Type P63 digitized color images performs better identification for ovarian reproductive tissue analysis

T. S. Sazzad, L. Armstrong, A. K. Tripathy
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引用次数: 1

Abstract

For pathology routine examination microscopic biopsy slides are considered as a most viable choice to analyze and identity ovarian reproductive tissues. Experts require substantial amount of time to process the biopsy slides under the microscope. Electronic modalities are not suitable to analyze smaller tissues especially ovarian reproductive tissues. To reduce the time and effort it would be a better choice to incorporate a computer based approach. In this paper existing research work related review has been carried out and a new modified approach has been presented. The proposed study results indicate improved and an acceptable accuracy rate in comparison to manual microscopic analysis and other existing computer based approaches.
P63型数字化彩色图像对卵巢生殖组织分析具有较好的识别效果
对于病理常规检查,显微活检切片被认为是分析和识别卵巢生殖组织的最可行的选择。专家需要大量的时间在显微镜下处理切片。电子模式不适合分析较小的组织,特别是卵巢生殖组织。为了减少时间和精力,采用基于计算机的方法将是一个更好的选择。本文对已有的研究工作进行了综述,并提出了一种新的改进方法。提出的研究结果表明,与人工显微分析和其他现有的基于计算机的方法相比,该方法的准确率有所提高,并且可以接受。
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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