Ramlan Laily Azyan, Wan Zaki Wan Mimi Diyana, Mat Daud Marizuana, Mutalib Haliza Abdul
Department of Electrical, Electronic and Systems Engineering, Faculty of Engineering and Built Environment, Universiti Kebangsaan Malaysia, UKM Bangi 43600, Malaysia.
Institute of Visual Informatics, Universiti Kebangsaan Malaysia, UKM Bangi 43600, Malaysia.
Diagnostics (Basel). 2025 Aug 20;15(16):2084. doi: 10.3390/diagnostics15162084.
Dry Eye Disease (DED) significantly impacts quality of life due to the instability of the tear film and reduced tear production. The limited availability of eye care professionals, combined with traditional diagnostic methods that are invasive, non-portable, and time-consuming, results in delayed detection and hindered treatment. This proof-of-concept study aims to explore the feasibility of using smartphone-based infrared thermography (IRT) as a non-invasive, portable screening method for DED. This study included infrared thermography (IRT) images of 40 subjects (22 normal and 58 DED). Ocular surface temperature changes at three regions of interest (ROIs): nasal cornea, center cornea, and temporal cornea, were compared with Tear Film Break-up Time (TBUT) and Ocular Surface Disease Index (OSDI) scores. Statistical correlations and independent -tests were performed, while machine learning (ML) models classified normal vs. DED eyes. In these preliminary results, DED eyes exhibited a significantly faster cooling rate ( < 0.001). TBUT showed a negative correlation with OSDI (r = -0.802, < 0.001) and positive correlations with cooling rates in the nasal cornea (r = 0.717, < 0.001), center cornea (r = 0.764, < 0.001), and temporal cornea (r = 0.669, < 0.001) regions. Independent -tests confirmed significant differences between normal and DED eyes across all parameters ( < 0.001). The Quadratic Support Vector Machine (SVM) achieved the highest accuracy among SVM models (90.54%), while the k-Nearest Neighbours (k-NN) model using Euclidean distance (k = 3) outperformed overall with 91.89% accuracy, demonstrating strong potential for DED classification. This study provides initial evidence supporting the use of smartphone-based infrared thermography (IRT) as a screening tool for DED. The promising classification performance highlights the potential of this approach, though further validation on larger and more diverse datasets is necessary to advance toward clinical application.
干眼症(DED)由于泪膜不稳定和泪液分泌减少,对生活质量有显著影响。眼科护理专业人员数量有限,再加上传统诊断方法具有侵入性、不可携带且耗时等特点,导致检测延迟和治疗受阻。这项概念验证研究旨在探索使用基于智能手机的红外热成像(IRT)作为一种用于干眼症的非侵入性、便携式筛查方法的可行性。本研究纳入了40名受试者(22名正常人和58名干眼症患者)的红外热成像(IRT)图像。比较了三个感兴趣区域(ROI):鼻侧角膜、中央角膜和颞侧角膜的眼表温度变化与泪膜破裂时间(TBUT)和眼表疾病指数(OSDI)评分。进行了统计相关性分析和独立检验,同时使用机器学习(ML)模型对正常眼和干眼症眼进行分类。在这些初步结果中,干眼症眼表现出显著更快的冷却速率(<0.001)。TBUT与OSDI呈负相关(r = -0.802,<0.001),与鼻侧角膜(r = 0.717,<0.001)、中央角膜(r = 0.764,<0.001)和颞侧角膜(r = 0.669,<0.001)区域的冷却速率呈正相关。独立检验证实正常眼和干眼症眼在所有参数上均存在显著差异(<0.001)。二次支持向量机(SVM)在SVM模型中准确率最高(90.54%),而使用欧几里得距离(k = 3)的k近邻(k-NN)模型总体表现最佳,准确率为91.89%,显示出在干眼症分类方面的强大潜力。本研究提供了初步证据支持使用基于智能手机的红外热成像(IRT)作为干眼症的筛查工具。尽管在更大且更多样化的数据集上进行进一步验证对于推进临床应用是必要的,但这种有前景的分类性能突出了该方法的潜力。