Dimauro Giovanni, Griseta Maria Elena, Camporeale Mauro Giuseppe, Clemente Felice, Guarini Attilio, Maglietta Rosalia
Department of Computer Science, University of Bari 'Aldo Moro', Bari, Italy.
Institute of Intelligent Industrial Technologies and Systems for Advanced Manufacturing, National Research Council of Italy, Bari, Italy.
Artif Intell Med. 2023 Feb;136:102477. doi: 10.1016/j.artmed.2022.102477. Epub 2022 Dec 26.
Anemia is a condition in which the oxygen-carrying capacity of red blood cells is insufficient to meet the body's physiological needs. It affects billions of people worldwide. An early diagnosis of this disease could prevent the advancement of other disorders. Traditional methods used to detect anemia consist of venipuncture, which requires a patient to frequently undergo laboratory tests. Therefore, anemia diagnosis using noninvasive and cost-effective methods is an open challenge. The pallor of the fingertips, palms, nail beds, and eye conjunctiva can be observed to establish whether a patient suffers from anemia. This article addresses the above challenges by presenting a novel intelligent system, based on machine learning, that supports the automated diagnosis of anemia. This system is innovative from different points of view. Specifically, it has been trained on a dataset that contains eye conjunctiva photos of Indian and Italian patients. This dataset, which was created using a very strict experimental set, is now made available to the Scientific Community. Moreover, compared to previous systems in the literature, the proposed system uses a low-cost device, which makes it suitable for widespread use. The performance of the learning algorithms utilizing two different areas of the mucous membrane of the eye is discussed. In particular, the RUSBoost algorithm, when appropriately trained on palpebral conjunctiva images, shows good performance in classifying anemic and nonanemic patients. The results are very robust, even when considering different ethnicities.
贫血是一种红细胞携氧能力不足以满足身体生理需求的病症。它影响着全球数十亿人。该疾病的早期诊断可以预防其他病症的发展。用于检测贫血的传统方法包括静脉穿刺,这要求患者频繁接受实验室检测。因此,使用无创且经济高效的方法进行贫血诊断是一项有待解决的挑战。可以通过观察指尖、手掌、甲床和眼结膜的苍白情况来确定患者是否患有贫血。本文通过提出一种基于机器学习的新型智能系统来应对上述挑战,该系统支持贫血的自动诊断。该系统在不同方面具有创新性。具体而言,它是在一个包含印度和意大利患者眼结膜照片的数据集上进行训练的。这个使用非常严格的实验装置创建的数据集现在可供科学界使用。此外,与文献中以前的系统相比,所提出的系统使用低成本设备,这使其适合广泛应用。讨论了利用眼黏膜两个不同区域的学习算法的性能。特别是,RUSBoost算法在睑结膜图像上进行适当训练后,在区分贫血和非贫血患者方面表现出良好性能。即使考虑不同种族,结果也非常可靠。