Nanoparticles in the diagnosis and treatment of cancer metastases: Current and future perspectives

转移 癌症 医学 光热治疗 免疫疗法 放射治疗 癌细胞 纳米技术 癌症研究 内科学 材料科学
作者
Mangala Hegde,Nikunj Naliyadhara,Jyothsna Unnikrishnan,Mohammed S. Alqahtani,Mohamed Abbas,Sosmitha Girisa,Gautam Sethi,Ajaikumar B. Kunnumakkara
出处
期刊:Cancer Letters [Elsevier BV]
卷期号:556: 216066-216066 被引量:50
标识
DOI:10.1016/j.canlet.2023.216066
摘要

Metastasis accounts for greater than 90% of cancer-related deaths. Despite recent advancements in conventional chemotherapy, immunotherapy, targeted therapy, and their rational combinations, metastatic cancers remain essentially untreatable. The distinct obstacles to treat metastases include their small size, high multiplicity, redundancy, therapeutic resistance, and dissemination to multiple organs. Recent advancements in nanotechnology provide the numerous applications in the diagnosis and prophylaxis of metastatic diseases, including the small particle size to penetrate cell membrane and blood vessels and their capacity to transport complex molecular 'cargo' particles to various metastatic regions such as bones, brain, liver, lungs, and lymph nodes. Indeed, nanoparticles (NPs) have demonstrated a significant ability to target specific cells within these organs. In this regard, the purpose of this review is to summarize the present state of nanotechnology in terms of its application in the diagnosis and treatment of metastatic cancer. We intensively reviewed applications of NPs in fluorescent imaging, PET scanning, MRI, and photoacoustic imaging to detect metastasis in various cancer models. The use of targeted NPs for cancer ablation in conjunction with chemotherapy, photothermal treatment, immuno therapy, and combination therapy is thoroughly discussed. The current review also highlights the research opportunities and challenges of leveraging engineering technologies with cancer cell biology and pharmacology to fabricate nanoscience-based tools for treating metastases.
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