Lei Yu, Zhang Xin, Ni Wei, Yang Heng, Su Jia-Bin, Xu Bin, Chen Liang, Yu Jin-Hua, Gu Yu-Xiang, Mao Ying
Department of Neurosurgery, Huashan Hospital, Fudan University, Shanghai, China.
Department of Electronic Engineering, Fudan University, Shanghai, China.
Neural Regen Res. 2021 May;16(5):830-835. doi: 10.4103/1673-5374.297085.
Although intracranial hemorrhage in moyamoya disease can occur repeatedly, predicting the disease is difficult. Deep learning algorithms developed in recent years provide a new angle for identifying hidden risk factors, evaluating the weight of different factors, and quantitatively evaluating the risk of intracranial hemorrhage in moyamoya disease. To investigate whether convolutional neural network algorithms can be used to recognize moyamoya disease and predict hemorrhagic episodes, we retrospectively selected 460 adult unilateral hemispheres with moyamoya vasculopathy as positive samples for diagnosis modeling, including 418 hemispheres with moyamoya disease and 42 hemispheres with moyamoya syndromes. Another 500 hemispheres with normal vessel appearance were selected as negative samples. We used deep residual neural network (ResNet-152) algorithms to extract features from raw data obtained from digital subtraction angiography of the internal carotid artery, then trained and validated the model. The accuracy, sensitivity, and specificity of the model in identifying unilateral moyamoya vasculopathy were 97.64 ± 0.87%, 96.55 ± 3.44%, and 98.29 ± 0.98%, respectively. The area under the receiver operating characteristic curve was 0.990. We used a combined multi-view conventional neural network algorithm to integrate age, sex, and hemorrhagic factors with features of the digital subtraction angiography. The accuracy of the model in predicting unilateral hemorrhagic risk was 90.69 ± 1.58% and the sensitivity and specificity were 94.12 ± 2.75% and 89.86 ± 3.64%, respectively. The deep learning algorithms we proposed were valuable and might assist in the automatic diagnosis of moyamoya disease and timely recognition of the risk for re-hemorrhage. This study was approved by the Institutional Review Board of Huashan Hospital, Fudan University, China (approved No. 2014-278) on January 12, 2015.
虽然烟雾病中的颅内出血可能会反复发生,但预测这种疾病却很困难。近年来开发的深度学习算法为识别隐藏的风险因素、评估不同因素的权重以及定量评估烟雾病中颅内出血的风险提供了一个新视角。为了研究卷积神经网络算法是否可用于识别烟雾病并预测出血发作,我们回顾性地选择了460个患有烟雾病血管病变的成人单侧半球作为诊断建模的阳性样本,其中包括418个烟雾病半球和42个烟雾综合征半球。另外选择500个血管外观正常的半球作为阴性样本。我们使用深度残差神经网络(ResNet-152)算法从颈内动脉数字减影血管造影获得的原始数据中提取特征,然后对模型进行训练和验证。该模型在识别单侧烟雾病血管病变方面的准确率、灵敏度和特异度分别为97.64±0.87%、96.55±3.44%和98.29±0.98%。受试者工作特征曲线下面积为0.990。我们使用组合多视图传统神经网络算法将年龄、性别和出血因素与数字减影血管造影的特征进行整合。该模型在预测单侧出血风险方面的准确率为90.69±1.58%,灵敏度和特异度分别为94.12±2.75%和89.86±3.64%。我们提出的深度学习算法很有价值,可能有助于烟雾病的自动诊断和及时识别再出血风险。本研究于2015年1月12日获得中国复旦大学附属华山医院机构审查委员会批准(批准号2014-278)。