Exploring Unsupervised Cell Recognition with Prior Self-activation Maps

Pingyi Chen, Chenglu Zhu, Zhongyi Shui, Jiatong Cai, S. Zheng, Shichuan Zhang, Lin Yang
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引用次数: 1

Abstract

The success of supervised deep learning models on cell recognition tasks relies on detailed annotations. Many previous works have managed to reduce the dependency on labels. However, considering the large number of cells contained in a patch, costly and inefficient labeling is still inevitable. To this end, we explored label-free methods for cell recognition. Prior self-activation maps (PSM) are proposed to generate pseudo masks as training targets. To be specific, an activation network is trained with self-supervised learning. The gradient information in the shallow layers of the network is aggregated to generate prior self-activation maps. Afterward, a semantic clustering module is then introduced as a pipeline to transform PSMs to pixel-level semantic pseudo masks for downstream tasks. We evaluated our method on two histological datasets: MoNuSeg (cell segmentation) and BCData (multi-class cell detection). Compared with other fully-supervised and weakly-supervised methods, our method can achieve competitive performance without any manual annotations. Our simple but effective framework can also achieve multi-class cell detection which can not be done by existing unsupervised methods. The results show the potential of PSMs that might inspire other research to deal with the hunger for labels in medical area.
探索无监督细胞识别与先验自激活地图
监督深度学习模型在细胞识别任务上的成功依赖于详细的注释。以前的许多工作都设法减少了对标签的依赖。然而,考虑到贴片中含有大量的细胞,昂贵和低效的标记仍然是不可避免的。为此,我们探索了无标签的细胞识别方法。提出了先验自激活映射(PSM)来生成伪掩码作为训练目标。具体来说,激活网络是用自监督学习来训练的。网络浅层的梯度信息被聚合以生成先验自激活图。然后,引入语义聚类模块作为管道,将psm转换为像素级语义伪掩码,用于下游任务。我们在两个组织学数据集上评估了我们的方法:MoNuSeg(细胞分割)和BCData(多类细胞检测)。与其他全监督和弱监督方法相比,我们的方法可以在不需要人工标注的情况下获得具有竞争力的性能。该框架简单有效,可以实现现有无监督方法无法实现的多类细胞检测。研究结果表明,psm的潜力可能会激发其他研究,以应对医学领域对标签的渴望。
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