论文标题

评估自动预测和对临床医生胸部X射线射线的患者年龄的排名

Assessing the Performance of Automated Prediction and Ranking of Patient Age from Chest X-rays Against Clinicians

论文作者

MacPherson, Matthew, Muthuswamy, Keerthini, Amlani, Ashik, Hutchinson, Charles, Goh, Vicky, Montana, Giovanni

论文摘要

了解伴随衰老过程的内部生理变化是医学图像解释的重要方面,在报告异常发现时,预期的变化是基线。最近已经证明了深度学习可以准确地估算胸部X射线的患者年龄,并显示出作为健康指标和死亡率预测因素的潜力。在本文中,我们介绍了一项关于放射科医生与最先进的深度学习模型的相对性能的新型比较研究:(a)单个胸部X射线的患者年龄估计,以及(b)按年龄按年龄分离同一患者的两个时间分离图像的排名。我们使用一个具有1.80万胸部X射线的异质数据库培训模型,其地面真相患者年龄,并研究了有限的培训数据和图像分辨率对模型准确性的局限性,并在公共数据上证明了概括性的性能。与文献中看到的其他放射学报告任务相比,要探索模型与人之间在这些年龄预测任务上的巨大性能差距,我们将我们的年龄预测模型纳入有条件的生成对抗网络(CGAN)中,从而可以可视化,从而可以可视化,从而可以将预测模型与年龄预测相比,与这些人相关的特征与临床机构相比,该模型将其确定为重大的预测模型。

Understanding the internal physiological changes accompanying the aging process is an important aspect of medical image interpretation, with the expected changes acting as a baseline when reporting abnormal findings. Deep learning has recently been demonstrated to allow the accurate estimation of patient age from chest X-rays, and shows potential as a health indicator and mortality predictor. In this paper we present a novel comparative study of the relative performance of radiologists versus state-of-the-art deep learning models on two tasks: (a) patient age estimation from a single chest X-ray, and (b) ranking of two time-separated images of the same patient by age. We train our models with a heterogeneous database of 1.8M chest X-rays with ground truth patient ages and investigate the limitations on model accuracy imposed by limited training data and image resolution, and demonstrate generalisation performance on public data. To explore the large performance gap between the models and humans on these age-prediction tasks compared with other radiological reporting tasks seen in the literature, we incorporate our age prediction model into a conditional Generative Adversarial Network (cGAN) allowing visualisation of the semantic features identified by the prediction model as significant to age prediction, comparing the identified features with those relied on by clinicians.

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