Ikushima Kojiro, Arimura Hidetaka, Yasumatsu Ryuji, Kamezawa Hidemi, Ninomiya Kenta
Department of Health Sciences, Graduate School of Medical Sciences, Kyushu University, 3-1-1, Maidashi, Higashi-ku, Fukuoka, 812-8582, Japan.
Department of Radiological Technology, Yamaguchi University Hospital, 1-1-1 Minami-kogushi, Ube, Yamaguchi, 755-8505, Japan.
MAGMA. 2023 Oct;36(5):767-777. doi: 10.1007/s10334-023-01084-0. Epub 2023 Apr 20.
The malignancy grades of parotid gland cancer (PGC) have been assessed for a decision of treatment policies. Therefore, we have investigated the feasibility of topology-based radiomic features for the prediction of parotid gland cancer (PGC) malignancy grade in magnetic resonance (MR) images.
Two-dimensional T1- and T2-weighted MR images of 39 patients with PGC were selected for this study. Imaging properties of PGC can be quantified using the topology, which could be useful for assessing the number of the k-dimensional holes or heterogeneity in PGC regions using invariants of the Betti numbers. Radiomic signatures were constructed from 41,472 features obtained after a harmonization using an elastic net model. PGC patients were stratified using a logistic classification into low/intermediate- and high-grade malignancy groups. The training data were increased by four times to avoid the overfitting problem using a synthetic minority oversampling technique. The proposed approach was assessed using a 4-fold cross-validation test.
The highest accuracy of the proposed approach was 0.975 for the validation cases, whereas that of the conventional approach was 0.694.
This study indicated that topology-based radiomic features could be feasible for the noninvasive prediction of the malignancy grade of PGCs.
评估腮腺癌(PGC)的恶性程度以决定治疗策略。因此,我们研究了基于拓扑结构的影像组学特征在磁共振(MR)图像中预测腮腺癌(PGC)恶性程度的可行性。
本研究选取了39例腮腺癌患者的二维T1加权和T2加权MR图像。PGC的成像特性可通过拓扑结构进行量化,利用贝蒂数不变量评估PGC区域中k维空洞的数量或异质性可能会有所帮助。使用弹性网络模型进行归一化处理后,从41472个特征构建影像组学特征。采用逻辑分类法将PGC患者分为低/中级和高级恶性组。使用合成少数类过采样技术将训练数据增加四倍以避免过拟合问题。采用4折交叉验证测试对所提方法进行评估。
所提方法在验证病例中的最高准确率为0.975,而传统方法的准确率为0.694。
本研究表明基于拓扑结构的影像组学特征对PGC恶性程度进行无创预测是可行的。