首页> 美国卫生研究院文献>Neuro-Oncology >NIMG-69. RAPID INTRAOPERATIVE DIAGNOSIS OF GLIOMA RECURRENCE USING STIMULATED RAMAN HISTOLOGY AND DEEP NEURAL NETWORKS
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NIMG-69. RAPID INTRAOPERATIVE DIAGNOSIS OF GLIOMA RECURRENCE USING STIMULATED RAMAN HISTOLOGY AND DEEP NEURAL NETWORKS

机译:nimg-69。利用刺激的拉曼组织学和深神经网络快速术中诊断胶质瘤复发

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摘要

Accurate intraoperative diagnosis of recurrence versus treatment effect (TE) is essential for determining the management of suspected recurrent gliomas. Cytologic and histoarchitectural changes related to chemoradiation overlap with common findings in recurrent tumors (e.g. atypia, abnormal vasculature, necrosis). Moreover, H&E tissue processing artifact complicates interpretation. Stimulated Raman histology (SRH) uses the intrinsic biochemical properties of fresh, unprocessed surgical specimens to provide rapid label-free digital histologic images. Here, we report an automated technique using deep convolutional neural networks (ConvNet) that differentiates recurrent glioma and TE in fresh surgical specimens imaged using SRH with equivalent accuracy and 10x faster (tissue-to-diagnosis, 2 minutes) than conventional methods. Our ConvNet, based on Google’s Inception-ResNet-v2 architecture, was first trained on 3.6 million SRH images from 441 patients with the most common brain tumor subtypes. To optimize the network for classifying glioma recurrence, we used cross-validation (CV) on 35 patients (24 recurrent, 9 TE) for model hyperparameter tuning and to identify an optimal probability threshold to classify recurrence. To perform rigorous model validation, we used a 50 patient external testing set to evaluate overall model accuracy. Over 5 iterations of CV, the mean held-out classification accuracy was 94.8% (range, 91.4 - 97.1%). Using ROC analysis, we found that a probability of recurrence greater than 25% was the optimal threshold to render a recurrence diagnosis for whole-slide SRH images. Using our external testing set, we achieved a classification accuracy of 96% (total 48/50; 30/30 recurrences, 18/20 TE). Moreover, our method effectively identifies regions of glioma recurrence in whole slide SRH at no additional computational cost. Our study demonstrates the feasibility of applying deep learning for intraoperative diagnosis of recurrent gliomas in SRH imaged tissues. In the future, ConvNets may ultimately be used to guide decision-making in the surgical care of recurrent gliomas, independent of conventional neuropathology resources.
机译:准确的术中诊断复发与治疗效果(TE)对于确定疑似复发性胶质瘤的管理是必不可少的。与复发性肿瘤中的常见发现有关的细胞学和组织建筑变化与常见发现(例如,异常血管系统,坏死)。此外,H&E组织处理伪影使解释使得复杂化。受刺激的拉曼组织学(SRH)使用新鲜,未加工的外科样本的内在生化特性,以提供无标记的无标签数字组织学图像。在这里,我们通过深卷积神经网络(ConvNet)报告了一种自动化技术,其在使用SRH与等效精度和10x更快的(组织到诊断,2分钟)上成像的新鲜外科标本中的复发性胶质瘤和TE的自动化技术比常规方法更快(组织到诊断,2分钟)。我们的ConvNet根据Google的Inception-Reset-V2架构,首先是441名患者最常见的脑肿瘤亚型患者的360万SRH图像培训。为了优化用于对胶质瘤复发进行分类的网络,我们在35名患者(24次复制,9 TE)上使用交叉验证(CV)进行模型超参数,并确定最佳概率阈值以分类复发。为了执行严格的模型验证,我们使用了50名患者外部测试设置来评估整体模型精度。超过5次迭代的简历,平均滞录分类准确度为94.8%(范围,91.4-97.1%)。使用ROC分析,我们发现复发性大于25%的概率是最佳阈值,以使全载SRH图像的复发诊断。使用外部测试集,我们实现了96%的分类准确性(共48/50; 30/30复发,18/20 TE)。此外,我们的方法无需额外的计算成本,有效地识别整个幻灯片SRH中的胶质瘤复发区域。我们的研究表明,在SRH成像组织中施加深度学习术中诊断的可行性。在未来,扫描纪最终可能用于指导在经常性胶质瘤的手术护理中指导决策,与常规神经病理学资源无关。

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