Sehar Najmus, Krishnamoorthi Nirmala, Vinoth Kumar C
Department of Biomedical Engineering, Sri Sivasubramaniya Nadar College of Engineering, Chennai, India.
Department of Electronics and Communication Engineering, Sri Sivasubramaniya Nadar College of Engineering, Chennai, India.
Healthc Inform Res. 2025 Jan;31(1):57-65. doi: 10.4258/hir.2025.31.1.57. Epub 2025 Jan 31.
Anemia is characterized by a reduction in red blood cells, leading to insufficient levels of hemoglobin, the molecule responsible for carrying oxygen. The current standard method for diagnosing anemia involves analyzing blood samples, a process that is time-consuming and can cause discomfort to participants. This study offers a comprehensive analysis of non-invasive anemia detection using conjunctiva images processed through various machine learning and deep learning models. The focus is on the palpebral conjunctiva, which is highly vascular and unaffected by melanin content.
Conjunctiva images from both anemic and non-anemic participants were captured using a smartphone. A total of 764 conjunctiva images were augmented to 4,315 images using the deep convolutional generative adversarial network model to prevent overfitting and enhance model robustness. These processed and augmented images were then utilized to train and test multiple models, including statistical regression, machine learning algorithms, and deep learning frameworks.
The stacking ensemble framework, which includes the models VGG16, ResNet-50, and InceptionV3, achieved a high area under the curve score of 0.97. This score demonstrates the framework's exceptional capability in detecting anemia through a noninvasive approach.
This study introduces a noninvasive method for detecting anemia using conjunctiva images obtained with a smartphone and processed using advanced deep learning techniques.
贫血的特征是红细胞减少,导致血红蛋白水平不足,血红蛋白是负责携带氧气的分子。目前诊断贫血的标准方法是分析血样,这一过程既耗时又会给参与者带来不适。本研究对使用通过各种机器学习和深度学习模型处理的结膜图像进行无创贫血检测进行了全面分析。重点是睑结膜,它血管丰富且不受黑色素含量影响。
使用智能手机采集贫血和非贫血参与者的结膜图像。使用深度卷积生成对抗网络模型将总共764张结膜图像扩充到4315张图像,以防止过拟合并增强模型的鲁棒性。然后利用这些经过处理和扩充的图像来训练和测试多个模型,包括统计回归、机器学习算法和深度学习框架。
包括VGG16、ResNet - 50和InceptionV3模型的堆叠集成框架实现了0.97的高曲线下面积分数。该分数表明该框架在通过无创方法检测贫血方面具有卓越能力。
本研究介绍了一种使用智能手机获取并通过先进深度学习技术处理的结膜图像检测贫血的无创方法。