2018
DOI: 10.1002/jemt.23071
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Microscopic malaria parasitemia diagnosis and grading on benchmark datasets

Abstract: Malaria parasitemia diagnosis and grading is hard and still far from perfection. Inaccurate diagnosis and grading has caused tremendous deaths rate particularly in young children worldwide. The current research deeply reviews automated malaria parasitemia diagnosis and grading in thin blood smear digital images through image analysis and computer vision based techniques. Actually, state-of-the-art reveals that current proposed practices present partially or morphology dependent solutions to the problem of comp… Show more

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Cited by 50 publications
(29 citation statements)
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References 117 publications
(138 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%
“…One of the challenging tasks in machine learning is to handle class imbalance issue. Due to an unequal number of samples of different classes in training data, the trained model can become biased towards one class leading to model poor performance (Rehman, Abbas, Saba, Mahmood, et al, ; Rehman, Abbas, Saba, Mehmood, et al, ; Rehman, Abbas, Saba, Rahman, et al, ). To address this problem, we worked on three different methods of class balancing as listed below: No balancing : Training models without any class imbalance handling technique. Sample‐based balancing : Let U is set of all patches, equal number of random samples ( E ) from each class are selected and these samples are assumed to be representative of its particular class.…”
Section: Proposed Methodologymentioning
confidence: 99%
“…Brain tumors are also categorized based on their origin: primary brain tumors are the lesions that emerge within the brain whereas secondary brain tumors (metastatic tumors) originate at a different location of the body and move to the brain. There are different categorization schemes designed by researchers but the scheme designed by the World Health Organization (WHO) is considered to be the standard (Aurangzeb, Muhammad Attique, Saba, Javed, & Iqbal, ; Fahad, Khan, Saba, Rehman, & Iqbal, ; Husham, Alkawaz, Saba, Rehman, & Alghamdi, ; Jamal, Hazim Alkawaz, Rehman, & Saba, ; Khan et al, , ; Rehman, Abbas, Saba, Rahman, et al, ; Rehman, Abbas, Saba, Mehmood, et al, ; Rehman, Abbas, Saba, Mahmood, & Kolivand, ; Saba, ; Saba, Al‐Zahrani, & Rehman, ; Saba, Rehman, Mehmood, Kolivand, Uddin, et al, ; Saba, Rehman, Mehmood, Kolivand, & Sharif, ). WHO has made more than 120 categories for a brain tumor and each category is further graded from I to IV (Louis et al, ).…”
Section: Introductionmentioning
confidence: 99%
“…The advancement in the medical images analysis has significantly improved the health care system in the last two decades (Rehman, Abbas, Saba, Mahmood, & Kolivand, ; Rehman et al, b, 2018c). Generally, diagnosing DR is performed by an ophthalmologist through manual or visual interpretation of patient, which is time‐consuming as well prone to human error.…”
Section: Introduction and Related Workmentioning
confidence: 99%