基于模型可解释性的深度学习集成的胸片气腹检测

M. V. S. D. Cea, D. Gruen, David Richmond
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引用次数: 2

摘要

气腹(腹膜腔内的自由空气)是一种罕见的疾病,可能危及生命,需要紧急手术。它可以在胸部x光片中检测到,但这种检测存在一些挑战,例如少量的空气可能被放射科医生遗漏,或者假性气腹(腹部的空气可能看起来像气腹)。在这项工作中,我们建议使用在不同数据子集上训练的深度学习模型的集合来提高模型的分类和泛化性能,并使用硬负挖掘来减轻伪气腹的影响。当使用模型集成以及使用多个模型可解释性技术对发现进行良好的定位时,我们证明了卓越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pneumoperitoneum Detection In Chest X-Ray By A Deep Learning Ensemble With Model Explainability
Pneumoperitoneum (free air in the peritoneal cavity) is a rare condition that can be life threatening and require emergency surgery. It can be detected in chest X-ray but there are some challenges associated to this detection, such as small amounts of air that may be missed by a radiologist, or pseudo-pneumoperitoneum (air in the abdomen that may look like pneumoperitoneum). In this work, we propose using an ensemble of deep learning models trained on different subsets of data to boost the classification and generalization performance of the model as well as hard-negative mining to mitigate the effect of pseudo-pneumoperitoneum. We demonstrate superior performance when the model ensemble is utilized as well as good localization of the finding with multiple model explainability techniques.
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