Kuehle Reinald, Ringwald Friedemann, Bouffleur Frederic, Hagen Niclas, Schaufelberger Matthias, Nahm Werner, Hoffmann Jürgen, Freudlsperger Christian, Engel Michael, Eisenmann Urs
Department of Oral and Maxillofacial Surgery, University of Heidelberg, 69120 Heidelberg, Germany.
Institute of Medical Informatics, University of Heidelberg, 69120 Heidelberg, Germany.
J Clin Med. 2023 Nov 14;12(22):7082. doi: 10.3390/jcm12227082.
Positional cranial deformities are a common finding in toddlers, yet differentiation from craniosynostosis can be challenging. The aim of this study was to train convolutional neural networks (CNNs) to classify craniofacial deformities based on 2D images generated using photogrammetry as a radiation-free imaging technique. A total of 487 patients with photogrammetry scans were included in this retrospective cohort study: children with craniosynostosis (n = 227), positional deformities (n = 206), and healthy children (n = 54). Three two-dimensional images were extracted from each photogrammetry scan. The datasets were divided into training, validation, and test sets. During the training, fine-tuned ResNet-152s were utilized. The performance was quantified using tenfold cross-validation. For the detection of craniosynostosis, sensitivity was at 0.94 with a specificity of 0.85. Regarding the differentiation of the five existing classes (trigonocephaly, scaphocephaly, positional plagiocephaly left, positional plagiocephaly right, and healthy), sensitivity ranged from 0.45 (positional plagiocephaly left) to 0.95 (scaphocephaly) and specificity ranged from 0.87 (positional plagiocephaly right) to 0.97 (scaphocephaly). We present a CNN-based approach to classify craniofacial deformities on two-dimensional images with promising results. A larger dataset would be required to identify rarer forms of craniosynostosis as well. The chosen 2D approach enables future applications for digital cameras or smartphones.
颅骨位置性畸形在幼儿中很常见,但与颅缝早闭的鉴别可能具有挑战性。本研究的目的是训练卷积神经网络(CNN),以基于使用摄影测量法生成的二维图像对颅面畸形进行分类,摄影测量法是一种无辐射成像技术。本回顾性队列研究共纳入487例接受摄影测量扫描的患者:颅缝早闭患儿(n = 227)、位置性畸形患儿(n = 206)和健康儿童(n = 54)。从每次摄影测量扫描中提取三张二维图像。数据集被分为训练集、验证集和测试集。在训练过程中,使用了微调后的ResNet - 152。使用十折交叉验证对性能进行量化。对于颅缝早闭的检测,灵敏度为0.94,特异性为0.85。关于五种现有类别(三角头畸形、舟状头畸形、左侧位置性斜头畸形、右侧位置性斜头畸形和健康)的鉴别,灵敏度范围为0.45(左侧位置性斜头畸形)至0.95(舟状头畸形),特异性范围为0.87(右侧位置性斜头畸形)至0.97(舟状头畸形)。我们提出了一种基于CNN的方法,用于对二维图像上的颅面畸形进行分类,结果很有前景。识别罕见形式的颅缝早闭也需要更大的数据集。所选择的二维方法为数码相机或智能手机的未来应用提供了可能。