你有两个老师:用于胸部x线半监督解剖异常检测的协同进化图像和报告蒸馏

J. Sun, Dong Wei, Zhe Xu, Donghuan Lu, Hong Liu, Liansheng Wang, Yefeng Zheng
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引用次数: 1

摘要

胸部x线(CXR)解剖异常检测旨在定位和表征x线片上的心肺影像学表现,从而加快临床工作流程并减少观察疏忽。大多数现有的方法都是在完全监督的情况下进行的,这需要大量的异常注释,或者是在弱监督的情况下,这在性能上仍然远远落后于完全监督的方法。在这项工作中,我们提出了一种协同进化图像和报告蒸馏(CEIRD)框架,该框架通过将视觉检测结果与配对放射学报告中的文本分类异常结合起来,从而实现CXR中的半监督异常检测,反之亦然。具体而言,在经典师生伪标签蒸馏(TSD)范式的基础上,引入了辅助报告分类模型,将该模型的预测用于初级视觉检测任务中报告导向的伪检测标签细化(RPDLR)。相反,我们还在辅助报告分类任务中使用了异常引导伪分类标签细化(APCLR)的视觉检测模型预测,并提出了一种视觉和报告模型相互促进,RPDLR和APCLR交替执行的协同进化策略。为此,我们将报告弱监管有效地纳入半监管的TSD管道。除了跨模态伪标签细化之外,我们进一步提出了一种图像模态内自适应非最大值抑制,其中教师视觉模型生成的伪检测标签通过学生的高置信度预测动态校正。在公开的MIMIC-CXR基准上的实验结果表明,CEIRD的性能优于几种最新的弱监督和半监督方法。
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You've Got Two Teachers: Co-evolutionary Image and Report Distillation for Semi-supervised Anatomical Abnormality Detection in Chest X-ray
Chest X-ray (CXR) anatomical abnormality detection aims at localizing and characterising cardiopulmonary radiological findings in the radiographs, which can expedite clinical workflow and reduce observational oversights. Most existing methods attempted this task in either fully supervised settings which demanded costly mass per-abnormality annotations, or weakly supervised settings which still lagged badly behind fully supervised methods in performance. In this work, we propose a co-evolutionary image and report distillation (CEIRD) framework, which approaches semi-supervised abnormality detection in CXR by grounding the visual detection results with text-classified abnormalities from paired radiology reports, and vice versa. Concretely, based on the classical teacher-student pseudo label distillation (TSD) paradigm, we additionally introduce an auxiliary report classification model, whose prediction is used for report-guided pseudo detection label refinement (RPDLR) in the primary vision detection task. Inversely, we also use the prediction of the vision detection model for abnormality-guided pseudo classification label refinement (APCLR) in the auxiliary report classification task, and propose a co-evolution strategy where the vision and report models mutually promote each other with RPDLR and APCLR performed alternatively. To this end, we effectively incorporate the weak supervision by reports into the semi-supervised TSD pipeline. Besides the cross-modal pseudo label refinement, we further propose an intra-image-modal self-adaptive non-maximum suppression, where the pseudo detection labels generated by the teacher vision model are dynamically rectified by high-confidence predictions by the student. Experimental results on the public MIMIC-CXR benchmark demonstrate CEIRD's superior performance to several up-to-date weakly and semi-supervised methods.
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