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Deep Learning Approach Applied to Prediction of Bone Age Based on Computed Tomography Orthopedic Image Processing

机译:基于计算机断层扫描骨科图像处理的骨龄预测应用深度学习方法

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Objective: Deep learning and neural network models are new research directions in the field of machine learning and artificial intelligence. Deep learning has made breakthroughs in image recognition and speech recognition applications, and has also shown unique advantages in face recognition and information retrieval, and has been widely used. Methods: Thin-layer computed tomography (CT) scan and multiplanar reconstruction (MPR) and volume reconstruction (VR) techniques were used to perform CT thin-slice scan and volume of the bilateral clavicle sternum at 548 number of 15 similar to 25 years old. Reproduction (volume rendering, VR) and three-dimensional image recombination, measuring and calculating the longest diameter of the sternal end of the bilateral clavicle, the longest diameter of the metaphysis and its length ratio, the area of the epiphysis, the area of the metaphysis and its area ratio, etc. We establish a mathematical model of bone age inference, and then substitute 50 training samples into the mathematical model to test the accuracy of the model. Results: There was a statistically significant difference between the male and female sex ratios in the same age group (P < 0.05). The established mathematical model shows that the developmental law of the sternal skeletal bone is highly correlated with the biological age. The accuracy of all models is 70.5% ( +/- 1.0 years old) and 82.5% ( +/- 1.5 years). Skeletal X-ray images show different gradation changes in black and white, with black-and-white contrast and hierarchical image features. Based on the advantages of deep learning in image recognition, we combine it with bone age assessment research to build a forensic bone age automation. Conclusions: This paper harnesses the basic concepts of deep learning and its network structure, and expounds the research progress of deep learning in image recognition in different research fields at home and abroad in recent years. as well as the advantages and application prospects of deep learning in bone age assessment.
机译:目的:深入学习和神经网络模型是机器学习领域的新研究方向和人工智能。深度学习在图像识别和语音识别应用中取得了突破,并且还在面部识别和信息检索方面表现出独特的优势,并且已被广泛使用。方法:薄层计算机断层扫描(CT)扫描和多平坦重建(MPR)和体积重建(VR)技术用于在548个相似于25岁的548个中执行CT薄片扫描和双侧锁骨胸骨的体积。再现(体积渲染,VR)和三维图像重组,测量和计算双侧锁骨胸骨末端的最长直径,使双层的最长直径及其长度比,骨骺面积,面积结性和其面积比等。我们建立了骨骼年龄推理的数学模型,然后将50个训练样本替换为数学模型以测试模型的准确性。结果:在同一年龄组中的男性和女性性别比率之间存在统计学上有显着差异(P <0.05)。建立的数学模型表明,胸骨骨骼骨的发育法与生物学年龄高。所有型号的准确性为70.5%(+/- 1.0岁)和82.5%(+/- 1.5岁)。骨骼X射线图像显示了黑白的不同渐变变化,黑白对比度和分层图像特征。基于图像识别深度学习的优势,我们将其与骨骼年龄评估研究相结合,以建立法医骨骼时代自动化。结论:本文利用了深度学习及其网络结构的基本概念,并阐述了近年来国内外不同研究领域的图像认可的研究进展。以及骨龄评估深度学习的优势和应用前景。

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