Wei Cheng-Jiang, Yan Cheng, Tang Yan, Wang Wei, Gu Yi-Hui, Ren Jie-Yi, Cui Xi-Wei, Lian Xiang, Liu Jin, Wang Hui-Jing, Gu Bin, Zan Tao, Li Qing-Feng, Wang Zhi-Chao
Department of Plastic and Reconstructive Surgery, Shanghai Ninth People's Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Department of Radiology, Zhongshan Hospital, Fudan University, Shanghai, China.
Front Oncol. 2020 Jul 31;10:1192. doi: 10.3389/fonc.2020.01192. eCollection 2020.
Because neurofibromatosis type I (NF1) is a cancer predisposition disease, it is important to distinguish between benign and malignant lesions, especially in the craniofacial area. The purpose of this study is to improve effectiveness in the diagnostic performance in discriminating malignant from benign craniofacial lesions based on computed tomography (CT) using a Keras-based machine-learning model. The Keras-based machine learning technique, a neural network package in the Python language, was used to train the diagnostic model on CT datasets. Fifty NF1 patients with benign craniofacial neurofibromas and six NF1 patients with malignant peripheral nerve sheath tumors (MPNSTs) were selected as the training set. Three validation cohorts were used: validation cohort 1 (random selection of 90% of the patients in the training cohort), validation cohort 2 (an independent cohort of 9 NF1 patients with benign craniofacial neurofibromas and 11 NF1 patients with MPNST), and validation cohort 3 (eight NF1 patients with MPNST, not restricted to the craniofacial area). Sensitivity and specificity were tested using validation cohorts 1 and 2, and generalizability was evaluated using validation cohort 3. A total of 59 NF1 patients with benign neurofibroma and 23 NF1 patients with MPNST were included. A Keras-based machine-learning model was successfully established using the training cohort. The accuracy was 96.99 and 100% in validation cohorts 1 and 2, respectively, discriminating NF1-related benign and malignant craniofacial lesions. However, the accuracy of this model was significantly reduced to 51.72% in the identification of MPNSTs in different body regions. The Keras-based machine learning technique showed the potential of robust diagnostic performance in the differentiation of craniofacial MPNSTs and benign neurofibromas in NF1 patients using CT images. However, the model has limited generalizability when applied to other body areas. With more clinical data accumulating in the model, this system may support clinical doctors in the primary screening of true MPNSTs from benign lesions in NF1 patients.
由于I型神经纤维瘤病(NF1)是一种癌症易感疾病,区分良性和恶性病变非常重要,尤其是在颅面部区域。本研究的目的是基于计算机断层扫描(CT),使用基于Keras的机器学习模型提高鉴别颅面部良性和恶性病变诊断性能的有效性。基于Keras的机器学习技术是Python语言中的一个神经网络包,用于在CT数据集上训练诊断模型。选择50例患有颅面部良性神经纤维瘤的NF1患者和6例患有恶性周围神经鞘瘤(MPNST)的NF1患者作为训练集。使用了三个验证队列:验证队列1(从训练队列中随机选择90%的患者)、验证队列2(一个独立队列,包括9例患有颅面部良性神经纤维瘤的NF1患者和11例患有MPNST的NF1患者)以及验证队列3(8例患有MPNST的NF1患者,不限于颅面部区域)。使用验证队列1和2测试敏感性和特异性,并使用验证队列3评估可推广性。总共纳入了59例患有良性神经纤维瘤的NF1患者和23例患有MPNST的NF1患者。使用训练队列成功建立了基于Keras的机器学习模型。在验证队列1和2中,鉴别NF1相关颅面部良性和恶性病变的准确率分别为96.99%和100%。然而,在识别不同身体区域的MPNST时,该模型的准确率显著降至51.72%。基于Keras的机器学习技术显示出在使用CT图像区分NF1患者的颅面部MPNST和良性神经纤维瘤方面具有强大诊断性能的潜力。然而,该模型应用于其他身体部位时可推广性有限。随着模型中积累更多临床数据,该系统可能会支持临床医生对NF1患者的良性病变进行真正MPNST的初步筛查。