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Quantification of heterogeneity observed in medical images

机译:量化医学图像中观察到的异质性

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Background There has been much recent interest in the quantification of visually evident heterogeneity within functional grayscale medical images, such as those obtained via magnetic resonance or positron emission tomography. In the case of images of cancerous tumors, variations in grayscale intensity imply variations in crucial tumor biology. Despite these considerable clinical implications, there is as yet no standardized method for measuring the heterogeneity observed via these imaging modalities. Methods In this work, we motivate and derive a statistical measure of image heterogeneity. This statistic measures the distance-dependent average deviation from the smoothest intensity gradation feasible. We show how this statistic may be used to automatically rank images of in vivo human tumors in order of increasing heterogeneity. We test this method against the current practice of ranking images via expert visual inspection. Results We find that this statistic provides a means of heterogeneity quantification beyond that given by other statistics traditionally used for the same purpose. We demonstrate the effect of tumor shape upon our ranking method and find the method applicable to a wide variety of clinically relevant tumor images. We find that the automated heterogeneity rankings agree very closely with those performed visually by experts. Conclusions These results indicate that our automated method may be used reliably to rank, in order of increasing heterogeneity, tumor images whether or not object shape is considered to contribute to that heterogeneity. Automated heterogeneity ranking yields objective results which are more consistent than visual rankings. Reducing variability in image interpretation will enable more researchers to better study potential clinical implications of observed tumor heterogeneity.
机译:背景技术近来人们对量化功能性灰度医学图像中视觉上明显的异质性感兴趣,例如通过磁共振或正电子发射断层扫描获得的图像。就癌性肿瘤的图像而言,灰度强度的变化意味着关键肿瘤生物学的变化。尽管有这些重大的临床意义,但尚无用于测量通过这些成像方式观察到的异质性的标准化方法。方法在这项工作中,我们激发并得出了图像异质性的统计量度。该统计量度了可行的最平滑强度等级与距离相关的平均偏差。我们展示了如何使用此统计信息来按异质性增加的顺序自动对体内人类肿瘤的图像进行排名。我们通过专家目视检查,对照当前对图像进行排名的做法来测试此方法。结果我们发现,该统计数据提供了一种异质性量化的方法,这超出了传统上用于同一目的的其他统计数据所提供的方法。我们证明了肿瘤形状对我们的分级方法的影响,并找到了适用于各种临床相关肿瘤图像的方法。我们发现,自动异质性排名与专家在视觉上执行的排名非常接近。结论这些结果表明,我们的自动化方法可以可靠地用于按照异质性增加的顺序对肿瘤图像进行排序,而不论是否考虑物体形状都有助于该异质性。自动异质性排名产生的客观结果比视觉排名更为一致。减少图像解释的变异性将使更多的研究人员能够更好地研究观察到的肿瘤异质性的潜在临床意义。

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