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PRF-RW: a progressive random forest-based random walk approach for interactive semi-automated pulmonary lobes segmentation

机译:PRF-RW:跨性半自动肺裂片分割的基于渐进的随机林随机步行方法

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摘要

The computational detection of lung lobes from computed tomography images is a challenging segmentation problem with important respiratory healthcare applications, including emphysema, chronic bronchitis, and asthma. This paper proposes a progressive random forest-based random walk approach for interactive semi-automated pulmonary lobes segmentation. First, our model performs automated segmentation of the lung lobes in a progressive random forest network, eliminating the need for prior segmentation of lungs, vessels, or airways. Then, an interactive lobes segmentation approach based on random walk mechanism is designed for improving auto-segmentation accuracy. Furthermore, we annotate a new dataset which contains 93 scans (57 men, 36 women; age range: 40-90 years) from the Central Hospital Affiliated with Shenyang Medical College (CHASMC). We evaluate the model on our annotated dataset, LIDC (https://wiki.cance rimagingarchive.net) and LOLA11 (http://lolall.com/) datasets. The proposed model achieved a Dice score of 0.906 +/- 0.106 for LIDC, 0.898 +/- 0.113 for LOLA11, and 0.921 +/- 0.101 for our dataset. Experimental results show the accuracy of the proposed approach, which consistently improves performance across different datasets by a maximum of 8.2% as compared to baselines model.
机译:来自计算机断层摄影图像的肺裂隙的计算检测是具有重要呼吸道医疗保健应用的挑战性的分割问题,包括肺气肿,慢性支气管炎和哮喘。本文提出了一种基于渐进的随机林的随机步行方法,用于交互式半自动肺裂片分割。首先,我们的模型在进步随机森林网络中进行肺裂片的自动分割,消除了对肺,血管或气道的前提分割的需求。然后,设计基于随机步行机制的交互式Lobes分割方法,用于提高自动分割精度。此外,我们注释了一个新的数据集,其中包含93个扫描(57名男子,36名女性;年龄范围:40-90岁)来自沉阳医学院(Chasmc)的中央医院。我们在注释数据集,LIDC(https://wiki.cance rimagingardivearvive.net)和lola11(http://lolall.com/)数据集中评估模型。拟议的模型为LIDC的骰子得分为0.906 +/- 0.106,对于LOLA11,0.898 +/- 0.113,我们数据集的0.921 +/- 0.101。实验结果表明,与基线模型相比,所提出的方法的准确性最多可提高不同数据集的性能,最高可达8.2%。

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