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Crowdsourced Emphysema Assessment

机译:众群肺气肿评估

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摘要

Classification of emphysema patterns is believed to be useful for improved diagnosis and prognosis of chronic obstructive pulmonary disease. Emphysema patterns can be assessed visually on lung CT scans. Visual assessment is a complex and time-consuming task performed by experts, making it unsuitable for obtaining large amounts of labeled data. We investigate if visual assessment of emphysema can be framed as an image similarity task that does not require expert. Substituting untrained annotators for experts makes it possible to label data sets much faster and at a lower cost. We use crowd annotators to gather similarity triplets and use t-distributed stochastic triplet embedding to learn an embedding. The quality of the embedding is evaluated by predicting expert assessed emphysema patterns. We find that although performance varies due to low quality triplets and randomness in the embedding, we still achieve a median F_1 score of 0.58 for prediction of four patterns.
机译:据信肺气肿模式的分类对于改善慢性阻塞性肺病的诊断和预后是有用的。肺气肿模式可在视觉上对肺CT扫描进行评估。视觉评估是专家执行的复杂和耗时的任务,使其不适合获得大量标记数据。我们调查如果对肺气肿的视觉评估可以被诬陷为不需要专家的图像相似性任务。替代未经训练的注释器进行专家使得可以更快地标记数据集,以较低的成本更快。我们使用人群注释器收集相似性三胞胎,并使用T分布式随机三联网嵌入来嵌入嵌入。通过预测专家评估的肺气肿模式来评估嵌入的质量。我们发现,尽管嵌入中的高质量三胞胎和随机性和嵌入中的随机性能因性能而变化,但我们仍然达到0.58的中位数F_1得分,以便预测四种模式。

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