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Low-Shot Multi-label Incremental Learning for Thoracic Diseases Diagnosis

机译:低射多标签增量学习在胸腔疾病诊断中的应用

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Despite promising results of 14 types of diseases continuously reported on the large-scale NIH dataset, the applicability on real clinical practice with the deep learning based CADx for chest X-ray may still be quite elusive. It is because tens of diseases can be found in the chest X-ray and require to keep on learning and diagnosis. In this paper, we propose a low-shot multi-label incremental learning framework involving three phases, i.e., representation learning, low-shot learning and all-label fine-tuning phase, to demonstrate the feasibility and practicality of thoracic disease abnormalities of CADx in clinic. To facilitate the incremental learning in new small dataset situation, we also formulate a feature regularization prior, say multi-label squared gradient magnitude (MLSGM) to ensure the generalization capability of the deep learning model. The proposed approach has been evaluated on the public ChestX-rayl4 dataset covering 14 types of basic abnormalities and a new small dataset MyX-ray including 6 types of novel abnormalities collected from Mianyang Central Hospital. The experimental result shows MLSGM method improves the average Area-Under-Curve (AUC) score on 6 types of novel abnormalities up to 7.6 points above the baseline when shot number is only 10. With the low-shot multi-label incremental learning framework, the AI application for the reading and diagnosis of chest X-ray over-all diseases and abnormalities can be possibly realized in clinic practice.
机译:尽管在大型NIH数据集上连续报道了14种疾病的前景喜人,但基于深度学习的基于CADx的胸部X线在实际临床实践中的适用性仍然很难捉摸。这是因为在胸部X光检查中会发现数十种疾病,因此需要继续学习和诊断。在本文中,我们提出了一个低速多标签增量学习框架,涉及三个阶段,即表示学习,低速学习和全标签微调阶段,以证明CADx胸椎疾病异常的可行性和实用性。在诊所。为了在新的小型数据集情况下促进增量学习,我们还制定了特征正则化先验,即多标签平方梯度幅度(MLSGM),以确保深度学习模型的泛化能力。已对涵盖14种类型基本异常的公共ChestX-ray14数据集和包括从绵阳市中心医院收集的6种类型的新异常的新小型数据集MyX-ray进行了评估,评估了该方法的有效性。实验结果表明,MLSGM方法可以提高6种新颖异常的平均曲线下面积(AUC)得分,而当镜头数量仅为10时,基线以上可以提高7.6点。借助低镜头多标签增量学习框架,可以在临床实践中实现AI在读取和诊断胸部X线总体疾病和异常中的应用。

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