Fairooz Towfeeq, McNamee Sara E, Finlay Dewar, Ng Kok Yew, McLaughlin James
School of Engineering, Ulster University, Belfast BT15 1ED, UK.
Biosensors (Basel). 2024 Dec 13;14(12):611. doi: 10.3390/bios14120611.
Lateral flow assays are widely used in point-of-care diagnostics but face challenges in sensitivity and accuracy when detecting low analyte concentrations, such as thyroid-stimulating hormone biomarkers. This study aims to enhance assay performance by leveraging textural features and hybrid artificial intelligence models. A modified Gray-Level Co-occurrence Matrix, termed the Averaged Horizontal Multiple Offsets Gray-Level Co-occurrence Matrix, was utilised to compute the textural features of the biosensor assay images. Significant textural features were selected for further analysis. A deep learning Convolutional Neural Network model was employed to extract features from these textural features. Both traditional machine learning models and hybrid artificial intelligence models, which combine Convolutional Neural Network features with traditional algorithms, were used to categorise these textural features based on the thyroid-stimulating hormone concentration levels. The proposed method achieved accuracy levels exceeding 95%. This pioneering study highlights the utility of textural aspects of assay images for accurate predictive disease modelling, offering promising advancements in diagnostics and management within biomedical research.
侧流分析在即时诊断中被广泛应用,但在检测低分析物浓度(如促甲状腺激素生物标志物)时,在灵敏度和准确性方面面临挑战。本研究旨在通过利用纹理特征和混合人工智能模型来提高分析性能。一种经过修改的灰度共生矩阵,即平均水平多重偏移灰度共生矩阵,被用于计算生物传感器分析图像的纹理特征。选择了显著的纹理特征进行进一步分析。使用深度学习卷积神经网络模型从这些纹理特征中提取特征。传统机器学习模型和将卷积神经网络特征与传统算法相结合的混合人工智能模型都被用于根据促甲状腺激素浓度水平对这些纹理特征进行分类。所提出的方法实现了超过95%的准确率。这项开创性研究突出了分析图像纹理方面在准确预测疾病建模中的效用,为生物医学研究中的诊断和管理提供了有前景的进展。