人工智能驱动的抗体和核酸生物标志物分析,用于增强疾病诊断。

IF 5.9 2区 医学 Q1 IMMUNOLOGY
Frontiers in Immunology Pub Date : 2025-10-02 eCollection Date: 2025-01-01 DOI:10.3389/fimmu.2025.1633989
Zihan Liu, Feng Zhu, Mei Zhang
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引用次数: 0

摘要

人工智能(AI)技术的快速发展催化了生物标志物驱动的疾病诊断领域的范式转变,特别是在整合抗体和核酸指标的背景下。在这种变革性的环境中,人工智能提供了前所未有的潜力,可以解码跨异构数据源的复杂分子相互作用,促进早期和精确的疾病识别。然而,人工智能在这一领域的有效部署需要增强模型可解释性、强大的跨领域泛化和基于生物学的学习策略——这些挑战与当代抗体和核酸诊断研究产生了深刻的共鸣。方法:传统的生物标志物发现方法,如线性回归,随机森林,甚至标准的深度神经网络,都难以适应组学数据集的多尺度依赖性和缺失性。这些模型往往缺乏与生物过程的结构一致性,导致有限的转化效用和较差的推广到新的生物医学背景。为了解决这些限制,我们提出了一个新的框架,该框架集成了生物信息架构BioGraphAI和半监督学习策略自适应上下文知识正则化(ACKR)。BioGraphAI采用了一种分层图注意机制,旨在捕获基因组、转录组和蛋白质组模式之间的相互作用。这些相互作用是由来自精心策划的通路数据库的生物学先验指导的。结果:该架构不仅支持不完全观测下的跨模态数据融合,还通过结构化关注和路径级嵌入提高了可解释性。ACKR通过纳入来自大规模生物医学语料库和结构化本体的弱监督信号来补充该模型,通过潜在空间正则化和群体一致性约束来确保生物合理性。讨论:BioGraphAI和ACKR共同代表了克服生物标志物驱动的疾病诊断的关键障碍的一步。通过基于生物先验的计算预测和通过结构化嵌入增强可解释性,该框架提高了人工智能在早期和精确疾病识别方面的转化适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial intelligence-driven analysis of antibody and nucleic acid biomarkers for enhanced disease diagnostics.

Artificial intelligence-driven analysis of antibody and nucleic acid biomarkers for enhanced disease diagnostics.

Artificial intelligence-driven analysis of antibody and nucleic acid biomarkers for enhanced disease diagnostics.

Artificial intelligence-driven analysis of antibody and nucleic acid biomarkers for enhanced disease diagnostics.

Introduction: The rapid evolution of artificial intelligence (AI) technologies has catalyzed a paradigm shift in the landscape of biomarker-driven disease diagnostics, particularly in the context of integrating antibody and nucleic acid indicators. Within this transformative setting, AI offers unprecedented potential for decoding complex molecular interactions across heterogeneous data sources, facilitating early and precise disease identification. However, the effective deployment of AI in this domain mandates enhanced model interpretability, robust cross-domain generalization, and biologically grounded learning strategies-challenges that resonate deeply with contemporary research focused on antibody and nucleic acid diagnostics.

Methods: Traditional methodologies for biomarker discovery-such as linear regression, random forests, and even standard deep neural networks-struggle to accommodate the multi-scale dependencies and missingness typical of omics datasets. These models often lack the structural alignment with biological processes, resulting in limited translational utility and poor generalization to new biomedical contexts. To address these limitations, we propose a novel framework that integrates a biologically informed architecture, BioGraphAI, and a semi-supervised learning strategy, adaptive contextual knowledge regularization (ACKR). BioGraphAI employs a hierarchical graph attention mechanism tailored to capture interactions across genomic, transcriptomic, and proteomic modalities. These interactions are guided by biological priors derived from curated pathway databases.

Results: This architecture not only supports cross-modal data fusion under incomplete observations but also promotes interpretability via structured attention and pathway-level embeddings. ACKR complements this model by incorporating weak supervision signals from large-scale biomedical corpora and structured ontologies, ensuring biological plausibility through latent space regularization and group-wise consistency constraints.

Discussion: Together, BioGraphAI and ACKR represent a step toward overcoming critical barriers in biomarker-driven disease diagnostics. By grounding computational predictions in biological priors and enhancing interpretability through structured embeddings, this framework advances the translational applicability of AI for early and precise disease identification.

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来源期刊
CiteScore
9.80
自引率
11.00%
发文量
7153
审稿时长
14 weeks
期刊介绍: Frontiers in Immunology is a leading journal in its field, publishing rigorously peer-reviewed research across basic, translational and clinical immunology. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics, clinicians and the public worldwide. Frontiers in Immunology is the official Journal of the International Union of Immunological Societies (IUIS). Encompassing the entire field of Immunology, this journal welcomes papers that investigate basic mechanisms of immune system development and function, with a particular emphasis given to the description of the clinical and immunological phenotype of human immune disorders, and on the definition of their molecular basis.
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