摘要
Objective and Impact Statement.Distinguishing tumors from normal tissues is vital in the intraoperative diagnosis and pathological examination.In this work,we propose to utilize Raman spectroscopy as a novel modality in surgery to detect colorectal cancer tissues.Introduction.Raman spectra can reflect the substance components of the target tissues.However,the feature peak is slight and hard to detect due to environmental noise.Collecting a high-quality Raman spectroscopy dataset and developing effective deep learning detection methods are possibly viable approaches.Methods.First,we collect a large Raman spectroscopy dataset from 26 colorectal cancer patients with the Raman shift ranging from 385 to 1545 cm^(−1).Second,a one-dimensional residual convolutional neural network(1D-ResNet)architecture is designed to classify the tumor tissues of colorectal cancer.Third,we visualize and interpret the fingerprint peaks found by our deep learning model.Results.Experimental results show that our deep learning method achieves 98.5%accuracy in the detection of colorectal cancer and outperforms traditional methods.Conclusion.Overall,Raman spectra are a novel modality for clinical detection of colorectal cancer.Our proposed ensemble 1D-ResNet could effectively classify the Raman spectra obtained from colorectal tumor tissues or normal tissues.
基金
supported by the National Research and Development Program of China under grant No.2019YFB1404802
the Zhejiang University Education Foundation under grants No.K18-511120-004,No.K17-511120-017,and No.K17-518051-02
the Zhejiang Public Welfare Technology Research Project under grant No.LGF20F020013
the Medical and Health Research Project of Zhejiang Province of China (No.2019KY667)
the Key Laboratory of Medical Neurobiology of Zhejiang Province
supported in part by NSF Grant CCF-1617735.