Revolutionizing breast cancer immunotherapy by integrating AI and nanotechnology approaches: review of current applications and future directions.

Houda Bendani, Nasma Boumajdi, Lahcen Belyamani, Azeddine Ibrahimi
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Abstract

Breast cancer (BC) is still the most diagnosed cancer for females with an increased focus on immunotherapy as a promising precise treatment. Selecting appropriate patients and monitoring patient treatments are crucial to ensure higher response rates with low adverse events. Various biomarkers were proposed to predict immunotherapy response, including tumor mutation burden, immune cell, and tumor microenvironment expression. However, traditional methods for evaluating immunotherapy are invasive and inaccurate, and their assessments could be biased due to the variability in quantification techniques. Artificial intelligence (AI) has emerged as a powerful technology that addresses these challenges, handling heterogeneous data to identify complex patterns and offering accurate and non-invasive solutions. In this paper, we review emerging AI-based models for immunotherapy prediction in BC using diverse biomarkers. We first discussed the application of AI models for each biomarker, highlighting both direct prediction of immunotherapy response and prognosis, as well as indirect approaches via the identification of immune subtypes or specific predictive biomarkers. Then, we investigated the integration of all biomarkers in multi-modal AI approaches for a precise and personalized prediction of immunotherapy response. We have also addressed the implication of integrating AI in the healthcare ecosystem with other new technologies, including nanodevices, and wearable technologies. We further elucidated the role of AI and healthcare providers with this convergence of personalized medicine and demonstrated its role in enhancing population health management and supporting personalized patient care.

结合人工智能和纳米技术方法革新乳腺癌免疫治疗:当前应用和未来方向的回顾。
乳腺癌(BC)仍然是女性诊断最多的癌症,免疫治疗作为一种有前途的精确治疗方法越来越受到关注。选择合适的患者和监测患者的治疗对于确保高反应率和低不良事件至关重要。研究人员提出了多种生物标志物来预测免疫治疗反应,包括肿瘤突变负荷、免疫细胞和肿瘤微环境表达。然而,评估免疫治疗的传统方法是侵入性的和不准确的,并且由于量化技术的可变性,其评估可能存在偏差。人工智能(AI)已经成为解决这些挑战的强大技术,处理异构数据以识别复杂模式,并提供准确且非侵入性的解决方案。在本文中,我们回顾了新兴的基于人工智能的免疫治疗预测模型,使用不同的生物标志物来预测BC。我们首先讨论了人工智能模型在每种生物标志物上的应用,强调了对免疫治疗反应和预后的直接预测,以及通过识别免疫亚型或特定预测生物标志物的间接方法。然后,我们研究了多模式人工智能方法中所有生物标志物的整合,以精确和个性化地预测免疫治疗反应。我们还讨论了将人工智能与其他新技术(包括纳米设备和可穿戴技术)集成到医疗保健生态系统中的含义。我们进一步阐明了人工智能和医疗保健提供者在个性化医疗融合中的作用,并展示了人工智能在加强人口健康管理和支持个性化患者护理方面的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.90
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0.00%
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