Currently, approximately $4$ billion people are infected by intestinal parasites worldwide. Diseases caused by such infections constitute a public health problem in most tropical countries, leading to physical and mental disorders, and even death to children and immunodeficient individuals. Although subjected to high error rates, human visual inspection is still in charge of the vast majority of clinical diagnoses. In the past years, some works addressed intelligent computer-aided intestinal parasites classification, but they usually suffer from misclassification due to similarities between parasites and fecal impurities. In this paper, we introduce Deep Belief Networks to the context of automatic intestinal parasites classification. Experiments conducted over three datasets composed of eggs, larvae, and protozoa provided promising results, even considering unbalanced classes and also fecal impurities.
翻译:目前,全世界大约有40亿美元的人受到肠道寄生虫的感染,这种感染引起的疾病在大多数热带国家构成公共卫生问题,导致身心紊乱,甚至导致儿童和免疫不良者死亡。尽管受到高误差率的影响,但人类视觉检查仍然负责绝大多数临床诊断。在过去几年里,一些工作涉及智能计算机辅助肠道寄生虫分类,但由于寄生虫与粪便的相似性,它们通常会受到错误分类。在本文中,我们在自动肠道寄生虫分类方面引入了“深信仰网络 ” 。 对由卵、幼虫和原生虫组成的三个数据集进行的实验提供了良好的结果,即使考虑到不平衡的类别和胎儿不健康。