Cell detection is an important task in biomedical research. Recently, deep learning methods have made it possible to improve the performance of cell detection. However, a detection network trained with training data under a specific condition (source domain) may not work well on data under other conditions (target domains), which is called the domain shift problem. In particular, cells are cultured under different conditions depending on the purpose of the research. Characteristics, e.g., the shapes and density of the cells, change depending on the conditions, and such changes may cause domain shift problems. Here, we propose an unsupervised domain adaptation method for cell detection using a pseudo-cell-position heatmap, where the cell centroid is at the peak of a Gaussian distribution in the map and selective pseudo-labeling. In the prediction result for the target domain, even if the peak location is correct, the signal distribution around the peak often has a non-Gaussian shape. The pseudo-cell-position heatmap is thus re-generated using the peak positions in the predicted heatmap to have a clear Gaussian shape. Our method selects confident pseudo-cell-position heatmaps based on uncertainty and curriculum learning. We conducted numerous experiments showing that, compared with the existing methods, our method improved detection performance under different conditions.
翻译:细胞检测是生物医学研究的一项重要任务。最近,深深层次的学习方法使提高细胞检测性能成为可能。然而,在特定条件下(源域),受过培训的数据培训的检测网络在特定条件下(源域),在其它条件下(目标域),在数据(目标域),即域变换问题,可能无法很好地发挥作用。特别是,细胞在不同的条件下培养,这取决于研究的目的。特征,例如细胞的形状和密度,根据条件的变化,这种变化可能导致域变换问题。在这里,我们建议使用一种不受监督的域域适应方法,用假细胞定位热映来检测细胞,在地图中,细胞中细胞中的核心体处于高斯分布的高峰,有选择的假细胞标记。在目标域的预测结果中,即使峰值位置正确,信号分布也往往具有非高加索形状。因此,伪细胞定位热映射会利用预测的峰值位置重新生成。我们的方法选择了一种清晰的高斯形形状,即细胞固化的细胞在地图中,以多种比较的检测方法,在学习了我们不同的变色方法。</s>