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MedGA: A novel evolutionary method for image enhancement in medical imaging systems

机译:MedGA:医学成像系统中图像增强的新型进化方法

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Medical imaging systems often require the application of image enhancement techniques to help physicians in anomaly/abnormality detection and diagnosis, as well as to improve the quality of images that undergo automated image processing. In this work we introduce MedGA, a novel image enhancement method based on Genetic Algorithms that is able to improve the appearance and the visual quality of images characterized by a bimodal gray level intensity histogram, by strengthening their two underlying sub-distributions. MedGA can be exploited as a pre-processing step for the enhancement of images with a nearly bimodal histogram distribution, to improve the results achieved by downstream image processing techniques. As a case study, we use MedGA as a clinical expert system for contrast-enhanced Magnetic Resonance image analysis, considering Magnetic Resonance guided Focused Ultrasound Surgery for uterine fibroids. The performances of MedGA are quantitatively evaluated by means of various image enhancement metrics, and compared against the conventional state-of-the-art image enhancement techniques, namely, histogram equalization, bi-histogram equalization, encoding and decoding Gamma transformations, and sigmoid transformations. We show that MedGA considerably outperforms the other approaches in terms of signal and perceived image quality, while preserving the input mean brightness. MedGA may have a significant impact in real healthcare environments, representing an intelligent solution for Clinical Decision Support Systems in radiology practice for image enhancement, to visually assist physicians during their interactive decision-making tasks, as well as for the improvement of downstream automated processing pipelines in clinically useful measurements.
机译:医学成像系统通常需要应用图像增强技术来帮助医师进行异常/异常检测和诊断,并提高经过自动图像处理的图像质量。在这项工作中,我们介绍了MedGA,它是一种基于遗传算法的新颖图像增强方法,能够通过增强两个基本子分布来改善以双峰灰度强度直方图为特征的图像的外观和视觉质量。 MedGA可以用作预处理步骤,以增强具有近双峰直方图分布的图像,从而改善通过下游图像处理技术获得的结果。作为案例研究,考虑到磁共振引导的子宫肌瘤聚焦超声手术,我们将MedGA作为临床专家系统用于对比增强的磁共振图像分析。 MedGA的性能通过各种图像增强指标进行定量评估,并与传统的最新图像增强技术进行比较,即直方图均衡,双直方图均衡,编码和解码Gamma变换以及S形变换。我们证明MedGA在保留输入平均亮度的同时,在信号和感知的图像质量方面大大优于其他方法。 MedGA可能会在实际的医疗环境中产生重大影响,代表放射治疗实践中临床决策支持系统的智能解决方案以增强图像,在交互式决策任务中为医师提供视觉帮助,以及改善下游自动处理管道在临床上有用的测量。

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