Evaluating the Performance of Deep Learning Frameworks for Malaria Parasite Detection Using Microscopic Images of Peripheral Blood Smears.

IF 3.3
Dilber Uzun Ozsahin, Mubarak Taiwo Mustapha, Basil Bartholomew Duwa, Ilker Ozsahin
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引用次数: 7

Abstract

Malaria is a significant health concern in many third-world countries, especially for pregnant women and young children. It accounted for about 229 million cases and 600,000 mortality globally in 2019. Hence, rapid and accurate detection is vital. This study is focused on achieving three goals. The first is to develop a deep learning framework capable of automating and accurately classifying malaria parasites using microscopic images of thin and thick peripheral blood smears. The second is to report which of the two peripheral blood smears is the most appropriate for use in accurately detecting malaria parasites in peripheral blood smears. Finally, we evaluate the performance of our proposed model with commonly used transfer learning models. We proposed a convolutional neural network capable of accurately predicting the presence of malaria parasites using microscopic images of thin and thick peripheral blood smears. Model evaluation was carried out using commonly used evaluation metrics, and the outcome proved satisfactory. The proposed model performed better when thick peripheral smears were used with accuracy, precision, and sensitivity of 96.97%, 97.00%, and 97.00%. Identifying the most appropriate peripheral blood smear is vital for improved accuracy, rapid smear preparation, and rapid diagnosis of patients, especially in regions where malaria is endemic.

Abstract Image

Abstract Image

Abstract Image

利用外周血涂片显微图像评估疟疾寄生虫检测的深度学习框架的性能。
疟疾在许多第三世界国家是一个重大的健康问题,特别是对孕妇和幼儿而言。2019年,全球约有2.29亿例病例和60万人死亡。因此,快速准确的检测至关重要。这项研究的重点是实现三个目标。第一个是开发一个深度学习框架,能够使用薄的和厚的外周血涂片的显微图像自动准确地分类疟疾寄生虫。二是报告两种外周血涂片中哪一种最适合用于准确检测外周血涂片中的疟原虫。最后,我们用常用的迁移学习模型来评估我们提出的模型的性能。我们提出了一个卷积神经网络,能够准确地预测疟疾寄生虫的存在使用显微镜图像的薄和厚的外周血涂片。采用常用的评价指标对模型进行了评价,结果令人满意。当使用厚外周涂片时,该模型表现较好,准确率、精密度和灵敏度分别为96.97%、97.00%和97.00%。确定最适当的外周血涂片对于提高准确性、快速涂片制备和快速诊断患者至关重要,特别是在疟疾流行地区。
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