Centre for Biomedical Technology (CTB), Universidad Politécnica de Madrid (UPM), 28040 Madrid, Spain.
Department of Clinical Analysis-Emergency, Hospital Universitario La Paz (HULP), 28046 Madrid, Spain.
Sensors (Basel). 2022 Dec 2;22(23):9413. doi: 10.3390/s22239413.
The synovial fluid (SF) analysis involves a series of chemical and physical studies that allow opportune diagnosing of septic, inflammatory, non-inflammatory, and other pathologies in joints. Among the variety of analyses to be performed on the synovial fluid, the study of viscosity can help distinguish between these conditions, since this property is affected in pathological cases. The problem with viscosity measurement is that it usually requires a large sample volume, or the necessary instrumentation is bulky and expensive. This study compares the viscosity of normal synovial fluid samples with samples with infectious and inflammatory pathologies and classifies them using an ANN (Artificial Neural Network). For this purpose, a low-cost, portable QCR-based sensor (10 MHz) was used to measure the viscous responses of the samples by obtaining three parameters: Δf, ΔΓ (parameters associated with the viscoelastic properties of the fluid), and viscosity calculation. These values were used to train the algorithm. Different versions of the ANN were compared, along with other models, such as SVM and random forest. Thirty-three samples of SF were analyzed. Our study suggests that the viscosity characterized by our sensor can help distinguish infectious synovial fluid, and that implementation of ANN improves the accuracy of synovial fluid classification.
滑液(SF)分析包括一系列化学和物理研究,这些研究可以及时诊断关节的感染性、炎症性、非炎症性和其他病理。在对滑液进行的各种分析中,粘度研究可以帮助区分这些情况,因为这种特性在病理情况下会受到影响。粘度测量的问题在于,它通常需要大量的样本体积,或者必要的仪器体积庞大且昂贵。本研究使用基于 QCR 的低成本、便携式传感器(10 MHz)来测量正常滑液样本和具有传染性和炎症性病理的样本的粘度,并用 ANN(人工神经网络)对它们进行分类。为此,通过获得三个参数(与流体的粘弹性相关的参数):Δf、ΔΓ和粘度计算,使用该传感器测量样品的粘性响应。这些值被用于训练算法。比较了不同版本的 ANN 以及其他模型,如 SVM 和随机森林。分析了 33 个 SF 样本。我们的研究表明,我们的传感器所表征的粘度可以帮助区分传染性滑液,并且 ANN 的实现提高了滑液分类的准确性。