mNFE:用于检测 1 型糖尿病病前状态的微生物组网络流熵。

IF 12.2 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY Gut Microbes Pub Date : 2024-01-01 Epub Date: 2024-03-21 DOI:10.1080/19490976.2024.2327349
Rong Gao, Peiluan Li, Yueqiong Ni, Xueqing Peng, Jing Ren, Luonan Chen
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引用次数: 0

摘要

在 1 型糖尿病(T1D)的发展过程中,在急剧变化之前会出现一些关键状态,识别这些疾病前状态可以预测 T1D 或提供重要的预警信号。与基因表达数据不同,肠道微生物组数据可以通过粪便样本无创收集。肠道微生物组测序数据包含不同层次的系统发育信息,可用于可靠地检测临界点或临界状态,从而提供准确有效的预警信号。然而,由于健康状态和临界状态之间的差异一般不显著,因此根据肠道微生物组数据检测 T1D 的临界状态仍然很困难。为解决这一问题,我们提出了一种新方法--基于每个个体单个样本的微生物组网络流熵(mNFE),用于检测不同分类水平的血清转换前临界状态和 T1D 的突然转变。数值模拟验证了 mNFE 在不同噪声水平下的稳健性。此外,基于真实数据集,mNFE 成功识别了不同分类水平的临界状态及其动态网络生物标志物(DNB)。此外,我们还发现了一些高频物种,它们与四个层次上自身抗体的独特临床特征密切相关,并确定了一些在 T1D 进展过程中发挥重要作用的非差异性 "暗物种"。因此,我们的 mNFE 方法不仅为 T1D 病前诊断或预防治疗提供了一种新方法,也为通过肠道微生物组预防其他疾病提供了一种新方法。
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mNFE: microbiome network flow entropy for detecting pre-disease states of type 1 diabetes.

In the development of Type 1 diabetes (T1D), there are critical states just before drastic changes, and identifying these pre-disease states may predict T1D or provide crucial early-warning signals. Unlike gene expression data, gut microbiome data can be collected noninvasively from stool samples. Gut microbiome sequencing data contain different levels of phylogenetic information that can be utilized to detect the tipping point or critical state in a reliable manner, thereby providing accurate and effective early-warning signals. However, it is still difficult to detect the critical state of T1D based on gut microbiome data due to generally non-significant differences between healthy and critical states. To address this problem, we proposed a new method - microbiome network flow entropy (mNFE) based on a single sample from each individual - for detecting the critical state before seroconversion and abrupt transitions of T1D at various taxonomic levels. The numerical simulation validated the robustness of mNFE under different noise levels. Furthermore, based on real datasets, mNFE successfully identified the critical states and their dynamic network biomarkers (DNBs) at different taxonomic levels. In addition, we found some high-frequency species, which are closely related to the unique clinical characteristics of autoantibodies at the four levels, and identified some non-differential 'dark species' play important roles during the T1D progression. mNFE can robustly and effectively detect the pre-disease states at various taxonomic levels and identify the corresponding DNBs with only a single sample for each individual. Therefore, our mNFE method provides a new approach not only for T1D pre-disease diagnosis or preventative treatment but also for preventative medicine of other diseases by gut microbiome.

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来源期刊
Gut Microbes
Gut Microbes Medicine-Microbiology (medical)
CiteScore
18.20
自引率
3.30%
发文量
196
审稿时长
10 weeks
期刊介绍: The intestinal microbiota plays a crucial role in human physiology, influencing various aspects of health and disease such as nutrition, obesity, brain function, allergic responses, immunity, inflammatory bowel disease, irritable bowel syndrome, cancer development, cardiac disease, liver disease, and more. Gut Microbes serves as a platform for showcasing and discussing state-of-the-art research related to the microorganisms present in the intestine. The journal emphasizes mechanistic and cause-and-effect studies. Additionally, it has a counterpart, Gut Microbes Reports, which places a greater focus on emerging topics and comparative and incremental studies.
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