Department of Radiology, Tokai University School of Medicine, 143 Shimokasuka, Isehara, 259-1193, Japan.
Department of Radiological Technology, Faculty of Health Science, Juntendo University, Bunkyo-Ku, Tokyo, Japan.
Sci Rep. 2023 Mar 17;13(1):4426. doi: 10.1038/s41598-023-31403-3.
Punctate white matter lesions (PWMLs) in infants may be related to neurodevelopmental outcomes based on the location or number of lesions. This study aimed to assess the automatic detectability of PWMLs in infants on deep learning using composite images created from several cases. To create the initial composite images, magnetic resonance (MR) images of two infants with the most PWMLs were used; their PWMLs were extracted and pasted onto MR images of infants without abnormality, creating many composite PWML images. Deep learning models based on a convolutional neural network, You Only Look Once v3 (YOLOv3), were constructed using the training set of 600, 1200, 2400, and 3600 composite images. As a result, a threshold of detection probability of 20% and 30% for all deep learning model sets yielded a relatively high sensitivity for automatic PWML detection (0.908-0.957). Although relatively high false-positive detections occurred with the lower threshold of detection probability, primarily, in the partial volume of the cerebral cortex (≥ 85.8%), those can be easily distinguished from the white matter lesions. Relatively highly sensitive automatic detection of PWMLs was achieved by creating composite images from two cases using deep learning.
脑白质点状病变(PWMLs)在婴儿中可能与神经发育结局有关,具体取决于病变的位置或数量。本研究旨在使用来自多个病例的复合图像评估深度学习中婴儿 PWMLs 的自动检测能力。为了创建初始复合图像,使用了两个 PWMLs 最多的婴儿的磁共振(MR)图像;提取他们的 PWMLs 并粘贴到无异常的婴儿的 MR 图像上,从而创建了许多复合 PWML 图像。使用 600、1200、2400 和 3600 张复合图像的训练集构建了基于卷积神经网络的深度学习模型,即 You Only Look Once v3(YOLOv3)。结果,所有深度学习模型集的检测概率阈值为 20%和 30%,对自动 PWML 检测具有较高的敏感性(0.908-0.957)。虽然较低的检测概率阈值会导致相对较高的假阳性检测,但主要是在脑皮质的部分容积(≥85.8%)中,这些可以很容易地与脑白质病变区分开来。通过使用深度学习从两个病例创建复合图像,可以实现相对敏感的 PWML 自动检测。