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An Investigation into the Consistency in Mammographic Density Identification by Radiologists: Effect of Radiologist Expertise and Mammographic Appearance

机译:放射科医师对乳腺X线摄影密度识别的一致性调查:放射线医师专业知识和乳腺X线摄影术外观的影响

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摘要

The aim of this work is to investigate how radiologist expertise and image appearance may have an impact on inter-reader variability of mammographic density (MD) identification. Seventeen radiologists, divided into three expertise groups, were asked to manually segment the areas they consider to be MD in 40 clinical images. The variation in identification of MD for each image was quantified by finding the range of segmentation areas. The impact of radiologist expertise and image appearance on this variation was explored. The range of areas chosen by participating radiologists varied from 7 to 73 % across the 40 images, with a mean range of 35 ± 13 %. Participants with high expertise were more likely to choose similar areas to one another, compared to participants with medium and low expertise levels (mean range were 19 ± 10 %, 29 ± 13 % and 25 ± 14 %, respectively, p < 0.0001). There was a significantly higher average grey level for the area segmented by all radiologists as MD compared to the area of variation, with mean grey level value for 8-bit images being 146 ± 19 vs. 99 ± 14, respectively. MD segmentation borders were consistent in areas where there was a sharp intensity change within a short distance. In conclusion, radiologists with high expertise tend to have a higher agreement when identifying MD. Tissues which have a lower contrast and a less visually sharp gradient change at the interface between high density tissue and adipose background lead to inter-reader variation in choosing mammographic density.
机译:这项工作的目的是研究放射线专家的专业知识和图像外观如何对乳腺X线密度(MD)识别的阅读器间变异性产生影响。分为三大专长小组的17名放射科医生被要求在40张临床图像中手动分割他们认为是MD的区域。通过找到分割区域的范围来量化每个图像的MD识别的变化。探索了放射科医生的专业知识和图像外观对这种变化的影响。在40幅图像中,参与放射线医师选择的区域范围从7%到73%不等,平均范围为35±13%。与中等和低专业水平的参与者相比,具有高专业知识的参与者更有可能选择彼此相似的领域(平均范围分别为19±10%,29±13%和25±14%,p <0.0001)。与变化区域相比,所有放射线医师按MD划分的区域的平均灰度值均显着更高,8位图像的平均灰度值分别为146±19和99±14。在短距离内强度急剧变化的区域,MD分割边界是一致的。总之,具有较高专业知识的放射线医师在识别MD时倾向于达成更高的共识。在高密度组织与脂肪背景之间的界面处,对比度较低,视觉上较不明显的梯度变化的组织会导致读者在选择乳房X线照片密度时发生差异。

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