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Improve synthetic retinal OCT images with present of pathologies and textural information

机译:利用病理和纹理信息改善合成的视网膜OCT图像

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The lack of noise free Optical Coherence Tomography (OCT) images makes it challenging to quantitatively evaluate performance of image processing methods such as denoising methods. The synthetic noise free OCT images are needed to evaluate performance of image processing methods. The current synthetic methods fail to generate synthetic images that represent real OCT images with present of pathologies. They cannot correctly imitate real OCT data due to a tendency to smooth the data, losing texture information and even, pathologies such as cysts are simply smoothed away by these methods. The first aim of this paper is to use mathematical models to generate a synthetic noise free image that represent real retinal OCT B-scan or volume with present of clinically important pathologies. The proposed method partitions a B-scan obtained from real OCT into three regions (vitreous, retina and choroid) by segmenting the inner limiting membrane (ILM) and retinal pigment epithelium (RPE) surfaces as well as cysts regions by medical experts. Then retina region is further divided into small blocks. Different smoothness functions are used to estimate OCT signals in vitreous, choroid and cyst regions and in blocks of retina region. Estimating signals in block resolution enables our proposed method to capture more textural information by using a simple mathematical model (smoothness function) and using annotated cyst enables our method to model cyst pathology accurately. The qualitative evaluations show that proposed method generates more realistic B-scans with present of pathologies and textural information than other methods.
机译:缺少无噪声的光学相干断层扫描(OCT)图像使定量评估图像处理方法(例如降噪方法)的性能变得充满挑战。需要合成无噪声的OCT图像来评估图像处理方法的性能。当前的合成方法无法生成表示具有病理表现的实际OCT图像的合成图像。由于存在使数据平滑,丢失纹理信息的趋势,因此它们无法正确地模仿真实的OCT数据,甚至通过这些方法也可以简单地消除诸如囊肿之类的病变。本文的第一个目的是使用数学模型来生成无噪声的合成图像,该图像代表实际的视网膜OCT B扫描或具有临床重要病理学表现的体积。所提出的方法通过医学专家将内部限制膜(ILM)和视网膜色素上皮(RPE)表面以及囊肿区域进行分割,将从真实OCT获得的B扫描分为三个区域(玻璃体,视网膜和脉络膜)。然后将视网膜区域进一步分为小块。不同的平滑度函数可用于估计玻璃体,脉络膜和囊肿区域以及视网膜区域块中的OCT信号。以块分辨率估计信号使我们提出的方法能够通过使用简单的数学模型(平滑度函数)捕获更多的纹理信息,而使用带注释的囊肿可使我们的方法准确地对囊肿病理进行建模。定性评估表明,与其他方法相比,所提出的方法在显示病理和纹理信息的情况下可以生成更逼真的B扫描。

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