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Managing class imbalance and differential staining of immune cell populations in multi-class instance segmentation of multiplexed immunofluorescence images of Lupus Nephritis biopsies

机译:在狼疮性肾炎活检中多级免疫荧光图像多级实例分割中的免疫细胞群的阶级不平衡和差异染色

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Lupus nephritis (LuN) is a manifestation of systemic lupus erythematosus defined by chronic infiltration of immune cells into the kidneys-particularly lymphocytes and dendritic cells (DCs). Ultimately, our goal is to characterize the cellular communities associated with progression to kidney failure. To accomplish this, we have generated a dataset of fluorescence confocal microscopy images of kidney biopsies from 31 LuN patients that have been stained for two T-lymphocyte populations, B-lymphocytes and two DC populations. We are using convolutional neural networks (CNNs) with a Mask R-CNN architecture to perform instance segmentation on these five classes. This multi-class instance segmentation task is hindered by an inherent class imbalance between lymphocytes and DCs, with DCs being much less prevalent. Here we discuss methods for managing class imbalance to achieve comparable instance segmentation of both DCs and lymphocytes in LuN biopsies. A network trained to identify all 5 classes yielded higher sensitivity to DCs when the training set was filtered to contain images with all 5 cell classes present. Average DC sensitivity on an independent test set improved from 0.54 to 0.63 with filtered training data. DC segmentation improved further when the network was trained specifically for DC classes. Average DC sensitivity reached 0.91 when trained separately from lymphocytes, with average Jaccard index of DCs improving from 0.69±0.2 to 0.76±0.2. Accurate segmentation of all cell types relevant to LuN pathogenesis enabled in-depth spatial analysis of the immune environments that result in renal failure in LuN patients.
机译:狼疮肾炎(LUN)是通过慢性渗透到肾脏 - 特别是淋巴细胞和树突细胞(DCS)定义的系统性狼疮红斑狼疮的表现。最终,我们的目标是表征与肾衰竭的进展相关的细胞社区。为实现这一点,我们已经产生了来自31例患者的肾脏活检的荧光共聚焦显微镜图像数据集,该乳腺活组织检查来自31例染色的31例患者,该患者已经染色了两种T淋巴细胞群,B淋巴细胞和两个DC种群。我们正在使用带有掩模R-CNN架构的卷积神经网络(CNNS)来执行这五个类上的实例分段。这种多级实例分段任务受到淋巴细胞和DC之间固有类别的不平衡,DC不太普遍。在这里,我们讨论用于管理类别不平衡的方法,以实现LUN活组织检查中DC和淋巴细胞的可比实例分段。培训以识别所有5个类的网络对DCS筛选时对DCS产生了更高的敏感性,以包含具有所有5个小区类的图像。独立测试集的平均直流敏感度从0.54增加0.54到0.63,过滤训练数据。当网络专门用于DC类时,DC分段进一步提高。当与淋巴细胞分开训练时,平均直流敏感度达到0.91,平均jaccard指数的DCS的速度从0.69±0.2%增加到0.76±0.2。与LUN发病机制相关的所有细胞类型的精确分割使免疫环境的深入空间分析导致LUN患者肾功能衰竭。

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