Stacked Ensemble Deep Learning Technique to Detect Malaria Parasite in Blood Smear

S. Paul, Salil Batra
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Abstract

Malaria Parasites are transferred from infected female mosquitos to humans which can lead to the death of the person. Malaria affects the majority of people each year, and most of these cases arise in remote areas. There has been lots of research in the field of Malaria Parasite detection using the automated technique, but these techniques require high computational power, and in remote areas, the availability of such systems is very unlikely. The proposed Ensemble Model can detect the presence of Malaria Parasite in the thick blood smear by taking the average of the output layers of ResNet50 and the custom CNN model. The models' performance has been evaluated and results reveal that it achieved 0.97 Specificity, 0.98 Sensitivity, 0.97 Precision, and 0.972 Accuracy with an image size of 64x64x3. The overall file size of the model is under 15Mb that also makes it portable.
层叠集成深度学习技术检测血液涂片中的疟原虫
疟疾寄生虫由受感染的雌蚊传染给人类,可导致人死亡。疟疾每年影响大多数人,其中大多数病例发生在偏远地区。在使用自动化技术检测疟疾寄生虫领域已经进行了大量研究,但这些技术需要很高的计算能力,而且在偏远地区,这种系统的可用性非常不可能。本文提出的集成模型通过对ResNet50的输出层和自定义CNN模型的输出层取平均值,可以检测出粘稠血涂片中是否存在疟原虫。对模型的性能进行了评估,结果表明,在图像尺寸为64x64x3的情况下,该模型的特异性为0.97,灵敏度为0.98,精度为0.97,准确度为0.972。该模型的整体文件大小在15Mb以下,这也使其易于携带。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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