论文标题
评估噪声的鲁棒性:低成本头部CT Triage
Assessing Robustness to Noise: Low-Cost Head CT Triage
论文作者
论文摘要
使用卷积神经网络(CNN)自动化的医学图像分类具有影响医疗保健的巨大潜力,尤其是在资源受限的医疗保健系统中,培训的放射科医生较少。但是,关于训练有素的CNN在使用低成本扫描仪时可能会出现的噪声水平,不同的收购方案或其他伪像的图像的表现鲜为人知,这些型号可能不足以从资金良好的医院收集的数据集中代表。在这项工作中,我们研究了对分类头计算机断层扫描(CT)扫描训练的模型在以减少X射线管电流,每个龙门旋转量较少的凸起和有限的角度扫描中获取的图像上执行的。这些变化可以降低扫描仪的成本和对电力的需求,但要以增加图像噪声和人工制品为代价。我们首先开发了一个模型以分类为CTS,并报告接收器操作特征曲线(AUROC)下的区域为0.77。然后,我们证明训练有素的模型可降低管电流和更少的预测,而AUROC仅下降了0.65%的图像,降低了管电流的16倍,而获取的图像减少了0.22%,而所获得的图像减少了8倍。最后,对于通过有限角度扫描获得的显着降低的图像,我们表明,经过专门对此类图像进行分类的模型可以克服重建技术的局限性,并将AUROC维持在原始模型的0.09%之内。
Automated medical image classification with convolutional neural networks (CNNs) has great potential to impact healthcare, particularly in resource-constrained healthcare systems where fewer trained radiologists are available. However, little is known about how well a trained CNN can perform on images with the increased noise levels, different acquisition protocols, or additional artifacts that may arise when using low-cost scanners, which can be underrepresented in datasets collected from well-funded hospitals. In this work, we investigate how a model trained to triage head computed tomography (CT) scans performs on images acquired with reduced x-ray tube current, fewer projections per gantry rotation, and limited angle scans. These changes can reduce the cost of the scanner and demands on electrical power but come at the expense of increased image noise and artifacts. We first develop a model to triage head CTs and report an area under the receiver operating characteristic curve (AUROC) of 0.77. We then show that the trained model is robust to reduced tube current and fewer projections, with the AUROC dropping only 0.65% for images acquired with a 16x reduction in tube current and 0.22% for images acquired with 8x fewer projections. Finally, for significantly degraded images acquired by a limited angle scan, we show that a model trained specifically to classify such images can overcome the technological limitations to reconstruction and maintain an AUROC within 0.09% of the original model.