A Deep Learning Approach for Detecting Colorectal Cancer via Raman Spectra

Author:

Cao Zheng1ORCID,Pan Xiang2,Yu Hongyun1,Hua Shiyuan3,Wang Da2,Chen Danny Z.4ORCID,Zhou Min3ORCID,Wu Jian5

Affiliation:

1. RealDoctor AI Research Center, College of Computer Science and Technology, Zhejiang University, China

2. Key Laboratory of Cancer Prevention and Intervention, Ministry of Education, The Second Affiliated Hospital, Zhejiang University School of Medicine, China

3. Institute of Translational Medicine and the Cancer Institute of the Second Affiliated Hospital, Zhejiang University School of Medicine, China

4. Department of Computer Science and Engineering, University of Notre Dame, USA

5. Second Affiliated Hospital School of Medicine, and School of Public Health, Zhejiang University, China

Abstract

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.

Funder

National Science Foundation

Key Laboratory of Medical Neurobiology of Zhejiang Province

Medical and Health Research Project of Zhejiang Province of China

Zhejiang Public Welfare Technology Research Project

Zhejiang University Education Foundation

National Research and Development Program of China

Publisher

American Association for the Advancement of Science (AAAS)

Subject

General Medicine

Reference44 articles.

1. Colorectal cancer statistics, 2020;Siegel R. L.;CA: A Cancer Journal for Clinicians,2020

2. Flexible sigmoidoscopy versus faecal occult blood testing for colorectal cancer screening in asymptomatic individuals;Holme O.;Cochrane Database of Systematic Reviews,2013

3. Effect of interleukin-1β inhibition with canakinumab on incident lung cancer in patients with atherosclerosis: exploratory results from a randomised, double-blind, placebo-controlled trial

4. Once-only sigmoidoscopy in colorectal cancer screening: follow-up findings of the Italian Randomized Controlled Trial—SCORE;Segnan N.;Journal of the National Cancer Institute,2011

5. Long-term effectiveness of sigmoidoscopy screening on colorectal cancer incidence and mortality in women and men: a randomized trial;Holme Ø.;Annals of Internal Medicine,2018

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