Space-invariant signature algorithm processing of ultrasound images for the detection and localization of early abnormalities in animal tissues

Kushagra Parolia, M. Gupta, P. Babyn, W. Zhang, D. Bitner
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Abstract

In this paper we present an innovative space-variance approach named as “Space-Invariant Signature Algorithm (SISA)” for processing images from active systems, such as cancer cells, tumor growth, and dead cells, for the detection and localization of abnormalities at an early stage. In this paper, a SISA processing algorithm is developed, and this algorithm is tested on animal tissues such as pigs and chicken tissues. The abnormality in an active system can be defined as the obstacle or a failure which impedes the activities in tissues such as smooth flow of blood or electrical signals etc. Due to this impeding nature of the abnormality, some parameter perturbations are induced. In this paper using the SISA approach, these perturbations were detected in a preliminary experiment on animal tissues. The degree and position of the space-variance helps us in the detection and localization of abnormality even at an early (incipient) stage. The space-variance signature pattern is named as a ‘SISA signature pattern’. In the absence of any abnormality, the signature pattern is space invariant, whereas, in the presences of any abnormality, the SISA signature pattern varies in the space (space-variant). The basic experimental studies on animal tissues using ultra sound imaging strongly suggest a possible use of the SISA approach as a non-invasive method for the detection and localization of abnormalities in biological tissues such as cancer cells non-invasively.
空间不变签名算法处理超声图像,用于动物组织早期异常的检测和定位
在本文中,我们提出了一种创新的空间方差方法,称为“空间不变签名算法(SISA)”,用于处理来自活跃系统(如癌细胞、肿瘤生长和死细胞)的图像,以便在早期阶段检测和定位异常。本文开发了一种SISA处理算法,并在猪、鸡等动物组织上进行了实验。活动系统中的异常可以定义为阻碍组织活动的障碍或故障,如血液或电信号的顺畅流动等。由于这种异常的阻碍性质,引起了一些参数的扰动。在本文中,使用SISA方法,在动物组织的初步实验中检测到这些扰动。空间变异的程度和位置有助于我们在早期发现和定位异常。空间方差签名模式被命名为“SISA签名模式”。在没有任何异常的情况下,签名模式是空间不变的,而在存在任何异常的情况下,SISA签名模式在空间中变化(空间变异体)。利用超声成像对动物组织进行的基础实验研究强烈表明,SISA方法可能作为一种非侵入性方法,用于检测和定位生物组织中的异常,如癌细胞。
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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