Huaxi MR Research Center, Department of Radiology, West China Hospital of Sichuan University, Chengdu, Sichuan, China.
Department of Radiology, West China Second Hospital of Sichuan University, Chengdu, Sichuan, China.
Eur Radiol. 2019 Nov;29(11):6152-6162. doi: 10.1007/s00330-019-06372-9. Epub 2019 Aug 23.
The aim of this study was to investigate whether intraplacental texture features from routine placental MRI can objectively and accurately predict invasive placentation.
This retrospective study includes 99 pregnant women with pathologically confirmed placental invasion and 56 pregnant women with simple placenta previa. All participants underwent magnetic resonance imaging after 24 gestational weeks. The placenta was segmented in sagittal images from both turbo spin echo (TSE) and balanced turbo field echo (bTFE) sequences. Textural features were extracted from the both original and Laplacian of Gaussian (LoG)-filtered MRI images. An automated machine learning algorithm was applied to the extracted feature sets to obtain the optimal preprocessing steps, classification algorithm, and corresponding hyper-parameters.
A gradient boosting classifier using all textual features from original and LoG-filtered TSE images and bTFE images identified by the automated machine learning algorithm achieved the optimal performance with sensitivity, specificity, accuracy, and area under ROC curve (AUC) of 100%, 88.5%, 95.2%, and 0.98 in the prediction of placental invasion. In addition, textural features that contributed to the prediction of placental invasion differ from the features significantly affected by normal placenta maturation.
Quantifying intraplacental heterogeneity using LoG filtration and texture analysis highlights the different heterogeneous appearance caused by abnormal placentation relative to normal maturation. The predictive model derived from automated machine learning yielded good performance, indicating the proposed radiomic analysis pipeline can accurately predict placental invasion and facilitate clinical decision-making for pregnant women with suspicious placental invasion.
• The intraplacental texture features have high efficiency in prediction of invasive placentation after 24 gestational weeks. • The features with dominated predictive power did not overlap with the features significantly affected by gestational age.
本研究旨在探讨胎盘磁共振成像(MRI)常规纹理特征是否能客观、准确地预测胎盘植入。
本回顾性研究纳入了 99 例经病理证实的胎盘植入患者和 56 例单纯前置胎盘患者。所有患者均在 24 孕周后接受 MRI 检查。MRI 采用自旋回波(TSE)和平衡场回波(bTFE)序列矢状位扫描。从原始 TSE 和拉普拉斯高斯(LoG)滤波 MRI 图像中提取纹理特征。采用自动化机器学习算法对提取的特征集进行分析,以获得最优的预处理步骤、分类算法和相应的超参数。
自动化机器学习算法识别的原始 TSE、LoG 滤波 TSE 和 bTFE 图像所有纹理特征的梯度提升分类器在预测胎盘植入方面具有最佳性能,其敏感度、特异度、准确度和 ROC 曲线下面积(AUC)分别为 100%、88.5%、95.2%和 0.98。此外,有助于预测胎盘植入的纹理特征与显著受正常胎盘成熟影响的特征不同。
使用 LoG 滤波和纹理分析量化胎盘内异质性,突出了异常胎盘植入相对于正常成熟所导致的不同异质性表现。源自自动化机器学习的预测模型具有良好的性能,表明所提出的放射组学分析流程可以准确预测胎盘植入,并为疑似胎盘植入的孕妇提供临床决策支持。
• 24 孕周后胎盘内纹理特征在预测胎盘植入方面具有高效性。• 具有主导预测能力的特征与显著受孕龄影响的特征不重叠。