论文标题

credanno+:自我解释的肺结节诊断中的注释剥削

cRedAnno+: Annotation Exploitation in Self-Explanatory Lung Nodule Diagnosis

论文作者

Lu, Jiahao, Yin, Chong, Erleben, Kenny, Nielsen, Michael Bachmann, Darkner, Sune

论文摘要

最近,已经尝试了减少基于特征的自言式模型的注释要求进行肺结节诊断。作为代表,Credanno通过引入自我监督的对比度学习来进行无监督的功能提取,从而实现了竞争性能,从而大大减少了注释需求。但是,它在稀缺的注释条件下表现出不稳定的性能。为了提高CredAnno的准确性和鲁棒性,我们通过在学习的语义有意义的推理空间中进行半监督的主动学习和训练淬灭,以共同利用提取的特征,注释,注释和不遗漏的数据,提出一种注释剥削机制。所提出的方法可实现可比较甚至更高的恶性预测准确性,而注释较少10倍,同时在1%注释条件下显示出更好的鲁棒性和结节属性预测准确性。我们的完整代码可用:https://github.com/diku-dk/credanno。

Recently, attempts have been made to reduce annotation requirements in feature-based self-explanatory models for lung nodule diagnosis. As a representative, cRedAnno achieves competitive performance with considerably reduced annotation needs by introducing self-supervised contrastive learning to do unsupervised feature extraction. However, it exhibits unstable performance under scarce annotation conditions. To improve the accuracy and robustness of cRedAnno, we propose an annotation exploitation mechanism by conducting semi-supervised active learning with sparse seeding and training quenching in the learned semantically meaningful reasoning space to jointly utilise the extracted features, annotations, and unlabelled data. The proposed approach achieves comparable or even higher malignancy prediction accuracy with 10x fewer annotations, meanwhile showing better robustness and nodule attribute prediction accuracy under the condition of 1% annotations. Our complete code is open-source available: https://github.com/diku-dk/credanno.

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