Zhao Hongqian, Gao Jie
Jiangnan University, School of Science, Wuxi, Jiangsu 214122, P.R.China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2020 Apr 25;37(2):304-310. doi: 10.7507/1001-5515.201908013.
Breast cancer is a malignant tumor with the highest morbidity and mortality in female in recent years, and it is a complex disease that affects human health. Studies have shown that dynamic network biomarkers (DNB) can effectively identify critical states at which complex diseases such as breast cancer change from a normal state to a disease state. However, the traditional DNB method requires data from multiple samples in the same disease state, which is usually unachievable in clinical diagnosis. This paper quantitatively analyzes the time series data of MCF-7 breast cancer cells and finds the DNB module of a single sample in the time series based on landscape DNB (L-DNB) method. Then, a comprehensive index is constructed to detect its early warning signals to determine the critical state of breast cancer cell differentiation. The results of this study may be of great significance for the prevention and early diagnosis of breast cancer. It is expected that this paper can provide references for the related research of breast cancer.
乳腺癌是近年来女性发病率和死亡率最高的恶性肿瘤,是一种影响人类健康的复杂疾病。研究表明,动态网络生物标志物(DNB)能够有效识别乳腺癌等复杂疾病从正常状态转变为疾病状态的关键状态。然而,传统的DNB方法需要同一疾病状态下多个样本的数据,这在临床诊断中通常是无法实现的。本文对MCF-7乳腺癌细胞的时间序列数据进行定量分析,并基于景观DNB(L-DNB)方法在时间序列中找到单个样本的DNB模块。然后,构建一个综合指标来检测其预警信号,以确定乳腺癌细胞分化的关键状态。本研究结果可能对乳腺癌的预防和早期诊断具有重要意义。期望本文能为乳腺癌的相关研究提供参考。