Yafei Shen, Tao Zhang, Zhiwei Liu, Kalliopi Kostelidou, Ying Xu, Ling Yang
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引用次数: 0
摘要
由于不同生理指标之间错综复杂的相互依赖关系,从高维生物学数据中识别复杂的表型具有挑战性。传统方法通常侧重于检测单个变量的异常值,而忽略了导致表型出现的更广泛的相互作用网络。在这里,我们介绍ODBAE (Outlier Detection using Balanced Autoencoders),这是一种机器学习方法,旨在通过捕获多个生理参数之间的潜在关系来发现微妙和极端的异常值。ODBAE修正的损失函数增强了其检测两种关键异常值的能力:影响点(IP),它破坏了维度之间的潜在相关性,以及高杠杆点(HLP),它偏离了标准,但传统的基于自编码器的方法无法检测到。利用国际小鼠表型联盟(International Mouse Phenotyping Consortium, IMPC)的数据,我们发现ODBAE可以识别出具有复杂、多指标表型的敲除小鼠,这些表型在单个性状上是正常的,但在综合考虑时是异常的。此外,该方法还揭示了新的代谢相关基因,并揭示了代谢指标之间的协调异常。我们的研究结果强调了ODBAE在检测关节异常和促进我们对生物系统中稳态扰动的理解方面的效用。
ODBAE: a high-performance model identifying complex phenotypes in high-dimensional biological datasets.
Identifying complex phenotypes from high-dimensional biological data is challenging due to the intricate interdependencies among different physiological indicators. Traditional approaches often focus on detecting outliers in single variables, overlooking the broader network of interactions that contribute to phenotype emergence. Here, we introduce ODBAE (Outlier Detection using Balanced Autoencoders), a machine learning method designed to uncover both subtle and extreme outliers by capturing latent relationships among multiple physiological parameters. ODBAE's revised loss function enhances its ability to detect two key types of outliers: influential points (IP), which disrupt latent correlations between dimensions, and high leverage points (HLP), which deviate from the norm but go undetected by traditional autoencoder-based methods. Using data from the International Mouse Phenotyping Consortium (IMPC), we show that ODBAE can identify knockout mice with complex, multi-indicator phenotypes-normal in individual traits, but abnormal when considered together. In addition, this method reveals novel metabolism-related genes and uncovers coordinated abnormalities across metabolic indicators. Our results highlight the utility of ODBAE in detecting joint abnormalities and advancing our understanding of homeostatic perturbations in biological systems.
期刊介绍:
Communications Biology is an open access journal from Nature Research publishing high-quality research, reviews and commentary in all areas of the biological sciences. Research papers published by the journal represent significant advances bringing new biological insight to a specialized area of research.