首页> 外文会议>IEEE Conference on Computer Vision and Pattern Recognition Workshops >Crowdsourcing for Chromosome Segmentation and Deep Classification
【24h】

Crowdsourcing for Chromosome Segmentation and Deep Classification

机译:染色体分割和深度分类的众包

获取原文

摘要

Metaphase chromosome analysis is one of the primary techniques utilized in cytogenetics. Observations of chromosomal segments or translocations during metaphase can indicate structural changes in the cell genome, and is often used for diagnostic purposes. Karyotyping of the chromosomes micro-photographed under metaphase is done by characterizing the individual chromosomes in cell spread images. Currently, considerable effort and time is spent to manually segment out chromosomes from cell images, and classifying the segmented chromosomes into one of the 24 types, or for diseased cells to one of the known translocated types. Segmenting out the chromosomes in such images can be especially laborious and is often done manually, if there are overlapping chromosomes in the image which are not easily separable by image processing techniques. Many techniques have been proposed to automate the segmentation and classification of chromosomes from spread images with reasonable accuracy, but given the criticality of the domain, a human in the loop is often still required. In this paper, we present a method to segment out and classify chromosomes for healthy patients using a combination of crowdsourcing, preprocessing and deep learning, wherein the non-expert crowd from CrowdFlower is utilized to segment out the chromosomes from the cell image, which are then straightened and fed into a (hierarchical) deep neural network for classification. Experiments are performed on 400 real healthy patient images obtained from a hospital. Results are encouraging and promise to significantly reduce the cognitive burden of segmenting and karyotyping chromosomes.
机译:中期染色体分析是细胞遗传学中使用的主要技术之一。在中期期间的染色体区段或易位的观察可以表明细胞基因组的结构变化,并且通常用于诊断目的。通过在细胞扩展图像中表征单个染色体来进行微染色的染色体的核型化。目前,花费了相当大的努力和时间来手动将染色体从细胞图像分割出来,并将分段染色体分类为24种类型中的一种,或者对已知的展位类型之一的患病细胞。分割出在这样的图像的染色体可能是特别费力的,并且通常手动完成,如果有在图像中重叠的染色体其不是通过图像处理技术容易地分离。已经提出了许多技术来自动化具有合理精度的展开图像的分割和分类,但鉴于域的临界性,仍然需要循环中的人。在本文中,我们提出了一种用于使用众包,预处理和深度学习的组合进行分割和分类健康患者的染色体的方法,其中来自众人的非专业人群被利用来从细胞图像中分割出染色体,这是然后拉直并进入(分层)深神经网络进行分类。对从医院获得的400个真实健康的患者图像进行实验。结果令人鼓舞并承诺显着降低分段和核型染色体的认知负担。

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