Abstract

Breast cancer is the second cause of cancer-associated death among women and seriously endangers women’s health. Therefore, early identification of breast cancer would be beneficial to women’s health. At present, circular RNA (circRNA) not only exists in the extracellular vesicles (EVs) in plasma, but also presents distinct patterns under different physiological and pathological conditions. Therefore, we assume that circRNA could be used for early diagnosis of breast cancer. Here, we developed classifiers for breast cancer diagnosis that relied on 259 samples, including 144 breast cancer patients and 115 controls. In the discovery stage, we compared the genome-wide long RNA profiles of EVs in patients with breast cancer (n=14) and benign breast (n=6). To further verify its potential in early diagnosis of breast cancer, we prospectively collected plasma samples from 259 individuals before treatment, including 144 breast cancer patients and 115 controls. Finally, we developed and verified the predictive classifies based on their circRNA expression profiles of plasma EVs by using multiple machine learning models. By comparing their circRNA profiles, we found 439 circRNAs with significantly different levels between cancer patients and controls. Considering the cost and practicability of the test, we selected 20 candidate circRNAs with elevated levels and detected their levels by quantitative real-time polymerase chain reaction. In the training cohort, we found that BCExoC, a nine-circRNA combined classifier with SVM model, achieved the largest AUC of 0.83 [95% CI 0.77-0.88]. In the validation cohort, the predictive efficacy of the classifier achieved 0.80 [0.71-0.89]. Our work reveals the application prospect of circRNAs in plasma EVs as non-invasive liquid biopsies in the diagnosis and management of breast cancer.

Highlights

  • Breast cancer is a major kind of malignant tumor that seriously endangers women’s health

  • We found that there existed different types of RNAs in extracellular vesicles (EVs), such as circular RNA (circRNA), lncRNA, and mRNA, and each type of RNA showed many entities [circRNA (n=34,749), lncRNA (n=68,298) and mRNA (n=20,324); Figure 2A]

  • Since the up-regulated features were more practical in clinical detection, we focused on the 20 circRNAs, which were increased in breast cancer patients compared to controls (Supplemental Figure 1)

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Summary

Introduction

Breast cancer is a major kind of malignant tumor that seriously endangers women’s health. The overall prognosis of breast cancer is good, the five-year relative survival rate of stage IV patients is still lower than 30% [2]. It is necessary to develop an early diagnosis method for breast cancer identification. Since the contents of EVs could reflect the characteristics of cancer cells, they have been used to develop a variety of non-invasive methods for cancer-related applications, such as early diagnosis and prognosis prediction of cancer [5,6,7,8]. MicroRNAs and proteins derived from EVs have been used for the early diagnosis of various cancers [5, 9, 10]. A stable biomarker with appropriate concentrations may be more suitable for the early diagnosis of breast cancer

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