用于急性缺血性中风梗塞分割的病理不对称引导的渐进式学习

Jiarui Sun, Qiuxuan Li, Yuhao Liu, Yichuan Liu, Gouenou Coatrieux, Jean-Louis Coatrieux, Yang Chen, Jie Lu
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引用次数: 0

摘要

对急性缺血性脑卒中(AIS)患者的诊断、治疗和预后进行定量梗死估计至关重要。由于缺血组织的早期变化很微妙,很容易与正常脑组织混淆,因此这仍然是一项非常具有挑战性的任务。然而,现有的方法往往忽略或混淆了由内在和病理变化引起的不同类型的解剖不对称对分割的贡献。此外,对领域知识的低效利用也会导致对 AIS 梗死的错误分割。受此启发,我们提出了一种病理不对称引导的渐进学习(PAPL)方法,用于 AIS 梗死分割。PAPL 模仿人类的逐步学习模式,包括三个渐进阶段:知识准备阶段、正式学习阶段和检查改进阶段。首先,知识准备阶段积累梗死分割任务的预备领域知识,帮助学习特定领域的知识表征,通过构建对比学习任务提高对病理不对称的辨别能力。然后,正式学习阶段以学习到的知识表征为指导,高效地执行端到端训练,其中设计的特征补偿模块(FCM)可利用容积医学图像中相邻切片之间的解剖相似性,帮助汇总丰富的解剖背景信息。最后,检查改进阶段鼓励改进前一阶段的梗死预测,其中提出的感知改进策略(RPRS)进一步利用双侧差异比较,通过自适应区域缩小和扩大来纠正梗死区域的错误分割。在公共和内部 NCCT 数据集上的广泛实验证明了所提出的 PAPL 的优越性,有望帮助更好地评估和治疗中风。
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Pathological Asymmetry-Guided Progressive Learning for Acute Ischemic Stroke Infarct Segmentation.

Quantitative infarct estimation is crucial for diagnosis, treatment and prognosis in acute ischemic stroke (AIS) patients. As the early changes of ischemic tissue are subtle and easily confounded by normal brain tissue, it remains a very challenging task. However, existing methods often ignore or confuse the contribution of different types of anatomical asymmetry caused by intrinsic and pathological changes to segmentation. Further, inefficient domain knowledge utilization leads to mis-segmentation for AIS infarcts. Inspired by this idea, we propose a pathological asymmetry-guided progressive learning (PAPL) method for AIS infarct segmentation. PAPL mimics the step-by-step learning patterns observed in humans, including three progressive stages: knowledge preparation stage, formal learning stage, and examination improvement stage. First, knowledge preparation stage accumulates the preparatory domain knowledge of the infarct segmentation task, helping to learn domain-specific knowledge representations to enhance the discriminative ability for pathological asymmetries by constructed contrastive learning task. Then, formal learning stage efficiently performs end-to-end training guided by learned knowledge representations, in which the designed feature compensation module (FCM) can leverage the anatomy similarity between adjacent slices from the volumetric medical image to help aggregate rich anatomical context information. Finally, examination improvement stage encourages improving the infarct prediction from the previous stage, where the proposed perception refinement strategy (RPRS) further exploits the bilateral difference comparison to correct the mis-segmentation infarct regions by adaptively regional shrink and expansion. Extensive experiments on public and in-house NCCT datasets demonstrated the superiority of the proposed PAPL, which is promising to help better stroke evaluation and treatment.

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