Wang Juan, Wang Lingxiao, Liu Yi, Li Xiao, Ma Jie, Li Mansheng, Zhu Yunping
School of Basic Medical Sciences, Anhui Medical University, Hefei 230032, China.
State Key Laboratory of Medical Proteomics, Beijing Proteome Research Center, National Center for Protein Sciences (Beijing), Beijing Institute of Lifeomics, Beijing 102206, China.
Int J Mol Sci. 2025 Jan 23;26(3):963. doi: 10.3390/ijms26030963.
As a highly heterogeneous and complex disease, the identification of cancer's molecular subtypes is crucial for accurate diagnosis and personalized treatment. The integration of multi-omics data enables a comprehensive interpretation of the molecular characteristics of cancer at various biological levels. In recent years, an increasing number of multi-omics clustering algorithms for cancer molecular subtyping have been proposed. However, the absence of a definitive gold standard makes it challenging to evaluate and compare these methods effectively. In this study, we developed a general framework for the comprehensive evaluation of multi-omics clustering algorithms and introduced an innovative metric, the accuracy-weighted average index, which simultaneously considers both clustering performance and clinical relevance. Using this framework, we performed a thorough evaluation and comparison of 11 state-of-the-art multi-omics clustering algorithms, including deep learning-based methods. By integrating the accuracy-weighted average index with computational efficiency, our analysis reveals that PIntMF demonstrates the best overall performance, making it a promising tool for molecular subtyping across a wide range of cancers.
作为一种高度异质性和复杂性的疾病,癌症分子亚型的识别对于准确诊断和个性化治疗至关重要。多组学数据的整合能够在不同生物水平上全面解读癌症的分子特征。近年来,针对癌症分子亚型的多组学聚类算法不断涌现。然而,由于缺乏明确的金标准,有效评估和比较这些方法颇具挑战。在本研究中,我们开发了一个用于多组学聚类算法综合评估的通用框架,并引入了一种创新指标——准确率加权平均指数,该指标同时考虑了聚类性能和临床相关性。利用这个框架,我们对11种包括基于深度学习方法在内的先进多组学聚类算法进行了全面评估和比较。通过将准确率加权平均指数与计算效率相结合,我们的分析表明PIntMF展现出最佳的整体性能,使其成为广泛应用于多种癌症分子亚型分析的有前景的工具。