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Machine Friendly Machine Learning: Interpretation of Computed Tomography Without Image Reconstruction

机译:机器友好的机器学习:无需图像重建即可解释计算机断层扫描

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摘要

Recent advancements in deep learning for automated image processing and classification have accelerated many new applications for medical image analysis. However, most deep learning algorithms have been developed using reconstructed, human-interpretable medical images. While image reconstruction from raw sensor data is required for the creation of medical images, the reconstruction process only uses a partial representation of all the data acquired. Here, we report the development of a system to directly process raw computed tomography (CT) data in sinogram-space, bypassing the intermediary step of image reconstruction. Two classification tasks were evaluated for their feasibility of sinogram-space machine learning: body region identification and intracranial hemorrhage (ICH) detection. Our proposed SinoNet, a convolutional neural network optimized for interpreting sinograms, performed favorably compared to conventional reconstructed image-space-based systems for both tasks, regardless of scanning geometries in terms of projections or detectors. Further, SinoNet performed significantly better when using sparsely sampled sinograms than conventional networks operating in image-space. As a result, sinogram-space algorithms could be used in field settings for triage (presence of ICH), especially where low radiation dose is desired. These findings also demonstrate another strength of deep learning where it can analyze and interpret sinograms that are virtually impossible for human experts.
机译:深度学习在自动图像处理和分类方面的最新进展加速了医学图像分析的许多新应用。但是,大多数深度学习算法都是使用重构的,人类可解释的医学图像开发的。创建医学图像需要从原始传感器数据进行图像重建,而重建过程仅使用所获取所有数据的部分表示。在这里,我们报告了一种系统的开发,该系统可直接处理正弦图空间中的原始计算机断层扫描(CT)数据,从而绕开了图像重建的中间步骤。评估了两个分类任务在正弦图空间机器学习中的可行性:身体区域识别和颅内出血(ICH)检测。我们提出的SinoNet是一种为解释正弦图而优化的卷积神经网络,与传统的基于图像空间的重构系统相比,无论是在投影还是探测器上扫描几何形状,其性能均优于传统的基于图像空间的重建系统。此外,与在图像空间中运行的常规网络相比,使用稀疏采样的正弦图时,SinoNet的性能明显更好。结果,可以在现场设置中使用正弦图空间算法进行分类(ICH的存在),特别是在需要低辐射剂量的地方。这些发现还证明了深度学习的另一项优势,它可以分析和解释人类专家实际上不可能实现的正弦图。

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