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Investigation of MRI Prostate Localization using Different MRI Modality Scans

机译:利用不同MRI模态扫描的MRI前列腺定位调查

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According to the data of World Cancer Research Fund International prostate cancer is the second most common after lung cancer and the fifth most common cause of cancer death amongst men. Prostate cancer is also the fourth most frequent tumor between both genders worldwide. Biopsy is the only way to detect prostate cancer so far. Statistics show that it is able to detect only 70-80% of clinically significant cancer cases. Multi parametric magnetic resonance imaging technique comes to play to help in determining the location to perform biopsy on. The first step to automating the detection of the location is applying prostate segmentation on magnetic resonance images. The fact that there is lack of standardization of signal intensity to acquire those images burdens the problem of automated prostate segmentation. Authors review the results of Prostate MR Image Segmentation (PROMISE12) challenge, designed to evaluate and compare different prostate segmentation algorithms, and provide insights on automated prostate segmentation by applying best open source algorithm under different circumstances. Authors applied selected algorithm on two different datasets and showed how segmentation results can be improved by applying even the most primitive image stretching techniques. Authors also showed that algorithm is promising in segmenting unseen dataset.
机译:根据世界癌症研究基金的数据,国际前列腺癌是肺癌后的第二个最常见的,第五次癌症死亡原因是男性。前列腺癌也是全球两性的第四个最常见的肿瘤。最终是检测前列腺癌的唯一方法。统计数据显示,它能够检测临床显着癌症病例的70-80%。多参数磁共振成像技术来玩,以帮助确定要进行活组织检查的位置。自动化检测位置的第一步是在磁共振图像上施加前列腺分段。缺乏信号强度标准化来获取这些图像的事实负担自动前列腺细分的问题。作者审查了前列腺MR图像分割的结果(Promise12)挑战,旨在评估和比较不同的前列腺分段算法,并通过在不同情况下应用最佳开源算法来提供对自动前列腺分段的见解。作者在两个不同的数据集上应用了所选算法,并通过应用即使是最原始的图像拉伸技术应用,如何改善分段结果。作者还表明,算法在分割未安装的数据集中是有希望的。

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