人工神经网络:牙组织再生的新前沿。

IF 5.1 2区 医学 Q2 CELL & TISSUE ENGINEERING Tissue Engineering. Part B, Reviews Pub Date : 2024-11-18 DOI:10.1089/ten.teb.2024.0216
Nurul Hafizah Mohd Nor, Nur Izzati Mansor, Nur Asmadayana Hasim
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引用次数: 0

摘要

在牙科组织再生研究领域,存在着各种制约因素,如细胞质量的潜在差异、供体组织和组织微环境差异导致的效力差异、在保持干性和治疗属性的同时维持长期和大规模细胞扩增的相关困难,以及需要对临床环境中的持久安全性和有效性进行广泛调查。有人建议采用人工智能(AI)技术来应对这些挑战。这是因为,组织再生研究可以通过使用结合了神经网络(NN)、模糊、预测建模、遗传算法、机器学习(ML)、聚类分析和决策树等挖掘方法的诊断系统来推进。本文试图对人工智能的一个子集--人工神经网络(ANN)--提出基础性见解,并评估其作为牙科领域重要决策支持工具的潜在应用,尤其侧重于组织工程研究。虽然人工神经网络最初看起来可能比较复杂,需要大量资源,但事实证明,它们在实验室和治疗环境中非常有效。这种专家系统可以仅使用临床数据进行训练,从而在基于规则的决策不切实际的情况下部署。随着人工神经网络的进一步发展,它很可能在牙科组织再生研究的革命性变革中发挥重要作用,为简化牙科手术和改善临床环境中的患者预后提供可喜的成果。
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Artificial Neural Networks: A New Frontier in Dental Tissue Regeneration.

In the realm of dental tissue regeneration research, various constraints exist such as the potential variance in cell quality, potency arising from differences in donor tissue and tissue microenvironment, the difficulties associated with sustaining long-term and large-scale cell expansion while preserving stemness and therapeutic attributes, as well as the need for extensive investigation into the enduring safety and effectiveness in clinical settings. The adoption of artificial intelligence (AI) technologies has been suggested as a means to tackle these challenges. This is because, tissue regeneration research could be advanced through the use of diagnostic systems that incorporate mining methods such as neural networks (NN), fuzzy, predictive modeling, genetic algorithms, machine learning (ML), cluster analysis, and decision trees. This article seeks to offer foundational insights into a subset of AI referred to as artificial neural networks (ANNs) and assess their potential applications as essential decision-making support tools in the field of dentistry, with a particular focus on tissue engineering research. Although ANNs may initially appear complex and resource intensive, they have proven to be effective in laboratory and therapeutic settings. This expert system can be trained using clinical data alone, enabling their deployment in situations where rule-based decision-making is impractical. As ANNs progress further, it is likely to play a significant role in revolutionizing dental tissue regeneration research, providing promising results in streamlining dental procedures and improving patient outcomes in the clinical setting.

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来源期刊
Tissue Engineering. Part B, Reviews
Tissue Engineering. Part B, Reviews Biochemistry, Genetics and Molecular Biology-Biochemistry
CiteScore
12.80
自引率
1.60%
发文量
150
期刊介绍: Tissue Engineering Reviews (Part B) meets the urgent need for high-quality review articles by presenting critical literature overviews and systematic summaries of research within the field to assess the current standing and future directions within relevant areas and technologies. Part B publishes bi-monthly.
期刊最新文献
Biomechanics of Negative-Pressure-Assisted Liposuction and Their Influence on Fat Regeneration. Artificial Neural Networks: A New Frontier in Dental Tissue Regeneration. Efficacy of Fresh Versus Preserved Amniotic Membrane Grafts for Ocular Surface Reconstruction: Meta-analysis. Tissue Engineering Nasal Cartilage Grafts with Three-Dimensional Printing: A Comprehensive Review. Delivery Strategies of Growth Factors in Cartilage Tissue Engineering.
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