AlShibli Ahmad, Mathkour Hassan
Department of computer science, College of computer and information sciences, King Saud University, Riyadh, Saudi Arabia.
Saudi J Biol Sci. 2020 Dec;27(12):3647-3654. doi: 10.1016/j.sjbs.2020.08.007. Epub 2020 Aug 13.
Genomic copy number variations (CNVs) are considered as a significant source of genetic diversity and widely involved in gene expression and regulatory mechanism, genetic disorders and disease risk, susceptibility to certain diseases and conditions, and resistance to medical drugs. Many studies have targeted the identification, profiling, analysis, and associations of genetic CNVs. We propose herein two new fuzzy methods, taht is, one based on the fuzzy inference from the pre-processed input, and another based on fuzzy C-means clustering. Our solutions present a higher true positive rate and a lower false negative with no false positive, efficient performance and consumption of least resources.
基因组拷贝数变异(CNVs)被认为是遗传多样性的一个重要来源,广泛参与基因表达和调控机制、遗传疾病和疾病风险、对某些疾病和病症的易感性以及对药物的抗性。许多研究都致力于基因CNVs的识别、分析、关联研究。我们在此提出两种新的模糊方法,即一种基于对预处理输入的模糊推理,另一种基于模糊C均值聚类。我们的解决方案具有更高的真阳性率和更低的假阴性率(无假阳性),性能高效且资源消耗最少。