首页> 外文OA文献 >Fully automatic, multi-organ segmentation in normal whole body magnetic resonance imaging (MRI), using classification forests (CFs), convolutional neural networks (CNNs) and a multi-atlas (MA) approach.
【2h】

Fully automatic, multi-organ segmentation in normal whole body magnetic resonance imaging (MRI), using classification forests (CFs), convolutional neural networks (CNNs) and a multi-atlas (MA) approach.

机译:使用分类森林(CF),卷积神经网络(CNN)和多图谱(ma)方法在正常全身磁共振成像(mRI)中进行全自动多器官分割。

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

PURPOSE: As part of a programme to implement automatic lesion detection methods for whole body magnetic resonance imaging (MRI) in oncology, we have developed, evaluated and compared three algorithms for fully automatic, multi-organ segmentation in healthy volunteers. METHODS: The first algorithm is based on classification forests (CFs), the second is based on 3D convolutional neural networks (CNNs) and the third algorithm is based on a multi-atlas (MA) approach. We examined data from 51 healthy volunteers, scanned prospectively with a standardised, multi-parametric whole body MRI protocol at 1.5T. The study was approved by the local ethics committee and written consent was obtained from the participants. MRI data were used as input data to the algorithms, while training was based on manual annotation of the anatomies of interest by clinical MRI experts. Five-fold cross-validation experiments were run on 34 artefact-free subjects. We report three overlap and three surface distance metrics to evaluate the agreement between the automatic and manual segmentations, namely the Dice similarity coefficient (DSC), recall (RE), precision (PR), average surface distance (ASD), root mean square surface distance (RMSSD) and Hausdorff distance (HD). Analysis of variances was used to compare pooled label metrics between the three algorithms and the DSC on a 'per-organ' basis. A Mann-Whitney U test was used to compare the pooled metrics between CFs and CNNs and the DSC on a 'per-organ' basis, when using different imaging combinations as input for training. RESULTS: All three algorithms resulted in robust segmenters that were effectively trained using a relatively small number of data sets, an important consideration in the clinical setting. Mean overlap metrics for all the segmented structures were: CFs: DSC=0.70±0.18, RE=0.73±0.18, PR=0.71±0.14, CNNs: DSC=0.81±0.13, RE=0.83±0.14, PR=0.82±0.10, MA: DSC=0.71±0.22, RE=0.70±0.34, PR=0.77±0.15. Mean surface distance metrics for all the segmented structures were: CFs: ASD=13.5±11.3 mm, RMSSD=34.6±37.6 mm and HD=185.7±194.0 mm, CNNs; ASD=5.48±4.84 mm, RMSSD=17.0±13.3 mm and HD=199.0±101.2 mm, MA: ASD=4.22±2.42 mm, RMSSD=6.13±2.55 mm and HD=38.9±28.9 mm. The pooled performance of CFs improved when all imaging combinations (T2w+T1w+DWI) were used as input, while the performance of CNNs deteriorated, but in neither case, significantly. CNNs with T2w images as input, performed significantly better than CFs with all imaging combinations as input for all anatomical labels, except for the bladder. CONCLUSIONS: Three state-of-the-art algorithms were developed and used to automatically segment major organs and bones in whole body MRI; good agreement to manual segmentations performed by clinical MRI experts was observed. CNNs perform favourably, when using T2w volumes as input. Using multi-modal MRI data as input to CNNs did not improve the segmentation performance. This article is protected by copyright. All rights reserved.
机译:目的:作为在肿瘤学中实施针对全身磁共振成像(MRI)的自动病变检测方法的程序的一部分,我们开发,评估和比较了三种用于健康志愿者的全自动,多器官分割的算法。方法:第一种算法基于分类森林(CF),第二种算法基于3D卷积神经网络(CNN),第三种算法基于多图集(MA)方法。我们检查了来自51名健康志愿者的数据,这些数据在1.5T下使用标准化的多参数全身MRI协议进行了前瞻性扫描。该研究得到当地伦理委员会的批准,并获得了参与者的书面同意。 MRI数据用作算法的输入数据,而培训则基于临床MRI专家对感兴趣的解剖结构进行的手动注释。对34个无伪像的受试者进行了五次交叉验证实验。我们报告三个重叠和三个表面距离度量,以评估自动和手动分割之间的一致性,即骰子相似系数(DSC),召回率(RE),精度(PR),平均表面距离(ASD),均方根表面距离(RMSSD)和Hausdorff距离(HD)。方差分析被用来比较每种算法和DSC在“每器官”基础上的合并标签指标。当使用不同的成像组合作为训练输入时,使用Mann-Whitney U检验以“每器官”为基础比较CF和CNN与DSC之间的合并指标。结果:这三种算法均产生了可靠的分割器,可使用相对较少的数据集对其进行有效训练,这是临床中的重要考虑因素。所有分段结构的平均重叠度量为:CFs:DSC = 0.70±0.18,RE = 0.73±0.18,PR = 0.71±0.14,CNNs:DSC = 0.81±0.13,RE = 0.83±0.14,PR = 0.82±0.10, MA:DSC = 0.71±0.22,RE = 0.70±0.34,PR = 0.77±0.15。所有分段结构的平均表面距离度量为:CF:ASD = 13.5±11.3 mm,RMSSD = 34.6±37.6 mm,HD = 185.7±194.0 mm,CNN; ASD = 5.48±4.84mm,RMSSD = 17.0±13.3mm,HD = 199.0±101.2mm,MA:ASD = 4.22±2.42mm,RMSSD = 6.13±2.55mm,HD = 38.9±28.9mm。当所有成像组合(T2w + T1w + DWI)都用作输入时,CF的合并性能得到改善,而CNN的性能却下降了,但在两种情况下都没有。以T2w图像作为输入的CNN的效果明显优于以所有成像组合作为输入的所有解剖学标记(膀胱除外)的CF。结论:开发了三种最先进的算法,用于自动分割全身MRI中的主要器官和骨骼;观察到与临床MRI专家进行的手动分割非常吻合。当使用T2w量作为输入时,CNN的性能良好。使用多模式MRI数据作为CNN的输入并不能提高分割性能。本文受版权保护。版权所有。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号