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首页> 外文期刊>American journal of applied sciences >Comparison of Improved Semi-Automated Segmentation Technique with Manual Segmentation: Data from the Osteoarthritis Initiative | Science Publications
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Comparison of Improved Semi-Automated Segmentation Technique with Manual Segmentation: Data from the Osteoarthritis Initiative | Science Publications

机译:改进的半自动分割技术与手动分割的比较:来自骨关节炎倡议的数据| Business Wire科学出版物

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摘要

> >Manual segmentation is the standard procedure in osteoarthritis study. However, this method is infamous for being excessive, time consuming and exhaustive. In this study, we overcame the problem of excessive expert interaction reported in manual segmentation by developing a semi-automated random walks technique with computer-aided labelling system. To minimize expert interaction, non-cartilage seeds were generated by using computer. Then, random walks algorithm would segment knee cartilage based on cartilage seeds and non-cartilage seeds. Finally, segmentation results were revised and refined accordingly. A total of 15 normal images and 10 osteoarthritic images were used in this study. In term of efficiency, we have reduced the processing time to segment normal cartilage by 47.5% (93±21s; P = 0.0000019) for observer 1 and 44% (61±8s; P = 3.52±10-5) for observer 2. We also reduced the processing time to segment diseased cartilage by 48.1% (56±16s; P = 0.00014) for observer 1 and 30.3% (62±14s; P = 0.0070) for observer 2. Besides, the proposed technique have produced good reproducibility in both normal (0.83±0.028 for observer 1 and 0.80±0.040 for observer 2) and diseased (0.80±0.060 for observer 1 and 0.82±0.043 for observer 2) cartilage segmentations. In conclusion, the combination of computer generated seeds and user-friendly random walks method have reduced the amount of expert interaction to necessary level without compromising the accuracy of results.
机译: > >手动分割是骨关节炎研究的标准程序。但是,这种方法过分,费时且穷举而臭名昭著。在这项研究中,我们通过开发具有计算机辅助标签系统的半自动随机游走技术,克服了手动分割中专家互动过多的问题。为了最大程度地减少专家的互动,使用计算机生成了非til子种子。然后,随机游走算法将根据软骨种子和非软骨种子对膝盖软骨进行分割。最后,对细分结果进行了修订和完善。本研究共使用15张正常图像和10张骨关节炎图像。在效率方面,我们将观察者1分割正常软骨的处理时间减少了47.5%(93±21s; P = 0.0000019),减少了44%(61±8s; P < / i> = 3.52&plusmn; 10 -5 ))。我们还将分割患病软骨的处理时间减少了48.1%(56±16s; P = 0.00014) )对于观察者1而言为30.3%(62±14s; P = 0.0070)对于观察者2而言。此外,所提出的技术在正常情况下(观察者1为0.83≥0.028和0.80百万以上)均具有良好的重现性。 ;对于观察者2为0.040)和患病(对于观察者1为0.80加上0.060,对于观察者2为0.82加上0.043)是软骨分割。总之,计算机生成的种子和用户友好的随机游走方法的结合将专家互动的数量减少到必要的水平,而不会影响结果的准确性。

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