Malaria Parasite Detection using Residual Attention U-Net

Chiang Kang Tan, C. M. Goh, S. Aluwee, Siak Wang Khor, C. M. Tyng
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引用次数: 1

Abstract

Malaria is a life-threatening disease caused by Plasmodium parasites, and which is still a serious health concern worldwide nowadays. However, it is curable if early diagnosis could be performed. Due to the lack of access to expertise for diagnosis of the disease, often in poorly developed and remote areas, an automated yet accurate diagnostic solution is sought. In Malaysia, there exists 5 types of malaria parasites. As an initial proof of concept, automated segmentation of one of the types, Plasmodium falciparum, on thin blood smear was experimented using our proposed Residual Attention U-net, a type of Convolutional Neural Network that is used in deep learning system. Results showed an accuracy of 0.9687 and precision of 0.9691 when the trained system was used on verified test data.
残留注意力u网检测疟疾寄生虫
疟疾是由疟原虫引起的一种危及生命的疾病,目前仍是全世界严重的健康问题。然而,如果早期诊断,它是可以治愈的。由于缺乏疾病诊断的专门知识,往往在欠发达和偏远地区,因此寻求一种自动化但准确的诊断解决方案。在马来西亚,有5种疟疾寄生虫。作为概念的初步证明,使用我们提出的残余注意力U-net(一种用于深度学习系统的卷积神经网络)对薄血涂片上的恶性疟原虫进行了自动分割实验。结果表明,训练后的系统在经过验证的测试数据上的准确率为0.9687,精密度为0.9691。
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