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A Review of Automated Methods for the Detection of Sickle Cell Disease

机译:检测镰状细胞病的自动化方法综述

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摘要

Detection of sickle cell disease is a crucial job in medical image analysis. It emphasizes elaborate analysis of proper disease diagnosis after accurate detection followed by a classification of irregularities, which plays a vital role in the sickle cell disease diagnosis, treatment planning, and treatment outcome evaluation. Proper segmentation of complex cell clusters makes sickle cell detection more accurate and robust. Cell morphology has a key role in the detection of the sickle cell because the shapes of the normal blood cell and sickle cell differ significantly. This review emphasizes state-of-the-art methods and recent advances in detection, segmentation, and classification of sickle cell disease. We discuss key challenges encountered during the segmentation of overlapping blood cells. Moreover, standard validation measures that have been employed to yield performance analysis of various methods are also discussed. The methodologies and experiments in this review will be useful to further research and work in this area.
机译:镰状细胞疾病的检测是医学图像分析的重要作用。它强调精确检测后对适当的疾病诊断进行精细分析,然后进行违规分类,这在镰状细胞疾病诊断,治疗计划和治疗结果评估中起着至关重要的作用。复杂细胞簇的适当分割使镰状细胞检测更准确和坚固。细胞形态在检测镰状细胞中具有关键作用,因为正常血细胞和镰状细胞的形状显着不同。本综述强调了镰状细胞疾病的检测,细分和分类的最先进的方法和最近的进展。我们讨论在重叠血细胞分割期间遇到的关键挑战。此外,还讨论了用于产生各种方法的性能分析的标准验证措施。本综述中的方法和实验将在该领域进一步研究和工作是有用的。

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