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眼动追踪指标能否用于更好地在乳腺 X 光阅读任务中配对放射科医生?

Can eye-tracking metrics be used to better pair radiologists in a mammogram reading task?

机构信息

Discipline of Medical Imaging and Radiation Sciences, Image Optimisation and Perception Group (MIOPeG), The University of Sydney, Sydney, NSW, Australia.

Medical Imaging Department, Prince of Wales Hospital, Randwick, NSW, Australia.

出版信息

Med Phys. 2018 Nov;45(11):4844-4856. doi: 10.1002/mp.13161. Epub 2018 Oct 1.

Abstract

PURPOSE

To propose a framework for optimal pairing of radiologists when reading mammograms based on their search patterns.

MATERIALS AND METHODS

Four experienced and four less-experienced radiologists were asked to assess 120 cases (59 with cancers) while their eye positions were tracked. Fourteen eye-tracking metrics were extracted to quantify the differences among radiologists' visual search pattern. For each radiologist and metric, less-experienced radiologists and expert readers were ranked based on the level of similarities in gaze patterns (from the most different to the most similar). Less-experienced readers and experts were also ranked based on the values of area under the receiver operating characteristic curve (AUC) after pairing (the best possible way of ranking). Using the Kendall's tau distance, rankings based on different metrics were compared with the best possible ranking. Using paired Wilcoxon signed-rank test, the AUC values when pairing in the best way were compared with pairing based on different metrics. Finally, we investigated the robustness of pairing strategies against the small sample size.

RESULTS

For ranking the experienced radiologists, results from eight metrics were as good as the best possible ranking. For the less-experienced ones, only one metric resulted in a ranking comparable to the best possible way of ranking. The AUC values of pairings based on these metrics did not differ significantly from the best pairing scenario. Compared to the pairings based on the cognitive metrics, the ranking based on AUC values varied more greatly with the sample size, suggesting that it is less robust against the small sample size compared to the cognitive metrics.

CONCLUSION

Different pairings may have different effects on performance; some are detrimental while some improve the performance of the pair. Using the suggested cognitive metrics, we can optimize the pairings even with a small dataset.

摘要

目的

提出一种基于放射科医生搜索模式为读片优化配对的框架。

材料与方法

要求 4 名经验丰富的放射科医生和 4 名经验较少的放射科医生评估 120 例病例(59 例为癌症),同时跟踪他们的眼球位置。提取了 14 个眼动追踪指标来量化放射科医生视觉搜索模式的差异。对于每位放射科医生和指标,根据注视模式的相似程度(从最不同到最相似)对经验较少的放射科医生和专家读者进行排名。根据配对后受试者工作特征曲线下面积(AUC)值(最佳配对方式)对经验较少的读者和专家进行排名。使用 Kendall's tau 距离,比较不同指标的排名与最佳可能的排名。使用配对 Wilcoxon 符号秩检验,比较最佳配对方式和基于不同指标的配对时 AUC 值。最后,我们研究了配对策略对小样本量的稳健性。

结果

对于经验丰富的放射科医生的排名,8 个指标的结果与最佳可能的排名一样好。对于经验较少的放射科医生,只有一个指标的排名与最佳可能的排名相当。基于这些指标的配对 AUC 值与最佳配对情况没有显著差异。与基于认知指标的配对相比,基于 AUC 值的配对排名随样本量变化更大,这表明与认知指标相比,它对小样本量的稳健性较差。

结论

不同的配对可能对性能有不同的影响;有些配对有害,而有些则能提高配对的性能。使用建议的认知指标,我们可以在小数据集上优化配对。

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