RGB pixel analysis of fingertip video image captured from sickle cell patient with low and high level of hemoglobin

M. Hasan, N. Sakib, Richard R. Love, Sheikh Iqbal Ahamed
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引用次数: 21

Abstract

The demand for medical image processing is ever growing, especially for medical device manufacturers, researchers, and innovators. In this article, we present the image processing of a fingertip video to investigate the relationship between image pixel information and different hemoglobin (Hb) levels. We use the smartphone camera to record the fingertip videos of different sickle cell patients. We also collect their clinical Hb records. We extract the red, green and blue (RGB) pixel of the video image and make the histogram of selected frames for each video. The averaged histogram values of those selected frames are used as an input feature matrix in the regression analysis. Linear regression as well as the partial least squares (PLS) algorithm is applied to the input feature matrix. We consider five sickle cell patients who received the blood transfusion. We analyze the thirty fingertip videos from five patients where each patient gave three videos at the same time. Fifteen fingertip videos are recorded before blood transfusion, and rest of the videos are captured after two weeks of their blood transfusion. Matlab tool is used for the data analysis and visual image presentation of the RGB image histogram values, masked RGB image, and the confusion matrix of this paper. The result generated from linear regression and the goodness of fit of PLS model shows the reliable performance of this research work.
镰状细胞患者高、低血红蛋白指尖视频图像的RGB像素分析
对医疗图像处理的需求不断增长,特别是医疗设备制造商、研究人员和创新者。在这篇文章中,我们提出了一个指尖视频的图像处理,以探讨图像像素信息和不同血红蛋白(Hb)水平之间的关系。我们使用智能手机摄像头记录不同镰状细胞患者的指尖视频。我们还收集他们的临床Hb记录。我们提取视频图像的红、绿、蓝(RGB)像素,并为每个视频制作所选帧的直方图。这些选择帧的平均直方图值被用作回归分析中的输入特征矩阵。将线性回归和偏最小二乘(PLS)算法应用于输入特征矩阵。我们考虑五个接受输血的镰状细胞病人。我们分析了来自5个病人的30个指尖视频,每个病人同时给出3个视频。在输血前记录15个指尖视频,其余视频在输血两周后拍摄。本文利用Matlab工具对RGB图像的直方图值、掩模RGB图像以及混淆矩阵进行数据分析和视觉图像呈现。线性回归的结果和PLS模型的拟合优度表明了本研究工作的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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