Department of Biomedical Engineering and Physics, Amsterdam UMC. location AMC, Amsterdam, the Netherlands.
Department of Radiology and Nuclear Medicine, Amsterdam UMC, location AMC, Amsterdam, the Netherlands.
J Neurointerv Surg. 2020 Sep;12(9):848-852. doi: 10.1136/neurintsurg-2019-015471. Epub 2019 Dec 23.
Infarct volume is a valuable outcome measure in treatment trials of acute ischemic stroke and is strongly associated with functional outcome. Its manual volumetric assessment is, however, too demanding to be implemented in clinical practice.
To assess the value of convolutional neural networks (CNNs) in the automatic segmentation of infarct volume in follow-up CT images in a large population of patients with acute ischemic stroke.
We included CT images of 1026 patients from a large pooling of patients with acute ischemic stroke. A reference standard for the infarct segmentation was generated by manual delineation. We introduce three CNN models for the segmentation of subtle, intermediate, and severe hypodense lesions. The fully automated infarct segmentation was defined as the combination of the results of these three CNNs. The results of the three-CNNs approach were compared with the results from a single CNN approach and with the reference standard segmentations.
The median infarct volume was 48 mL (IQR 15-125 mL). Comparison between the volumes of the three-CNNs approach and manually delineated infarct volumes showed excellent agreement, with an intraclass correlation coefficient (ICC) of 0.88. Even better agreement was found for severe and intermediate hypodense infarcts, with ICCs of 0.98 and 0.93, respectively. Although the number of patients used for training in the single CNN approach was much larger, the accuracy of the three-CNNs approach strongly outperformed the single CNN approach, which had an ICC of 0.34.
Convolutional neural networks are valuable and accurate in the quantitative assessment of infarct volumes, for both subtle and severe hypodense infarcts in follow-up CT images. Our proposed three-CNNs approach strongly outperforms a more straightforward single CNN approach.
梗死体积是急性缺血性脑卒中治疗试验中的一种有价值的结局指标,与功能结局密切相关。然而,其手动容积评估过于繁琐,无法在临床实践中实施。
评估卷积神经网络(CNNs)在大量急性缺血性脑卒中患者的随访 CT 图像中自动分割梗死体积的价值。
我们纳入了来自大型急性缺血性脑卒中患者队列的 1026 例患者的 CT 图像。通过手动勾画生成梗死分割的参考标准。我们引入了 3 种用于细微、中等和严重低密病灶分割的 CNN 模型。全自动梗死分割被定义为这 3 种 CNN 结果的组合。将 3 种-CNN 方法的结果与单种 CNN 方法和参考标准分割进行比较。
中位数梗死体积为 48ml(IQR 15-125ml)。3 种-CNN 方法与手动勾画梗死体积的比较显示出极好的一致性,组内相关系数(ICC)为 0.88。对于严重和中等低密梗死灶,一致性更好,ICC 分别为 0.98 和 0.93。尽管单种 CNN 方法用于训练的患者数量要大得多,但 3 种-CNN 方法的准确性明显优于单种 CNN 方法,后者的 ICC 为 0.34。
在随访 CT 图像中,CNNs 对于细微和严重低密梗死灶的定量评估是有价值且准确的。我们提出的 3 种-CNN 方法明显优于更直接的单种 CNN 方法。