Increase the Accuracy of Detection of Pathogenic Genes of Breast Cancer using a Graph-Based Approach to the Gene Prioritization Problem

None Mohammed Thajeel Abdullah
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Abstract

Cancer is one of the most common causes of mortality today. This disease's complications impose many costs on the human community's health, care, and well-being sectors. Solving complex biological problems requires advanced computational methods, and bioinformatics was created to solve such complex problems with the active interaction of several fields of science. Bioinformatics is an interdisciplinary science combining biological sciences, computers, mathematics, and statistics. The issue investigated in this research deals with one of the challenging issues in bioinformatics, namely candidate gene prioritization in breast cancer. Gene prioritization means sorting genes based on their relevance to a specific disease, such as breast cancer. Finally, the genes are checked according to their importance in performing costly experiments. The proposed approach in this research is to present a method based on graph mining for prioritizing genes. The study conducted with ENDEAOUR and DIR methods was compared and evaluated. The evaluation results show that the designed method is more efficient than other compared methods.
使用基于图的方法来解决基因优先排序问题,提高乳腺癌致病基因检测的准确性
癌症是当今最常见的死亡原因之一。这种疾病的并发症给人类社会的卫生、护理和福祉部门带来了许多成本。解决复杂的生物学问题需要先进的计算方法,而生物信息学的产生就是为了通过几个科学领域的积极互动来解决这样复杂的问题。生物信息学是一门结合生物科学、计算机、数学和统计学的交叉学科。本研究研究的问题涉及生物信息学中的一个具有挑战性的问题,即乳腺癌候选基因的优先排序。基因优先排序是指根据基因与特定疾病(如乳腺癌)的相关性对基因进行排序。最后,根据基因在进行昂贵实验中的重要性进行检查。本研究提出了一种基于图挖掘的基因优先排序方法。对endeavor和DIR方法进行了比较和评价。评价结果表明,所设计的方法比其他比较方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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