1. Systems biology and machine learning approaches identify drug targets in diabetic nephropathy
- Author
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Maryam Abedi, Hamid Reza Marateb, Mohammad Reza Mohebian, Seyed Hamid Aghaee-Bakhtiari, Seyed Mahdi Nassiri, and Yousof Gheisari
- Subjects
Male ,Kidney Cortex ,Support Vector Machine ,Chemistry, Pharmaceutical ,Science ,Global Health ,Article ,Epigenesis, Genetic ,Machine Learning ,Mice ,Diabetes complications ,Animals ,Cluster Analysis ,Humans ,Diabetic Nephropathies ,Gene Regulatory Networks ,Oligonucleotide Array Sequence Analysis ,Kidney Medulla ,Principal Component Analysis ,Multidisciplinary ,Gene Expression Profiling ,Systems Biology ,Computational Biology ,Microarray Analysis ,MicroRNAs ,Mice, Inbred DBA ,Drug Design ,Linear Models ,Regression Analysis ,Medicine ,Algorithms ,Signal Transduction - Abstract
Diabetic nephropathy (DN), the leading cause of end-stage renal disease, has become a massive global health burden. Despite considerable efforts, the underlying mechanisms have not yet been comprehensively understood. In this study, a systematic approach was utilized to identify the microRNA signature in DN and to introduce novel drug targets (DTs) in DN. Using microarray profiling followed by qPCR confirmation, 13 and 6 differentially expressed (DE) microRNAs were identified in the kidney cortex and medulla, respectively. The microRNA-target interaction networks for each anatomical compartment were constructed and central nodes were identified. Moreover, enrichment analysis was performed to identify key signaling pathways. To develop a strategy for DT prediction, the human proteome was annotated with 65 biochemical characteristics and 23 network topology parameters. Furthermore, all proteins targeted by at least one FDA-approved drug were identified. Next, mGMDH-AFS, a high-performance machine learning algorithm capable of tolerating massive imbalanced size of the classes, was developed to classify DT and non-DT proteins. The sensitivity, specificity, accuracy, and precision of the proposed method were 90%, 86%, 88%, and 89%, respectively. Moreover, it significantly outperformed the state-of-the-art (P-value ≤ 0.05) and showed very good diagnostic accuracy and high agreement between predicted and observed class labels. The cortex and medulla networks were then analyzed with this validated machine to identify potential DTs. Among the high-rank DT candidates are Egfr, Prkce, clic5, Kit, and Agtr1a which is a current well-known target in DN. In conclusion, a combination of experimental and computational approaches was exploited to provide a holistic insight into the disorder for introducing novel therapeutic targets.
- Published
- 2021