Automatic detection of dicentric chromosomes is an essential step to estimate radiation exposure and development of end to end emergency bio dosimetry systems. During accidents, a large amount of data is required to be processed for extensive testing to formulate a medical treatment plan for the masses, which requires this process to be automated. Current approaches require human adjustments according to the data and therefore need a human expert to calibrate the system. This paper proposes a completely data driven framework which requires minimum intervention of field experts and can be deployed in emergency cases with relative ease. Our approach involves YOLOv4 to detect the chromosomes and remove the debris in each image, followed by a classifier that differentiates between an analysable chromosome and a non-analysable one. Images are extracted from YOLOv4 based on the protocols described by WHO-BIODOSNET. The analysable chromosome is classified as Monocentric or Dicentric and an image is accepted for consideration of dose estimation based on the analysable chromosome count. We report an accuracy in dicentric identification of 94.33% on a 1:1 split of Dicentric and Monocentric Chromosomes.
翻译:单心染色体的自动检测是估算辐射照射和发展结束紧急生物剂量测定系统的终点的重要步骤。 在事故发生期间,需要处理大量数据,以便进行广泛的测试,以制定质量医疗计划,这需要自动化。目前的方法需要根据数据进行人文调整,因此需要一位人类专家来校准系统。本文建议了一个完全的数据驱动框架,这需要实地专家最低限度的干预,并且可以相对容易地在紧急情况下部署。我们的方法涉及YOLOv4, 以探测染色体并清除每个图像中的碎片,然后是分类器,区分可分析的染色体和不可分析的染色体。根据WHO-BIODOSNET描述的程序,从YOLOv4中提取图像。可分析的染色体被归类为单心或偏心,根据可分析的染色体计数来考虑剂量估计。我们报告,在对1个分心心心和1个单心和1个单心和1个心的立方位中心进行分辨。