基于DB-Scan算法的结肠癌检测与分层分析

Gundlapalle Raiesh, Boda Saroia, Manian Dhivya, A. B. Gurulakshmi
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引用次数: 8

摘要

组织病理学检查是结论和回顾结肠恶性肿瘤的基础。在任何情况下,该技术都是主观的,并且在检查中提示必要的内部/隐藏观众区分,因为它主要依赖于组织病理学家的图形评估。因此,需要一种可靠的PC支持技术,它可以自然地将有害和普通的结肠测试分组;然而,由于异常的临近,自动化这个策略的要求很高。本文介绍了一种从活检检查中识别结肠疾病的生产技术,该技术包括四个重要阶段。本文提出了一种区分结肠肿瘤和活检检查的DB-SCAN估计方法。在建议的方法中,从一开始,使用DB-SCAN配置对结肠活检测试进行预处理,以形成一组冗余位置,其中形成组或簇。在这一点上,聚集区域内的异常被创建为一个树形结构,根据选择树,其中异常是中心,中心之间的连接是基于异常数据交付的。此时,基于熵的异常评分计算将在树的每个中心完成。利用信息拾取技术计算例外情况的得分。最后,实现了对正常细胞和有害细胞的分值排序。实验结果表明,与现有策略相比,本文提出的策略具有更好的效果。它进一步称赞,建议的程序是充分的结肠肿瘤鉴定过程。在Matlab工作平台上进行了实验,实验结果表明,该方法具有较高的成组精度。
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DB-Scan Algorithm based Colon Cancer Detection And Stratification Analysis
Histopathological examination of tissue models is basic for the conclusion and reviewing of colon malignancy. In any case, the technique is subjective and prompts imperative intra/bury spectator distinction in the examination as it predominantly relies upon the graphical evaluation of histopathologists. Thus, a tried and true PC supported technique, which can naturally group harmful and ordinary colon tests are required; however, automating this strategy is demanding because of the nearness of exceptions. In this paper, a productive technique for identifying colon disease from biopsy tests which comprise of four imperative stages. DB-SCAN estimation to distinguish colon tumor from biopsy tests is presented in this paper. In the proposed approach, from the outset, the colon biopsy tests are preprocessed using DB-SCAN configuration to make a set of redundant localities in which groups or clusters are formed. At that point, the exceptions inside the bunched areas are created as a tree structure in light of the choice tree in which the anomalies are hubs, and the connection between hubs are delivered based on data about exceptions. At that point, entropy-based exception score calculation will be done on every hub of the tree. The Information picks up technique is utilized to figure the score for the exceptions. At long last, score based grouping is accomplished to order the ordinary or harmful cells. Experimental trials exhibit, the proposed strategy has better outcomes contrasted to existing strategies. It furthermore acclaims that the proposed procedure is adequate for the colon tumor identification process. The proposed strategy is executed on Matlab working platform and the investigations exhibit that the proposed technique has high accomplished high grouping precision contrasted and different strategies.
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