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Medical linage Processing by using Soft Computing Methods and Information Fusion

机译:使用软计算方法和信息融合的医学直线处理

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Medical images are increasingly being used within healthcare for diagnosis, planning treatment, guiding treatment and monitoring disease progression. Technically, medical imaging mainly processes uncertain, missing, ambiguous, complementary, inconsistent, redundant contradictory, distorted data and information has a strong structural character. As a general approach, the understanding of any image involves the matching of features extracted from the image with pre-stored models. The production of a high-level symbolic model requires the representation of knowledge about the objects to be modeled, their relationships, and how and when to use the information stored within the model. This paper reports new (semi)automated methods for the segmentation and classification of medical images using soft computing techniques (e.g. fuzzy logic, neural networks, genetic algorithms), information fusion and specific domain knowledge. Fuzzy logic acts as a unified framework for representing and processing both numerical and symbolic information ("hybridization"), as well as structural information constituted mainly by spatial relationships in biomedical imaging. Promising results show the superiority of the soft computing and knowledge-based approach over best traditional techniques in terms of segmentation errors. The classification of different anatomic structures is made by implementing rules yielded both by domain literature and by medical experts. Though the proposed methodology has been implemented and successfully used for model-driven in the domain of medical imaging, the deployed methods are generic and applicable to any structure that can be defined by expert knowledge and morphological image analysis.
机译:医学图像在医疗保健中越来越多地用于诊断,计划治疗,指导治疗和监测疾病进展。从技术上讲,医学成像主要处理不确定,丢失,模棱两可,互补,不一致,冗余矛盾,失真的数据和信息,具有很强的结构特征。作为一般方法,对任何图像的理解都涉及从图像中提取的特征与预存模型的匹配。高层符号模型的产生需要表示有关要建模的对象,它们之间的关系以及如何以及何时使用模型中存储的信息的知识。本文报告了使用软计算技术(例如模糊逻辑,神经网络,遗传算法),信息融合和特定领域知识对医学图像进行分割的新(半)自动方法。模糊逻辑充当表示和处理数字和符号信息(“杂交”)以及主要由生物医学成像中的空间关系构成的结构信息的统一框架。有希望的结果表明,就分割错误而言,软计算和基于知识的方法优于最佳传统技术。通过执行领域文献和医学专家产生的规则对不同的解剖结构进行分类。尽管所提出的方法已被实施并成功地用于医学成像领域中的模型驱动,但是所部署的方法是通用的,适用于可以通过专家知识和形态图像分析定义的任何结构。

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