Reeja S R, Sangameswar J, Solomon Joseph Joju, Mrudhul Reddy Gangula, Sujith S
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引用次数: 0
摘要
简介:这项工作利用深度学习的强大功能,将 X 光图像分类为不同的身体部位,是向前迈出的重要一步。多年来,X 射线图片都是人工评估的。目标:我们的目标是利用深度学习技术实现 X 光解读的自动化。方法:利用 FastAI 和 TensorFlow 等尖端框架,在由 DICOM 图像及其相应标签组成的数据集上对卷积神经网络(CNN)进行了细致的训练。结果:该模型所取得的结果确实令人欣喜,因为它展示了准确识别身体各部位的非凡能力。与其他分类器相比,CNN 的性能达到了 97.38%。结论:这一创新有望通过图像分析自动化彻底改变医疗诊断和治疗计划,标志着医疗保健技术领域的重大飞跃。
INTRODUCTION: This work represents a significant step forward by harnessing the power of deep learning to classify X-ray images into distinct body parts. Over the years X-ray pictures were evaluated manually.
OBJECTIVE: Our aim is to automate X-ray interpretation using deep learning techniques.
METHOD: Leveraging cutting-edge frameworks such as FastAI and TensorFlow, a Convolutional Neural Network (CNN) has been meticulously trained on a dataset comprising DICOM images and their corresponding labels.
RESULT: The results achieved by the model are indeed promising, as it demonstrates a remarkable ability to accurately identify various body parts. CNN shows 97.38% performance by compared with other classifiers.
CONCLUSION: This innovation holds the potential to revolutionize medical diagnosis and treatment planning through the automation of image analysis, marking a substantial leap forward in the field of healthcare technology.