Faculty of Mechanical Engineering, Bialystok University of Technology, Bialystok, Poland.
Vilnius Gediminas Technical University, Vilnius, Lithuania.
Technol Health Care. 2022;30(1):209-216. doi: 10.3233/THC-219004.
The traditional rheumatoid arthritis (RA) diagnosis is very complicated because it uses many clinical and image data. Therefore, there is a need to develop a new method for diagnosing RA using a consolidated set of blood analysis and thermography data.
The following issues related to RA are discussed: 1) Which clinical data are significant in the primary diagnosis of RA? 2) What parameters from thermograms should be used to differentiate patients with RA from the healthy? 3) Can artificial neural networks (ANN) differentiate patients with RA from the healthy?
The dataset was composed of clinical and thermal data from 65 randomly selected patients with RA and 104 healthy subjects. Firstly, the univariate logistic regression model was proposed in order to find significant predictors. Next, the feedforward neural network model was used. The dataset was divided into the training set (75% of data) and the test set (25% of data). The Broyden-Fletcher-Goldfarb-Shanno (BFGS) and non-linear logistic function to transformation nodes in the output layer were used for training. Finally, the 10 fold Cross-Validation was used to assess the predictive performance of the ANN model and to judge how it performs.
The training set consisted of the temperature of all fingers, patient age, BMI, erythrocyte sedimentation rate, C-reactive protein and White Blood Cells (10 parameters in total). High level of sensitivity and specificity was obtained at 81.25% and 100%, respectively. The accuracy was 92.86%.
This methodology suggests that the thermography data can be considered in addition to the currently available tools for screening, diagnosis, monitoring of disease progression.
传统的类风湿关节炎(RA)诊断非常复杂,因为它使用了许多临床和影像学数据。因此,需要开发一种新的方法,使用一套综合的血液分析和热成像数据来诊断 RA。
讨论与 RA 相关的以下问题:1)在 RA 的初步诊断中哪些临床数据是重要的?2)应使用热图中的哪些参数来区分 RA 患者和健康人?3)人工神经网络(ANN)能否区分 RA 患者和健康人?
该数据集由 65 名随机选择的 RA 患者和 104 名健康受试者的临床和热数据组成。首先,提出了单变量逻辑回归模型以找到显著的预测因子。接下来,使用前馈神经网络模型。数据集分为训练集(数据的 75%)和测试集(数据的 25%)。使用 Broyden-Fletcher-Goldfarb-Shanno(BFGS)和非线性逻辑函数转换输出层中的节点进行训练。最后,使用 10 折交叉验证来评估 ANN 模型的预测性能,并判断其性能如何。
训练集包括所有手指的温度、患者年龄、BMI、红细胞沉降率、C 反应蛋白和白细胞(共 10 个参数)。获得了 81.25%的高灵敏度和 100%的特异性。准确率为 92.86%。
该方法表明,热成像数据可以与目前用于筛选、诊断、监测疾病进展的工具一起考虑。