论文标题
开发用于与金属植入物相互作用的骨组织的医学图像分割的算法
Development of an algorithm for medical image segmentation of bone tissue in interaction with metallic implants
论文作者
论文摘要
这项初步研究的重点是基于人工智能的医学图像分割算法的发展,用于计算与金属植入物接触的骨骼生长。 %是由于伪影引起的新骨组织生长的问题。 %存在各种类型的扭曲和错误,称为伪影。 在这项工作中,已经使用了两个由计算机化微观学图像组成的数据库:100张用于培训的图像和196张图像用于测试。在训练数据集中手动分割了骨骼和植入物组织。构建的网络类型遵循U-NET体系结构,这是一种明确用于医学图像分割的卷积神经网络。 在网络准确性方面,该模型达到98 \%。一旦从新数据集(测试集)获得预测后,计算了属于骨组织的像素的总数。该卷约为常规技术估计的体积的15%,通常被高估。该方法显示了其良好的性能和结果,尽管它具有很大的改进空间,可以修改网络的各种参数或使用较大的数据库来改善培训。
This preliminary study focuses on the development of a medical image segmentation algorithm based on artificial intelligence for calculating bone growth in contact with metallic implants. %as a result of the problem of estimating the growth of new bone tissue due to artifacts. %the presence of various types of distortions and errors, known as artifacts. Two databases consisting of computerized microtomography images have been used throughout this work: 100 images for training and 196 images for testing. Both bone and implant tissue were manually segmented in the training data set. The type of network constructed follows the U-Net architecture, a convolutional neural network explicitly used for medical image segmentation. In terms of network accuracy, the model reached around 98\%. Once the prediction was obtained from the new data set (test set), the total number of pixels belonging to bone tissue was calculated. This volume is around 15\% of the volume estimated by conventional techniques, which are usually overestimated. This method has shown its good performance and results, although it has a wide margin for improvement, modifying various parameters of the networks or using larger databases to improve training.