SFI Centre for Research Training in Foundations of Data Science, University College Dublin, Belfield, Dublin 4, Ireland.
School of Mechanical and Materials Engineering, University College Dublin, Belfield, Dublin 4, Ireland.
Sci Rep. 2024 Jul 29;14(1):17456. doi: 10.1038/s41598-024-67056-z.
Since their invention, tissue expanders, which are designed to trigger additional skin growth, have revolutionised many reconstructive surgeries. Currently, however, the sole quantitative method to assess skin growth requires skin excision. Thus, in the context of patient outcomes, a machine learning method which uses non-invasive measurements to predict in vivo skin growth and other skin properties, holds significant value. In this study, the finite element method was used to simulate a typical skin expansion protocol and to perform various simulated wave propagation experiments during the first few days of expansion on 1,000 individual virtual subjects. An artificial neural network trained on this dataset was shown to be capable of predicting the future skin growth at 7 days (avg. ) as well as the subject-specific shear modulus ( ), growth rate ( ), and natural pre-stretch ( ) with a very high degree of accuracy. The method presented here has implications for the real-time prediction of patient-specific skin expansion outcomes and could facilitate the development of patient-specific protocols.
自发明以来,组织扩张器(旨在引发额外的皮肤生长)彻底改变了许多重建手术。然而,目前评估皮肤生长的唯一定量方法需要进行皮肤切除。因此,在患者结果的背景下,一种使用非侵入性测量来预测体内皮肤生长和其他皮肤特性的机器学习方法具有重要价值。在这项研究中,使用有限元方法模拟了典型的皮肤扩张方案,并在扩张的最初几天内在 1000 个虚拟个体上进行了各种模拟波传播实验。在该数据集上训练的人工神经网络能够非常准确地预测 7 天的未来皮肤生长(平均为 )以及特定于个体的剪切模量( )、增长率( )和自然预拉伸( )。这里提出的方法对实时预测患者特定的皮肤扩张结果具有重要意义,并可能促进患者特异性方案的发展。