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基于 T1 加权对比增强 3D MRI 的脑转移瘤自动检测框架。

Automated Brain Metastases Detection Framework for T1-Weighted Contrast-Enhanced 3D MRI.

出版信息

IEEE J Biomed Health Inform. 2020 Oct;24(10):2883-2893. doi: 10.1109/JBHI.2020.2982103. Epub 2020 Mar 23.

DOI:10.1109/JBHI.2020.2982103
PMID:32203040
Abstract

Brain Metastases (BM) complicate 20-40% of cancer cases. BM lesions can present as punctate (1 mm) foci, requiring high-precision Magnetic Resonance Imaging (MRI) in order to prevent inadequate or delayed BM treatment. However, BM lesion detection remains challenging partly due to their structural similarities to normal structures (e.g., vasculature). We propose a BM-detection framework using a single-sequence gadolinium-enhanced T1-weighted 3D MRI dataset. The framework focuses on the detection of smaller (<15 mm) BM lesions and consists of: (1) candidate-selection stage, using Laplacian of Gaussian approach for highlighting parts of an MRI volume holding higher BM occurrence probabilities, and (2) detection stage that iteratively processes cropped region-of-interest volumes centered by candidates using a custom-built 3D convolutional neural network ("CropNet"). Data is augmented extensively during training via a pipeline consisting of random ga mma correction and elastic deformation stages; the framework thereby maintains its invariance for a plausible range of BM shape and intensity representations. This approach is tested using five-fold cross-validation on 217 datasets from 158 patients, with training and testing groups randomized per patient to eliminate learning bias. The BM database included lesions with a mean diameter of ∼5.4 mm and a mean volume of ∼160 mm. For 90% BM-detection sensitivity, the framework produced on average 9.12 false-positive BM detections per patient (standard deviation of 3.49); for 85% sensitivity, the average number of false-positives declined to 5.85. Comparative analysis showed that the framework produces comparable BM-detection accuracy with the state-of-art approaches validated for significantly larger lesions.

摘要

脑转移(BM)在 20-40%的癌症病例中较为常见。BM 病变可能表现为点状(1mm)病灶,需要高精度的磁共振成像(MRI)才能防止对 BM 治疗不足或延迟。然而,由于其与正常结构(如血管)的结构相似,因此 BM 病变的检测仍然具有挑战性。

我们提出了一种使用单序列钆增强 T1 加权 3D MRI 数据集的 BM 检测框架。该框架专注于检测较小的(<15mm)BM 病变,包括:(1)候选选择阶段,使用拉普拉斯高斯方法突出 MRI 体积中持更高 BM 发生概率的部分;(2)检测阶段,该阶段通过使用自定义的 3D 卷积神经网络(“CropNet”)迭代处理以候选物为中心裁剪的感兴趣区域体积。在训练过程中,通过包含随机伽马校正和弹性变形阶段的管道对数据进行广泛扩充;该框架因此保持对 BM 形状和强度表示的合理范围的不变性。

该方法在来自 158 名患者的 217 个数据集上进行了五折交叉验证测试,每个患者的训练和测试组均随机分配以消除学习偏差。BM 数据库包括平均直径约为 5.4mm 和平均体积约为 160mm 的病变。对于 90%的 BM 检测灵敏度,该框架平均每个患者产生 9.12 个假阳性 BM 检测(标准差为 3.49);对于 85%的灵敏度,假阳性数量平均减少到 5.85。对比分析表明,该框架产生的 BM 检测准确性与针对明显较大病变验证的最先进方法相当。

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