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单样本网络模块生物标志物 (sNMB) 方法揭示了疾病进展的恶化前阶段。

The single-sample network module biomarkers (sNMB) method reveals the pre-deterioration stage of disease progression.

机构信息

School of Mathematics and Big Data, Foshan University, Foshan 528000, China.

School of Mathematics, South China University of Technology, Guangzhou 510640, China.

出版信息

J Mol Cell Biol. 2022 Dec 26;14(8). doi: 10.1093/jmcb/mjac052.

Abstract

The progression of complex diseases generally involves a pre-deterioration stage that occurs during the transition from a healthy state to disease deterioration, at which a drastic and qualitative shift occurs. The development of an effective approach is urgently needed to identify such a pre-deterioration stage or critical state just before disease deterioration, which allows the timely implementation of appropriate measures to prevent a catastrophic transition. However, identifying the pre-deterioration stage is a challenging task in clinical medicine, especially when only a single sample is available for most patients, which is responsible for the failure of most statistical methods. In this study, a novel computational method, called single-sample network module biomarkers (sNMB), is presented to predict the pre-deterioration stage or critical point using only a single sample. Specifically, the proposed single-sample index effectively quantifies the disturbance caused by a single sample against a group of given reference samples. Our method successfully detected the early warning signal of the critical transitions when applied to both a numerical simulation and four real datasets, including acute lung injury, stomach adenocarcinoma, esophageal carcinoma, and rectum adenocarcinoma. In addition, it provides signaling biomarkers for further practical application, which helps to discover prognostic indicators and reveal the underlying molecular mechanisms of disease progression.

摘要

复杂疾病的进展通常涉及一个恶化前阶段,这个阶段发生在从健康状态向疾病恶化的转变过程中,此时会发生剧烈的定性转变。因此,迫切需要开发一种有效的方法来识别这种恶化前阶段或疾病恶化前的关键状态,以便及时采取适当措施预防灾难性的转变。然而,在临床医学中,识别恶化前阶段是一项具有挑战性的任务,特别是对于大多数患者来说,只有一个样本可用,这也是大多数统计方法失败的原因。在这项研究中,提出了一种名为单样本网络模块生物标志物 (sNMB) 的新计算方法,仅使用单个样本即可预测恶化前阶段或临界点。具体来说,所提出的单样本指标可以有效地量化单个样本对一组给定参考样本的干扰。我们的方法成功地检测到了数值模拟和四个真实数据集(包括急性肺损伤、胃腺癌、食管癌和直肠腺癌)中关键转变的预警信号。此外,它还提供了用于进一步实际应用的信号生物标志物,有助于发现预后指标并揭示疾病进展的潜在分子机制。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/85b2/9923387/c18ffb390c6f/mjac052fig1.jpg

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