A survey of medical image classification techniques

Eka Miranda, Mediana Aryuni, E. Irwansyah
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引用次数: 67

Abstract

Medical informatics is the study that combines two medical data sources: biomedical record and imaging data. Medical image data is formed by pixels that correspond to a part of a physical object and produced by imaging modalities. Exploration of medical image data methods is a challenge in the sense of getting their insight value, analyzing and diagnosing of a specific disease. Image classification plays an important role in computer-aided-diagnosis and is a big challenge on image analysis tasks. This challenge related to the usage of methods and techniques in exploiting image processing result, pattern recognition result and classification methods and subsequently validating the image classification result into medical expert knowledge. The main objective of medical images classification is not only to reach high accuracy but also to identify which parts of human body are infected by the disease. This paper reviewed the state-of-the-art of image classification techniques to diagnose human body disease. The review covered identification of medical image classification techniques, image modalities used, the dataset and trade off for each technique. At the end, the reviews showed the improvement of image classification techniques such as to increase accuracy and sensitivity value and to be feasible employed for computer-aided-diagnosis are a big challenge and an open research.
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医学图像分类技术综述
医学信息学是结合两种医学数据源的研究:生物医学记录和成像数据。医学图像数据由像素组成,像素对应于物理对象的一部分,并由成像模式产生。医学图像数据方法的探索是一项挑战,因为它能够获取图像的洞察价值,分析和诊断特定的疾病。图像分类在计算机辅助诊断中占有重要地位,是图像分析任务的一大挑战。这一挑战涉及利用图像处理结果、模式识别结果和分类方法并随后将图像分类结果验证为医学专家知识的方法和技术的使用。医学图像分类的主要目标不仅是要达到较高的准确率,而且要识别出人体哪些部位受到了疾病的感染。本文综述了图像分类技术在人体疾病诊断中的研究进展。这篇综述涵盖了医学图像分类技术的识别、使用的图像模式、数据集和每种技术的权衡。最后,综述表明,提高图像分类技术的准确性和灵敏度值,并使其适用于计算机辅助诊断是一个巨大的挑战和开放的研究。
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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