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“Deep Learning based diagnosis of sickle cell anemia in human RBC”

机译:“人类RBC中镰状细胞贫血的深入学习诊断”

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Sickle cell disease is a type of anemia distinguish by irregular erythrocytes that cause blood stream blocking, it is a severe hematological condition that causes people to be treated regularly during their lives and may also result in death. Standard RBC have a spherical form and are compact and resilient, allowing them to travel across narrow capillaries with ease. Irregular RBC’s, on the other hand, have a sickle appearance and are rigid and blunt, allowing them to get trapped in thin blood vessels. Patients will experience discomfort as a result of this, and low oxygen and exhaustion will result. In this research a Deep CNN model, to classy sickle cell disease and data augmentation technique such as flipping, zooming, height and width shift done to get much better accuracy, in this research Idb1 erythrocytes microscopic photographs of blood smears obtained from patients infected with sickle cell, and the dataset is divided into test and train for each classis which are circular, elongated and others. For the classification task five pre trained model are used which are VGG16, VVG19, ResNet50, ResNet101 and Inception V3. Proposed models’ efficiency is shown by the results of the work, which offers better accuracy of the classification.
机译:镰状细胞疾病是一种贫血类型,通过不规则的红细胞来引起血流阻断,它是一种严重的血液病变,导致人们在生命期间定期治疗,也可能导致死亡。标准RBC具有球形形式,紧凑且有弹性,使它们能够轻松地穿过狭窄的毛细血管。另一方面,不规则的RBC具有镰刀外观,刚性和钝,使它们陷入薄血管中。患者将由于此而经历不适,因此低氧气和耗尽。在这项研究中,一个深入的CNN模型,对优雅的镰状细胞病和数据增强技术,如翻转,变焦,高度和宽度偏移,以获得更好的准确性,在本研究中,IDB1红细胞从感染镰刀患者获得的血液涂片的微观照片电池,数据集分为圆形,细长等的每个类的测试和火车。对于分类任务,使用五个预训练模型,其是VGG16,VVG19,Reset50,Resnet101和Inception V3。所提出的模型的效率如作品的结果所示,这提供了更好的分类准确性。

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