Lin En-Ting, Lu Shao-Chi, Liu An-Sheng, Ko Chia-Hsin, Huang Chien-Hua, Tsai Chu-Lin, Fu Li-Chen
Department of Computer Science and Information Engineering, National Taiwan University, CSIE Der Tian Hall No. 1, Sec. 4, Roosevelt Road, Taipei, 106319, Taiwan.
Department of Emergency Medicine, National Taiwan University Hospital and National Taiwan University College of Medicine, 7 Zhongshan S. Rd, Taipei, 100, Taiwan.
J Imaging Inform Med. 2025 Apr;38(2):775-792. doi: 10.1007/s10278-024-01209-4. Epub 2024 Aug 19.
Anemia is a significant global health issue, affecting over a billion people worldwide, according to the World Health Organization. Generally, the gold standard for diagnosing anemia relies on laboratory measurements of hemoglobin. To meet the need in clinical practice, physicians often rely on visual examination of specific areas, such as conjunctiva, to assess pallor. However, this method is subjective and relies on the physician's experience. Therefore, we proposed a deep learning prediction model based on three input images from different body parts, namely, conjunctiva, palm, and fingernail. By incorporating additional body part labels and employing a fusion attention mechanism, the model learns and enhances the salient features of each body part during training, enabling it to produce reliable results. Additionally, we employ a dual loss function that allows the regression model to benefit from well-established classification methods, thereby achieving stable handling of minority samples. We used a retrospective data set (EYES-DEFY-ANEMIA) to develop this model called Body-Part-Anemia Network (BPANet). The BPANet showed excellent performance in detecting anemia, with accuracy of 0.849 and an F1-score of 0.828. Our multi-body-part model has been validated on a prospectively collected data set of 101 patients in National Taiwan University Hospital. The prediction accuracy as well as F1-score can achieve as high as 0.716 and 0.788, respectively. To sum up, we have developed and validated a novel non-invasive hemoglobin prediction model based on image input from multiple body parts, with the potential of real-time use at home and in clinical settings.
根据世界卫生组织的数据,贫血是一个重大的全球健康问题,影响着全球超过十亿人。一般来说,诊断贫血的金标准依赖于血红蛋白的实验室测量。为了满足临床实践的需求,医生通常依靠对特定部位(如结膜)的视觉检查来评估苍白程度。然而,这种方法具有主观性,且依赖于医生的经验。因此,我们提出了一种基于来自不同身体部位(即结膜、手掌和指甲)的三张输入图像的深度学习预测模型。通过纳入额外的身体部位标签并采用融合注意力机制,该模型在训练过程中学习并增强每个身体部位的显著特征,从而能够产生可靠的结果。此外,我们采用了双损失函数,使回归模型能够受益于成熟的分类方法,从而实现对少数样本的稳定处理。我们使用回顾性数据集(EYES-DEFY-ANEMIA)开发了这个名为身体部位贫血网络(BPANet)的模型。BPANet在检测贫血方面表现出色,准确率为0.849,F1分数为0.828。我们的多身体部位模型已在台湾大学医院前瞻性收集的101例患者的数据集中得到验证。预测准确率和F1分数分别可高达0.716和0.788。总之,我们开发并验证了一种基于多个身体部位图像输入的新型非侵入性血红蛋白预测模型,具有在家中和临床环境中实时使用的潜力。