卷积神经网络辅助拉曼光谱用于胶质母细胞瘤的高精度诊断。

Jiawei He, Hongmei Li, Bingchang Zhang, Gehao Liang, Liang Zhang, Wentao Zhao, Wenpeng Zhao, Yue-Jiao Zhang, Zhan-Xiang Wang, Jian-Feng Li
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引用次数: 0

摘要

多形性胶质母细胞瘤(GBM)是最致命的颅内肿瘤,中位生存期约为15个月。由于其高度侵袭性,术中很难准确识别肿瘤边缘。目前在手术中诊断GBM的金标准是病理学,但这很耗时。在这种情况下,我们开发了一种将拉曼光谱(RS)与卷积神经网络(CNN)相结合的方法来区分GBM。对29只原位颅内荷瘤小鼠正常脑组织(478个光谱)和GBM脑组织(462个光谱)的光谱分析表明,该方法对GBM组织的识别准确率为96.8%。随后,对23个正常人脑组织(223个光谱)和21个病理诊断为GBM的患者脑组织(267个光谱)的光谱分析表明,该方法的准确性为93.9%。最重要的是,对于GBM与正常脑组织的光谱差异峰,小鼠和人的光谱共同差异峰在750 cm-1, 1440 cm-1和1586 cm-1,这强调了GBM样品与小鼠和人正常脑组织样品在细胞色素C和脂质方面的差异。初步结果表明,cnn辅助RS操作简单,可以快速准确地识别是GBM组织还是正常脑组织。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional neural network-assisted Raman spectroscopy for high-precision diagnosis of glioblastoma.

Glioblastoma multiforme (GBM) is the most lethal intracranial tumor with a median survival of approximately 15 months. Due to its highly invasive properties, it is particularly difficult to accurately identify the tumor margins intraoperatively. The current gold standard for diagnosing GBM during surgery is pathology, but it is time-consuming. Under these circumstances, we developed a method combining Raman spectroscopy (RS) with convolutional neural networks (CNN) to distinguish GBM. Analysis of the spectra of normal brain samples (478 spectra) and GBM samples (462 spectra) from 29 in situ intracranial tumor-bearing mice showed that this method identified GBM tissue with 96.8 % accuracy. Subsequently, spectral analysis of 23 normal human brain tissues (223 spectra) versus 21 tissues from patients with pathologically diagnosed GBM (267 spectra) revealed that the accuracy of this method was 93.9 %. Most importantly, for the difference peaks in the spectra of GBM and normal brain tissue, the common difference peaks in the mouse and human spectra were at 750 cm-1, 1440 cm-1, and 1586 cm-1, which emphasized the differences in cytochrome C and lipids between GBM samples and normal brain samples in both mice and human. The preliminary results showed that CNN-assisted RS is simple to operate and can rapidly and accurately identify whether it is GBM tissue or normal brain tissue.

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