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العنوان
Medical assistance model using philosophy of machine learning for automatically prediction of skull’s landmarks placement /
المؤلف
Awny, Ahmed Yousry Mohamed.
هيئة الاعداد
باحث / Ahmed Yousry Mohamed Awny
مشرف / Prof. Emad Abd EL Aziz Ashmawy
مشرف / Dr. Nermin Mahmoud kashief
مناقش / Prof. Saad Mohamed Saad Darwish
الموضوع
Medical. Learning.
تاريخ النشر
2024.
عدد الصفحات
64 p. :
اللغة
الإنجليزية
الدرجة
ماجستير
التخصص
الرياضيات
تاريخ الإجازة
30/7/2024
مكان الإجازة
جامعة الاسكندريه - كلية العلوم - Mathematics
الفهرس
Only 14 pages are availabe for public view

from 64

from 64

Abstract

Studies involving any form of skull analysis require the location of landmarks, or reference points, defined over bone. Landmark-based analysis is an integral part of several tasks in medicine, dentistry, and forensic anthropology, such as skull recognition, (CT), forensic imaging, and research and used in medical diagnoses [2]. Skull shape is a key step in many applications such as skull recognition, surgical planning, archaeology, education research. The main problem is locating the landmarks in their accurate place then finding the measurements in skull to recognize gender, predict population type, and predict landmarks placement. Most current research use 2D CT image to locate landmarks in their place and that lead to less accuracy to calculate the cranial measurements. The aim of this research is to build an electronic medical assistance for calculating the cranial measurements based on accurate 3D coordinates that relies on meshgrid model which converts 2D skull’s medical image into 3D version. Based on the calculated measurements, traditional classifiers such as Random Forest classifier, logistic regression, Multi-layer Perceptron (MLP) and SVM to model for automatically predict gender and population type from the skull’s medical image. Furthermore, the suggested model can be used to detect accurate landmarks for new images to enhance the recognition accuracy. In comparing to a state-of-the-art works for gender recognition, the suggested model achieving 99.62 % accuracy in its prediction in comparison to highest previous work which achieved 96 %.