Sinha Neeraj, Sharma Sachin, Tripathi Parul, Negi Simarjeet Kaur, Tikoo Kamiya, Kumar Dhiraj, Rao Kanury V S, Chatterjee Samrat
Immunology Group, International Centre for Genetic Engineering and Biotechnology, Aruna, Asaf Ali Marg, New Delhi, 110067, India.
Present address: Drug Discovery Research Centre, Translational Health Science & Technology Institute, Gurgaon, 122016, India.
BMC Syst Biol. 2014 Aug 30;8:104. doi: 10.1186/s12918-014-0104-4.
Obesity is now a worldwide epidemic disease and poses a major risk for diet related diseases like type 2 diabetes, cardiovascular disease, stroke and fatty liver among others. In the present study we employed the murine model of diet-induced obesity to determine the early, tissue-specific, gene expression signatures that characterized progression to obesity and type 2 diabetes.
We used the C57BL/6 J mouse which is known as a counterpart for diet-induced human diabetes and obesity model. Our initial experiments involved two groups of mice, one on normal diet (ND) and the other on high-fat and high-sucrose (HFHSD). The later were then further separated into subgroups that either received no additional treatment, or were treated with different doses of the Ayurvedic formulation KAL-1. At different time points (week3, week6, week9, week12, week15 and week18) eight different tissues were isolated from mice being fed on different diet compositions. These tissues were used to extract gene-expression data through microarray experiment. Simultaneously, we also measured different body parameters like body weight, blood Glucose level and cytokines profile (anti-inflammatory & pro-inflammatory) at each time point for all the groups. Using partial least square discriminant analysis (PLS-DA) method we identified gene-expression signatures that predict physiological parameters like blood glucose levels, body weight and the balance of pro- versus anti-inflammatory cytokines. The resulting models successfully predicted diet-induced changes in body weight and blood glucose levels, although the predictive power for cytokines profiles was relatively poor. In the former two instances, however, we could exploit the models to further extract the early gene-expression signatures that accurately predict the onset of diabetes and obesity. These extracted genes allowed definition of the regulatory network involved in progression of disease.
We identified the early gene-expression signature for the onset of obesity and type 2 diabetes. Further analysis of this data suggests that some of these genes could be used as potential biomarkers for these two disease-states.
肥胖如今是一种全球性的流行病,对诸如2型糖尿病、心血管疾病、中风和脂肪肝等与饮食相关的疾病构成重大风险。在本研究中,我们采用饮食诱导肥胖的小鼠模型来确定表征向肥胖和2型糖尿病进展的早期、组织特异性基因表达特征。
我们使用了C57BL/6 J小鼠,它是已知的饮食诱导人类糖尿病和肥胖模型的对应物。我们最初的实验涉及两组小鼠,一组喂食正常饮食(ND),另一组喂食高脂肪高蔗糖(HFHSD)饮食。然后将后者进一步分为未接受额外治疗或用不同剂量的阿育吠陀配方KAL-1治疗的亚组。在不同时间点(第3周、第6周、第9周、第12周、第15周和第18周),从喂食不同饮食组成的小鼠中分离出八种不同的组织。这些组织用于通过微阵列实验提取基因表达数据。同时,我们还在每个时间点测量了所有组的不同身体参数,如体重、血糖水平和细胞因子谱(抗炎和促炎)。使用偏最小二乘判别分析(PLS-DA)方法,我们确定了预测血糖水平、体重和促炎与抗炎细胞因子平衡等生理参数的基因表达特征。所得模型成功预测了饮食诱导的体重和血糖水平变化,尽管对细胞因子谱的预测能力相对较差。然而,在前两种情况下,我们可以利用这些模型进一步提取准确预测糖尿病和肥胖症发病的早期基因表达特征。这些提取的基因有助于定义疾病进展中涉及的调控网络。
我们确定了肥胖和2型糖尿病发病的早期基因表达特征。对这些数据的进一步分析表明,其中一些基因可作为这两种疾病状态的潜在生物标志物。