在T2加权MRI中检测前列腺解剖结构的多对象深度神经网络结构:性能评估

Maria Baldeon-Calisto, Zhouping Wei, Shatha Abudalou, Yasin Yilmaz, Kenneth Gage, Julio Pow-Sang, Yoganand Balagurunathan
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引用次数: 0

摘要

前列腺分割是估计前列腺体积的主要步骤,有助于前列腺疾病的管理。在这项研究中,我们提出了一种2D-3D卷积神经网络(CNN)集合,该集合使用磁共振成像(MRI)的T2加权序列(T2W)自动分割整个前列腺和外周区(PZ)(PPZ-SegNet)。该研究使用了4个不同的公共数据集,分别组织为第1列和第1列测试(独立于同一队列)、第2列测试、第3列测试和第4列测试。前列腺和外周区(PZ)解剖结构由放射科医生通过一致阅读手动描绘,具有预先标记的腺体解剖结构的测试#4队列除外。应用贝叶斯超参数优化方法构建具有训练队列(Train#1,n = 150)使用五倍交叉验证。在没有任何额外调整的情况下,对283例T2W MRI前列腺病例的独立队列进行模型评估(测试#1至#4)。数据队列来源于癌症成像档案(TCIA):PROSTATEx挑战、前列腺切除术、重复性研究和PROMISE12挑战。通过计算Dice相似系数和估计的深度网络识别区域与放射科医生绘制的注释之间的Hausdorff距离来评估分割性能。深度网络结构能够分割前列腺解剖结构,在测试#1(n = 192),测试#2中的0.79(n = 26),试验#3中的0.81(n = 15) ,和测试#4中的0.62(n = 50)。我们还发现,在4个测试队列中的3个队列中,随着前列腺体积的增大,Dice系数有所改善。不同测试图像组的Dice评分的变化表明,有必要建立更多样的模型,包括腺体大小等依赖性,这将使我们能够开发一个用于前列腺和PZ分割的通用网络。我们的培训和评估代码可以通过以下链接访问:https://github.com/mariabaldeon/PPZ-SegNet.git.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-object deep neural network architecture to detect prostate anatomy in T2-weighted MRI: Performance evaluation.

Prostate gland segmentation is the primary step to estimate gland volume, which aids in the prostate disease management. In this study, we present a 2D-3D convolutional neural network (CNN) ensemble that automatically segments the whole prostate gland along with the peripheral zone (PZ) (PPZ-SegNet) using a T2-weighted sequence (T2W) of Magnetic Resonance Imaging (MRI). The study used 4 different public data sets organized as Train #1 and Test #1 (independently derived from the same cohort), Test #2, Test #3 and Test #4. The prostate gland and the peripheral zone (PZ) anatomy were manually delineated with consensus read by a radiologist, except for Test #4 cohorts that had pre-marked glandular anatomy. A Bayesian hyperparameter optimization method was applied to construct the network model (PPZ-SegNet) with a training cohort (Train #1, n = 150) using a five-fold cross validation. The model evaluation was performed on an independent cohort of 283 T2W MRI prostate cases (Test #1 to #4) without any additional tuning. The data cohorts were derived from The Cancer Imaging Archives (TCIA): PROSTATEx Challenge, Prostatectomy, Repeatability studies and PROMISE12-Challenge. The segmentation performance was evaluated by computing the Dice similarity coefficient and Hausdorff distance between the estimated-deep-network identified regions and the radiologist-drawn annotations. The deep network architecture was able to segment the prostate gland anatomy with an average Dice score of 0.86 in Test #1 (n = 192), 0.79 in Test #2 (n = 26), 0.81 in Test #3 (n = 15), and 0.62 in Test #4 (n = 50). We also found the Dice coefficient improved with larger prostate volumes in 3 of the 4 test cohorts. The variation of the Dice scores from different cohorts of test images suggests the necessity of more diverse models that are inclusive of dependencies such as the gland sizes and others, which will enable us to develop a universal network for prostate and PZ segmentation. Our training and evaluation code can be accessed through the link: https://github.com/mariabaldeon/PPZ-SegNet.git.

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