Harnessing machine learning algorithms for the prediction and optimization of various properties of polylactic acid in biomedical use: a comprehensive review.

J M Chandra Hasa, P Narayanan, R Pramanik, A Arockiarajan
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Abstract

Machine learning (ML) has emerged as a transformative tool in various industries, driving advancements in key tasks like classification, regression, and clustering. In the field of chemical engineering, particularly in the creation of biomedical devices, personalization is essential for ensuring successful patient recovery and rehabilitation. Polylactic acid (PLA) is a material with promising potential for applications like tissue engineering, orthopedic implants, drug delivery systems, and cardiovascular stents due to its biocompatibility and biodegradability. Additive manufacturing (AM) allows for adjusting print parameters to optimize the properties of PLA components for different applications. Although past research has explored the integration of ML and AM, there remains a gap in comprehensive analyses focusing on the impact of ML on PLA-based biomedical devices. This review examines the most recent developments in ML applications within AM, highlighting its ability to revolutionize the utilization of PLA in biomedical engineering by enhancing material properties and optimizing manufacturing processes. Moreover, this review is in line with the journal's emphasis on bio-based polymers, polymer functionalization, and their biomedical uses, enriching the understanding of polymer chemistry and materials science.

利用机器学习算法预测和优化生物医学用途的聚乳酸的各种特性:综合综述。
机器学习(ML)已经成为各行各业的变革性工具,推动了分类、回归和聚类等关键任务的进步。在化学工程领域,特别是在生物医学设备的创造中,个性化对于确保患者成功恢复和康复至关重要。聚乳酸(PLA)由于其生物相容性和可生物降解性,在组织工程、骨科植入物、药物输送系统和心血管支架等领域具有广阔的应用前景。增材制造(AM)允许调整打印参数,以优化PLA组件的性能,以适应不同的应用。尽管过去的研究已经探索了ML和AM的整合,但在关注ML对基于pla的生物医学设备的影响的综合分析方面仍然存在差距。本文综述了增材制造中机器学习应用的最新发展,强调了其通过提高材料性能和优化制造工艺来彻底改变PLA在生物医学工程中的应用的能力。此外,这篇综述符合该杂志对生物基聚合物、聚合物功能化及其生物医学用途的重视,丰富了对聚合物化学和材料科学的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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