首页> 外文会议>Conference on Medical Imaging: Image Perception, Observer Performance, and Technology Assessment >Employing eye tracking to identify the onset of fatigue in Digital Breast Tomosynthesis (DBT) readers for a national breast cancer screening programme
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Employing eye tracking to identify the onset of fatigue in Digital Breast Tomosynthesis (DBT) readers for a national breast cancer screening programme

机译:采用眼睛跟踪来确定数字乳腺癌症的数字乳腺癌症(DBT)读者疲劳的发作

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The UK national screening program for breast cancer currently uses Full Field Digital Mammography (FFDM). Various studies have shown that DBT has a higher sensitivity and specificity in identifying early breast cancer apart from benign pathologies, even in very dense breasts. This potentially makes DBT a better screening modality to detect early breast cancer, as well as minimize false positive recall rates. However, DBT has multiple image slices and thereby makes reading cases inherently a longer and potentially more visually fatiguing task. Our previous studies (Dong et al, 2017 & 2018) have demonstrated the impact of institutional training on reading techniques in DBT. The reading technique itself appears to have an effect on total reading time. In other follow-on studies we have employed eye tracking which gives rise to complex data sets, including parameters such as eyelid opening and pupil diameter measures, which can then be employed to gauge blinks and fatigue onset. Findings from this work have guided changes in our blink identification techniques and we have now developed semi-automated programmed processes which can analyze the large data set and provide a more accurate assessment of fatigue and vigilance parameters through blink detection. Here, we have considered 'eyelid opening' parameters of both the left and the right eye separately. Having such a separated approach allowed us to tease out particular aspects of blinking. Similar to Schleicher et al (2008), we found there to be ultra-short blinks (30-50 milli seconds), short blinks (51-100 msecs), long blinks (101-500 msecs) and also microsleeps (>500 msecs). We argue that the changes observed in the frequencies of these blinks can be used as a measure of vigilance and fatigue during DBT reading.
机译:英国国家乳腺癌筛查计划目前使用全场数字乳房X线摄影(FFDM)。各种研究表明,DBT在鉴定除良性病理学的早期乳腺癌外,即使在非常致密的乳房中也具有更高的敏感性和特异性。这可能使DBT成为检测早期乳腺癌的更好的筛选模态,以及最小化误报率。但是,DBT具有多个图像切片,从而使读取案例固有地是更长且潜在的视觉疲劳任务。我们以前的研究(Dong等,2017,2018)已经展示了机构培训对DBT阅读技术的影响。读取技术本身似乎对总读数时间产生了影响。在其他后续研究中,我们采用了对复杂数据集产生的眼踪,包括诸如眼睑开口和瞳孔直径测量的参数,然后可以使用速度眨眼和疲劳发作。这项工作的调查结果在我们的眨眼识别技术中引导了变化,我们现在已经开发了半自动编程过程,可以通过眨眼检测来分析大数据集并提供更准确的疲劳和警惕参数评估。在这里,我们已经分别考虑了左眼和右眼的眼睑打开'参数。具有这种分离的方法使我们能够挑逗眨眼的特定方面。类似于Schleicher等人(2008),我们发现有超短眨眼(30-50毫秒),短眨眼(51-100毫秒),长闪烁(101-500毫秒)和microleeps(> 500毫秒)。我们认为,在这些眨眼的频率中观察到的变化可以用作DBT阅读期间的警惕性和疲劳的量度。

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