胸片中有效条件后处理的气胸分割

V. Groza, A. Kuzin
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引用次数: 7

摘要

气胸等胸部x线异常元素的自动检测是一个重要而具有挑战性的问题。在复杂的条件下筛选意外发现或任何调查是放射科医生在其临床工作流程中的常见场景,其中需要自动化解决方案。气胸可由钝性胸部损伤、潜在肺部疾病的损害引起,也可无明显原因发生。这是专家人工检测的复杂问题之一,可以自动解决,简化临床工作流程。该方法通过多步条件后处理为CXR图像提供了新的分割管道。与任何“基线”相比,这种方法通过减少气胸塌陷区域的完全遗漏和假阳性检测,导致显着改善。由于在双阶段测试数据集上的性能非常相似,所得结果具有很高的准确性和较强的鲁棒性。在“第一阶段”和“第二阶段”的测试数据集中,《Dice》的最终得分分别为0.8821和0.8614,这使得《Dice》在Kaggle竞争平台的私人排行榜中排名前0.01%。代码可从https://github.com/n01z3/kaggle-pneumothoraxsegmentation获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pneumothorax Segmentation with Effective Conditioned Post-Processing in Chest X-Ray
The automatic detection of abnormal elements in chest Xrays (CXR), such as pneumothorax, is important and challenging problem. Screening for unexpected findings or any surveys in the complicated conditions are the common scenarios for the radiologists in their clinical workflow, where the automated solutions are required. The pneumothorax can be caused by a blunt chest injury, damage from underlying lung disease or it may occur for no obvious reason at all [1]. This is one of the complex problems for the experts manual detection, which can be solved automatically and simplify the clinical workflow. Proposed method presents new segmentation pipeline for the CXR images with the multi step conditi oned post-processing. This approach leads to the significant improvement compare with any ”baseline” by the reduction of the totally missed and false positive detections of the pneumothorax collapse regions. Obtained results demonstrate very high accuracy and strong robustness due to very similar performance on the double-stage test dataset. Final Dice scores are 0.8821 and 0.8614 for ”stage 1” and ”stage 2” test datasets respectively, what is resulted in top 0.01% standing of the private leaderboard on the Kaggle competition platform. Code is available at https://github.com/n01z3/kaggle-pneumothoraxsegmentation.
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