染料厂工人血液样本毒性的自动检测

E. Priya, A. Kumaran
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引用次数: 0

摘要

纺织加工单位主要使用偶氮染料,这是苯的衍生物。纺织工业排放的有毒污水中含有偶氮染料。它们影响土壤肥力、水资源、海洋生物和生态系统。苯定会刺激皮肤,也会增加血液和骨髓的毒性,从而影响血细胞的产生,从而导致贫血。接触这些苯并染料可诱发溶血性贫血,导致红细胞变形。在这项工作中,提出了一种自动检测毒性的方法,以便在癌症的关键阶段之前提醒工人。拟议的系统由一个便携式装置组成,用于分析血液样本,并将染厂工人的毒性状况从当地卫生中心传送到附近的医院。使用数码显微镜获得涂污血液样本的显微图像。利用拉普拉斯高斯(LoG)分割方法对正常和异常的红细胞图像进行分割。从分割的图像中提取基于几何形状的特征。通过学生的“t”检验选择显著的几何特征。从结果中观察到,这些显著的几何特征显示了正常和异常红细胞之间的区别。这种毒性的早期检测可以帮助现场的工人立即服用药物,从而减少他们健康状况出现逆境的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated detection of toxicity in the blood samples of dye factory workers
Textile processing units largely employ azo dyes which are derivatives of benzene. Toxic sewage discharged from textile industries contains azo dyes. They affect soil fertility, water resources, marine organisms and the ecosystem. Benzedine is responsible for skin irritation and also increases the toxicity in blood and bone marrow which affects the production of blood cells and hence leads to anemia. Exposure to these benzedine dyes can induce hemolytic anemia which leads to deformation of Red Blood Cells (RBCs). In this work, an automated detection of toxicity is proposed to alert the workers prior to the critical stages of cancer. The proposed system consists of a portable unit where the blood samples are analyzed and the toxic status of the dye factory workers can be transmitted from the local health centre to the nearby hospital. Microscopic images of the smeared blood samples are acquired using the digital microscope. These RBC images of normal and abnormal are segmented using Laplacian of Gaussian (LoG) segmentation. Geometric shape based features are extracted from the segmented images. Significant geometric features are chosen by conducting student's `t' test. It is observed from the results that these significant geometric features show discrimination between the normal and abnormal RBCs. This early detection of toxicity can help workers in the site to take immediate medication which could reduce the probability of adversity in their health condition.
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