 MAlarial Parasite Detection
 MAlarial Parasite DetectionAutomatic detection of Plasmodium parasites from microscopic blood images
        Tehreem  Fatima, Muhammad Shahid Farid
Abstract:
      Malaria is caused by Plasmodium parasite. It is transmitted by female Anopheles bite. Thick and thin blood smears of the patient are manually examined   by an expert pathologist with the help of a microscope to diagnose the   disease. Such expert pathologists may not be available in many parts of   the world due to poor health facilities.   Moreover, manual inspection requires full concentration of the   pathologist and it is a tedious and time consuming way to detect the   malaria. Therefore, development of automated systems is momentous for a   quick and reliable detection of malaria. It can reduce the false   negative rate and it can help in detecting the disease at early stages   where it can be cured effectively. In this paper, we present a computer   aided design to automatically detect malarial parasite from microscopic   blood images. The proposed method uses bilateral filtering to remove the   noise and enhance the image quality. Adaptive thresholding and   morphological image processing algorithms are used to detect the malaria   parasites inside individual cell. To measure the efficiency of the   proposed algorithm, we have tested our method on a NIH Malaria dataset   and also compared the results with existing similar methods. Our method   achieved the detection accuracy of more than 91% outperforming the   competing methods. The results show that the proposed algorithm is   reliable and can be of great assistance to the pathologists and   hematologists for accurate malaria parasite detection. 
      
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Last updated: Sep 21, 2019