首页> 外文会议>IEEE International Conference on Robotics & Automation >A system for automated counting of fetal and maternal red blood cells in clinical KB test
【24h】

A system for automated counting of fetal and maternal red blood cells in clinical KB test

机译:在临床KB测试中自动计数胎儿和母体红细胞的系统

获取原文

摘要

The Kleihauer-Betke test (KBT) is a widely used method for measuring fetal-maternal hemorrhage (FMH) in maternal care. In hospitals, KBT is performed by a certified technologist to count a minimum of 2,000 fetal and maternal red blood cells (RBCs) on a blood smear. Manual counting is inherently inconsistent and subjective. This paper presents a system for automated counting and distinguishing fetal and maternal RBCs on clinical KB slides. A custom-adapted hardware platform is used for KB slide scanning and image capturing. Spatial-color pixel classification with spectral clustering is proposed to separate overlapping cells. Optimal clustering number and total cell number are obtained through maximizing cluster validity index. To accurately identify fetal RBCs from maternal RBCs, multiple features including cell size, shape, gradient and saturation difference are used in supervised learning to generate feature vectors, to tackle cell color, shape and contrast variations across clinical KB slides. The results show that the automated system is capable of completing the counting of over 60,000 cells (vs. 2,000 by technologists) within 5 minutes (vs. 15 minutes by technologists). The counting results are highly accurate and correlate strongly with those from benchmarking flow cytometry measurement.
机译:Kleihauer-Betke检验(KBT)是一种广泛用于测量孕产妇保健中的胎儿-母亲出血(FMH)的方法。在医院中,KBT由合格的技术人员执行,以在血液涂片上计数至少2,000个胎儿和产妇的红细胞(RBC)。手动计数本质上是不一致且主观的。本文提出了一种自动计数和区分临床KB幻灯片上的胎儿和母亲RBC的系统。定制的硬件平台用于KB幻灯片扫描和图像捕获。提出了具有光谱聚类的空间颜色像素分类来分离重叠单元。通过使聚类有效性指数最大化来获得最佳聚类数和总细胞数。为了从母体红细胞中准确识别胎儿红细胞,在监督学习中使用了包括细胞大小,形状,梯度和饱和度差异在内的多个特征,以生成特征向量,以解决临床KB幻灯片中细胞的颜色,形状和对比度变化。结果表明,该自动化系统能够在5分钟内(相对于技术人员15分钟)完成超过60,000个细胞的计数(相对于技术人员2,000个)。计数结果高度准确,并且与基准流式细胞术测量结果高度相关。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号