使用图像分析的便携式血型检测装置

Jennifer C. Dela Cruz, Ramon G. Garcia, Annissa Vi C. Diaz, Angelika Mae B. Diño, Danielle Jane I. Nicdao, Christine Shayne S. Venancio
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引用次数: 3

摘要

血型可以通过红细胞中抗原的存在与否来确定,并可以通过ABO (A, B, AB, O)和Rh D(阳性或阴性)系统来分类。在输血或任何医疗手术之前,了解自己的血型是最关键的步骤之一,以防止接受不相容血液的风险,这可能导致患者不良甚至致命的反应。虽然全自动血液检测仪器已经在一些大医院使用,但其体积大,处理时间长,限制了其在紧急情况下使用的能力。因此,在现场血型时,由于人为错误,使用传统的或载玻片法,其准确性较低。本文提出了一种基于树莓派的图像处理系统,该系统能够使用Canny边缘和轮廓检测来确定所有八种类型的血液。所提出的系统检测到的所有血型都与已知的血液样本相匹配,用于所有五个样本的控制测试,每个样本的已知A+, $B$+ AB+, O+, A-, B-, AB-和O-进行五次试验。并进行了非对照试验,将所提出的原型识别的十种随机血型的结果与试管法的结果进行了比较。这十个样本都与临床实验室的结果相符。这种便携式自动化设备可以避免人为错误,而不会在短时间内获得准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Portable Blood Typing Device Using Image Analysis
Blood type can be determined by the presence or absence of antigens in the red blood cells, and can be classified by the ABO (A, $B$, AB, O) and Rh D (either positive or negative) systems. Knowing one's blood type is one of the most crucial steps before blood transfusion or any medical operations to prevent the risk of receiving incompatible blood that could lead to adverse or even fatal reactions to patients. Although fully automated blood testing instruments are already being used in some major hospitals, its large size and long processing time, limit its ability to be used in emergency situations. Hence, during onsite blood typing, the traditional or the slide method is being used, which is less accurate due to human errors. This paper presents a raspberry pi based image processing system that is capable of determining all eight types of blood using Canny Edge and Contour Detection. All blood types detected by the proposed system matched that of the known blood samples for the controlled testing of all five samples with five trials each sample for the known A+, $B$+ AB+, O+, A-, B-, AB- and O-. Uncontrolled testing was also performed to compare the results of the ten random blood types identified by the proposed prototype to the results obtained from test tube method. All these ten samples matched the results obtained from the clinical laboratory. This portable and automated device could avoid human errors, without risking accurate results that could be obtain in a short period of time.
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