دوره 11 شماره 4 صفحات 107-94 برگشت به فهرست نسخه ها
کاربرد هوش مصنوعی در پزشکی بازساختی
حکمت فرجپور ، بهناز بنی محمد شتربانی ، مریم رفیعی بهارلو ، حاجیه لطفی*
مرکز تحقیقات سلولی و مولکولی، پیشگیری از بیماریهای غیرواگیر، دانشگاه علوم پزشکی قزوین، قزوین، ایران ، lotfi.hajie@yahoo.com
چکیده:   (368 مشاهده)
مقدمه: بهینه‌سازی فرآیندهای مهندسی بافت نیازمند مدل‌هایی است که نتایج ساختاری و عملکردی را با شناسایی ارتباطات بین پارامترهای مختلف و تحلیل فرایندهای گوناگون، پیش‌بینی نماید. طبق مطالعات مرتبط پزشکی، هوش مصنوعی پتانسیل قابل توجهی جهت تحلیل و پیش بینی داده نشان داده است. در مطالعه حاضر مقالات در دسترس در زمینه کاربردهای هوش مصنوعی در پزشکی بازساختی و مهندسی بافت از گوگل محقق و پابمد، انتخاب و مطالعه شدند. هوش مصنوعی می‌تواند در طراحی، تعیین ترکیبات، ساخت، پیش‌بینی ویژگی‌های زیست مواد مختلف و داربست‌ها، پیش‌بینی رفتارهای سلولی، جایگزینی مطالعات حیوانی و کنترل واکنش‌های زیستی نقش موثر ایفا نماید. به علاوه، استفاده از هوش مصنوعی منجر به صرفه‌جویی در زمان و هزینه، تسریع و تسهیل دستیابی به نتایج بهینه می‌گردد. نتیجه‌گیری: بکارگیری هوش مصنوعی، شامل یادگیری ماشینی و یادگیری عمیق، در حوزه پزشکی بازساختی و مهندسی بافت تحلیل تمامی انواع داده‌های جدولی و تصویری را امکان‌پذیر ساخته و پتانسیل قابل توجهی جهت تحلیل داده، بهینه‌سازی و پیش‌بینی نشان داده است.
 
واژه‌های کلیدی: پزشکی بازساختی، مهندسی بافت، هوش مصنوعی
متن کامل [PDF 723 kb]   (188 دریافت)    
نوع مطالعه: مروری | موضوع مقاله: تحقیقات پایه در علوم اعصاب
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Farajpour H, Banimohamad-Shotorbani B, Rafiei-Baharloo M, Lotfi H. Application of Artificial Intelligence in Regenerative Medicine. Shefaye Khatam 2023; 11 (4) :94-107
URL: http://shefayekhatam.ir/article-1-2388-fa.html

فرجپور حکمت، بنی محمد شتربانی بهناز، رفیعی بهارلو مریم، لطفی حاجیه. کاربرد هوش مصنوعی در پزشکی بازساختی. مجله علوم اعصاب شفای خاتم. 1402; 11 (4) :94-107

URL: http://shefayekhatam.ir/article-1-2388-fa.html



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دوره 11، شماره 4 - ( پاییز 1402 ) برگشت به فهرست نسخه ها
مجله علوم اعصاب شفای خاتم The Neuroscience Journal of Shefaye Khatam
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