探索乳腺癌侵袭和迁移的机制和生物标志物:一个可解释的基因通路-化合物神经网络

IF 3.1 2区 医学 Q2 ONCOLOGY
Cancer Medicine Pub Date : 2025-03-17 DOI:10.1002/cam4.70769
Xia Qian, Dandan Sun, Yichen Ma, Ling Qiu, Jie Wu
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引用次数: 0

摘要

背景探索驱动乳腺癌侵袭和迁移的分子特征仍然是一个重要的生物学和临床挑战。近年来,可解释的机器学习模型的使用增强了我们对疾病进展的潜在机制的理解。方法在本研究中,我们提出了一种新的基因通路-化合物相关的稀疏深度神经网络(GPC-Net)来研究乳腺癌的侵袭和迁移。GPC-Net是一个可解释的神经网络模型,利用分子数据来预测癌症状态。它直观地表示基因、途径以及参与这些途径的相关化合物。结果与其他建模方法相比,GPC-Net具有较好的建模性能。我们的研究确定了与浸润性乳腺癌相关的关键基因,如ADCY8,并验证了其在乳腺癌细胞中的表达。此外,我们还对几种途径进行了初步探索。GPC-Net是将通路和化合物结合起来的深度神经网络的先驱之一,旨在平衡可解释性和性能。它有望为未来的生物医学研究提供一种更方便的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Exploring Mechanisms and Biomarkers of Breast Cancer Invasion and Migration: An Explainable Gene–Pathway–Compounds Neural Network

Exploring Mechanisms and Biomarkers of Breast Cancer Invasion and Migration: An Explainable Gene–Pathway–Compounds Neural Network

Backgrounds

Exploring the molecular features that drive breast cancer invasion and migration remains an important biological and clinical challenge. In recent years, the use of interpretable machine learning models has enhanced our understanding of the underlying mechanisms of disease progression.

Methods

In this study, we present a novel gene–pathway–compound-related sparse deep neural network (GPC-Net) for investigating breast cancer invasion and migration. The GPC-Net is an interpretable neural network model that utilizes molecular data to predict cancer status. It visually represents genes, pathways, and associated compounds involved in these pathways.

Results

Compared with other modeling methods, GPC-Net demonstrates superior performance. Our research identifies key genes, such as ADCY8, associated with invasive breast cancer and verifies their expression in breast cancer cells. In addition, we conducted a preliminary exploration of several pathways.

Conclusion

GPC-Net is among the pioneering deep neural networks that incorporate pathways and compounds, aiming to balance interpretability and performance. It is expected to offer a more convenient approach for future biomedical research.

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来源期刊
Cancer Medicine
Cancer Medicine ONCOLOGY-
CiteScore
5.50
自引率
2.50%
发文量
907
审稿时长
19 weeks
期刊介绍: Cancer Medicine is a peer-reviewed, open access, interdisciplinary journal providing rapid publication of research from global biomedical researchers across the cancer sciences. The journal will consider submissions from all oncologic specialties, including, but not limited to, the following areas: Clinical Cancer Research Translational research ∙ clinical trials ∙ chemotherapy ∙ radiation therapy ∙ surgical therapy ∙ clinical observations ∙ clinical guidelines ∙ genetic consultation ∙ ethical considerations Cancer Biology: Molecular biology ∙ cellular biology ∙ molecular genetics ∙ genomics ∙ immunology ∙ epigenetics ∙ metabolic studies ∙ proteomics ∙ cytopathology ∙ carcinogenesis ∙ drug discovery and delivery. Cancer Prevention: Behavioral science ∙ psychosocial studies ∙ screening ∙ nutrition ∙ epidemiology and prevention ∙ community outreach. Bioinformatics: Gene expressions profiles ∙ gene regulation networks ∙ genome bioinformatics ∙ pathwayanalysis ∙ prognostic biomarkers. Cancer Medicine publishes original research articles, systematic reviews, meta-analyses, and research methods papers, along with invited editorials and commentaries. Original research papers must report well-conducted research with conclusions supported by the data presented in the paper.
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