白细胞形态测量用U -NET主干的比较

Imran Ahmed, D. L. Carní, E. Balestrieri, F. Lamonaca
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引用次数: 2

摘要

血细胞形态参数(MPBC)的测量在血液学检查中起着关键作用,被认为是临床医生诊断人类和动物各种疾病的主要需求之一。显然,诊断的正确性,以及临床医生行动的有效性高度依赖于MPBC测量的准确性。在这种情况下,基于深度学习的MPBC测量系统是一个很有前途的解决方案。在最近的研究中,研究人员将语义分割与各种骨干网络应用于白细胞测量。反之亦然,对所获得的准确性进行的调查很少。事实上,白细胞的准确分割仍然是一项具有挑战性的任务,因为细胞图像、染色技术和成像条件的复杂性强烈影响MPBC测量的准确性。本文比较了U-Net深度学习算法在MPBC中常用的不同主干网下的分割性能。目标是朝着整个MPBC测量系统迈出第一步,该系统能够评估影响幅度的影响,衰减它们(如果可能的话),并评估测量的准确性。目的是提高测量的可靠性,并为临床医生提供进一步的信息来做出决定。
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Comparison of U -NET backbones for morphometric measurements of white blood cell
Measurements of Morphometric Parameters of Blood Cells (MPBC) playa key role in haematological examination, and it is considered as one of the principal needs for clinicians in the diagnosis of various diseases in human and animals. Obliviously, the correctness of the diagnosis, and, as a consequence, the effectiveness of clinician actions is highly dependent on the accuracy of MPBC measurements. In this context, deep learning based MPBC measurement systems are a promising solution. In recent studies, researchers have applied semantic segmentation with various backbone networks for white blood cell measurements. Vice versa, few investigations were done about the achieved accuracy. Indeed, accurate segmentation of white blood cell remains a challenging task because of the complex nature of cell images, staining techniques, and imaging conditions which strongly affects the accuracy of the MPBC measurements. This paper presents a comparison among the segmentation performance carried out by U-Net deep learning algorithm with different backbones typically used for MPBC. The goal is to make a first step towards a whole MPBC measurement system capable of evaluating the effects of the influencing magnitudes, attenuate them (if possible), and evaluate the accuracy of the measurements. The aims are to increase measurement reliability and to give clinicians further information to take their decisions.
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