利用机器学习工具和技术对骨折进行先发制人的检测、分类和诊断

Vanshika Batra
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摘要

在一些领域,特别是医疗领域,发展迅速的技术不断涌现。然而,某些过时的技术仍然经常被使用,而且很有成效。这是其中一种方法。x光是用来发现骨折的。然而,骨折的数量有时可以忽略不计和模糊。应该开发有效和智能的系统。在本研究中,正在开发一种综合分类系统来对骨折进行分类。所创建的系统由两个主要步骤组成。在第一阶段,使用几种图像处理算法对裂缝进行处理,以确定裂缝的位置和形式。反向传播神经网络在处理后的图像上进行训练,然后用于下一步的分类步骤。实验对不同类型的骨折图像进行了测试,结果表明该方法具有较高的分类性能和分类率。
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Leveraging Machine Learning Tools and Techniques for the Pre-Emptive Detection, Classification and Diagnosis of Bone-Fractures
Technologies that are developing quickly are constantly emerging in several fields, particularly the medical one. However, certain old-fashioned techniques are still frequently employed and productive. This is one of these approaches. X-rays are used to spot broken bones. The number of fractures can, however, occasionally be negligible and obscure. Systems that are effective and intelligent should be developed. In this investigation, a synthetic categorization system is being developed to classify bone fractures. The system that has been created consists of two main steps. The images of In the first stage, the fractures are processed using several image processing algorithms to determine their location and forms. The back propagation neural network is trained on the processed images before being used in the classification step, which comes next. The experiment tested the method on various images of bone fractures, and the results show high performance and a rate of categorization.
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