使用深度学习的镰状细胞分类

N. Goswami, Anushree Goswami, Niranjana Sampathila, G. M. Bairy
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引用次数: 0

摘要

很长一段时间以来,人工智能一直是医疗保健的福音。虽然人工智能有可能在多个领域提供帮助,但血液涂片分析仍面临一些挑战,需要解决这些挑战,以确保人工智能在这种情况下的准确性、可解释性、安全性和道德。适当的验证、细胞重叠、数据可用性、解决偏差、可解释性、法规遵从性、工作流集成和伦理考虑是在血液涂片分析中使用人工智能时必须仔细考虑的重要方面。通过人工智能较少解决的问题之一是镰状细胞的分类。镰状细胞病是一种影响血红蛋白的遗传性疾病,导致整个身体的氧气供应减少。目前,还没有治愈镰状细胞病的方法,治疗的重点是控制症状和预防并发症。血液涂片图像中镰状细胞的人工识别和分类既耗时又容易出现人为错误。因此,需要一种自动化的方法来分类镰状细胞并解决这些问题。本文讨论了一种深度学习模型来检测血液中镰状细胞的存在,从而对它们进行分类。这里关注的模型是ResNet50,测试准确率为93.88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sickle Cell Classification Using Deep Learning
Artificial Intelligence has been a boon to healthcare for quite a long time. While AI has the potential to assist in several domains, blood smear analysis has several challenges that need to be addressed to ensure the accuracy, interpretability, safety, and ethical use of AI in this context. Proper validation, overlapping of cells, data availability, addressing biases, interpretability, regulatory compliance, workflow integration, and ethical considerations are important aspects that must be carefully considered when using AI in blood smear analysis. One of the lesser-tackled problems through Artificial Intelligence is the classification of sickle cells. Sickle cell disease is a genetic disorder affecting the hemoglobin resulting in a reduced supply of oxygen to the entire body. Currently, there is no cure for sickle cell disease, and treatment is focused on managing symptoms and preventing complications. Manual identification and classification of sickle cells in blood smear images can be time-consuming and prone to human error. Hence, there is a need for automated methods to classify sickle cells and tackle these problems. This paper discusses a deep learning model to detect the presence of sickle cells in the blood, thereby classifying them. The model focused on here is ResNet50 giving a test accuracy of 93.88%.
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