利用计算视觉算法客观评估白细胞的新方法。

Q3 Medicine
Advances in Hematology Pub Date : 2018-11-13 eCollection Date: 2018-01-01 DOI:10.1155/2018/4716370
Cesar Mauricio Rodríguez Barrero, Lyle Alberto Romero Gabalan, Edgar Eduardo Roa Guerrero
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引用次数: 6

摘要

在医学领域,血液分析是确定病人生理状态的最重要的检查之一。在血液样本的分析中,一个重要的过程是白细胞的计数和分类,这是一项人工完成的,是一项详尽的,主观的,容易出错的活动,这是由于身体疲劳而产生的专业人员,因为它是一种消耗长时间的方法。本研究的目的是开发一个血细胞识别和分类系统,通过实现高斯径向基函数(RBFN)网络提取其细胞核,并随后通过形态特征、颜色和物体之间的距离对其进行分类。最后,通过测定系数验证得到的结果表明,对个体白细胞分类的总体准确率为97.9%,而对细胞类型分类的准确率为淋巴细胞93.4%,单核细胞97.37%,中性粒细胞79.5%,嗜酸性粒细胞73.07%,嗜碱性粒细胞100%。通过这种方式,所提出的系统成为一种可靠的技术支持,有助于改进血细胞鉴定的分析,因此将有利于低水平血液学机构以及医学领域的研究过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Novel Approach for Objective Assessment of White Blood Cells Using Computational Vision Algorithms.

A Novel Approach for Objective Assessment of White Blood Cells Using Computational Vision Algorithms.

A Novel Approach for Objective Assessment of White Blood Cells Using Computational Vision Algorithms.

A Novel Approach for Objective Assessment of White Blood Cells Using Computational Vision Algorithms.

In the field of medicine, the analysis of blood is one of the most important exams to determine the physiological state of a patient. In the analysis of the blood sample, an important process is the counting and classification of white blood cells, which is done manually, being an exhaustive, subjective, and error-prone activity due to the physical fatigue that generates the professional because it is a method that consumes long laxes of time. The purpose of the research was to develop a system to identify and classify blood cells, by the implementation of the networks of Gaussian radial base functions (RBFN) for the extraction of its nucleus and subsequently their classification through the morphological characteristics, its color, and the distance between objects. Finally, the results obtained with the validation through the coefficient of determination showed an overall accuracy of 97.9% in the classification of the white blood cells per individual, while the precision in the classification by type of cell evidenced results in 93.4% for lymphocytes, 97.37% for monocytes, 79.5% for neutrophils, 73.07% for eosinophils, and a 100% in basophils with respect to the professional. In this way, the proposed system becomes a reliable technological support that contributes to the improvement of the analysis for identification of blood cells and therefore would benefit the low-level hematology establishments as well as to the processes of research in the area of medicine.

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来源期刊
Advances in Hematology
Advances in Hematology Medicine-Hematology
CiteScore
3.30
自引率
0.00%
发文量
10
审稿时长
15 weeks
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