Matt Nagle , Hannah Conroy Broderick , Christelle Vedel , Michel Destrade , Michael Fop , Aisling Ní Annaidh
{"title":"用于快速评估皮肤张力的高斯过程方法。","authors":"Matt Nagle , Hannah Conroy Broderick , Christelle Vedel , Michel Destrade , Michael Fop , Aisling Ní Annaidh","doi":"10.1016/j.actbio.2024.05.025","DOIUrl":null,"url":null,"abstract":"<div><p>Skin tension plays a pivotal role in clinical settings, it affects scarring, wound healing and skin necrosis. Despite its importance, there is no widely accepted method for assessing <em>in vivo</em> skin tension or its natural pre-stretch. This study aims to utilise modern machine learning (ML) methods to develop a model that uses non-invasive measurements of surface wave speed to predict clinically useful skin properties such as stress and natural pre-stretch. A large dataset consisting of simulated wave propagation experiments was created using a simplified two-dimensional finite element (FE) model. Using this dataset, a sensitivity analysis was performed, highlighting the effect of the material parameters and material model on the Rayleigh and supersonic shear wave speeds. Then, a Gaussian process regression model was trained to solve the ill-posed inverse problem of predicting stress and pre-stretch of skin using measurements of surface wave speed. This model had good predictive performance (<span><math><msup><mi>R</mi><mn>2</mn></msup></math></span> = 0.9570) and it was possible to interpolate simplified parametric equations to calculate the stress and pre-stretch. To demonstrate that wave speed measurements could be obtained cheaply and easily, a simple experiment was devised to obtain wave speed measurements from synthetic skin at different values of pre-stretch. These experimental wave speeds agree well with the FE simulations, and a model trained solely on the FE data provided accurate predictions of synthetic skin stiffness. Both the simulated and experimental results provide further evidence that elastic wave measurements coupled with ML models are a viable non-invasive method to determine <em>in vivo</em> skin tension.</p></div><div><h3>Statement of significance</h3><p>To prevent unfavourable patient outcomes from reconstructive surgery, it is necessary to determine relevant subject-specific skin properties. For example, during a skin graft, it is necessary to estimate the pre-stretch of the skin to account for shrinkage upon excision. Existing methods are invasive or rely on the experience of the clinician. Our work aims to present an innovative framework to non-invasively determine <em>in vivo</em> material properties using the speed of a surface wave travelling through the skin. Our findings have implications for the planning of surgical procedures and provides further motivation for the use of elastic wave measurements to determine <em>in vivo</em> material properties.</p></div>","PeriodicalId":237,"journal":{"name":"Acta Biomaterialia","volume":null,"pages":null},"PeriodicalIF":9.4000,"publicationDate":"2024-05-13","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S1742706124002642/pdfft?md5=dd4271a20d5c99cebeb76843788531e2&pid=1-s2.0-S1742706124002642-main.pdf","citationCount":"0","resultStr":"{\"title\":\"A Gaussian process approach for rapid evaluation of skin tension\",\"authors\":\"Matt Nagle , Hannah Conroy Broderick , Christelle Vedel , Michel Destrade , Michael Fop , Aisling Ní Annaidh\",\"doi\":\"10.1016/j.actbio.2024.05.025\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>Skin tension plays a pivotal role in clinical settings, it affects scarring, wound healing and skin necrosis. Despite its importance, there is no widely accepted method for assessing <em>in vivo</em> skin tension or its natural pre-stretch. This study aims to utilise modern machine learning (ML) methods to develop a model that uses non-invasive measurements of surface wave speed to predict clinically useful skin properties such as stress and natural pre-stretch. A large dataset consisting of simulated wave propagation experiments was created using a simplified two-dimensional finite element (FE) model. Using this dataset, a sensitivity analysis was performed, highlighting the effect of the material parameters and material model on the Rayleigh and supersonic shear wave speeds. Then, a Gaussian process regression model was trained to solve the ill-posed inverse problem of predicting stress and pre-stretch of skin using measurements of surface wave speed. This model had good predictive performance (<span><math><msup><mi>R</mi><mn>2</mn></msup></math></span> = 0.9570) and it was possible to interpolate simplified parametric equations to calculate the stress and pre-stretch. To demonstrate that wave speed measurements could be obtained cheaply and easily, a simple experiment was devised to obtain wave speed measurements from synthetic skin at different values of pre-stretch. These experimental wave speeds agree well with the FE simulations, and a model trained solely on the FE data provided accurate predictions of synthetic skin stiffness. Both the simulated and experimental results provide further evidence that elastic wave measurements coupled with ML models are a viable non-invasive method to determine <em>in vivo</em> skin tension.</p></div><div><h3>Statement of significance</h3><p>To prevent unfavourable patient outcomes from reconstructive surgery, it is necessary to determine relevant subject-specific skin properties. 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引用次数: 0
摘要
皮肤张力在临床中起着举足轻重的作用,它会影响疤痕、伤口愈合和皮肤坏死。尽管皮肤张力非常重要,但目前还没有被广泛接受的方法来评估体内皮肤张力或其自然预拉伸。本研究旨在利用现代机器学习(ML)方法开发一种模型,利用对表面波速度的无创测量来预测压力和自然预拉伸等临床有用的皮肤属性。我们使用简化的二维有限元(FE)模型创建了一个由模拟波传播实验组成的大型数据集。利用该数据集进行了敏感性分析,突出了材料参数和材料模型对瑞利和超音速剪切波速度的影响。然后,对高斯过程回归模型进行了训练,以解决利用表面波速度测量值预测表皮应力和预拉伸的困难逆问题。该模型具有良好的预测性能(R2 = 0.9570),可以通过插值简化参数方程来计算应力和预拉伸。为了证明波速测量结果可以廉价而方便地获得,设计了一个简单的实验,在不同的预拉伸值下从合成表皮获得波速测量结果。这些实验波速与有限元模拟结果非常吻合,而且仅根据有限元数据训练的模型就能准确预测合成表皮的刚度。模拟和实验结果都进一步证明,弹性波测量与 ML 模型相结合是确定体内皮肤张力的一种可行的非侵入性方法。意义说明:为了防止整形手术对患者造成不利影响,有必要确定相关的特定对象皮肤特性。例如,在皮肤移植过程中,有必要估算皮肤的预拉伸度,以考虑切除后的收缩。现有的方法都是侵入性的,或者依赖于临床医生的经验。我们的工作旨在提出一个创新框架,利用表面波穿过皮肤的速度,非侵入性地确定体内材料特性。我们的研究结果对外科手术的规划具有重要意义,并为使用弹性波测量来确定体内材料特性提供了进一步的动力。
A Gaussian process approach for rapid evaluation of skin tension
Skin tension plays a pivotal role in clinical settings, it affects scarring, wound healing and skin necrosis. Despite its importance, there is no widely accepted method for assessing in vivo skin tension or its natural pre-stretch. This study aims to utilise modern machine learning (ML) methods to develop a model that uses non-invasive measurements of surface wave speed to predict clinically useful skin properties such as stress and natural pre-stretch. A large dataset consisting of simulated wave propagation experiments was created using a simplified two-dimensional finite element (FE) model. Using this dataset, a sensitivity analysis was performed, highlighting the effect of the material parameters and material model on the Rayleigh and supersonic shear wave speeds. Then, a Gaussian process regression model was trained to solve the ill-posed inverse problem of predicting stress and pre-stretch of skin using measurements of surface wave speed. This model had good predictive performance ( = 0.9570) and it was possible to interpolate simplified parametric equations to calculate the stress and pre-stretch. To demonstrate that wave speed measurements could be obtained cheaply and easily, a simple experiment was devised to obtain wave speed measurements from synthetic skin at different values of pre-stretch. These experimental wave speeds agree well with the FE simulations, and a model trained solely on the FE data provided accurate predictions of synthetic skin stiffness. Both the simulated and experimental results provide further evidence that elastic wave measurements coupled with ML models are a viable non-invasive method to determine in vivo skin tension.
Statement of significance
To prevent unfavourable patient outcomes from reconstructive surgery, it is necessary to determine relevant subject-specific skin properties. For example, during a skin graft, it is necessary to estimate the pre-stretch of the skin to account for shrinkage upon excision. Existing methods are invasive or rely on the experience of the clinician. Our work aims to present an innovative framework to non-invasively determine in vivo material properties using the speed of a surface wave travelling through the skin. Our findings have implications for the planning of surgical procedures and provides further motivation for the use of elastic wave measurements to determine in vivo material properties.
期刊介绍:
Acta Biomaterialia is a monthly peer-reviewed scientific journal published by Elsevier. The journal was established in January 2005. The editor-in-chief is W.R. Wagner (University of Pittsburgh). The journal covers research in biomaterials science, including the interrelationship of biomaterial structure and function from macroscale to nanoscale. Topical coverage includes biomedical and biocompatible materials.