Khani Mahmoud E, Harris Zachery B, Osman Omar B, Singer Adam J, Hassan Arbab M
Department of Biomedical Engineering, Stony Brook University, Stony Brook, NY 11794, USA.
Department of Emergency Medicine, Stony Brook University, Stony Brook, NY 11794, USA.
Biomed Opt Express. 2023 Jan 30;14(2):918-931. doi: 10.1364/BOE.479567. eCollection 2023 Feb 1.
The initial assessment of the depth of a burn injury during triage forms the basis for determination of the course of the clinical treatment plan. However, severe skin burns are highly dynamic and hard to predict. This results in a low accuracy rate of about 60 - 75% in the diagnosis of partial-thickness burns in the acute post-burn period. Terahertz time-domain spectroscopy (THz-TDS) has demonstrated a significant potential for non-invasive and timely estimation of the burn severity. Here, we describe a methodology for the measurement and numerical modeling of the dielectric permittivity of the porcine skin burns. We use the double Debye dielectric relaxation theory to model the permittivity of the burned tissue. We further investigate the origins of dielectric contrast between the burns of various severity, as determined histologically based on the percentage of the burned dermis, using the empirical Debye parameters. We demonstrate that the five parameters of the double Debye model can form an artificial neural network classification algorithm capable of automatic diagnosis of the severity of the burn injuries, and predicting its ultimate wound healing outcome by forecasting its re-epithelialization status in 28 days. Our results demonstrate that the Debye dielectric parameters provide a physics-based approach for the extraction of the biomedical diagnostic markers from the broadband THz pulses. This method can significantly boost dimensionality reduction of THz training data in artificial intelligence models and streamline machine learning algorithms.
在分诊过程中对烧伤深度的初步评估是确定临床治疗方案进程的基础。然而,严重皮肤烧伤具有高度动态性且难以预测。这导致在烧伤后急性期对浅度烧伤的诊断准确率较低,约为60 - 75%。太赫兹时域光谱(THz-TDS)已显示出在无创且及时评估烧伤严重程度方面的巨大潜力。在此,我们描述一种用于测量猪皮肤烧伤介电常数并进行数值建模的方法。我们使用双德拜介电弛豫理论对烧伤组织的介电常数进行建模。我们进一步基于组织学上根据烧伤真皮百分比确定的不同严重程度烧伤之间的介电对比度来源,使用经验德拜参数进行研究。我们证明双德拜模型的五个参数可以形成一种人工神经网络分类算法,能够自动诊断烧伤损伤的严重程度,并通过预测其28天内的再上皮化状态来预测其最终伤口愈合结果。我们的结果表明,德拜介电参数为从宽带太赫兹脉冲中提取生物医学诊断标志物提供了一种基于物理的方法。该方法可以显著提高人工智能模型中太赫兹训练数据的降维效果,并简化机器学习算法。