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首页> 外文期刊>NeuroImage: Clinical >OASIS is Automated Statistical Inference for Segmentation, with applications to multiple sclerosis lesion segmentation in MRI
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OASIS is Automated Statistical Inference for Segmentation, with applications to multiple sclerosis lesion segmentation in MRI

机译:OASIS是用于分割的自动化统计推断,可应用于MRI中的多发性硬化病变分割

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摘要

Magnetic resonance imaging (MRI) can be used to detect lesions in the brains of multiple sclerosis (MS) patients and is essential for diagnosing the disease and monitoring its progression. In practice, lesion load is often quantified by either manual or semi-automated segmentation of MRI, which is time-consuming, costly, and associated with large inter- and intra-observer variability. We propose OASIS is Automated Statistical Inference for Segmentation (OASIS), an automated statistical method for segmenting MS lesions in MRI studies. We use logistic regression models incorporating multiple MRI modalities to estimate voxel-level probabilities of lesion presence. Intensity-normalized T1-weighted, T2-weighted, fluid-attenuated inversion recovery and proton density volumes from 131 MRI studies (98 MS subjects, 33 healthy subjects) with manual lesion segmentations were used to train and validate our model. Within this set, OASIS detected lesions with a partial area under the receiver operating characteristic curve for clinically relevant false positive rates of 1% and below of 0.59% (95% CI; [0.50%, 0.67%]) at the voxel level. An experienced MS neuroradiologist compared these segmentations to those produced by LesionTOADS, an image segmentation software that provides segmentation of both lesions and normal brain structures. For lesions, OASIS out-performed LesionTOADS in 74% (95% CI: [65%, 82%]) of cases for the 98 MS subjects. To further validate the method, we applied OASIS to 169 MRI studies acquired at a separate center. The neuroradiologist again compared the OASIS segmentations to those from LesionTOADS. For lesions, OASIS ranked higher than LesionTOADS in 77% (95% CI: [71%, 83%]) of cases. For a randomly selected subset of 50 of these studies, one additional radiologist and one neurologist also scored the images. Within this set, the neuroradiologist ranked OASIS higher than LesionTOADS in 76% (95% CI: [64%, 88%]) of cases, the neurologist 66% (95% CI: [52%, 78%]) and the radiologist 52% (95% CI: [38%, 66%]). OASIS obtains the estimated probability for each voxel to be part of a lesion by weighting each imaging modality with coefficient weights. These coefficients are explicit, obtained using standard model fitting techniques, and can be reused in other imaging studies. This fully automated method allows sensitive and specific detection of lesion presence and may be rapidly applied to large collections of images. Highlights ? We developed an automated segmentation method for MS lesions in brain MRIs. ? We use logistic regression models with multiple MRI modalities. ? We trained and validated our method on MRI images from two imaging sites.
机译:磁共振成像(MRI)可用于检测多发性硬化症(MS)患者大脑中的病变,对于诊断该疾病和监测其进展至关重要。在实践中,病变负荷通常通过MRI的手动或半自动分割来量化,这既耗时,成本高昂,又与观察者之间和观察者内部的较大差异相关。我们提出OASIS是自动分割统计推断(OASIS),一种用于在MRI研究中分割MS病变的自动统计方法。我们使用结合多种MRI模式的逻辑回归模型来估计病变存在的体素水平概率。来自131个MRI研究(98个MS受试者,33个健康受试者)和手动病变分割的强度归一化T1加权,T2加权,液体衰减倒置恢复和质子密度体积用于训练和验证我们的模型。在该组内,OASIS检测到的病变在接受者操作特征曲线下具有部分区域,在体素水平上,临床相关的假阳性率为1%,低于0.59%(95%CI; [0.50%,0.67%])。一位经验丰富的MS神经放射科医生将这些分割与由LesionTOADS产生的分割进行了比较,LesionTOADS是一种图像分割软件,可以对病变和正常的大脑结构进行分割。对于病变,对于98名MS受试者,OASIS在74%(95%CI:[65%,82%])的病例中胜过LesionTOADS。为了进一步验证该方法,我们将OASIS应用于在单独中心进行的169项MRI研究。神经放射科医生再次将OASIS分割与LesionTOADS分割相比较。对于病变,在77%(95%CI:[71%,83%])的病例中,OASIS的排名高于LesionTOADS。对于其中50项研究的随机选择子集,还需要一名放射科医生和一名神经科医生对图像进行评分。在这组病例中,神经放射科医师将OASIS在76%(95%CI:[64%,88%])的病例中,OASIS高于LesionTOADS,神经科医师将其评为66%(95%CI:[52%,78%])和放射科医师52%(95%CI:[38%,66%])。 OASIS通过使用系数权重加权每个成像模态来获得每个体素成为病变部分的估计概率。这些系数是明确的,可以使用标准模型拟合技术获得,并且可以在其他成像研究中重复使用。这种完全自动化的方法可以对病变的存在进行灵敏和特异性的检测,并且可以快速应用于大量图像。强调 ?我们开发了一种针对脑部MRI的MS病变的自动分割方法。 ?我们使用具有多种MRI方式的逻辑回归模型。 ?我们对来自两个成像部位的MRI图像进行了训练并验证了我们的方法。

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