Baker Laura X, Chen Fuyao, Cronin Austin, Chen Heidi, Vain Arved, Jagasia Madan, Tkaczyk Eric R
Dermatology Service and Research Service, Department of Veterans Affairs Tennessee Valley Healthcare System, Nashville TN.
Vanderbilt Dermatology Translational Research Clinic, Vanderbilt University Medical Center, Nashville, TN.
JID Innov. 2021 Sep;1(3). doi: 10.1016/j.xjidi.2021.100037. Epub 2021 Sep 2.
Skin biomechanical parameters (dynamic stiffness, frequency, relaxation time, creep, and decrement) measured using a myotonometer (MyotonPRO) could inform management of sclerotic disease. To determine which biomechanical parameter(s) can accurately differentiate sclerotic chronic graft-versus-host disease (cGVHD) patients from post-hematopoietic cell transplant (post-HCT) controls, 15 sclerotic cGVHD patients and 11 post-HCT controls were measured with the myotonometer on 18 anatomic sites. Logistic regression and two machine learning algorithms, LASSO regression and random forest, were developed to classify subjects. In univariable analysis, frequency had the highest overfit-corrected area under the receiver operating characteristic curve (AUC 0.91). Backward stepwise selection and random forest machine learning identified frequency and relaxation time as the optimal parameters for differentiating sclerotic cGVHD patients from post-HCT controls. LASSO regression selected the combination of frequency and relaxation time (overfit-corrected AUC 0.87). Discriminatory ability was maintained when only the sites accessible while the patient is supine (12 sites) were used. We report the distribution of values for these highly discriminative biomechanical parameters, which could inform assessment of disease severity in future quantitative biomechanical studies of sclerotic cGVHD.
使用肌强直计(MyotonPRO)测量的皮肤生物力学参数(动态刚度、频率、松弛时间、蠕变和衰减)可为硬化性疾病的管理提供依据。为了确定哪些生物力学参数能够准确区分硬化性慢性移植物抗宿主病(cGVHD)患者与造血干细胞移植后(post-HCT)的对照组,使用肌强直计在18个解剖部位对15例硬化性cGVHD患者和11例post-HCT对照组进行了测量。开发了逻辑回归和两种机器学习算法,即套索回归(LASSO回归)和随机森林,用于对受试者进行分类。在单变量分析中,频率在受试者工作特征曲线(AUC 0.91)下具有最高的过拟合校正面积。向后逐步选择和随机森林机器学习确定频率和松弛时间是区分硬化性cGVHD患者与post-HCT对照组的最佳参数。LASSO回归选择了频率和松弛时间的组合(过拟合校正AUC 0.87)。当仅使用患者仰卧时可触及的部位(12个部位)时,鉴别能力得以保持。我们报告了这些具有高度鉴别力的生物力学参数的值分布,这可为未来硬化性cGVHD的定量生物力学研究中疾病严重程度的评估提供依据。