乳腺组织力学和机器学习在癌症诊断中的计算建模:提高风险预测和治疗策略的准确性。

IF 2.9 3区 医学 Q2 ONCOLOGY
Layal Ashi, Sebastien Taurin
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引用次数: 0

摘要

导言:乳腺癌仍然是一个重大的全球健康问题。尽管在检测和治疗方面取得了进展,但其复杂性是由遗传、环境和结构因素驱动的。像有限元模型(FEM)这样的计算方法已经改变了我们对乳腺癌风险和进展的理解。涵盖领域:乳腺癌研究的先进计算方法是重点,重点是FEM在模拟乳腺组织力学和提高治疗精度方面的作用,如射频消融(RFA)。机器学习(ML),特别是卷积神经网络(cnn),已经彻底改变了乳房x光检查和核磁共振成像等成像方式,提高了诊断准确性和早期检测。人工智能在组织病理学图像分析中的应用具有先进的肿瘤分类和分级,提供一致性并减少观察者之间的差异。可解释性工具,如Grad-CAM、SHAP和LIME,提高了人工智能驱动模型的透明度,促进了它们与临床工作流程的整合。专家意见:结合FEM和ML代表了乳腺癌管理的范式转变。FEM提供精确的组织力学建模,而ML擅长预测分析和图像分析。尽管存在数据可变性和有限的标准化等挑战,但协同这些方法有望实现适应性、个性化的护理。这些计算方法具有重新定义诊断、优化治疗和改善患者预后的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational modeling of breast tissue mechanics and machine learning in cancer diagnostics: enhancing precision in risk prediction and therapeutic strategies.

Introduction: Breast cancer remains a significant global health issue. Despite advances in detection and treatment, its complexity is driven by genetic, environmental, and structural factors. Computational methods like Finite Element Modeling (FEM) have transformed our understanding of breast cancer risk and progression.

Areas covered: Advanced computational approaches in breast cancer research are the focus, with an emphasis on FEM's role in simulating breast tissue mechanics and enhancing precision in therapies such as radiofrequency ablation (RFA). Machine learning (ML), particularly Convolutional Neural Networks (CNNs), has revolutionized imaging modalities like mammograms and MRIs, improving diagnostic accuracy and early detection. AI applications in analyzing histopathological images have advanced tumor classification and grading, offering consistency and reducing inter-observer variability. Explainability tools like Grad-CAM, SHAP, and LIME enhance the transparency of AI-driven models, facilitating their integration into clinical workflows.

Expert opinion: Integrating FEM and ML represents a paradigm shift in breast cancer management. FEM offers precise modeling of tissue mechanics, while ML excels in predictive analytics and image analysis. Despite challenges such as data variability and limited standardization, synergizing these approaches promises adaptive, personalized care. These computational methods have the potential to redefine diagnostics, optimize treatment, and improve patient outcomes.

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来源期刊
CiteScore
5.10
自引率
3.00%
发文量
100
审稿时长
4-8 weeks
期刊介绍: Expert Review of Anticancer Therapy (ISSN 1473-7140) provides expert appraisal and commentary on the major trends in cancer care and highlights the performance of new therapeutic and diagnostic approaches. Coverage includes tumor management, novel medicines, anticancer agents and chemotherapy, biological therapy, cancer vaccines, therapeutic indications, biomarkers and diagnostics, and treatment guidelines. All articles are subject to rigorous peer-review, and the journal makes an essential contribution to decision-making in cancer care. Comprehensive coverage in each review is complemented by the unique Expert Review format and includes the following sections: Expert Opinion - a personal view of the data presented in the article, a discussion on the developments that are likely to be important in the future, and the avenues of research likely to become exciting as further studies yield more detailed results Article Highlights – an executive summary of the author’s most critical points.
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