2018
DOI: 10.1002/jemt.23170
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Plasmodium life cycle stage classification based quantification of malaria parasitaemia in thin blood smears

Abstract: Visual inspection for the quantification of malaria parasitaemiain (MP) and classification of life cycle stage are hard and time taking. Even though, automated techniques for the quantification of MP and their classification are reported in the literature. However, either reported techniques are imperfect or cannot deal with special issues such as anemia and hemoglobinopathies due to clumps of red blood cells (RBCs). The focus of the current work is to examine the thin blood smear microscopic images stained wi… Show more

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Cited by 35 publications
(29 citation statements)
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References 39 publications
(49 reference statements)
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“…In the past few years, researchers have focused their attention on the development of automated tools and systems in the domain of computer vision that could detect and classify the anomalies in lesions in computed tomography (CT) and other imageries (Abbas et al, ; Abbas, Saba, Mohamad, et al, ; Abbas, Saba, Rehman, et al, ; M. A. Khan, Akram, Sharif, Awais, et al, ; M. A. Khan, Akram, Sharif, Javed, et al, ; M. A. Khan, Akram, Sharif, Shahzad, et al, ; Nasir et al, ; Rehman, Abbas, Saba, Mahmood, & Kolivand, ; Rehman, Abbas, Saba, Mehmood, et al, ; Rehman, Abbas, Saba, Rahman, et al, ; Saba et al, ; Yousaf et al, ). Majority of the previous research work has focused on the early detection of lungs cancer using the texture‐based interpretation of chest CTs (Reeves & Kostis, ).…”
Section: Introductionmentioning
confidence: 99%
“…In the past few years, researchers have focused their attention on the development of automated tools and systems in the domain of computer vision that could detect and classify the anomalies in lesions in computed tomography (CT) and other imageries (Abbas et al, ; Abbas, Saba, Mohamad, et al, ; Abbas, Saba, Rehman, et al, ; M. A. Khan, Akram, Sharif, Awais, et al, ; M. A. Khan, Akram, Sharif, Javed, et al, ; M. A. Khan, Akram, Sharif, Shahzad, et al, ; Nasir et al, ; Rehman, Abbas, Saba, Mahmood, & Kolivand, ; Rehman, Abbas, Saba, Mehmood, et al, ; Rehman, Abbas, Saba, Rahman, et al, ; Saba et al, ; Yousaf et al, ). Majority of the previous research work has focused on the early detection of lungs cancer using the texture‐based interpretation of chest CTs (Reeves & Kostis, ).…”
Section: Introductionmentioning
confidence: 99%
“…The aforementioned studies discuss the importance of lesion enhancement, which is the one, the primary steps for an accurate classification. For image segmentation, they mostly utilize well‐known techniques such as K‐means, watershed, Fuzzy C‐means, Otsu thresholding and to name a few (Abbas et al, , ; Husham, Alkawaz, Saba, Rehman, & Alghamdi, ; Jamal, Hazim Alkawaz, Rehman, & Saba, ; Norouzi et al, ; Saba et al, ,b; Waheed, Alkawaz, Rehman, Almazyad, & Saba, ). The saliency methods are also employed for lesion segmentation with improved performance.…”
Section: Related Workmentioning
confidence: 99%
“…To test the performance of the designed model, different brain tumor data sets have been used by researchers (Abbas et al, ; Abbas et al, ; Saba et al, ). Data sets published by Medical Image Computing and Computer‐Assisted Intervention (MICCAI) conference under Brain Tumour Segmentation (BRATS) Challenge have become the benchmark to test the model performance and make a comparison with other models.…”
Section: Literature Surveymentioning
confidence: 99%