深度学习在生物材料进化方面的进展和前景

IF 7.9 2区 综合性期刊 Q1 CHEMISTRY, MULTIDISCIPLINARY Cell Reports Physical Science Pub Date : 2024-07-25 DOI:10.1016/j.xcrp.2024.102116
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引用次数: 0

摘要

近几十年来,生物医学应用领域的生物材料取得了长足的进步。理想的生物材料必须具有合适的机械性能、良好的生物相容性和特定的生物活性。然而,设计和制备具有这些基本特性的材料是一项艰巨的挑战,一直是该领域的重要问题。高性能生物材料的开发和优化,以及具有不同生物功能的复合材料和混合材料的构建,为增强治疗和诊断程序提供了前景广阔的战略。然而,依靠传统的 "试错 "方法获取大量实验数据的做法既费力、费时,又不可靠。一种新兴且前景广阔的方法是成功应用人工智能(AI),特别是深度学习(DL),来研究和优化各种生物材料的制备和制造技术。作为人工智能领域的自动化智能工具,深度学习在设计、分析和优化不同生物材料方面有着广泛的应用。通过 "实验-人工智能 "技术,DL 可以预测生物材料的潜在特征信息和性能,在生物材料研究和开发中展现出巨大的潜力。本综述全面探讨了基于 DL 的技术在生物医学领域的应用,强调了其前沿优势,并就如何提高此类方法在生物材料中的功效提出了见解和建议。
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Advancements and prospects of deep learning in biomaterials evolution

In recent decades, significant strides have been made in advancing biomaterials for biomedical applications. Ideal biomaterials necessitate suitable mechanical properties, excellent biocompatibility, and specific bioactivities. However, the design and preparation of materials with these essential characteristics pose formidable challenges, persisting as significant issues in the field. The development and optimization of high-performance biomaterials, along with the construction of composites and hybrids with diverse biofunctions, present promising strategies for enhancing therapeutic and diagnostic procedures. However, reliance on traditional “trial and error” methods for acquiring a substantial volume of experimental data proves to be laborious, time consuming, and unreliable. An emerging and promising approach involves the successful application of artificial intelligence (AI), specifically deep learning (DL), to investigate and optimize the preparation and manufacturing techniques for various biomaterials. DL, as an automated and intelligent tool within the AI domain, finds widespread application in devising, analyzing, and optimizing different biomaterials. Through the “experiment-AI” technique, DL predicts the potential feature information and performance of biomaterials, showcasing remarkable potential in biomaterial research and development. This review comprehensively explores the application of DL-based technologies in the biomedical field, emphasizing cutting-edge advantages and providing insights and recommendations to enhance the efficacy of such approaches in biomaterials.

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来源期刊
Cell Reports Physical Science
Cell Reports Physical Science Energy-Energy (all)
CiteScore
11.40
自引率
2.20%
发文量
388
审稿时长
62 days
期刊介绍: Cell Reports Physical Science, a premium open-access journal from Cell Press, features high-quality, cutting-edge research spanning the physical sciences. It serves as an open forum fostering collaboration among physical scientists while championing open science principles. Published works must signify significant advancements in fundamental insight or technological applications within fields such as chemistry, physics, materials science, energy science, engineering, and related interdisciplinary studies. In addition to longer articles, the journal considers impactful short-form reports and short reviews covering recent literature in emerging fields. Continually adapting to the evolving open science landscape, the journal reviews its policies to align with community consensus and best practices.
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