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Serologic Diagnosis of Taenia Solium Cysticercosis through Linear Unmixing Analysis of Biosignals from ACEK Capacitive Sensing Method

机译:通过亚康斯电容传感方法直线解密分析生物信号的血清症溶血性血清诊断

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Cysticercosis is a parasitic infection caused by adult tapeworms, and it constantly plagues the livelihoods of people from subsistence farming communities in developing countries. Diagnosis of Cysticercosis typically requires both central nervous system imaging and serological testing. The most common methods in serological testing are Enzyme-linked Immunosorbent Assay (ELISA) and Enzyme Immuno-electrotransfer Blot (EITB). Both ELISA and EITB methods are excessively time-consuming and labor-intensive. Recent research indicates that a shorter assay time and/or higher sensitivity can be achieved by integrating alternate current electrokinetics (ACEK) with biosensing. However, the raw time-series data is very noisy and the size of the dataset is extremely small, which would bring two potential challenges. On one hand, traditional statistical methods cannot extract features robust enough for high sensitivity as well as high specificity. On the other hand, the small data size limits the usage of automatic feature extractors such as deep neural networks. In this paper, we propose a linear unmixing based approach by exploiting the possibility that the time-series biological signals can be represented as linear combinations of source signals. This paper makes distinctive contributions to the field of bio-signal by introducing the unmixing model from the image processing domain to the time-series domain. Experimental results on the classification of Cysticercosis using 123 samples demonstrate the robustness and superior performance of the linear unmixing method over other conventional classifiers in handling small datasets.
机译:囊尾蚴病是成人绦虫引起的寄生虫感染,并且不断困扰发展中国家生育农业社区的人民生计。囊尾蚴病的诊断通常需要中枢神经系统成像和血清学检测。血清学检测中最常用的方法是酶联免疫吸附测定(ELISA)和酶免疫电转换印迹(EITB)。 ELISA和EITB的方法都过于耗时和劳动密集型。最近的研究表明,通过将具有生物传感的交替电流电动学(ACEK)集成,可以实现更短的测定时间和/或更高的灵敏度。但是,原始时间序列数据非常嘈杂,数据集的大小非常小,这将带来两个潜在的挑战。一方面,传统的统计方法无法提取特征足够高的灵敏度和高特异性。另一方面,小数据大小限制了自动特征提取器(如深神经网络)的使用。在本文中,我们通过利用时间序列生物学信号可以表示为源信号的线性组合的可能性提出基于线性的方法。本文通过将来自图像处理域中的未混合模型引入时间序列域来对生物信号领域进行独特的贡献。使用123个样本进行囊尾蚴病分类的实验结果证明了线性解混方法在处理小型数据集中的其他传统分类器中的鲁棒性和优越性。

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