Optoelectronic Division-Engineering Department, University of Sannio, 82100 Benevento, Italy.
Centro Regionale Information Communication Technology (CeRICT Scrl), 82100 Benevento, Italy.
Cells. 2023 Nov 17;12(22):2645. doi: 10.3390/cells12222645.
We investigated the possibility of using Raman spectroscopy assisted by artificial intelligence methods to identify liver cancer cells and distinguish them from their Non-Tumor counterpart. To this aim, primary liver cells (40 Tumor and 40 Non-Tumor cells) obtained from resected hepatocellular carcinoma (HCC) tumor tissue and the adjacent non-tumor area (negative control) were analyzed by Raman micro-spectroscopy. Preliminarily, the cells were analyzed morphologically and spectrally. Then, three machine learning approaches, including multivariate models and neural networks, were simultaneously investigated and successfully used to analyze the cells' Raman data. The results clearly demonstrate the effectiveness of artificial intelligence (AI)-assisted Raman spectroscopy for Tumor cell classification and prediction with an accuracy of nearly 90% of correct predictions on a single spectrum.
我们研究了利用拉曼光谱结合人工智能方法来识别肝癌细胞并将其与非肿瘤细胞区分开来的可能性。为此,我们对取自肝癌(HCC)肿瘤组织和相邻非肿瘤区域(阴性对照)的原代肝细胞(40 个肿瘤细胞和 40 个非肿瘤细胞)进行了拉曼微光谱分析。首先,对细胞进行了形态学和光谱学分析。然后,同时研究了三种机器学习方法,包括多元模型和神经网络,并成功地用于分析细胞的拉曼数据。结果清楚地表明,人工智能(AI)辅助拉曼光谱对于肿瘤细胞的分类和预测具有有效性,在单个光谱上的正确预测率接近 90%。