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Image Analysis Approach for Development of a Decision Support System for Detection of Malaria Parasites in Thin Blood Smear Images

机译:薄血涂片图像中疟原虫检测决策支持系统开发的图像分析方法

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This paper describes development of a decision support system for diagnosis of malaria using color image analysis. A hematologist has to study around 100 to 300 microscopic views of Giemsa-stained thin blood smear images to detect malaria parasites, evaluate the extent of infection and to identify the species of the parasite. The proposed algorithm picks up the suspicious regions and detects the parasites in images of all the views. The subimages representing all these parasites are put together to form a composite image which can be sent over a communication channel to obtain the opinion of a remote expert for accurate diagnosis and treatment. We demonstrate the use of the proposed technique for use as a decision support system by developing an android application which facilitates the communication with a remote expert for the final confirmation on the decision for treatment of malaria. Our algorithm detects around 96% of the parasites with a false positive rate of 20%. The Spearman correlation r was 0.88 with a confidence interval of 0.838 to 0.923, p 0.0001.
机译:本文介绍了使用彩色图像分析技术诊断疟疾的决策支持系统的开发。血液学家必须研究吉姆萨染色的薄血涂片图像的大约100到300个显微镜视图,以检测疟疾寄生虫,评估感染程度并确定该寄生虫的种类。提出的算法提取可疑区域并检测所有视图图像中的寄生虫。代表所有这些寄生虫的子图像一起形成一个合成图像,可以通过通信通道发送该合成图像,以获得远程专家的意见,以进行准确的诊断和治疗。我们通过开发一个可促进与远程专家进行沟通以最终确定疟疾治疗决定的android应用程序,演示了将拟议技术用作决策支持系统的情况。我们的算法可检测到约96%的寄生虫,假阳性率为20%。 Spearman相关系数r为0.88,置信区间为0.838至0.923,p <0.0001。

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