基于反向传播神经网络的植物生物成分治疗皮肤癌的筛选与分析综述

IF 0.4 Q4 ONCOLOGY
Urvashi Soni, Jeetendra Kumar Gupta, Kuldeep Singh, Girdhar Khandelwal
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引用次数: 0

摘要

摘要:近年来,利用植物来源的天然化合物治疗皮肤癌因其潜在的治疗效果和微小的副作用而备受关注。本文综述了利用植物生物成分结合反向传播神经网络(BPNN)进行皮肤癌治疗筛选和分析的创新方法。植物衍生化合物和人工智能驱动算法的整合有望提高皮肤癌治疗的准确性和有效性。该综述首先强调皮肤癌的全球负担不断增加以及传统治疗方法的局限性。随着人们对合成药物副作用的担忧日益增加,研究人员已将注意力转向探索植物源性生物成分的治疗潜力。这些天然化合物以其丰富的生物活性成分而闻名,具有抗癌特性,使其成为皮肤癌治疗的合适人选。利用植物衍生化合物的潜力的关键挑战之一是需要准确筛选和分析其作用。这就是反向传播神经网络,一种人工神经网络,发挥作用的地方。这些网络可以处理复杂的数据并识别复杂的模式,使它们能够预测各种生物成分在对抗皮肤癌方面的功效。本文就BPNN的功能及其在药物发现和治疗评价中的应用作一综述。此外,该综述还探讨了几个案例研究,这些研究证明了植物源性化合物与BPNN在皮肤癌治疗中的成功整合。这些研究提供了证据,证明这种协同方法如何通过最小化不良反应和最大化治疗益处来改善治疗结果。方法部分讨论了使用相关数据集训练神经网络并优化其性能以实现准确预测的步骤。虽然植物源性化合物与BPNN的整合显示出巨大的前景,但综述也指出了现有的挑战和局限性。其中包括对全面和标准化数据集的需求,训练数据中的潜在偏差以及神经网络架构的复杂性。还讨论了围绕植物性疗法的监管考虑,强调了严格测试和验证的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Screening and Analysis of Skin Cancer Treatment Using Biocomponents of Plants Using Backpropagation Neural Networks: A Comprehensive Review
Abstract: In recent years, the use of natural compounds derived from plants for the treatment of skin cancer has gained significant attention due to their potential therapeutic effects and minimal side effects. This review focuses on the innovative approach of utilizing biocomponents sourced from plants in combination with backpropagation neural networks (BPNN) for the screening and analysis of skin cancer treatments. The integration of plant-derived compounds and AI-driven algorithms holds promise for enhancing the precision and effectiveness of skin cancer therapies. The review begins by highlighting the escalating global burden of skin cancer and the limitations of conventional treatment approaches. With the rise in concerns about the adverse effects of synthetic drugs, researchers have turned their attention towards exploring the therapeutic potential of plant-derived biocomponents. These natural compounds are known for their rich bioactive constituents that exhibit anti-cancer properties, making them suitable candidates for skin cancer treatment. One of the key challenges in harnessing the potential of plant-derived compounds is the need for accurate screening and analysis of their effects. This is where backpropagation neural networks, a type of artificial neural network, comes into play. These networks can process complex data and recognize intricate patterns, enabling them to predict the efficacy of various biocomponents in combating skin cancer. The review delves into the functioning of BPNN and its applications in drug discovery and treatment evaluation. Furthermore, the review explores several case studies that demonstrate the successful integration of plant-derived compounds with BPNN in the context of skin cancer treatment. These studies provide evidence of how this synergistic approach can lead to improved treatment outcomes by minimizing adverse effects and maximizing therapeutic benefits. The methodology section discusses the steps involved in training the neural network using relevant datasets and optimizing its performance for accurate predictions. While the integration of plant-derived compounds and BPNN shows great promise, the review also addresses the existing challenges and limitations. These include the need for comprehensive and standardized datasets, potential biases in training data, and the complexity of neural network architectures. The regulatory considerations surrounding plant-based therapies are also discussed, highlighting the importance of rigorous testing and validation.
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
50
期刊介绍: Current Cancer Therapy Reviews publishes frontier reviews on all the latest advances in clinical oncology, cancer therapy and pharmacology. The journal"s aim is to publish the highest quality review articles dedicated to clinical research in the field. The journal is essential reading for all researchers and clinicians in cancer therapy.
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