Department of Computer Science and Engineering, The Ohio State University, Marion, USA.
BMC Genomics. 2023 Nov 21;24(1):697. doi: 10.1186/s12864-023-09780-w.
Gene similarity networks play important role in unraveling the intricate associations within diverse cancer types. Conventionally, gauging the similarity between genes has been approached through experimental methodologies involving chemical and molecular analyses, or through the lens of mathematical techniques. However, in our work, we have pioneered a distinctive mathematical framework, one rooted in the co-occurrence of attribute values and single point mutations, thereby establishing a novel approach for quantifying the dissimilarity or similarity among genes. Central to our approach is the recognition of mutations as key players in the evolutionary trajectory of cancer. Anchored in this understanding, our methodology hinges on the consideration of two categorical attributes: mutation type and nucleotide change. These attributes are pivotal, as they encapsulate the critical variations that can precipitate substantial changes in gene behavior and ultimately influence disease progression. Our study takes on the challenge of formulating similarity measures that are intrinsic to genes' categorical data. Taking into account the co-occurrence probability of attribute values within single point mutations, our innovative mathematical approach surpasses the boundaries of conventional methods. We thereby provide a robust and comprehensive means to assess gene similarity and take a significant step forward in refining the tools available for uncovering the subtle yet impactful associations within the complex realm of gene interactions in cancer.
基因相似性网络在揭示不同癌症类型之间复杂关联方面发挥着重要作用。传统上,通过涉及化学和分子分析的实验方法或通过数学技术的视角来衡量基因之间的相似性。然而,在我们的工作中,我们开创了一个独特的数学框架,该框架基于属性值和单点突变的共同出现,从而为量化基因之间的差异或相似性提供了一种新方法。我们方法的核心是认识到突变是癌症进化轨迹中的关键因素。基于这种理解,我们的方法依赖于对两个分类属性的考虑:突变类型和核苷酸变化。这些属性是关键的,因为它们包含了可能导致基因行为发生重大变化并最终影响疾病进展的关键变异。我们的研究面临着制定与基因分类数据内在相关的相似性度量的挑战。考虑到单点突变中属性值的共同出现概率,我们创新的数学方法超越了传统方法的界限。因此,我们提供了一种强大而全面的方法来评估基因相似性,并在完善用于揭示癌症中基因相互作用复杂领域中微妙但有影响力的关联的工具方面迈出了重要一步。