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Knowledge-Based Analysis for Mortality Prediction From CT Images

机译:基于知识的CT图像死亡率预测分析

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Low-Dose CT (LDCT) can significantly improve the accuracy of lung cancer diagnosis and thus reduce cancer deaths compared to chest X-ray. The lung cancer risk population is also at high risk of other deadly diseases, for instance, cardiovascular diseases. Therefore, predicting the all-cause mortality risks of this population is of great importance. This paper introduces a knowledge-based analytical method using deep convolutional neural network (CNN) for all-cause mortality prediction. The underlying approach combines structural image features extracted from CNNs, based on LDCT volume at different scales, and clinical knowledge obtained from quantitative measurements, to predict the mortality risk of lung cancer screening subjects. The proposed method is referred as Knowledge-based Analysis of Mortality Prediction Network (KAMP-Net). It constitutes a collaborative framework that utilizes both imaging features and anatomical information, instead of completely relying on automatic feature extraction. Our work demonstrates the feasibility of incorporating quantitative clinical measurements to assist CNNs in all-cause mortality prediction from chest LDCT images. The results of this study confirm that radiologist defined features can complement CNNs in performance improvement. The experiments demonstrate that KAMP-Net can achieve a superior performance when compared to other methods.
机译:低剂量CT(LDCT)可以显着提高肺癌诊断的准确性,从而减少与胸X射线相比降低癌症死亡。肺癌风险群体也处于其他致命疾病的高风险,例如心血管疾病。因此,预测该人群的全因死亡率风险具有重要意义。本文介绍了一种基于知识的分析方法,使用深卷积神经网络(CNN)进行全面死亡率预测。基于不同尺度的LDCT体积,以及从定量测量中获得的临床知识,将从CNN中提取的结构图像特征结合在一起,以预测肺癌筛查受试者的死亡率风险。所提出的方法被称为基于知识的死亡率预测网络(KAMP-NET)分析。它构成了一种协作框架,其利用成像特征和解剖信息,而不是完全依赖于自动特征提取。我们的作品展示了掺入定量临床测量的可行性,以帮助CNN在胸部LDCT图像中的所有导致死亡率预测中。本研究结果证实,放射科医生定义的特征可以在性能改进中补充CNN。实验表明,与其他方法相比,Kamp-Net可以实现优越的性能。

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