CYCVDec 3, 2013

Medical Aid for Automatic Detection of Malaria

arXiv:1312.0940v118 citations
Originality Synthesis-oriented
AI Analysis

This provides a rapid and standardized tool to assist pathologists and doctors in remote areas, though it is incremental as it builds on existing image processing techniques.

The paper tackles the problem of detecting malaria by automatically identifying Plasmodium in microscopic blood images, achieving over 98% accuracy in tests.

The analysis and counting of blood cells in a microscope image can provide useful information concerning to the health of a person. In particular, morphological analysis of red blood cells deformations can effectively detect important disease like malaria. Blood images, obtained by the microscope, which is coupled with a digital camera, are analyzed by the computer for diagnosis or can be transmitted easily to clinical centers than liquid blood samples. Automatic analysis system for the presence of Plasmodium in microscopic image of blood can greatly help pathologists and doctors that typically inspect blood films manually. Unfortunately, the analysis made by human experts is not rapid and not yet standardized due to the operators capabilities and tiredness. The paper shows how effectively and accurately it is possible to identify the Plasmodium in the blood film. In particular, the paper presents how to enhance the microscopic image and filter out the unnecessary segments followed by the threshold based segmentation and recognize the presence of Plasmodium. The proposed system can be deployed in the remote area as a supporting aid for telemedicine technology and only basic training is sufficient to operate it. This system achieved more than 98 percentage accuracy for the samples collected to test this system.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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