DeepQA:使用深度神经网络的统一转录组老化时钟。

IF 8 1区 医学 Q1 CELL BIOLOGY
Aging Cell Pub Date : 2025-01-05 DOI:10.1111/acel.14471
Hongqian Qi, Hongchen Zhao, Enyi Li, Xinyi Lu, Ningbo Yu, Jinchao Liu, Jianda Han
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引用次数: 0

摘要

了解衰老的复杂生物学过程是非常有价值的,特别是因为它可以帮助开发延长健康生命的治疗方法。从基因表达数据预测生物年龄已被证明是一种有效的方法来量化一个人的衰老,并确定老化的分子和细胞生物标志物。几乎所有现有的衰老时钟都采用了一种估计生物年龄的典型方法,即只在健康受试者上训练机器学习模型,但同时在健康和不健康受试者上进行推断。然而,正如本研究所示,这种方法固有的偏差导致了不准确的生物年龄。此外,几乎所有现有的基于转录组的衰老时钟都是围绕一个低效的基因选择过程建立的,然后是传统的机器学习模型,如弹性网、线性判别分析等。为了解决这些限制,我们提出了DeepQA,一个基于专家混合的统一老化时钟。与现有方法不同的是,DeepQA配备了专门设计的Hinge-Mean-Absolute-Error (Hinge-MAE) loss,可以同时训练多个队列的健康和不健康受试者,以减少推断不健康受试者生物年龄的偏差。我们的实验表明,DeepQA在健康和不健康受试者的生物年龄估计上都明显优于现有的方法。此外,我们的方法避免了低效的基因穷举搜索,并提供了一种新的方法来识别在衰老预测中激活的基因,替代如差异基因表达分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeepQA: A Unified Transcriptome-Based Aging Clock Using Deep Neural Networks.

Understanding the complex biological process of aging is of great value, especially as it can help develop therapeutics to prolong healthy life. Predicting biological age from gene expression data has shown to be an effective means to quantify aging of a subject, and to identify molecular and cellular biomarkers of aging. A typical approach for estimating biological age, adopted by almost all existing aging clocks, is to train machine learning models only on healthy subjects, but to infer on both healthy and unhealthy subjects. However, the inherent bias in this approach results in inaccurate biological age as shown in this study. Moreover, almost all existing transcriptome-based aging clocks were built around an inefficient procedure of gene selection followed by conventional machine learning models such as elastic nets, linear discriminant analysis etc. To address these limitations, we proposed DeepQA, a unified aging clock based on mixture of experts. Unlike existing methods, DeepQA is equipped with a specially designed Hinge-Mean-Absolute-Error (Hinge-MAE) loss so that it can train on both healthy and unhealthy subjects of multiple cohorts to reduce the bias of inferring biological age of unhealthy subjects. Our experiments showed that DeepQA significantly outperformed existing methods for biological age estimation on both healthy and unhealthy subjects. In addition, our method avoids the inefficient exhaustive search of genes, and provides a novel means to identify genes activated in aging prediction, alternative to such as differential gene expression analysis.

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来源期刊
Aging Cell
Aging Cell Biochemistry, Genetics and Molecular Biology-Cell Biology
自引率
2.60%
发文量
212
期刊介绍: Aging Cell is an Open Access journal that focuses on the core aspects of the biology of aging, encompassing the entire spectrum of geroscience. The journal's content is dedicated to publishing research that uncovers the mechanisms behind the aging process and explores the connections between aging and various age-related diseases. This journal aims to provide a comprehensive understanding of the biological underpinnings of aging and its implications for human health. The journal is widely recognized and its content is abstracted and indexed by numerous databases and services, which facilitates its accessibility and impact in the scientific community. These include: Academic Search (EBSCO Publishing) Academic Search Alumni Edition (EBSCO Publishing) Academic Search Premier (EBSCO Publishing) Biological Science Database (ProQuest) CAS: Chemical Abstracts Service (ACS) Embase (Elsevier) InfoTrac (GALE Cengage) Ingenta Select ISI Alerting Services Journal Citation Reports/Science Edition (Clarivate Analytics) MEDLINE/PubMed (NLM) Natural Science Collection (ProQuest) PubMed Dietary Supplement Subset (NLM) Science Citation Index Expanded (Clarivate Analytics) SciTech Premium Collection (ProQuest) Web of Science (Clarivate Analytics) Being indexed in these databases ensures that the research published in Aging Cell is discoverable by researchers, clinicians, and other professionals interested in the field of aging and its associated health issues. This broad coverage helps to disseminate the journal's findings and contributes to the advancement of knowledge in geroscience.
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