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Intelligent image processing techniques for cancer progression detection, recognition and prediction in the human liver

机译:用于癌症进展检测,识别和预测人类肝脏的智能图像处理技术

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Clinical Decision Support (CDS) aids in early diagnosis of liver cancer, a potentially fatal disease prevalent in both developed and developing countries. Our research aims to develop a robust and intelligent clinical decision support framework for disease management of cancer based on legacy Ultrasound (US) image data collected during various stages of liver cancer. The proposed intelligent CDS framework will automate real-time image enhancement, segmentation, disease classification and progression in order to enable efficient diagnosis of cancer patients at early stages. The CDS framework is inspired by the human interpretation of US images from the image acquisition stage to cancer progression prediction. Specifically, the proposed framework is composed of a number of stages where images are first acquired from an imaging source and pre-processed before running through an image enhancement algorithm. The detection of cancer and its segmentation is considered as the second stage in which different image segmentation techniques are utilized to partition and extract objects from the enhanced image. The third stage involves disease classification of segmented objects, in which the meanings of an investigated object are matched with the disease dictionary defined by physicians and radiologists. In the final stage; cancer progression, an array of US images is used to evaluate and predict the future stages of the disease. For experiment purposes, we applied the framework and classifiers to liver cancer dataset for 200 patients. Class distributions are 120 benign and 80 malignant in this dataset.
机译:临床决策支持(CDS)肝癌早期诊断的助剂,在发达国家和发展中国家普遍存在的潜在致命疾病。我们的研究旨在基于在肝癌的各个阶段收集的遗留超声(US)图像数据,为癌症疾病管理制定强大而智能的临床决策支持框架。建议的智能CDS框架将自动化实时图像增强,分段,疾病分类和进展,以便在早期阶段高效诊断癌症患者。 CDS框架通过从图像采集阶段对癌症进展预测的人体解释的启发。具体地,所提出的框架由许多阶段组成,其中首先从成像源获取图像并在通过图像增强算法之前预处理。癌症的检测和其分割被认为是第二阶段,其中利用不同的图像分割技术将来自增强图像的对象分配和提取物体。第三阶段涉及分段对象的疾病分类,其中调查对象的含义与医生和放射科医师定义的疾病词典匹配。在最后的阶段;癌症进展,一系列美国图像用于评估和预测疾病的未来阶段。对于实验目的,我们将框架和分类剂应用于200名患者的肝癌数据集。此数据集中的类分布是120良性和80个恶性。

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