Das Kaushik Pratim, J Chandra
Department of Computer Science, Christ University, Bangalore, India.
Front Med Technol. 2023 Jan 6;4:1067144. doi: 10.3389/fmedt.2022.1067144. eCollection 2022.
Cancer is a life-threatening disease, resulting in nearly 10 million deaths worldwide. There are various causes of cancer, and the prognostic information varies in each patient because of unique molecular signatures in the human body. However, genetic heterogeneity occurs due to different cancer types and changes in the neoplasms, which complicates the diagnosis and treatment. Targeted drug delivery is considered a pivotal contributor to precision medicine for cancer treatments as this method helps deliver medication to patients by systematically increasing the drug concentration on the targeted body parts. In such cases, nanoparticle-mediated drug delivery and the integration of artificial intelligence (AI) can help bridge the gap and enhance localized drug delivery systems capable of biomarker sensing. Diagnostic assays using nanoparticles (NPs) enable biomarker identification by accumulating in the specific cancer sites and ensuring accurate drug delivery planning. Integrating NPs for cancer targeting and AI can help devise sophisticated systems that further classify cancer types and understand complex disease patterns. Advanced AI algorithms can also help in biomarker detection, predicting different NP interactions of the targeted drug, and evaluating drug efficacy. Considering the advantages of the convergence of NPs and AI for targeted drug delivery, there has been significantly limited research focusing on the specific research theme, with most of the research being proposed on AI and drug discovery. Thus, the study's primary objective is to highlight the recent advances in drug delivery using NPs, and their impact on personalized treatment plans for cancer patients. In addition, a focal point of the study is also to highlight how integrating AI, and NPs can help address some of the existing challenges in drug delivery by conducting a collective survey.
癌症是一种危及生命的疾病,在全球范围内导致近1000万人死亡。癌症有多种病因,由于人体独特的分子特征,每个患者的预后信息各不相同。然而,由于癌症类型不同以及肿瘤的变化会发生基因异质性,这使得诊断和治疗变得复杂。靶向药物递送被认为是癌症治疗精准医学的关键因素,因为这种方法通过系统性地提高靶向身体部位的药物浓度来帮助患者给药。在这种情况下,纳米颗粒介导的药物递送以及人工智能(AI)的整合可以帮助弥合差距并增强能够进行生物标志物传感的局部药物递送系统。使用纳米颗粒(NPs)的诊断测定法通过在特定癌症部位积累并确保准确的给药计划来实现生物标志物识别。将用于癌症靶向的NPs与AI整合可以帮助设计复杂的系统,进一步对癌症类型进行分类并理解复杂的疾病模式。先进的AI算法还可以帮助进行生物标志物检测、预测靶向药物的不同NP相互作用以及评估药物疗效。考虑到NPs与AI融合用于靶向药物递送的优势,针对该特定研究主题的研究明显有限,大多数研究是关于AI与药物发现的。因此,该研究的主要目的是突出使用NPs进行药物递送的最新进展及其对癌症患者个性化治疗方案的影响。此外,该研究的一个重点还在于通过进行集体调查来突出整合AI和NPs如何有助于应对药物递送中的一些现有挑战。