添加一个模态真的对不完全多模态脑肿瘤分割有积极影响吗?

Yansheng Qiu;Kui Jiang;Hongdou Yao;Zheng Wang;Shin’ichi Satoh
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引用次数: 0

摘要

以前的不完整的多模式脑肿瘤分割技术,虽然有效地整合了多种模式,但通常提供的性能收益低于预期。原因在于,新模态可能会由于某些位置的模式和质量不确定和不一致而导致预测混乱,这些位置的直接融合会导致最终决策的负增益。在本文中,考虑到一个模态内部潜在的负面影响,我们提出了多模态正负影响区域双校准管道(PNDC),以减轻模态融合的错误信息传递。具体地说,PNDC涉及两个复杂的管道,反向审计和正向校验和。前者是识别各模态的负面区域影响。后者通过整合每个模态的积极影响区域来校准融合预测在这些区域是否可靠。最后,利用每个模态的负面影响区域和不匹配可靠的融合预测来增强单个模态和融合过程的学习。值得注意的是,PNDC采用标准的训练策略,没有特定的架构选择,也没有引入任何学习参数,因此可以很容易地插入到现有的网络训练中,用于不完全的多模态脑肿瘤分割。大量实验证实,我们的PNDC极大地缓解了当前最先进的不完全医疗多模态方法的性能下降,这些方法是由于忽略了模态的积极/消极影响区域而引起的。该代码在PNDC上发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Does Adding a Modality Really Make Positive Impacts in Incomplete Multi-Modal Brain Tumor Segmentation?
Previous incomplete multi-modal brain tumor segmentation technologies, while effective in integrating diverse modalities, commonly deliver under-expected performance gains. The reason lies in that the new modality may cause confused predictions due to uncertain and inconsistent patterns and quality in some positions, where the direct fusion consequently raises the negative gain for the final decision. In this paper, considering the potentially negative impacts within a modality, we propose multi-modal Positive-Negative impact region Double Calibration pipeline, called PNDC, to mitigate misinformation transfer of modality fusion. Concretely, PNDC involves two elaborate pipelines, Reverse Audit and Forward Checksum. The former is to identify negative regions impacts of each modality. The latter calibrates whether the fusion prediction is reliable in these regions by integrating the positive impacts regions of each modality. Finally, the negative impacts region from each modality and miss-match reliable fusion predictions are utilized to enhance the learning of individual modalities and fusion process. It is noted that PNDC adopts the standard training strategy without specific architectural choices and does not introduce any learning parameters, and thus can be easily plugged into existing network training for incomplete multi-modal brain tumor segmentation. Extensive experiments confirm that our PNDC greatly alleviates the performance degradation of current state-of-the-art incomplete medical multi-modal methods, arising from overlooking the positive/negative impacts regions of the modality. The code is released at PNDC.
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